Control API

lti

class sympy.physics.control.lti.TransferFunction(num, den, var)[source]

A class for representing LTI (Linear, time-invariant) systems that can be strictly described by ratio of polynomials in the Laplace transform complex variable. The arguments are num, den, and var, where num and den are numerator and denominator polynomials of the TransferFunction respectively, and the third argument is a complex variable of the Laplace transform used by these polynomials of the transfer function. num and den can be either polynomials or numbers, whereas var has to be a Symbol.

Parameters

num : Expr, Number

The numerator polynomial of the transfer function.

den : Expr, Number

The denominator polynomial of the transfer function.

var : Symbol

Complex variable of the Laplace transform used by the polynomials of the transfer function.

Raises

TypeError

When var is not a Symbol or when num or den is not a number or a polynomial.

ValueError

When den is zero.

Explanation

Generally, a dynamical system representing a physical model can be described in terms of Linear Ordinary Differential Equations like -

\(\small{b_{m}y^{\left(m\right)}+b_{m-1}y^{\left(m-1\right)}+\dots+b_{1}y^{\left(1\right)}+b_{0}y= a_{n}x^{\left(n\right)}+a_{n-1}x^{\left(n-1\right)}+\dots+a_{1}x^{\left(1\right)}+a_{0}x}\)

Here, \(x\) is the input signal and \(y\) is the output signal and superscript on both is the order of derivative (not exponent). Derivative is taken with respect to the independent variable, \(t\). Also, generally \(m\) is greater than \(n\).

It is not feasible to analyse the properties of such systems in their native form therefore, we use mathematical tools like Laplace transform to get a better perspective. Taking the Laplace transform of both the sides in the equation (at zero initial conditions), we get -

\(\small{\mathcal{L}[b_{m}y^{\left(m\right)}+b_{m-1}y^{\left(m-1\right)}+\dots+b_{1}y^{\left(1\right)}+b_{0}y]= \mathcal{L}[a_{n}x^{\left(n\right)}+a_{n-1}x^{\left(n-1\right)}+\dots+a_{1}x^{\left(1\right)}+a_{0}x]}\)

Using the linearity property of Laplace transform and also considering zero initial conditions (i.e. \(\small{y(0^{-}) = 0}\), \(\small{y'(0^{-}) = 0}\) and so on), the equation above gets translated to -

\(\small{b_{m}\mathcal{L}[y^{\left(m\right)}]+\dots+b_{1}\mathcal{L}[y^{\left(1\right)}]+b_{0}\mathcal{L}[y]= a_{n}\mathcal{L}[x^{\left(n\right)}]+\dots+a_{1}\mathcal{L}[x^{\left(1\right)}]+a_{0}\mathcal{L}[x]}\)

Now, applying Derivative property of Laplace transform,

\(\small{b_{m}s^{m}\mathcal{L}[y]+\dots+b_{1}s\mathcal{L}[y]+b_{0}\mathcal{L}[y]= a_{n}s^{n}\mathcal{L}[x]+\dots+a_{1}s\mathcal{L}[x]+a_{0}\mathcal{L}[x]}\)

Here, the superscript on \(s\) is exponent. Note that the zero initial conditions assumption, mentioned above, is very important and cannot be ignored otherwise the dynamical system cannot be considered time-independent and the simplified equation above cannot be reached.

Collecting \(\mathcal{L}[y]\) and \(\mathcal{L}[x]\) terms from both the sides and taking the ratio \(\frac{ \mathcal{L}\left\{y\right\} }{ \mathcal{L}\left\{x\right\} }\), we get the typical rational form of transfer function.

The numerator of the transfer function is, therefore, the Laplace transform of the output signal (The signals are represented as functions of time) and similarly, the denominator of the transfer function is the Laplace transform of the input signal. It is also a convention to denote the input and output signal’s Laplace transform with capital alphabets like shown below.

\(H(s) = \frac{Y(s)}{X(s)} = \frac{ \mathcal{L}\left\{y(t)\right\} }{ \mathcal{L}\left\{x(t)\right\} }\)

\(s\), also known as complex frequency, is a complex variable in the Laplace domain. It corresponds to the equivalent variable \(t\), in the time domain. Transfer functions are sometimes also referred to as the Laplace transform of the system’s impulse response. Transfer function, \(H\), is represented as a rational function in \(s\) like,

\(H(s) =\ \frac{a_{n}s^{n}+a_{n-1}s^{n-1}+\dots+a_{1}s+a_{0}}{b_{m}s^{m}+b_{m-1}s^{m-1}+\dots+b_{1}s+b_{0}}\)

Examples

>>> from sympy.abc import s, p, a
>>> from sympy.physics.control.lti import TransferFunction
>>> tf1 = TransferFunction(s + a, s**2 + s + 1, s)
>>> tf1
TransferFunction(a + s, s**2 + s + 1, s)
>>> tf1.num
a + s
>>> tf1.den
s**2 + s + 1
>>> tf1.var
s
>>> tf1.args
(a + s, s**2 + s + 1, s)

Any complex variable can be used for var.

>>> tf2 = TransferFunction(a*p**3 - a*p**2 + s*p, p + a**2, p)
>>> tf2
TransferFunction(a*p**3 - a*p**2 + p*s, a**2 + p, p)
>>> tf3 = TransferFunction((p + 3)*(p - 1), (p - 1)*(p + 5), p)
>>> tf3
TransferFunction((p - 1)*(p + 3), (p - 1)*(p + 5), p)

To negate a transfer function the - operator can be prepended:

>>> tf4 = TransferFunction(-a + s, p**2 + s, p)
>>> -tf4
TransferFunction(a - s, p**2 + s, p)
>>> tf5 = TransferFunction(s**4 - 2*s**3 + 5*s + 4, s + 4, s)
>>> -tf5
TransferFunction(-s**4 + 2*s**3 - 5*s - 4, s + 4, s)

You can use a Float or an Integer (or other constants) as numerator and denominator:

>>> tf6 = TransferFunction(1/2, 4, s)
>>> tf6.num
0.500000000000000
>>> tf6.den
4
>>> tf6.var
s
>>> tf6.args
(0.5, 4, s)

You can take the integer power of a transfer function using the ** operator:

>>> tf7 = TransferFunction(s + a, s - a, s)
>>> tf7**3
TransferFunction((a + s)**3, (-a + s)**3, s)
>>> tf7**0
TransferFunction(1, 1, s)
>>> tf8 = TransferFunction(p + 4, p - 3, p)
>>> tf8**-1
TransferFunction(p - 3, p + 4, p)

Addition, subtraction, and multiplication of transfer functions can form unevaluated Series or Parallel objects.

>>> tf9 = TransferFunction(s + 1, s**2 + s + 1, s)
>>> tf10 = TransferFunction(s - p, s + 3, s)
>>> tf11 = TransferFunction(4*s**2 + 2*s - 4, s - 1, s)
>>> tf12 = TransferFunction(1 - s, s**2 + 4, s)
>>> tf9 + tf10
Parallel(TransferFunction(s + 1, s**2 + s + 1, s), TransferFunction(-p + s, s + 3, s))
>>> tf10 - tf11
Parallel(TransferFunction(-p + s, s + 3, s), TransferFunction(-4*s**2 - 2*s + 4, s - 1, s))
>>> tf9 * tf10
Series(TransferFunction(s + 1, s**2 + s + 1, s), TransferFunction(-p + s, s + 3, s))
>>> tf10 - (tf9 + tf12)
Parallel(TransferFunction(-p + s, s + 3, s), TransferFunction(-s - 1, s**2 + s + 1, s), TransferFunction(s - 1, s**2 + 4, s))
>>> tf10 - (tf9 * tf12)
Parallel(TransferFunction(-p + s, s + 3, s), Series(TransferFunction(-1, 1, s), TransferFunction(s + 1, s**2 + s + 1, s), TransferFunction(1 - s, s**2 + 4, s)))
>>> tf11 * tf10 * tf9
Series(TransferFunction(4*s**2 + 2*s - 4, s - 1, s), TransferFunction(-p + s, s + 3, s), TransferFunction(s + 1, s**2 + s + 1, s))
>>> tf9 * tf11 + tf10 * tf12
Parallel(Series(TransferFunction(s + 1, s**2 + s + 1, s), TransferFunction(4*s**2 + 2*s - 4, s - 1, s)), Series(TransferFunction(-p + s, s + 3, s), TransferFunction(1 - s, s**2 + 4, s)))
>>> (tf9 + tf12) * (tf10 + tf11)
Series(Parallel(TransferFunction(s + 1, s**2 + s + 1, s), TransferFunction(1 - s, s**2 + 4, s)), Parallel(TransferFunction(-p + s, s + 3, s), TransferFunction(4*s**2 + 2*s - 4, s - 1, s)))

These unevaluated Series or Parallel objects can convert into the resultant transfer function using .doit() method or by .rewrite(TransferFunction).

>>> ((tf9 + tf10) * tf12).doit()
TransferFunction((1 - s)*((-p + s)*(s**2 + s + 1) + (s + 1)*(s + 3)), (s + 3)*(s**2 + 4)*(s**2 + s + 1), s)
>>> (tf9 * tf10 - tf11 * tf12).rewrite(TransferFunction)
TransferFunction(-(1 - s)*(s + 3)*(s**2 + s + 1)*(4*s**2 + 2*s - 4) + (-p + s)*(s - 1)*(s + 1)*(s**2 + 4), (s - 1)*(s + 3)*(s**2 + 4)*(s**2 + s + 1), s)

See also

Feedback, Series, Parallel

References

R651

https://en.wikipedia.org/wiki/Transfer_function

R652

https://en.wikipedia.org/wiki/Laplace_transform

dc_gain()[source]

Computes the gain of the response as the frequency approaches zero.

The DC gain is infinite for systems with pure integrators.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction
>>> tf1 = TransferFunction(s + 3, s**2 - 9, s)
>>> tf1.dc_gain()
-1/3
>>> tf2 = TransferFunction(p**2, p - 3 + p**3, p)
>>> tf2.dc_gain()
0
>>> tf3 = TransferFunction(a*p**2 - b, s + b, s)
>>> tf3.dc_gain()
(a*p**2 - b)/b
>>> tf4 = TransferFunction(1, s, s)
>>> tf4.dc_gain()
oo
property den

Returns the denominator polynomial of the transfer function.

Examples

>>> from sympy.abc import s, p
>>> from sympy.physics.control.lti import TransferFunction
>>> G1 = TransferFunction(s + 4, p**3 - 2*p + 4, s)
>>> G1.den
p**3 - 2*p + 4
>>> G2 = TransferFunction(3, 4, s)
>>> G2.den
4
expand()[source]

Returns the transfer function with numerator and denominator in expanded form.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction
>>> G1 = TransferFunction((a - s)**2, (s**2 + a)**2, s)
>>> G1.expand()
TransferFunction(a**2 - 2*a*s + s**2, a**2 + 2*a*s**2 + s**4, s)
>>> G2 = TransferFunction((p + 3*b)*(p - b), (p - b)*(p + 2*b), p)
>>> G2.expand()
TransferFunction(-3*b**2 + 2*b*p + p**2, -2*b**2 + b*p + p**2, p)
classmethod from_rational_expression(expr, var=None)[source]

Creates a new TransferFunction efficiently from a rational expression.

Parameters

expr : Expr, Number

The rational expression representing the TransferFunction.

var : Symbol, optional

Complex variable of the Laplace transform used by the polynomials of the transfer function.

Raises

ValueError

When expr is of type Number and optional parameter var is not passed.

When expr has more than one variables and an optional parameter var is not passed.

ZeroDivisionError

When denominator of expr is zero or it has ComplexInfinity in its numerator.

Examples

>>> from sympy.abc import s, p, a
>>> from sympy.physics.control.lti import TransferFunction
>>> expr1 = (s + 5)/(3*s**2 + 2*s + 1)
>>> tf1 = TransferFunction.from_rational_expression(expr1)
>>> tf1
TransferFunction(s + 5, 3*s**2 + 2*s + 1, s)
>>> expr2 = (a*p**3 - a*p**2 + s*p)/(p + a**2)  # Expr with more than one variables
>>> tf2 = TransferFunction.from_rational_expression(expr2, p)
>>> tf2
TransferFunction(a*p**3 - a*p**2 + p*s, a**2 + p, p)

In case of conflict between two or more variables in a expression, SymPy will raise a ValueError, if var is not passed by the user.

>>> tf = TransferFunction.from_rational_expression((a + a*s)/(s**2 + s + 1))
Traceback (most recent call last):
...
ValueError: Conflicting values found for positional argument `var` ({a, s}). Specify it manually.

This can be corrected by specifying the var parameter manually.

>>> tf = TransferFunction.from_rational_expression((a + a*s)/(s**2 + s + 1), s)
>>> tf
TransferFunction(a*s + a, s**2 + s + 1, s)

var also need to be specified when expr is a Number

>>> tf3 = TransferFunction.from_rational_expression(10, s)
>>> tf3
TransferFunction(10, 1, s)
property is_biproper

Returns True if degree of the numerator polynomial is equal to degree of the denominator polynomial, else False.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction
>>> tf1 = TransferFunction(a*p**2 + b*s, s - p, s)
>>> tf1.is_biproper
True
>>> tf2 = TransferFunction(p**2, p + a, p)
>>> tf2.is_biproper
False
property is_proper

Returns True if degree of the numerator polynomial is less than or equal to degree of the denominator polynomial, else False.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction
>>> tf1 = TransferFunction(b*s**2 + p**2 - a*p + s, b - p**2, s)
>>> tf1.is_proper
False
>>> tf2 = TransferFunction(p**2 - 4*p, p**3 + 3*p + 2, p)
>>> tf2.is_proper
True
is_stable()[source]

Returns True if the transfer function is asymptotically stable; else False.

This would not check the marginal or conditional stability of the system.

Examples

>>> from sympy.abc import s, p, a
>>> from sympy import symbols
>>> from sympy.physics.control.lti import TransferFunction
>>> q, r = symbols('q, r', negative=True)
>>> tf1 = TransferFunction((1 - s)**2, (s + 1)**2, s)
>>> tf1.is_stable()
True
>>> tf2 = TransferFunction((1 - p)**2, (s**2 + 1)**2, s)
>>> tf2.is_stable()
False
>>> tf3 = TransferFunction(4, q*s - r, s)
>>> tf3.is_stable()
False
>>> tf4 = TransferFunction(p + 1, a*p - s**2, p)
>>> tf4.is_stable() is None   # Not enough info about the symbols to determine stability
True
property is_strictly_proper

Returns True if degree of the numerator polynomial is strictly less than degree of the denominator polynomial, else False.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction
>>> tf1 = TransferFunction(a*p**2 + b*s, s - p, s)
>>> tf1.is_strictly_proper
False
>>> tf2 = TransferFunction(s**3 - 2, s**4 + 5*s + 6, s)
>>> tf2.is_strictly_proper
True
property num

Returns the numerator polynomial of the transfer function.

Examples

>>> from sympy.abc import s, p
>>> from sympy.physics.control.lti import TransferFunction
>>> G1 = TransferFunction(s**2 + p*s + 3, s - 4, s)
>>> G1.num
p*s + s**2 + 3
>>> G2 = TransferFunction((p + 5)*(p - 3), (p - 3)*(p + 1), p)
>>> G2.num
(p - 3)*(p + 5)
poles()[source]

Returns the poles of a transfer function.

Examples

>>> from sympy.abc import s, p, a
>>> from sympy.physics.control.lti import TransferFunction
>>> tf1 = TransferFunction((p + 3)*(p - 1), (p - 1)*(p + 5), p)
>>> tf1.poles()
[-5, 1]
>>> tf2 = TransferFunction((1 - s)**2, (s**2 + 1)**2, s)
>>> tf2.poles()
[I, I, -I, -I]
>>> tf3 = TransferFunction(s**2, a*s + p, s)
>>> tf3.poles()
[-p/a]
to_expr()[source]

Converts a TransferFunction object to SymPy Expr.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction
>>> from sympy import Expr
>>> tf1 = TransferFunction(s, a*s**2 + 1, s)
>>> tf1.to_expr()
s/(a*s**2 + 1)
>>> isinstance(_, Expr)
True
>>> tf2 = TransferFunction(1, (p + 3*b)*(b - p), p)
>>> tf2.to_expr()
1/((b - p)*(3*b + p))
>>> tf3 = TransferFunction((s - 2)*(s - 3), (s - 1)*(s - 2)*(s - 3), s)
>>> tf3.to_expr()
((s - 3)*(s - 2))/(((s - 3)*(s - 2)*(s - 1)))
property var

Returns the complex variable of the Laplace transform used by the polynomials of the transfer function.

Examples

>>> from sympy.abc import s, p
>>> from sympy.physics.control.lti import TransferFunction
>>> G1 = TransferFunction(p**2 + 2*p + 4, p - 6, p)
>>> G1.var
p
>>> G2 = TransferFunction(0, s - 5, s)
>>> G2.var
s
zeros()[source]

Returns the zeros of a transfer function.

Examples

>>> from sympy.abc import s, p, a
>>> from sympy.physics.control.lti import TransferFunction
>>> tf1 = TransferFunction((p + 3)*(p - 1), (p - 1)*(p + 5), p)
>>> tf1.zeros()
[-3, 1]
>>> tf2 = TransferFunction((1 - s)**2, (s**2 + 1)**2, s)
>>> tf2.zeros()
[1, 1]
>>> tf3 = TransferFunction(s**2, a*s + p, s)
>>> tf3.zeros()
[0, 0]
class sympy.physics.control.lti.Series(*args, evaluate=False)[source]

A class for representing a series configuration of SISO systems.

Parameters

args : SISOLinearTimeInvariant

SISO systems in a series configuration.

evaluate : Boolean, Keyword

When passed True, returns the equivalent Series(*args).doit(). Set to False by default.

Raises

ValueError

When no argument is passed.

var attribute is not same for every system.

TypeError

Any of the passed *args has unsupported type

A combination of SISO and MIMO systems is passed. There should be homogeneity in the type of systems passed, SISO in this case.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction, Series, Parallel
>>> tf1 = TransferFunction(a*p**2 + b*s, s - p, s)
>>> tf2 = TransferFunction(s**3 - 2, s**4 + 5*s + 6, s)
>>> tf3 = TransferFunction(p**2, p + s, s)
>>> S1 = Series(tf1, tf2)
>>> S1
Series(TransferFunction(a*p**2 + b*s, -p + s, s), TransferFunction(s**3 - 2, s**4 + 5*s + 6, s))
>>> S1.var
s
>>> S2 = Series(tf2, Parallel(tf3, -tf1))
>>> S2
Series(TransferFunction(s**3 - 2, s**4 + 5*s + 6, s), Parallel(TransferFunction(p**2, p + s, s), TransferFunction(-a*p**2 - b*s, -p + s, s)))
>>> S2.var
s
>>> S3 = Series(Parallel(tf1, tf2), Parallel(tf2, tf3))
>>> S3
Series(Parallel(TransferFunction(a*p**2 + b*s, -p + s, s), TransferFunction(s**3 - 2, s**4 + 5*s + 6, s)), Parallel(TransferFunction(s**3 - 2, s**4 + 5*s + 6, s), TransferFunction(p**2, p + s, s)))
>>> S3.var
s

You can get the resultant transfer function by using .doit() method:

>>> S3 = Series(tf1, tf2, -tf3)
>>> S3.doit()
TransferFunction(-p**2*(s**3 - 2)*(a*p**2 + b*s), (-p + s)*(p + s)*(s**4 + 5*s + 6), s)
>>> S4 = Series(tf2, Parallel(tf1, -tf3))
>>> S4.doit()
TransferFunction((s**3 - 2)*(-p**2*(-p + s) + (p + s)*(a*p**2 + b*s)), (-p + s)*(p + s)*(s**4 + 5*s + 6), s)

Notes

All the transfer functions should use the same complex variable var of the Laplace transform.

doit(**kwargs)[source]

Returns the resultant transfer function obtained after evaluating the transfer functions in series configuration.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction, Series
>>> tf1 = TransferFunction(a*p**2 + b*s, s - p, s)
>>> tf2 = TransferFunction(s**3 - 2, s**4 + 5*s + 6, s)
>>> Series(tf2, tf1).doit()
TransferFunction((s**3 - 2)*(a*p**2 + b*s), (-p + s)*(s**4 + 5*s + 6), s)
>>> Series(-tf1, -tf2).doit()
TransferFunction((2 - s**3)*(-a*p**2 - b*s), (-p + s)*(s**4 + 5*s + 6), s)
property is_biproper

Returns True if degree of the numerator polynomial of the resultant transfer function is equal to degree of the denominator polynomial of the same, else False.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction, Series
>>> tf1 = TransferFunction(a*p**2 + b*s, s - p, s)
>>> tf2 = TransferFunction(p, s**2, s)
>>> tf3 = TransferFunction(s**2, 1, s)
>>> S1 = Series(tf1, -tf2)
>>> S1.is_biproper
False
>>> S2 = Series(tf2, tf3)
>>> S2.is_biproper
True
property is_proper

Returns True if degree of the numerator polynomial of the resultant transfer function is less than or equal to degree of the denominator polynomial of the same, else False.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction, Series
>>> tf1 = TransferFunction(b*s**2 + p**2 - a*p + s, b - p**2, s)
>>> tf2 = TransferFunction(p**2 - 4*p, p**3 + 3*s + 2, s)
>>> tf3 = TransferFunction(s, s**2 + s + 1, s)
>>> S1 = Series(-tf2, tf1)
>>> S1.is_proper
False
>>> S2 = Series(tf1, tf2, tf3)
>>> S2.is_proper
True
property is_strictly_proper

Returns True if degree of the numerator polynomial of the resultant transfer function is strictly less than degree of the denominator polynomial of the same, else False.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction, Series
>>> tf1 = TransferFunction(a*p**2 + b*s, s - p, s)
>>> tf2 = TransferFunction(s**3 - 2, s**2 + 5*s + 6, s)
>>> tf3 = TransferFunction(1, s**2 + s + 1, s)
>>> S1 = Series(tf1, tf2)
>>> S1.is_strictly_proper
False
>>> S2 = Series(tf1, tf2, tf3)
>>> S2.is_strictly_proper
True
to_expr()[source]

Returns the equivalent Expr object.

property var

Returns the complex variable used by all the transfer functions.

Examples

>>> from sympy.abc import p
>>> from sympy.physics.control.lti import TransferFunction, Series, Parallel
>>> G1 = TransferFunction(p**2 + 2*p + 4, p - 6, p)
>>> G2 = TransferFunction(p, 4 - p, p)
>>> G3 = TransferFunction(0, p**4 - 1, p)
>>> Series(G1, G2).var
p
>>> Series(-G3, Parallel(G1, G2)).var
p
class sympy.physics.control.lti.Parallel(*args, evaluate=False)[source]

A class for representing a parallel configuration of SISO systems.

Parameters

args : SISOLinearTimeInvariant

SISO systems in a parallel arrangement.

evaluate : Boolean, Keyword

When passed True, returns the equivalent Parallel(*args).doit(). Set to False by default.

Raises

ValueError

When no argument is passed.

var attribute is not same for every system.

TypeError

Any of the passed *args has unsupported type

A combination of SISO and MIMO systems is passed. There should be homogeneity in the type of systems passed.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction, Parallel, Series
>>> tf1 = TransferFunction(a*p**2 + b*s, s - p, s)
>>> tf2 = TransferFunction(s**3 - 2, s**4 + 5*s + 6, s)
>>> tf3 = TransferFunction(p**2, p + s, s)
>>> P1 = Parallel(tf1, tf2)
>>> P1
Parallel(TransferFunction(a*p**2 + b*s, -p + s, s), TransferFunction(s**3 - 2, s**4 + 5*s + 6, s))
>>> P1.var
s
>>> P2 = Parallel(tf2, Series(tf3, -tf1))
>>> P2
Parallel(TransferFunction(s**3 - 2, s**4 + 5*s + 6, s), Series(TransferFunction(p**2, p + s, s), TransferFunction(-a*p**2 - b*s, -p + s, s)))
>>> P2.var
s
>>> P3 = Parallel(Series(tf1, tf2), Series(tf2, tf3))
>>> P3
Parallel(Series(TransferFunction(a*p**2 + b*s, -p + s, s), TransferFunction(s**3 - 2, s**4 + 5*s + 6, s)), Series(TransferFunction(s**3 - 2, s**4 + 5*s + 6, s), TransferFunction(p**2, p + s, s)))
>>> P3.var
s

You can get the resultant transfer function by using .doit() method:

>>> Parallel(tf1, tf2, -tf3).doit()
TransferFunction(-p**2*(-p + s)*(s**4 + 5*s + 6) + (-p + s)*(p + s)*(s**3 - 2) + (p + s)*(a*p**2 + b*s)*(s**4 + 5*s + 6), (-p + s)*(p + s)*(s**4 + 5*s + 6), s)
>>> Parallel(tf2, Series(tf1, -tf3)).doit()
TransferFunction(-p**2*(a*p**2 + b*s)*(s**4 + 5*s + 6) + (-p + s)*(p + s)*(s**3 - 2), (-p + s)*(p + s)*(s**4 + 5*s + 6), s)

Notes

All the transfer functions should use the same complex variable var of the Laplace transform.

doit(**kwargs)[source]

Returns the resultant transfer function obtained after evaluating the transfer functions in parallel configuration.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction, Parallel
>>> tf1 = TransferFunction(a*p**2 + b*s, s - p, s)
>>> tf2 = TransferFunction(s**3 - 2, s**4 + 5*s + 6, s)
>>> Parallel(tf2, tf1).doit()
TransferFunction((-p + s)*(s**3 - 2) + (a*p**2 + b*s)*(s**4 + 5*s + 6), (-p + s)*(s**4 + 5*s + 6), s)
>>> Parallel(-tf1, -tf2).doit()
TransferFunction((2 - s**3)*(-p + s) + (-a*p**2 - b*s)*(s**4 + 5*s + 6), (-p + s)*(s**4 + 5*s + 6), s)
property is_biproper

Returns True if degree of the numerator polynomial of the resultant transfer function is equal to degree of the denominator polynomial of the same, else False.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction, Parallel
>>> tf1 = TransferFunction(a*p**2 + b*s, s - p, s)
>>> tf2 = TransferFunction(p**2, p + s, s)
>>> tf3 = TransferFunction(s, s**2 + s + 1, s)
>>> P1 = Parallel(tf1, -tf2)
>>> P1.is_biproper
True
>>> P2 = Parallel(tf2, tf3)
>>> P2.is_biproper
False
property is_proper

Returns True if degree of the numerator polynomial of the resultant transfer function is less than or equal to degree of the denominator polynomial of the same, else False.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction, Parallel
>>> tf1 = TransferFunction(b*s**2 + p**2 - a*p + s, b - p**2, s)
>>> tf2 = TransferFunction(p**2 - 4*p, p**3 + 3*s + 2, s)
>>> tf3 = TransferFunction(s, s**2 + s + 1, s)
>>> P1 = Parallel(-tf2, tf1)
>>> P1.is_proper
False
>>> P2 = Parallel(tf2, tf3)
>>> P2.is_proper
True
property is_strictly_proper

Returns True if degree of the numerator polynomial of the resultant transfer function is strictly less than degree of the denominator polynomial of the same, else False.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction, Parallel
>>> tf1 = TransferFunction(a*p**2 + b*s, s - p, s)
>>> tf2 = TransferFunction(s**3 - 2, s**4 + 5*s + 6, s)
>>> tf3 = TransferFunction(s, s**2 + s + 1, s)
>>> P1 = Parallel(tf1, tf2)
>>> P1.is_strictly_proper
False
>>> P2 = Parallel(tf2, tf3)
>>> P2.is_strictly_proper
True
to_expr()[source]

Returns the equivalent Expr object.

property var

Returns the complex variable used by all the transfer functions.

Examples

>>> from sympy.abc import p
>>> from sympy.physics.control.lti import TransferFunction, Parallel, Series
>>> G1 = TransferFunction(p**2 + 2*p + 4, p - 6, p)
>>> G2 = TransferFunction(p, 4 - p, p)
>>> G3 = TransferFunction(0, p**4 - 1, p)
>>> Parallel(G1, G2).var
p
>>> Parallel(-G3, Series(G1, G2)).var
p
class sympy.physics.control.lti.Feedback(sys1, sys2=None, sign=- 1)[source]

A class for representing closed-loop feedback interconnection between two SISO input/output systems.

The first argument, sys1, is the feedforward part of the closed-loop system or in simple words, the dynamical model representing the process to be controlled. The second argument, sys2, is the feedback system and controls the fed back signal to sys1. Both sys1 and sys2 can either be Series or TransferFunction objects.

Parameters

sys1 : Series, TransferFunction

The feedforward path system.

sys2 : Series, TransferFunction, optional

The feedback path system (often a feedback controller). It is the model sitting on the feedback path.

If not specified explicitly, the sys2 is assumed to be unit (1.0) transfer function.

sign : int, optional

The sign of feedback. Can either be 1 (for positive feedback) or -1 (for negative feedback). Default value is \(-1\).

Raises

ValueError

When sys1 and sys2 are not using the same complex variable of the Laplace transform.

When a combination of sys1 and sys2 yields zero denominator.

TypeError

When either sys1 or sys2 is not a Series or a TransferFunction object.

Examples

>>> from sympy.abc import s
>>> from sympy.physics.control.lti import TransferFunction, Feedback
>>> plant = TransferFunction(3*s**2 + 7*s - 3, s**2 - 4*s + 2, s)
>>> controller = TransferFunction(5*s - 10, s + 7, s)
>>> F1 = Feedback(plant, controller)
>>> F1
Feedback(TransferFunction(3*s**2 + 7*s - 3, s**2 - 4*s + 2, s), TransferFunction(5*s - 10, s + 7, s), -1)
>>> F1.var
s
>>> F1.args
(TransferFunction(3*s**2 + 7*s - 3, s**2 - 4*s + 2, s), TransferFunction(5*s - 10, s + 7, s), -1)

You can get the feedforward and feedback path systems by using .sys1 and .sys2 respectively.

>>> F1.sys1
TransferFunction(3*s**2 + 7*s - 3, s**2 - 4*s + 2, s)
>>> F1.sys2
TransferFunction(5*s - 10, s + 7, s)

You can get the resultant closed loop transfer function obtained by negative feedback interconnection using .doit() method.

>>> F1.doit()
TransferFunction((s + 7)*(s**2 - 4*s + 2)*(3*s**2 + 7*s - 3), ((s + 7)*(s**2 - 4*s + 2) + (5*s - 10)*(3*s**2 + 7*s - 3))*(s**2 - 4*s + 2), s)
>>> G = TransferFunction(2*s**2 + 5*s + 1, s**2 + 2*s + 3, s)
>>> C = TransferFunction(5*s + 10, s + 10, s)
>>> F2 = Feedback(G*C, TransferFunction(1, 1, s))
>>> F2.doit()
TransferFunction((s + 10)*(5*s + 10)*(s**2 + 2*s + 3)*(2*s**2 + 5*s + 1), (s + 10)*((s + 10)*(s**2 + 2*s + 3) + (5*s + 10)*(2*s**2 + 5*s + 1))*(s**2 + 2*s + 3), s)

To negate a Feedback object, the - operator can be prepended:

>>> -F1
Feedback(TransferFunction(-3*s**2 - 7*s + 3, s**2 - 4*s + 2, s), TransferFunction(10 - 5*s, s + 7, s), -1)
>>> -F2
Feedback(Series(TransferFunction(-1, 1, s), TransferFunction(2*s**2 + 5*s + 1, s**2 + 2*s + 3, s), TransferFunction(5*s + 10, s + 10, s)), TransferFunction(-1, 1, s), -1)
doit(cancel=False, expand=False, **kwargs)[source]

Returns the resultant transfer function obtained by the feedback interconnection.

Examples

>>> from sympy.abc import s
>>> from sympy.physics.control.lti import TransferFunction, Feedback
>>> plant = TransferFunction(3*s**2 + 7*s - 3, s**2 - 4*s + 2, s)
>>> controller = TransferFunction(5*s - 10, s + 7, s)
>>> F1 = Feedback(plant, controller)
>>> F1.doit()
TransferFunction((s + 7)*(s**2 - 4*s + 2)*(3*s**2 + 7*s - 3), ((s + 7)*(s**2 - 4*s + 2) + (5*s - 10)*(3*s**2 + 7*s - 3))*(s**2 - 4*s + 2), s)
>>> G = TransferFunction(2*s**2 + 5*s + 1, s**2 + 2*s + 3, s)
>>> F2 = Feedback(G, TransferFunction(1, 1, s))
>>> F2.doit()
TransferFunction((s**2 + 2*s + 3)*(2*s**2 + 5*s + 1), (s**2 + 2*s + 3)*(3*s**2 + 7*s + 4), s)

Use kwarg expand=True to expand the resultant transfer function. Use cancel=True to cancel out the common terms in numerator and denominator.

>>> F2.doit(cancel=True, expand=True)
TransferFunction(2*s**2 + 5*s + 1, 3*s**2 + 7*s + 4, s)
>>> F2.doit(expand=True)
TransferFunction(2*s**4 + 9*s**3 + 17*s**2 + 17*s + 3, 3*s**4 + 13*s**3 + 27*s**2 + 29*s + 12, s)
property sensitivity

Returns the sensitivity function of the feedback loop.

Sensitivity of a Feedback system is the ratio of change in the open loop gain to the change in the closed loop gain.

Note

This method would not return the complementary sensitivity function.

Examples

>>> from sympy.abc import p
>>> from sympy.physics.control.lti import TransferFunction, Feedback
>>> C = TransferFunction(5*p + 10, p + 10, p)
>>> P = TransferFunction(1 - p, p + 2, p)
>>> F_1 = Feedback(P, C)
>>> F_1.sensitivity
1/((1 - p)*(5*p + 10)/((p + 2)*(p + 10)) + 1)
property sign

Returns the type of MIMO Feedback model. 1 for Positive and -1 for Negative.

property sys1

Returns the feedforward system of the feedback interconnection.

Examples

>>> from sympy.abc import s, p
>>> from sympy.physics.control.lti import TransferFunction, Feedback
>>> plant = TransferFunction(3*s**2 + 7*s - 3, s**2 - 4*s + 2, s)
>>> controller = TransferFunction(5*s - 10, s + 7, s)
>>> F1 = Feedback(plant, controller)
>>> F1.sys1
TransferFunction(3*s**2 + 7*s - 3, s**2 - 4*s + 2, s)
>>> G = TransferFunction(2*s**2 + 5*s + 1, p**2 + 2*p + 3, p)
>>> C = TransferFunction(5*p + 10, p + 10, p)
>>> P = TransferFunction(1 - s, p + 2, p)
>>> F2 = Feedback(TransferFunction(1, 1, p), G*C*P)
>>> F2.sys1
TransferFunction(1, 1, p)
property sys2

Returns the feedback controller of the feedback interconnection.

Examples

>>> from sympy.abc import s, p
>>> from sympy.physics.control.lti import TransferFunction, Feedback
>>> plant = TransferFunction(3*s**2 + 7*s - 3, s**2 - 4*s + 2, s)
>>> controller = TransferFunction(5*s - 10, s + 7, s)
>>> F1 = Feedback(plant, controller)
>>> F1.sys2
TransferFunction(5*s - 10, s + 7, s)
>>> G = TransferFunction(2*s**2 + 5*s + 1, p**2 + 2*p + 3, p)
>>> C = TransferFunction(5*p + 10, p + 10, p)
>>> P = TransferFunction(1 - s, p + 2, p)
>>> F2 = Feedback(TransferFunction(1, 1, p), G*C*P)
>>> F2.sys2
Series(TransferFunction(2*s**2 + 5*s + 1, p**2 + 2*p + 3, p), TransferFunction(5*p + 10, p + 10, p), TransferFunction(1 - s, p + 2, p))
property var

Returns the complex variable of the Laplace transform used by all the transfer functions involved in the feedback interconnection.

Examples

>>> from sympy.abc import s, p
>>> from sympy.physics.control.lti import TransferFunction, Feedback
>>> plant = TransferFunction(3*s**2 + 7*s - 3, s**2 - 4*s + 2, s)
>>> controller = TransferFunction(5*s - 10, s + 7, s)
>>> F1 = Feedback(plant, controller)
>>> F1.var
s
>>> G = TransferFunction(2*s**2 + 5*s + 1, p**2 + 2*p + 3, p)
>>> C = TransferFunction(5*p + 10, p + 10, p)
>>> P = TransferFunction(1 - s, p + 2, p)
>>> F2 = Feedback(TransferFunction(1, 1, p), G*C*P)
>>> F2.var
p
class sympy.physics.control.lti.TransferFunctionMatrix(arg)[source]

A class for representing the MIMO (multiple-input and multiple-output) generalization of the SISO (single-input and single-output) transfer function.

It is a matrix of transfer functions (TransferFunction, SISO-Series or SISO-Parallel). There is only one argument, arg which is also the compulsory argument. arg is expected to be strictly of the type list of lists which holds the transfer functions or reducible to transfer functions.

Parameters

arg : Nested List (strictly).

Users are expected to input a nested list of TransferFunction, Series and/or Parallel objects.

Examples

Note

pprint() can be used for better visualization of TransferFunctionMatrix objects.

>>> from sympy.abc import s, p, a
>>> from sympy import pprint
>>> from sympy.physics.control.lti import TransferFunction, TransferFunctionMatrix, Series, Parallel
>>> tf_1 = TransferFunction(s + a, s**2 + s + 1, s)
>>> tf_2 = TransferFunction(p**4 - 3*p + 2, s + p, s)
>>> tf_3 = TransferFunction(3, s + 2, s)
>>> tf_4 = TransferFunction(-a + p, 9*s - 9, s)
>>> tfm_1 = TransferFunctionMatrix([[tf_1], [tf_2], [tf_3]])
>>> tfm_1
TransferFunctionMatrix(((TransferFunction(a + s, s**2 + s + 1, s),), (TransferFunction(p**4 - 3*p + 2, p + s, s),), (TransferFunction(3, s + 2, s),)))
>>> tfm_1.var
s
>>> tfm_1.num_inputs
1
>>> tfm_1.num_outputs
3
>>> tfm_1.shape
(3, 1)
>>> tfm_1.args
(((TransferFunction(a + s, s**2 + s + 1, s),), (TransferFunction(p**4 - 3*p + 2, p + s, s),), (TransferFunction(3, s + 2, s),)),)
>>> tfm_2 = TransferFunctionMatrix([[tf_1, -tf_3], [tf_2, -tf_1], [tf_3, -tf_2]])
>>> tfm_2
TransferFunctionMatrix(((TransferFunction(a + s, s**2 + s + 1, s), TransferFunction(-3, s + 2, s)), (TransferFunction(p**4 - 3*p + 2, p + s, s), TransferFunction(-a - s, s**2 + s + 1, s)), (TransferFunction(3, s + 2, s), TransferFunction(-p**4 + 3*p - 2, p + s, s))))
>>> pprint(tfm_2, use_unicode=False)  # pretty-printing for better visualization
[   a + s           -3       ]
[ ----------       -----     ]
[  2               s + 2     ]
[ s  + s + 1                 ]
[                            ]
[ 4                          ]
[p  - 3*p + 2      -a - s    ]
[------------    ----------  ]
[   p + s         2          ]
[                s  + s + 1  ]
[                            ]
[                 4          ]
[     3        - p  + 3*p - 2]
[   -----      --------------]
[   s + 2          p + s     ]{t}

TransferFunctionMatrix can be transposed, if user wants to switch the input and output transfer functions

>>> tfm_2.transpose()
TransferFunctionMatrix(((TransferFunction(a + s, s**2 + s + 1, s), TransferFunction(p**4 - 3*p + 2, p + s, s), TransferFunction(3, s + 2, s)), (TransferFunction(-3, s + 2, s), TransferFunction(-a - s, s**2 + s + 1, s), TransferFunction(-p**4 + 3*p - 2, p + s, s))))
>>> pprint(_, use_unicode=False)
[             4                          ]
[  a + s     p  - 3*p + 2        3       ]
[----------  ------------      -----     ]
[ 2             p + s          s + 2     ]
[s  + s + 1                              ]
[                                        ]
[                             4          ]
[   -3          -a - s     - p  + 3*p - 2]
[  -----      ----------   --------------]
[  s + 2       2               p + s     ]
[             s  + s + 1                 ]{t}
>>> tf_5 = TransferFunction(5, s, s)
>>> tf_6 = TransferFunction(5*s, (2 + s**2), s)
>>> tf_7 = TransferFunction(5, (s*(2 + s**2)), s)
>>> tf_8 = TransferFunction(5, 1, s)
>>> tfm_3 = TransferFunctionMatrix([[tf_5, tf_6], [tf_7, tf_8]])
>>> tfm_3
TransferFunctionMatrix(((TransferFunction(5, s, s), TransferFunction(5*s, s**2 + 2, s)), (TransferFunction(5, s*(s**2 + 2), s), TransferFunction(5, 1, s))))
>>> pprint(tfm_3, use_unicode=False)
[    5        5*s  ]
[    -       ------]
[    s        2    ]
[            s  + 2]
[                  ]
[    5         5   ]
[----------    -   ]
[  / 2    \    1   ]
[s*\s  + 2/        ]{t}
>>> tfm_3.var
s
>>> tfm_3.shape
(2, 2)
>>> tfm_3.num_outputs
2
>>> tfm_3.num_inputs
2
>>> tfm_3.args
(((TransferFunction(5, s, s), TransferFunction(5*s, s**2 + 2, s)), (TransferFunction(5, s*(s**2 + 2), s), TransferFunction(5, 1, s))),)

To access the TransferFunction at any index in the TransferFunctionMatrix, use the index notation.

>>> tfm_3[1, 0]  # gives the TransferFunction present at 2nd Row and 1st Col. Similar to that in Matrix classes
TransferFunction(5, s*(s**2 + 2), s)
>>> tfm_3[0, 0]  # gives the TransferFunction present at 1st Row and 1st Col.
TransferFunction(5, s, s)
>>> tfm_3[:, 0]  # gives the first column
TransferFunctionMatrix(((TransferFunction(5, s, s),), (TransferFunction(5, s*(s**2 + 2), s),)))
>>> pprint(_, use_unicode=False)
[    5     ]
[    -     ]
[    s     ]
[          ]
[    5     ]
[----------]
[  / 2    \]
[s*\s  + 2/]{t}
>>> tfm_3[0, :]  # gives the first row
TransferFunctionMatrix(((TransferFunction(5, s, s), TransferFunction(5*s, s**2 + 2, s)),))
>>> pprint(_, use_unicode=False)
[5   5*s  ]
[-  ------]
[s   2    ]
[   s  + 2]{t}

To negate a transfer function matrix, - operator can be prepended:

>>> tfm_4 = TransferFunctionMatrix([[tf_2], [-tf_1], [tf_3]])
>>> -tfm_4
TransferFunctionMatrix(((TransferFunction(-p**4 + 3*p - 2, p + s, s),), (TransferFunction(a + s, s**2 + s + 1, s),), (TransferFunction(-3, s + 2, s),)))
>>> tfm_5 = TransferFunctionMatrix([[tf_1, tf_2], [tf_3, -tf_1]])
>>> -tfm_5
TransferFunctionMatrix(((TransferFunction(-a - s, s**2 + s + 1, s), TransferFunction(-p**4 + 3*p - 2, p + s, s)), (TransferFunction(-3, s + 2, s), TransferFunction(a + s, s**2 + s + 1, s))))

subs() returns the TransferFunctionMatrix object with the value substituted in the expression. This will not mutate your original TransferFunctionMatrix.

>>> tfm_2.subs(p, 2)  #  substituting p everywhere in tfm_2 with 2.
TransferFunctionMatrix(((TransferFunction(a + s, s**2 + s + 1, s), TransferFunction(-3, s + 2, s)), (TransferFunction(12, s + 2, s), TransferFunction(-a - s, s**2 + s + 1, s)), (TransferFunction(3, s + 2, s), TransferFunction(-12, s + 2, s))))
>>> pprint(_, use_unicode=False)
[  a + s        -3     ]
[----------    -----   ]
[ 2            s + 2   ]
[s  + s + 1            ]
[                      ]
[    12        -a - s  ]
[  -----     ----------]
[  s + 2      2        ]
[            s  + s + 1]
[                      ]
[    3          -12    ]
[  -----       -----   ]
[  s + 2       s + 2   ]{t}
>>> pprint(tfm_2, use_unicode=False) # State of tfm_2 is unchanged after substitution
[   a + s           -3       ]
[ ----------       -----     ]
[  2               s + 2     ]
[ s  + s + 1                 ]
[                            ]
[ 4                          ]
[p  - 3*p + 2      -a - s    ]
[------------    ----------  ]
[   p + s         2          ]
[                s  + s + 1  ]
[                            ]
[                 4          ]
[     3        - p  + 3*p - 2]
[   -----      --------------]
[   s + 2          p + s     ]{t}

subs() also supports multiple substitutions.

>>> tfm_2.subs({p: 2, a: 1})  # substituting p with 2 and a with 1
TransferFunctionMatrix(((TransferFunction(s + 1, s**2 + s + 1, s), TransferFunction(-3, s + 2, s)), (TransferFunction(12, s + 2, s), TransferFunction(-s - 1, s**2 + s + 1, s)), (TransferFunction(3, s + 2, s), TransferFunction(-12, s + 2, s))))
>>> pprint(_, use_unicode=False)
[  s + 1        -3     ]
[----------    -----   ]
[ 2            s + 2   ]
[s  + s + 1            ]
[                      ]
[    12        -s - 1  ]
[  -----     ----------]
[  s + 2      2        ]
[            s  + s + 1]
[                      ]
[    3          -12    ]
[  -----       -----   ]
[  s + 2       s + 2   ]{t}

Users can reduce the Series and Parallel elements of the matrix to TransferFunction by using doit().

>>> tfm_6 = TransferFunctionMatrix([[Series(tf_3, tf_4), Parallel(tf_3, tf_4)]])
>>> tfm_6
TransferFunctionMatrix(((Series(TransferFunction(3, s + 2, s), TransferFunction(-a + p, 9*s - 9, s)), Parallel(TransferFunction(3, s + 2, s), TransferFunction(-a + p, 9*s - 9, s))),))
>>> pprint(tfm_6, use_unicode=False)
[ -a + p   3     -a + p     3  ]
[-------*-----  ------- + -----]
[9*s - 9 s + 2  9*s - 9   s + 2]{t}
>>> tfm_6.doit()
TransferFunctionMatrix(((TransferFunction(-3*a + 3*p, (s + 2)*(9*s - 9), s), TransferFunction(27*s + (-a + p)*(s + 2) - 27, (s + 2)*(9*s - 9), s)),))
>>> pprint(_, use_unicode=False)
[    -3*a + 3*p     27*s + (-a + p)*(s + 2) - 27]
[-----------------  ----------------------------]
[(s + 2)*(9*s - 9)       (s + 2)*(9*s - 9)      ]{t}
>>> tf_9 = TransferFunction(1, s, s)
>>> tf_10 = TransferFunction(1, s**2, s)
>>> tfm_7 = TransferFunctionMatrix([[Series(tf_9, tf_10), tf_9], [tf_10, Parallel(tf_9, tf_10)]])
>>> tfm_7
TransferFunctionMatrix(((Series(TransferFunction(1, s, s), TransferFunction(1, s**2, s)), TransferFunction(1, s, s)), (TransferFunction(1, s**2, s), Parallel(TransferFunction(1, s, s), TransferFunction(1, s**2, s)))))
>>> pprint(tfm_7, use_unicode=False)
[ 1      1   ]
[----    -   ]
[   2    s   ]
[s*s         ]
[            ]
[ 1    1    1]
[ --   -- + -]
[  2    2   s]
[ s    s     ]{t}
>>> tfm_7.doit()
TransferFunctionMatrix(((TransferFunction(1, s**3, s), TransferFunction(1, s, s)), (TransferFunction(1, s**2, s), TransferFunction(s**2 + s, s**3, s))))
>>> pprint(_, use_unicode=False)
[1     1   ]
[--    -   ]
[ 3    s   ]
[s         ]
[          ]
[     2    ]
[1   s  + s]
[--  ------]
[ 2     3  ]
[s     s   ]{t}

Addition, subtraction, and multiplication of transfer function matrices can form unevaluated Series or Parallel objects.

  • For addition and subtraction: All the transfer function matrices must have the same shape.

  • For multiplication (C = A * B): The number of inputs of the first transfer function matrix (A) must be equal to the number of outputs of the second transfer function matrix (B).

Also, use pretty-printing (pprint) to analyse better.

>>> tfm_8 = TransferFunctionMatrix([[tf_3], [tf_2], [-tf_1]])
>>> tfm_9 = TransferFunctionMatrix([[-tf_3]])
>>> tfm_10 = TransferFunctionMatrix([[tf_1], [tf_2], [tf_4]])
>>> tfm_11 = TransferFunctionMatrix([[tf_4], [-tf_1]])
>>> tfm_12 = TransferFunctionMatrix([[tf_4, -tf_1, tf_3], [-tf_2, -tf_4, -tf_3]])
>>> tfm_8 + tfm_10
MIMOParallel(TransferFunctionMatrix(((TransferFunction(3, s + 2, s),), (TransferFunction(p**4 - 3*p + 2, p + s, s),), (TransferFunction(-a - s, s**2 + s + 1, s),))), TransferFunctionMatrix(((TransferFunction(a + s, s**2 + s + 1, s),), (TransferFunction(p**4 - 3*p + 2, p + s, s),), (TransferFunction(-a + p, 9*s - 9, s),))))
>>> pprint(_, use_unicode=False)
[     3      ]      [   a + s    ]
[   -----    ]      [ ---------- ]
[   s + 2    ]      [  2         ]
[            ]      [ s  + s + 1 ]
[ 4          ]      [            ]
[p  - 3*p + 2]      [ 4          ]
[------------]    + [p  - 3*p + 2]
[   p + s    ]      [------------]
[            ]      [   p + s    ]
[   -a - s   ]      [            ]
[ ---------- ]      [   -a + p   ]
[  2         ]      [  -------   ]
[ s  + s + 1 ]{t}   [  9*s - 9   ]{t}
>>> -tfm_10 - tfm_8
MIMOParallel(TransferFunctionMatrix(((TransferFunction(-a - s, s**2 + s + 1, s),), (TransferFunction(-p**4 + 3*p - 2, p + s, s),), (TransferFunction(a - p, 9*s - 9, s),))), TransferFunctionMatrix(((TransferFunction(-3, s + 2, s),), (TransferFunction(-p**4 + 3*p - 2, p + s, s),), (TransferFunction(a + s, s**2 + s + 1, s),))))
>>> pprint(_, use_unicode=False)
[    -a - s    ]      [     -3       ]
[  ----------  ]      [    -----     ]
[   2          ]      [    s + 2     ]
[  s  + s + 1  ]      [              ]
[              ]      [   4          ]
[   4          ]      [- p  + 3*p - 2]
[- p  + 3*p - 2]    + [--------------]
[--------------]      [    p + s     ]
[    p + s     ]      [              ]
[              ]      [    a + s     ]
[    a - p     ]      [  ----------  ]
[   -------    ]      [   2          ]
[   9*s - 9    ]{t}   [  s  + s + 1  ]{t}
>>> tfm_12 * tfm_8
MIMOSeries(TransferFunctionMatrix(((TransferFunction(3, s + 2, s),), (TransferFunction(p**4 - 3*p + 2, p + s, s),), (TransferFunction(-a - s, s**2 + s + 1, s),))), TransferFunctionMatrix(((TransferFunction(-a + p, 9*s - 9, s), TransferFunction(-a - s, s**2 + s + 1, s), TransferFunction(3, s + 2, s)), (TransferFunction(-p**4 + 3*p - 2, p + s, s), TransferFunction(a - p, 9*s - 9, s), TransferFunction(-3, s + 2, s)))))
>>> pprint(_, use_unicode=False)
                                       [     3      ]
                                       [   -----    ]
[    -a + p        -a - s      3  ]    [   s + 2    ]
[   -------      ----------  -----]    [            ]
[   9*s - 9       2          s + 2]    [ 4          ]
[                s  + s + 1       ]    [p  - 3*p + 2]
[                                 ]   *[------------]
[   4                             ]    [   p + s    ]
[- p  + 3*p - 2    a - p      -3  ]    [            ]
[--------------   -------    -----]    [   -a - s   ]
[    p + s        9*s - 9    s + 2]{t} [ ---------- ]
                                       [  2         ]
                                       [ s  + s + 1 ]{t}
>>> tfm_12 * tfm_8 * tfm_9
MIMOSeries(TransferFunctionMatrix(((TransferFunction(-3, s + 2, s),),)), TransferFunctionMatrix(((TransferFunction(3, s + 2, s),), (TransferFunction(p**4 - 3*p + 2, p + s, s),), (TransferFunction(-a - s, s**2 + s + 1, s),))), TransferFunctionMatrix(((TransferFunction(-a + p, 9*s - 9, s), TransferFunction(-a - s, s**2 + s + 1, s), TransferFunction(3, s + 2, s)), (TransferFunction(-p**4 + 3*p - 2, p + s, s), TransferFunction(a - p, 9*s - 9, s), TransferFunction(-3, s + 2, s)))))
>>> pprint(_, use_unicode=False)
                                       [     3      ]
                                       [   -----    ]
[    -a + p        -a - s      3  ]    [   s + 2    ]
[   -------      ----------  -----]    [            ]
[   9*s - 9       2          s + 2]    [ 4          ]
[                s  + s + 1       ]    [p  - 3*p + 2]    [ -3  ]
[                                 ]   *[------------]   *[-----]
[   4                             ]    [   p + s    ]    [s + 2]{t}
[- p  + 3*p - 2    a - p      -3  ]    [            ]
[--------------   -------    -----]    [   -a - s   ]
[    p + s        9*s - 9    s + 2]{t} [ ---------- ]
                                       [  2         ]
                                       [ s  + s + 1 ]{t}
>>> tfm_10 + tfm_8*tfm_9
MIMOParallel(TransferFunctionMatrix(((TransferFunction(a + s, s**2 + s + 1, s),), (TransferFunction(p**4 - 3*p + 2, p + s, s),), (TransferFunction(-a + p, 9*s - 9, s),))), MIMOSeries(TransferFunctionMatrix(((TransferFunction(-3, s + 2, s),),)), TransferFunctionMatrix(((TransferFunction(3, s + 2, s),), (TransferFunction(p**4 - 3*p + 2, p + s, s),), (TransferFunction(-a - s, s**2 + s + 1, s),)))))
>>> pprint(_, use_unicode=False)
[   a + s    ]      [     3      ]
[ ---------- ]      [   -----    ]
[  2         ]      [   s + 2    ]
[ s  + s + 1 ]      [            ]
[            ]      [ 4          ]
[ 4          ]      [p  - 3*p + 2]    [ -3  ]
[p  - 3*p + 2]    + [------------]   *[-----]
[------------]      [   p + s    ]    [s + 2]{t}
[   p + s    ]      [            ]
[            ]      [   -a - s   ]
[   -a + p   ]      [ ---------- ]
[  -------   ]      [  2         ]
[  9*s - 9   ]{t}   [ s  + s + 1 ]{t}

These unevaluated Series or Parallel objects can convert into the resultant transfer function matrix using .doit() method or by .rewrite(TransferFunctionMatrix).

>>> (-tfm_8 + tfm_10 + tfm_8*tfm_9).doit()
TransferFunctionMatrix(((TransferFunction((a + s)*(s + 2)**3 - 3*(s + 2)**2*(s**2 + s + 1) - 9*(s + 2)*(s**2 + s + 1), (s + 2)**3*(s**2 + s + 1), s),), (TransferFunction((p + s)*(-3*p**4 + 9*p - 6), (p + s)**2*(s + 2), s),), (TransferFunction((-a + p)*(s + 2)*(s**2 + s + 1)**2 + (a + s)*(s + 2)*(9*s - 9)*(s**2 + s + 1) + (3*a + 3*s)*(9*s - 9)*(s**2 + s + 1), (s + 2)*(9*s - 9)*(s**2 + s + 1)**2, s),)))
>>> (-tfm_12 * -tfm_8 * -tfm_9).rewrite(TransferFunctionMatrix)
TransferFunctionMatrix(((TransferFunction(3*(-3*a + 3*p)*(p + s)*(s + 2)*(s**2 + s + 1)**2 + 3*(-3*a - 3*s)*(p + s)*(s + 2)*(9*s - 9)*(s**2 + s + 1) + 3*(a + s)*(s + 2)**2*(9*s - 9)*(-p**4 + 3*p - 2)*(s**2 + s + 1), (p + s)*(s + 2)**3*(9*s - 9)*(s**2 + s + 1)**2, s),), (TransferFunction(3*(-a + p)*(p + s)*(s + 2)**2*(-p**4 + 3*p - 2)*(s**2 + s + 1) + 3*(3*a + 3*s)*(p + s)**2*(s + 2)*(9*s - 9) + 3*(p + s)*(s + 2)*(9*s - 9)*(-3*p**4 + 9*p - 6)*(s**2 + s + 1), (p + s)**2*(s + 2)**3*(9*s - 9)*(s**2 + s + 1), s),)))
elem_poles()[source]

Returns the poles of each element of the TransferFunctionMatrix.

Note

Actual poles of a MIMO system are NOT the poles of individual elements.

Examples

>>> from sympy.abc import s
>>> from sympy.physics.control.lti import TransferFunction, TransferFunctionMatrix
>>> tf_1 = TransferFunction(3, (s + 1), s)
>>> tf_2 = TransferFunction(s + 6, (s + 1)*(s + 2), s)
>>> tf_3 = TransferFunction(s + 3, s**2 + 3*s + 2, s)
>>> tf_4 = TransferFunction(s + 2, s**2 + 5*s - 10, s)
>>> tfm_1 = TransferFunctionMatrix([[tf_1, tf_2], [tf_3, tf_4]])
>>> tfm_1
TransferFunctionMatrix(((TransferFunction(3, s + 1, s), TransferFunction(s + 6, (s + 1)*(s + 2), s)), (TransferFunction(s + 3, s**2 + 3*s + 2, s), TransferFunction(s + 2, s**2 + 5*s - 10, s))))
>>> tfm_1.elem_poles()
[[[-1], [-2, -1]], [[-2, -1], [-5/2 + sqrt(65)/2, -sqrt(65)/2 - 5/2]]]

See also

elem_zeros

elem_zeros()[source]

Returns the zeros of each element of the TransferFunctionMatrix.

Note

Actual zeros of a MIMO system are NOT the zeros of individual elements.

Examples

>>> from sympy.abc import s
>>> from sympy.physics.control.lti import TransferFunction, TransferFunctionMatrix
>>> tf_1 = TransferFunction(3, (s + 1), s)
>>> tf_2 = TransferFunction(s + 6, (s + 1)*(s + 2), s)
>>> tf_3 = TransferFunction(s + 3, s**2 + 3*s + 2, s)
>>> tf_4 = TransferFunction(s**2 - 9*s + 20, s**2 + 5*s - 10, s)
>>> tfm_1 = TransferFunctionMatrix([[tf_1, tf_2], [tf_3, tf_4]])
>>> tfm_1
TransferFunctionMatrix(((TransferFunction(3, s + 1, s), TransferFunction(s + 6, (s + 1)*(s + 2), s)), (TransferFunction(s + 3, s**2 + 3*s + 2, s), TransferFunction(s**2 - 9*s + 20, s**2 + 5*s - 10, s))))
>>> tfm_1.elem_zeros()
[[[], [-6]], [[-3], [4, 5]]]

See also

elem_poles

expand(**hints)[source]

Expands the transfer function matrix

classmethod from_Matrix(matrix, var)[source]

Creates a new TransferFunctionMatrix efficiently from a SymPy Matrix of Expr objects.

Parameters

matrix : ImmutableMatrix having Expr/Number elements.

var : Symbol

Complex variable of the Laplace transform which will be used by the all the TransferFunction objects in the TransferFunctionMatrix.

Examples

>>> from sympy.abc import s
>>> from sympy.physics.control.lti import TransferFunctionMatrix
>>> from sympy import Matrix, pprint
>>> M = Matrix([[s, 1/s], [1/(s+1), s]])
>>> M_tf = TransferFunctionMatrix.from_Matrix(M, s)
>>> pprint(M_tf, use_unicode=False)
[  s    1]
[  -    -]
[  1    s]
[        ]
[  1    s]
[-----  -]
[s + 1  1]{t}
>>> M_tf.elem_poles()
[[[], [0]], [[-1], []]]
>>> M_tf.elem_zeros()
[[[0], []], [[], [0]]]
property num_inputs

Returns the number of inputs of the system.

Examples

>>> from sympy.abc import s, p
>>> from sympy.physics.control.lti import TransferFunction, TransferFunctionMatrix
>>> G1 = TransferFunction(s + 3, s**2 - 3, s)
>>> G2 = TransferFunction(4, s**2, s)
>>> G3 = TransferFunction(p**2 + s**2, p - 3, s)
>>> tfm_1 = TransferFunctionMatrix([[G2, -G1, G3], [-G2, -G1, -G3]])
>>> tfm_1.num_inputs
3

See also

num_outputs

property num_outputs

Returns the number of outputs of the system.

Examples

>>> from sympy.abc import s
>>> from sympy.physics.control.lti import TransferFunctionMatrix
>>> from sympy import Matrix
>>> M_1 = Matrix([[s], [1/s]])
>>> TFM = TransferFunctionMatrix.from_Matrix(M_1, s)
>>> print(TFM)
TransferFunctionMatrix(((TransferFunction(s, 1, s),), (TransferFunction(1, s, s),)))
>>> TFM.num_outputs
2

See also

num_inputs

property shape

Returns the shape of the transfer function matrix, that is, (# of outputs, # of inputs).

Examples

>>> from sympy.abc import s, p
>>> from sympy.physics.control.lti import TransferFunction, TransferFunctionMatrix
>>> tf1 = TransferFunction(p**2 - 1, s**4 + s**3 - p, p)
>>> tf2 = TransferFunction(1 - p, p**2 - 3*p + 7, p)
>>> tf3 = TransferFunction(3, 4, p)
>>> tfm1 = TransferFunctionMatrix([[tf1, -tf2]])
>>> tfm1.shape
(1, 2)
>>> tfm2 = TransferFunctionMatrix([[-tf2, tf3], [tf1, -tf1]])
>>> tfm2.shape
(2, 2)
transpose()[source]

Returns the transpose of the TransferFunctionMatrix (switched input and output layers).

property var

Returns the complex variable used by all the transfer functions or Series/Parallel objects in a transfer function matrix.

Examples

>>> from sympy.abc import p, s
>>> from sympy.physics.control.lti import TransferFunction, TransferFunctionMatrix, Series, Parallel
>>> G1 = TransferFunction(p**2 + 2*p + 4, p - 6, p)
>>> G2 = TransferFunction(p, 4 - p, p)
>>> G3 = TransferFunction(0, p**4 - 1, p)
>>> G4 = TransferFunction(s + 1, s**2 + s + 1, s)
>>> S1 = Series(G1, G2)
>>> S2 = Series(-G3, Parallel(G2, -G1))
>>> tfm1 = TransferFunctionMatrix([[G1], [G2], [G3]])
>>> tfm1.var
p
>>> tfm2 = TransferFunctionMatrix([[-S1, -S2], [S1, S2]])
>>> tfm2.var
p
>>> tfm3 = TransferFunctionMatrix([[G4]])
>>> tfm3.var
s
class sympy.physics.control.lti.MIMOSeries(*args, evaluate=False)[source]

A class for representing a series configuration of MIMO systems.

Parameters

args : MIMOLinearTimeInvariant

MIMO systems in a series configuration.

evaluate : Boolean, Keyword

When passed True, returns the equivalent MIMOSeries(*args).doit(). Set to False by default.

Raises

ValueError

When no argument is passed.

var attribute is not same for every system.

num_outputs of the MIMO system is not equal to the num_inputs of its adjacent MIMO system. (Matrix multiplication constraint, basically)

TypeError

Any of the passed *args has unsupported type

A combination of SISO and MIMO systems is passed. There should be homogeneity in the type of systems passed, MIMO in this case.

Examples

>>> from sympy.abc import s
>>> from sympy.physics.control.lti import MIMOSeries, TransferFunctionMatrix
>>> from sympy import Matrix, pprint
>>> mat_a = Matrix([[5*s], [5]])  # 2 Outputs 1 Input
>>> mat_b = Matrix([[5, 1/(6*s**2)]])  # 1 Output 2 Inputs
>>> mat_c = Matrix([[1, s], [5/s, 1]])  # 2 Outputs 2 Inputs
>>> tfm_a = TransferFunctionMatrix.from_Matrix(mat_a, s)
>>> tfm_b = TransferFunctionMatrix.from_Matrix(mat_b, s)
>>> tfm_c = TransferFunctionMatrix.from_Matrix(mat_c, s)
>>> MIMOSeries(tfm_c, tfm_b, tfm_a)
MIMOSeries(TransferFunctionMatrix(((TransferFunction(1, 1, s), TransferFunction(s, 1, s)), (TransferFunction(5, s, s), TransferFunction(1, 1, s)))), TransferFunctionMatrix(((TransferFunction(5, 1, s), TransferFunction(1, 6*s**2, s)),)), TransferFunctionMatrix(((TransferFunction(5*s, 1, s),), (TransferFunction(5, 1, s),))))
>>> pprint(_, use_unicode=False)  #  For Better Visualization
[5*s]                 [1  s]
[---]    [5   1  ]    [-  -]
[ 1 ]    [-  ----]    [1  1]
[   ]   *[1     2]   *[    ]
[ 5 ]    [   6*s ]{t} [5  1]
[ - ]                 [-  -]
[ 1 ]{t}              [s  1]{t}
>>> MIMOSeries(tfm_c, tfm_b, tfm_a).doit()
TransferFunctionMatrix(((TransferFunction(150*s**4 + 25*s, 6*s**3, s), TransferFunction(150*s**4 + 5*s, 6*s**2, s)), (TransferFunction(150*s**3 + 25, 6*s**3, s), TransferFunction(150*s**3 + 5, 6*s**2, s))))
>>> pprint(_, use_unicode=False)  # (2 Inputs -A-> 2 Outputs) -> (2 Inputs -B-> 1 Output) -> (1 Input -C-> 2 Outputs) is equivalent to (2 Inputs -Series Equivalent-> 2 Outputs).
[     4              4      ]
[150*s  + 25*s  150*s  + 5*s]
[-------------  ------------]
[        3             2    ]
[     6*s           6*s     ]
[                           ]
[      3              3     ]
[ 150*s  + 25    150*s  + 5 ]
[ -----------    ---------- ]
[        3             2    ]
[     6*s           6*s     ]{t}

Notes

All the transfer function matrices should use the same complex variable var of the Laplace transform.

MIMOSeries(A, B) is not equivalent to A*B. It is always in the reverse order, that is B*A.

See also

Series, MIMOParallel

doit(cancel=False, **kwargs)[source]

Returns the resultant transfer function matrix obtained after evaluating the MIMO systems arranged in a series configuration.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction, MIMOSeries, TransferFunctionMatrix
>>> tf1 = TransferFunction(a*p**2 + b*s, s - p, s)
>>> tf2 = TransferFunction(s**3 - 2, s**4 + 5*s + 6, s)
>>> tfm1 = TransferFunctionMatrix([[tf1, tf2], [tf2, tf2]])
>>> tfm2 = TransferFunctionMatrix([[tf2, tf1], [tf1, tf1]])
>>> MIMOSeries(tfm2, tfm1).doit()
TransferFunctionMatrix(((TransferFunction(2*(-p + s)*(s**3 - 2)*(a*p**2 + b*s)*(s**4 + 5*s + 6), (-p + s)**2*(s**4 + 5*s + 6)**2, s), TransferFunction((-p + s)**2*(s**3 - 2)*(a*p**2 + b*s) + (-p + s)*(a*p**2 + b*s)**2*(s**4 + 5*s + 6), (-p + s)**3*(s**4 + 5*s + 6), s)), (TransferFunction((-p + s)*(s**3 - 2)**2*(s**4 + 5*s + 6) + (s**3 - 2)*(a*p**2 + b*s)*(s**4 + 5*s + 6)**2, (-p + s)*(s**4 + 5*s + 6)**3, s), TransferFunction(2*(s**3 - 2)*(a*p**2 + b*s), (-p + s)*(s**4 + 5*s + 6), s))))
property num_inputs

Returns the number of input signals of the series system.

property num_outputs

Returns the number of output signals of the series system.

property shape

Returns the shape of the equivalent MIMO system.

property var

Returns the complex variable used by all the transfer functions.

Examples

>>> from sympy.abc import p
>>> from sympy.physics.control.lti import TransferFunction, MIMOSeries, TransferFunctionMatrix
>>> G1 = TransferFunction(p**2 + 2*p + 4, p - 6, p)
>>> G2 = TransferFunction(p, 4 - p, p)
>>> G3 = TransferFunction(0, p**4 - 1, p)
>>> tfm_1 = TransferFunctionMatrix([[G1, G2, G3]])
>>> tfm_2 = TransferFunctionMatrix([[G1], [G2], [G3]])
>>> MIMOSeries(tfm_2, tfm_1).var
p
class sympy.physics.control.lti.MIMOParallel(*args, evaluate=False)[source]

A class for representing a parallel configuration of MIMO systems.

Parameters

args : MIMOLinearTimeInvariant

MIMO Systems in a parallel arrangement.

evaluate : Boolean, Keyword

When passed True, returns the equivalent MIMOParallel(*args).doit(). Set to False by default.

Raises

ValueError

When no argument is passed.

var attribute is not same for every system.

All MIMO systems passed do not have same shape.

TypeError

Any of the passed *args has unsupported type

A combination of SISO and MIMO systems is passed. There should be homogeneity in the type of systems passed, MIMO in this case.

Examples

>>> from sympy.abc import s
>>> from sympy.physics.control.lti import TransferFunctionMatrix, MIMOParallel
>>> from sympy import Matrix, pprint
>>> expr_1 = 1/s
>>> expr_2 = s/(s**2-1)
>>> expr_3 = (2 + s)/(s**2 - 1)
>>> expr_4 = 5
>>> tfm_a = TransferFunctionMatrix.from_Matrix(Matrix([[expr_1, expr_2], [expr_3, expr_4]]), s)
>>> tfm_b = TransferFunctionMatrix.from_Matrix(Matrix([[expr_2, expr_1], [expr_4, expr_3]]), s)
>>> tfm_c = TransferFunctionMatrix.from_Matrix(Matrix([[expr_3, expr_4], [expr_1, expr_2]]), s)
>>> MIMOParallel(tfm_a, tfm_b, tfm_c)
MIMOParallel(TransferFunctionMatrix(((TransferFunction(1, s, s), TransferFunction(s, s**2 - 1, s)), (TransferFunction(s + 2, s**2 - 1, s), TransferFunction(5, 1, s)))), TransferFunctionMatrix(((TransferFunction(s, s**2 - 1, s), TransferFunction(1, s, s)), (TransferFunction(5, 1, s), TransferFunction(s + 2, s**2 - 1, s)))), TransferFunctionMatrix(((TransferFunction(s + 2, s**2 - 1, s), TransferFunction(5, 1, s)), (TransferFunction(1, s, s), TransferFunction(s, s**2 - 1, s)))))
>>> pprint(_, use_unicode=False)  #  For Better Visualization
[  1       s   ]      [  s       1   ]      [s + 2     5   ]
[  -     ------]      [------    -   ]      [------    -   ]
[  s      2    ]      [ 2        s   ]      [ 2        1   ]
[        s  - 1]      [s  - 1        ]      [s  - 1        ]
[              ]    + [              ]    + [              ]
[s + 2     5   ]      [  5     s + 2 ]      [  1       s   ]
[------    -   ]      [  -     ------]      [  -     ------]
[ 2        1   ]      [  1      2    ]      [  s      2    ]
[s  - 1        ]{t}   [        s  - 1]{t}   [        s  - 1]{t}
>>> MIMOParallel(tfm_a, tfm_b, tfm_c).doit()
TransferFunctionMatrix(((TransferFunction(s**2 + s*(2*s + 2) - 1, s*(s**2 - 1), s), TransferFunction(2*s**2 + 5*s*(s**2 - 1) - 1, s*(s**2 - 1), s)), (TransferFunction(s**2 + s*(s + 2) + 5*s*(s**2 - 1) - 1, s*(s**2 - 1), s), TransferFunction(5*s**2 + 2*s - 3, s**2 - 1, s))))
>>> pprint(_, use_unicode=False)
[       2                              2       / 2    \    ]
[      s  + s*(2*s + 2) - 1         2*s  + 5*s*\s  - 1/ - 1]
[      --------------------         -----------------------]
[             / 2    \                       / 2    \      ]
[           s*\s  - 1/                     s*\s  - 1/      ]
[                                                          ]
[ 2                   / 2    \             2               ]
[s  + s*(s + 2) + 5*s*\s  - 1/ - 1      5*s  + 2*s - 3     ]
[---------------------------------      --------------     ]
[              / 2    \                      2             ]
[            s*\s  - 1/                     s  - 1         ]{t}

Notes

All the transfer function matrices should use the same complex variable var of the Laplace transform.

See also

Parallel, MIMOSeries

doit(**kwargs)[source]

Returns the resultant transfer function matrix obtained after evaluating the MIMO systems arranged in a parallel configuration.

Examples

>>> from sympy.abc import s, p, a, b
>>> from sympy.physics.control.lti import TransferFunction, MIMOParallel, TransferFunctionMatrix
>>> tf1 = TransferFunction(a*p**2 + b*s, s - p, s)
>>> tf2 = TransferFunction(s**3 - 2, s**4 + 5*s + 6, s)
>>> tfm_1 = TransferFunctionMatrix([[tf1, tf2], [tf2, tf1]])
>>> tfm_2 = TransferFunctionMatrix([[tf2, tf1], [tf1, tf2]])
>>> MIMOParallel(tfm_1, tfm_2).doit()
TransferFunctionMatrix(((TransferFunction((-p + s)*(s**3 - 2) + (a*p**2 + b*s)*(s**4 + 5*s + 6), (-p + s)*(s**4 + 5*s + 6), s), TransferFunction((-p + s)*(s**3 - 2) + (a*p**2 + b*s)*(s**4 + 5*s + 6), (-p + s)*(s**4 + 5*s + 6), s)), (TransferFunction((-p + s)*(s**3 - 2) + (a*p**2 + b*s)*(s**4 + 5*s + 6), (-p + s)*(s**4 + 5*s + 6), s), TransferFunction((-p + s)*(s**3 - 2) + (a*p**2 + b*s)*(s**4 + 5*s + 6), (-p + s)*(s**4 + 5*s + 6), s))))
property num_inputs

Returns the number of input signals of the parallel system.

property num_outputs

Returns the number of output signals of the parallel system.

property shape

Returns the shape of the equivalent MIMO system.

property var

Returns the complex variable used by all the systems.

Examples

>>> from sympy.abc import p
>>> from sympy.physics.control.lti import TransferFunction, TransferFunctionMatrix, MIMOParallel
>>> G1 = TransferFunction(p**2 + 2*p + 4, p - 6, p)
>>> G2 = TransferFunction(p, 4 - p, p)
>>> G3 = TransferFunction(0, p**4 - 1, p)
>>> G4 = TransferFunction(p**2, p**2 - 1, p)
>>> tfm_a = TransferFunctionMatrix([[G1, G2], [G3, G4]])
>>> tfm_b = TransferFunctionMatrix([[G2, G1], [G4, G3]])
>>> MIMOParallel(tfm_a, tfm_b).var
p
class sympy.physics.control.lti.MIMOFeedback(sys1, sys2, sign=- 1)[source]

A class for representing closed-loop feedback interconnection between two MIMO input/output systems.

Parameters

sys1 : MIMOSeries, TransferFunctionMatrix

The MIMO system placed on the feedforward path.

sys2 : MIMOSeries, TransferFunctionMatrix

The system placed on the feedback path (often a feedback controller).

sign : int, optional

The sign of feedback. Can either be 1 (for positive feedback) or -1 (for negative feedback). Default value is \(-1\).

Raises

ValueError

When sys1 and sys2 are not using the same complex variable of the Laplace transform.

Forward path model should have an equal number of inputs/outputs to the feedback path outputs/inputs.

When product of sys1 and sys2 is not a square matrix.

When the equivalent MIMO system is not invertible.

TypeError

When either sys1 or sys2 is not a MIMOSeries or a TransferFunctionMatrix object.

Examples

>>> from sympy import Matrix, pprint
>>> from sympy.abc import s
>>> from sympy.physics.control.lti import TransferFunctionMatrix, MIMOFeedback
>>> plant_mat = Matrix([[1, 1/s], [0, 1]])
>>> controller_mat = Matrix([[10, 0], [0, 10]])  # Constant Gain
>>> plant = TransferFunctionMatrix.from_Matrix(plant_mat, s)
>>> controller = TransferFunctionMatrix.from_Matrix(controller_mat, s)
>>> feedback = MIMOFeedback(plant, controller)  # Negative Feedback (default)
>>> pprint(feedback, use_unicode=False)
/    [1  1]    [10  0 ]   \-1   [1  1]
|    [-  -]    [--  - ]   |     [-  -]
|    [1  s]    [1   1 ]   |     [1  s]
|I + [    ]   *[      ]   |   * [    ]
|    [0  1]    [0   10]   |     [0  1]
|    [-  -]    [-   --]   |     [-  -]
\    [1  1]{t} [1   1 ]{t}/     [1  1]{t}

To get the equivalent system matrix, use either doit or rewrite method.

>>> pprint(feedback.doit(), use_unicode=False)
[1     1  ]
[--  -----]
[11  121*s]
[         ]
[0    1   ]
[-    --  ]
[1    11  ]{t}

To negate the MIMOFeedback object, use - operator.

>>> neg_feedback = -feedback
>>> pprint(neg_feedback.doit(), use_unicode=False)
[-1    -1  ]
[---  -----]
[ 11  121*s]
[          ]
[ 0    -1  ]
[ -    --- ]
[ 1     11 ]{t}
doit(cancel=True, expand=False, **kwargs)[source]

Returns the resultant transfer function matrix obtained by the feedback interconnection.

Examples

>>> from sympy import pprint
>>> from sympy.abc import s
>>> from sympy.physics.control.lti import TransferFunction, TransferFunctionMatrix, MIMOFeedback
>>> tf1 = TransferFunction(s, 1 - s, s)
>>> tf2 = TransferFunction(1, s, s)
>>> tf3 = TransferFunction(5, 1, s)
>>> tf4 = TransferFunction(s - 1, s, s)
>>> tf5 = TransferFunction(0, 1, s)
>>> sys1 = TransferFunctionMatrix([[tf1, tf2], [tf3, tf4]])
>>> sys2 = TransferFunctionMatrix([[tf3, tf5], [tf5, tf5]])
>>> F_1 = MIMOFeedback(sys1, sys2, 1)
>>> pprint(F_1, use_unicode=False)
/    [  s      1  ]    [5  0]   \-1   [  s      1  ]
|    [-----    -  ]    [-  -]   |     [-----    -  ]
|    [1 - s    s  ]    [1  1]   |     [1 - s    s  ]
|I - [            ]   *[    ]   |   * [            ]
|    [  5    s - 1]    [0  0]   |     [  5    s - 1]
|    [  -    -----]    [-  -]   |     [  -    -----]
\    [  1      s  ]{t} [1  1]{t}/     [  1      s  ]{t}
>>> pprint(F_1.doit(), use_unicode=False)
[  -s           s - 1       ]
[-------     -----------    ]
[6*s - 1     s*(6*s - 1)    ]
[                           ]
[5*s - 5  (s - 1)*(6*s + 24)]
[-------  ------------------]
[6*s - 1     s*(6*s - 1)    ]{t}

If the user wants the resultant TransferFunctionMatrix object without canceling the common factors then the cancel kwarg should be passed False.

>>> pprint(F_1.doit(cancel=False), use_unicode=False)
[           25*s*(1 - s)                          25 - 25*s              ]
[       --------------------                    --------------           ]
[       25*(1 - 6*s)*(1 - s)                    25*s*(1 - 6*s)           ]
[                                                                        ]
[s*(25*s - 25) + 5*(1 - s)*(6*s - 1)  s*(s - 1)*(6*s - 1) + s*(25*s - 25)]
[-----------------------------------  -----------------------------------]
[         (1 - s)*(6*s - 1)                        2                     ]
[                                                 s *(6*s - 1)           ]{t}

If the user wants the expanded form of the resultant transfer function matrix, the expand kwarg should be passed as True.

>>> pprint(F_1.doit(expand=True), use_unicode=False)
[  -s          s - 1      ]
[-------      --------    ]
[6*s - 1         2        ]
[             6*s  - s    ]
[                         ]
[            2            ]
[5*s - 5  6*s  + 18*s - 24]
[-------  ----------------]
[6*s - 1         2        ]
[             6*s  - s    ]{t}
property sensitivity

Returns the sensitivity function matrix of the feedback loop.

Sensitivity of a closed-loop system is the ratio of change in the open loop gain to the change in the closed loop gain.

Note

This method would not return the complementary sensitivity function.

Examples

>>> from sympy import pprint
>>> from sympy.abc import p
>>> from sympy.physics.control.lti import TransferFunction, TransferFunctionMatrix, MIMOFeedback
>>> tf1 = TransferFunction(p, 1 - p, p)
>>> tf2 = TransferFunction(1, p, p)
>>> tf3 = TransferFunction(1, 1, p)
>>> sys1 = TransferFunctionMatrix([[tf1, tf2], [tf2, tf1]])
>>> sys2 = TransferFunctionMatrix([[tf1, tf3], [tf3, tf2]])
>>> F_1 = MIMOFeedback(sys1, sys2, 1)  # Positive feedback
>>> F_2 = MIMOFeedback(sys1, sys2)  # Negative feedback
>>> pprint(F_1.sensitivity, use_unicode=False)
[   4      3      2               5      4      2           ]
[- p  + 3*p  - 4*p  + 3*p - 1    p  - 2*p  + 3*p  - 3*p + 1 ]
[----------------------------  -----------------------------]
[  4      3      2              5      4      3      2      ]
[ p  + 3*p  - 8*p  + 8*p - 3   p  + 3*p  - 8*p  + 8*p  - 3*p]
[                                                           ]
[       4    3    2                  3      2               ]
[      p  - p  - p  + p           3*p  - 6*p  + 4*p - 1     ]
[ --------------------------    --------------------------  ]
[  4      3      2               4      3      2            ]
[ p  + 3*p  - 8*p  + 8*p - 3    p  + 3*p  - 8*p  + 8*p - 3  ]
>>> pprint(F_2.sensitivity, use_unicode=False)
[ 4      3      2           5      4      2          ]
[p  - 3*p  + 2*p  + p - 1  p  - 2*p  + 3*p  - 3*p + 1]
[------------------------  --------------------------]
[   4      3                   5      4      2       ]
[  p  - 3*p  + 2*p - 1        p  - 3*p  + 2*p  - p   ]
[                                                    ]
[     4    3    2               4      3             ]
[    p  - p  - p  + p        2*p  - 3*p  + 2*p - 1   ]
[  -------------------       ---------------------   ]
[   4      3                   4      3              ]
[  p  - 3*p  + 2*p - 1        p  - 3*p  + 2*p - 1    ]
property sign

Returns the type of feedback interconnection of two models. 1 for Positive and -1 for Negative.

property sys1

Returns the system placed on the feedforward path of the MIMO feedback interconnection.

Examples

>>> from sympy import pprint
>>> from sympy.abc import s
>>> from sympy.physics.control.lti import TransferFunction, TransferFunctionMatrix, MIMOFeedback
>>> tf1 = TransferFunction(s**2 + s + 1, s**2 - s + 1, s)
>>> tf2 = TransferFunction(1, s, s)
>>> tf3 = TransferFunction(1, 1, s)
>>> sys1 = TransferFunctionMatrix([[tf1, tf2], [tf2, tf1]])
>>> sys2 = TransferFunctionMatrix([[tf3, tf3], [tf3, tf2]])
>>> F_1 = MIMOFeedback(sys1, sys2, 1)
>>> F_1.sys1
TransferFunctionMatrix(((TransferFunction(s**2 + s + 1, s**2 - s + 1, s), TransferFunction(1, s, s)), (TransferFunction(1, s, s), TransferFunction(s**2 + s + 1, s**2 - s + 1, s))))
>>> pprint(_, use_unicode=False)
[ 2                    ]
[s  + s + 1      1     ]
[----------      -     ]
[ 2              s     ]
[s  - s + 1            ]
[                      ]
[             2        ]
[    1       s  + s + 1]
[    -       ----------]
[    s        2        ]
[            s  - s + 1]{t}
property sys2

Returns the feedback controller of the MIMO feedback interconnection.

Examples

>>> from sympy import pprint
>>> from sympy.abc import s
>>> from sympy.physics.control.lti import TransferFunction, TransferFunctionMatrix, MIMOFeedback
>>> tf1 = TransferFunction(s**2, s**3 - s + 1, s)
>>> tf2 = TransferFunction(1, s, s)
>>> tf3 = TransferFunction(1, 1, s)
>>> sys1 = TransferFunctionMatrix([[tf1, tf2], [tf2, tf1]])
>>> sys2 = TransferFunctionMatrix([[tf1, tf3], [tf3, tf2]])
>>> F_1 = MIMOFeedback(sys1, sys2)
>>> F_1.sys2
TransferFunctionMatrix(((TransferFunction(s**2, s**3 - s + 1, s), TransferFunction(1, 1, s)), (TransferFunction(1, 1, s), TransferFunction(1, s, s))))
>>> pprint(_, use_unicode=False)
[     2       ]
[    s       1]
[----------  -]
[ 3          1]
[s  - s + 1   ]
[             ]
[    1       1]
[    -       -]
[    1       s]{t}
property var

Returns the complex variable of the Laplace transform used by all the transfer functions involved in the MIMO feedback loop.

Examples

>>> from sympy.abc import p
>>> from sympy.physics.control.lti import TransferFunction, TransferFunctionMatrix, MIMOFeedback
>>> tf1 = TransferFunction(p, 1 - p, p)
>>> tf2 = TransferFunction(1, p, p)
>>> tf3 = TransferFunction(1, 1, p)
>>> sys1 = TransferFunctionMatrix([[tf1, tf2], [tf2, tf1]])
>>> sys2 = TransferFunctionMatrix([[tf1, tf3], [tf3, tf2]])
>>> F_1 = MIMOFeedback(sys1, sys2, 1)  # Positive feedback
>>> F_1.var
p