LINEAR SYSTEM

A 'linear system' is a mathematical model of a system based on the use of a linear operator.
Linear systems typically exhibit features and properties that are much simpler than the general, nonlinear case.
As a mathematical abstraction or idealization, linear systems find important applications in automatic control theory, signal processing, and telecommunications. For example, the propagation medium for wireless communication systems can often be
modeled by linear systems.
A general deterministic system can be described by operator H that maps an input x(t) as a function of t to an output y(t), a type of black box description. Linear systems satisfy the properties of superposition and scaling: given two valid inputs
:x_1(t) ,
:x_2(t) ,
as well as their respective outputs
:y_1(t) = H left { x_1(t)
ight }
:y_2(t) = H left { x_2(t)
ight }
then a linear system must satisfy
:lpha y_1(t) + eta y_2(t) = H left { lpha x_1(t) + eta x_2(t)
ight }
for any scalar values lpha , and eta ,.
The behavior of the resulting system subjected to a complex input can be described as a sum of responses to simpler inputs. In nonlinear systems, there is no such relation.
This mathematical property makes the solution of modelling equations simpler than many nonlinear systems.
For time-invariant systems this is the basis of the impulse response or the frequency response methods (see LTI system theory), which describe a general input function x(t) in terms of unit impulses or frequency components.
Typical differential equations of linear time-invariant systems are well adapted to analysis using the Laplace transform in the continuous case, and the Z-transform in the discrete case (especially in computer implementations).
Another perspective is that solutions to linear systems comprise a system of functions which act like vectors in the geometric sense.
A common use of linear models is to describe a nonlinear system by linearization. This is usually done for mathematical convenience.

Contents
Time-Varying Impulse Response
Time-Varying Convolution Integral
Continuous time
Discrete time
Causality
See also

Time-Varying Impulse Response


The 'time-varying impulse response' ''h''(''t''2,''t''1) of a linear system is defined as the response of the system at time ''t'' = ''t''2 to a single impulse applied at time ''t'' = ''t''1. In other words, if the input ''x''(''t'') to a linear system is
:x(t) = delta(t-t_1) ,
where δ(''t'') represents the Dirac delta function, and the corresponding response ''y''(''t'') of the system is
:y(t) |_{t=t_2} = h(t_2,t_1) ,
then the function ''h''(''t''2,''t''1) is the time-varying impulse response of the system.

Time-Varying Convolution Integral


Continuous time

The output of any continuous time linear system is related to the input by the time-varying convolution integral:
: y(t) = int_{-infty}^{infty} h(t,s) x(s) ds
or, equivalently,
: y(t) = int_{-infty}^{infty} h(t,t- au) x(t- au) d au
where
: au = t - s ,
represents the lag time between the stimulus at time ''s'' and the response at time ''t''.
Discrete time

The output of any discrete time linear system is related to the input by the time-varying convolution sum:
: y[n] = sum_{k=-infty}^{infty} { h[n,k] x[k] }
or equivalently,
: y[n] = sum_{m=-infty}^{infty} { h[n,n-m] x[n-m] }
where
: k = n-m ,
represents the lag time between the stimulus at time ''k'' and the response at time ''n''.

Causality


A linear system is 'causal' if and only if the system's time varying impulse response is identically zero whenever the time ''t'' of the response is earlier than the time ''s'' of the stimulus. In other words, for a causal system, the following condition must hold:
:h(t,s) = 0 mathrm{for} t < s

See also



Linear system of divisors in algebraic geometry.

LTI system theory

System analysis

System of linear equations


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