Iterative Learning Control (ILC) is a method of
tracking control for systems that work in a repetitive mode. Examples of systems that operate in a repetitive manner include
robot
A robot is a machine—especially one programmable by a computer—capable of carrying out a complex series of actions automatically. A robot can be guided by an external control device, or the control may be embedded within. Robots may be ...
arm manipulators, chemical batch processes and
reliability testing
Reliability engineering is a sub-discipline of systems engineering that emphasizes the ability of equipment to function without failure. Reliability describes the ability of a system or component to function under stated conditions for a specifie ...
rigs. In each of these tasks the system is required to perform the same action over and over again with high
precision. This action is represented by the objective of accurately tracking a chosen reference signal
on a finite time interval.
Repetition allows the system to improve tracking accuracy from repetition to repetition, in effect learning the required input needed to track the reference exactly. The learning process uses information from previous repetitions to improve the control signal ultimately enabling a suitable control action can be found
iteratively. The
internal model principle yields conditions under which perfect tracking can be achieved but the design of the control algorithm still leaves many decisions to be made to suit the application. A typical, simple control law is of the form:
:
where
is the input to the system during the pth repetition,
is the tracking error during the pth repetition and K is a design parameter representing operations on
. Achieving perfect tracking through iteration is represented by the mathematical requirement of convergence of the input signals as
becomes large whilst the rate of this convergence represents the desirable practical need for the learning process to be rapid. There is also the need to ensure good algorithm performance even in the presence of uncertainty about the details of process dynamics. The operation
is crucial to achieving design objectives and ranges from simple scalar gains to sophisticated optimization computations.
References
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External links
Southampton Sheffield Iterative Learning Control (SSILC)
{{DEFAULTSORT:Iterative Learning Control
Control theory