A mathematical theory of learning control for linear discrete multivariable systemsWhen tracking control systems are used in repetitive operations such as robots in various manufacturing processes, the controller will make the same errors repeatedly. Here consideration is given to learning controllers that look at the tracking errors in each repetition of the process and adjust the control to decrease these errors in the next repetition. A general formalism is developed for learning control of discrete-time (time-varying or time-invariant) linear multivariable systems. Methods of specifying a desired trajectory (such that the trajectory can actually be performed by the discrete system) are discussed, and learning controllers are developed. Stability criteria are obtained which are relatively easy to use to insure convergence of the learning process, and proper gain settings are discussed in light of measurement noise and system uncertainties.
Document ID
19880063211
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Phan, Minh (Columbia Univ. New York, NY, United States)
Longman, Richard W. (Columbia University New York, United States)