Control of Flexible-link Manipulators Using Neural Networks
addresses the difficulties that arise in controlling the end-point of a
manipulator that has a significant amount of structural flexibility in
its links. The non-minimum phase characteristic, coupling effects,
nonlinearities, parameter variations and unmodeled dynamics in such a
manipulator all contribute to these difficulties. Control strategies
that ignore these uncertainties and nonlinearities generally fail to
provide satisfactory closed-loop performance. This monograph develops
and experimentally evaluates several intelligent (neural network based)
control techniques to address the problem of controlling the end-point
of flexible-link manipulators in the presence of all the aforementioned
difficulties. To highlight the main issues, a very flexible-link
manipulator whose hub exhibits a considerable amount of friction is
considered for the experimental work. Four different neural network
schemes are proposed and implemented on the experimental test-bed. The
neural networks are trained and employed as online controllers.