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Adaptive neural network control of flexible joint robots based on feedback linearization

Shuzhi Sam Ge, T. H. Lee, Edward G. Tan

Year
1998
Citations
17

Abstract

A robust adaptive neural network controller is presented for flexible joint robots using feedback linearization techniques. The controller is based on an approach of using an additional neural network to provide adaptive enhancements to a bask fixed nonlinear controller which can be either neural-network-based or model-used. The weights of the additional neural network are updated on-line based on direct adaptive techniques. It is shown that if Gaussian radial basis function networks are used for the additional neural network, uniformly stable adaptation is assured and asymptotic tracking of the position reference signal is achieved. Intensive computer simulations on a two-link flexible joint robot have shown that the controller can belter handle dynamical model changes and parameter uncertainties than the conventional feedback linearization controller

Keywords

Control theory (sociology)Feedback linearizationArtificial neural networkController (irrigation)Adaptive controlComputer scienceLinearizationRobotControl engineeringNonlinear system

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