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Low-Cost Approximation-Based Adaptive Tracking Control of Output-Constrained Nonlinear Systems

Zhao, Kai; Song, Yongduan*; Meng, Wenchao; Chen, C. L. Philip; Chen, Long
Science Citation Index Expanded
浙江大学; 重庆大学

摘要

For pure-feedback nonlinear systems under asymmetric output constraint, we present a low-cost neuroadaptive tracking control solution with salient features benefited from two design steps. In the first step, a novel output-dependent universal barrier ODUBF) is constructed such that not only the restrictive condition on constraining boundaries/functions is removed but also both constrained and unconstrained cases can be handled uniformly without the need for changing the control structure. In the second step, to reduce the computational burden caused by the neural network (NN)-based approximators, a single parameter estimator is developed so that the number of adaptive law is independent of the system order and the dimension of system parameters, making the control design inexpensive in computation. Furthermore, it is shown that all signals in the closed-loop system are semiglobally uniformly ultimately bounded, the tracking error converges to an adjustable neighborhood of the origin, and the violation of output constraint is prevented. The effectiveness of the proposed method can be validated via numerical simulation.

关键词

Nonlinear systems Artificial neural networks Control design Adaptive systems Backstepping Learning systems Asymmetric output constraint neural adaptive control nonlinear systems universal barrier function