非匹配不确定性与饱和输入下具有保证性能的神经自适应渐近跟踪控制

Neuroadaptive Asymptotic Tracking Control With Guaranteed Performance Under Mismatched Uncertainties and Saturated Inputs

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2023
被引 13
ABS 3

中文导读

针对存在结构非匹配不确定性和严格输入约束的非线性系统,提出一种结合神经网络与RISE技术的自适应控制方法,实现渐近跟踪并保证瞬态性能。

Abstract

It is still an open problem to achieve asymptotic tracking meanwhile maintaining specific performance for nonlinear systems with structurally mismatched uncertainties and strictly constrained inputs. In this work, we present a solution to this problem by using neural network (NN)-based adaptive control embedded with the robust integral of the sign of the error (RISE) technique. Most existing prescribed performance control (PPC) can only ensure uniformly ultimately bounded stability, and the RISE-based control, although capable of achieving asymptotic stability, does not guarantee transient behavior (especially, when the system is in strict-feedback form with saturated input). Here, in this study, we make use of NNs to accommodate the unknown nonlinearities, where the NN approximation error, together with other uncertainties, is fully compensated by using a RISE unit. The constraints imposed on the inputs are addressed by the hyperbolic tangent function, resulting in a solution capable of guaranteeing asymptotic tracking with prescribed transient performance, in the presence of mismatched modeling uncertainties and actuation saturation. A numerical simulation is carried out to verify the effectiveness of the proposed method.

自适应控制非线性系统神经网络预设性能控制