Concurrent Learning Based Finite-Time Parameter Estimation in Adaptive Control of Uncertain Switched Nonlinear Systems
[摘要] In this paper, We develop concurrent learning adaptive controller, which uses recorded and current data concurrently for adaptation, to model reference adaptive control (MRAC) of uncertain switched nonlinear systems. In standard MRAC architecture for switched systems, the adaptive update laws are derived based on the gradient descent scheme, but here we developed two novel parameter estimation schemes by using modification terms in adaptation laws in which recorded data are used simultaneously with current data and a triggering time is considered in which a sufficient condition on the linear independence of the recorded data is obtained to guarantee the exponential convergence of tracking error and parameter estimation error to zero for the uncertain switched system under all admissible switching strategy. The convergence of the parameters to the ideal values makes an online learned model of the system available. This sufficient condition is easily verifiable in comparison with the restrictive persistence of excitation condition of the standard MRAC structures in practical applications. Finally, a simulation example is given to illustrate the efficacy of the proposed method.
[发布日期] [发布机构]
[效力级别] [学科分类] 自动化工程
[关键词] Uncertain nonlinear switched systems ;Model reference adaptive control (MRAC) ;Concurrent learning adaptation ;Finite-time parameter estimation ;Persistence of excitation [时效性]