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网络攻击下非线性MIMO系统的低复杂度双层迭代学习控制

Low-Complexity Double-Layered Iterative Learning Control for Nonlinear MIMO System Under Cyberattacks

IEEE Transactions on Cybernetics · 2025
被引 0
ABS 3

中文导读

针对重复性非线性多输入多输出系统在虚假数据注入攻击下的跟踪控制问题,提出一种双层迭代学习控制方法,通过外环自适应设定点调优和内环比例微分控制器,结合输出观测器实时补偿攻击影响,实现高精度跟踪并降低计算负担。

Abstract

In this article, the double-layered iterative learning control (DLILC) approach is adopted to investigate the tracking control problem of repetitive nonlinear multiple-input-multiple-output (MIMO) systems under false data injection (FDI) attacks. Based on historical data, two control loops in the scheme are devised to improve tracking accuracy. More specifically, an outer loop adaptive set-point tuning mechanism is developed, which is independent of the inner-loop controller. Such a mechanism dynamically optimizes learning gains by leveraging historical data and significantly reduces reliance on preset system parameters. In the inner loop, a proportional-derivative controller is employed to form the feedback circuit. Furthermore, the double dynamic linearization technique is adopted to transform complex nonlinearities, coupling effects, and unknown uncertainties into a set of linearly estimable parameters. To address FDI attacks, an output observer-based real-time compensator is constructed, which is capable of promptly mitigating the impact of such attacks on system outputs. Simulation results demonstrate that the proposed scheme ensures high-precision tracking, substantially reduces computational burden, and exhibits superior resilience against attacks. The approach thus provides a new pathway toward secure and efficient iterative learning control of nonlinear systems.

迭代学习控制非线性系统网络攻击多输入多输出系统