Data-driven Adaptive Iterative Learning Control Based on a Local Dynamic Linearization

Shuhua Zhang, Yu Hui, R. Chi
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引用次数: 4

Abstract

Linearization technique is inevitable for a nonlinear control system design. However, the traditional linearization methods require model information, which is difficult to obtain for the complex nonlinear system. In this article, a new local dynamic linearization method is proposed via a mean-value theorem and can be estimated by using the I/O data only. Then a new adaptive iterative learning control is proposed by using the optimal technology. The simulation verifies the monotonic convergence and practicability of this method.
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基于局部动态线性化的数据驱动自适应迭代学习控制
对于非线性控制系统的设计,线性化技术是不可避免的。然而,传统的线性化方法需要模型信息,对于复杂的非线性系统难以获得模型信息。本文利用中值定理提出了一种新的局部动态线性化方法,该方法可以仅使用I/O数据进行估计。然后利用最优技术提出了一种新的自适应迭代学习控制方法。仿真结果验证了该方法的单调收敛性和实用性。
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