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Iterative Learning Control for Collaborative Tracking: Point to Point Tasks and Constraint Handling

机译:协作式跟踪的迭代学习控制:点对点任务和约束处理

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Collaborative tracking of networked dynamical systems where a group of subsystems work together collaboratively to track a desired reference has important applications in a range of areas. To achieve high performance tracking, the idea of iterative learning control (ILC) has recently been applied with superior tracking performance. This paper considers two previously unexplored problems in ILC design of collaborative tracking, namely, point to point tracking tasks and constraint handling, which are of great practical relevance. We propose two new algorithms to solve the above problems using the idea of gradient based ILC and a projection based method. The proposed algorithms achieve monotonic convergence in the tacking error norm and can guarantee the satisfaction of system constraints. They can be applied to both homogenous and heterogenous networked systems where the subsystems might or might not have the same dynamics. Convergence properties of the algorithms are analysed in detail and numerical examples are presented to demonstrate their effectiveness.
机译:在一组子系统之间协同工作以跟踪所需参考的网络动态系统的协作跟踪在一系列领域中具有重要的应用。为了实现高性能跟踪,最近已将迭代学习控制(ILC)的概念与出色的跟踪性能一起应用。本文考虑了协作跟踪的ILC设计中两个以前尚未探索的问题,即点对点跟踪任务和约束处理,它们具有很大的现实意义。我们提出了两种新算法来解决上述问题,它们使用了基于梯度的ILC和基于投影的方法。该算法在定位误差范数上实现了单调收敛,可以保证满足系统约束条件。它们可以应用于子系统可能具有或不具有相同动态特性的同构和异构网络系统。详细分析了算法的收敛特性,并通过数值算例说明了其有效性。

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