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Point-to-Point Iterative Learning Control with Optimal Tracking Time Allocation: A Coordinate Descent Approach

机译:具有最优跟踪时间分配的点对点迭代学习控制:坐标血统方法

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Iterative learning control (ILC) is a high performance control technique for systems operating in a repetitive manner. A novel design methodology is developed in this paper to incorporate optimal tracking time allocation within the point-to-point ILC framework for discrete time systems. This leads to significant performance improvements compared to fixed time points (e.g. energy reduction). An optimization problem is formulated based on the point-to-point tracking requirement and the via-point temporal constraints. A two stage design framework is proposed to solve this problem, yielding an algorithm based on norm optimal ILC and the coordinate descent method, which automatically minimizes control effort while maintaining high performance tracking. The proposed algorithm is implemented on a gantry robot experimental test platform, with results verifying its practical effectiveness in the presence of model uncertainty.
机译:迭代学习控制(ILC)是一种以重复方式运行的系统的高性能控制技术。在本文中开发了一种新颖的设计方法,以在离散时间系统内纳入点对点ILC框架内的最佳跟踪时间分配。与固定时间点相比(例如能量减少)相比,这导致显着的性能改善。基于点对点跟踪要求和通孔点时间约束来配制优化问题。提出了一个两个阶段设计框架来解决这个问题,产生了一种基于规范最佳ILC的算法和坐标落下方法,其在保持高性能跟踪的同时自动降低控制工作。该算法在龙门机器人实验测试平台上实施,结果在模型不确定性的存在下验证了其实际效果。

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