Hierarchical Structures for Economic Repetitive Control

K. Mishra, James Reed, Maxwell J. Wu, K. Barton, C. Vermillion
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Abstract

For many emerging repetitive control applications such as wind and marine energy generation systems, gait-cycle following in legged locomotion, remote sensing, surveillance, and reconnaissance, the primary objective for repetitive control (RC) is optimization of a cycle cost such as the lap-averaged power generated and metabolic cost of locomotion, as opposed to the classical requirement of tracking a known reference trajectory by the system output. For this newer class of applications, only a range of reference trajectories suitable for cyclic operation is known a priori, the range potentially encapsulating various operational constraints, and as part of repetitive control, it is desired that over a number of operation cycles, the cycle cost, or the economic metric, is optimized. With this underlying motivation, a hierarchical solution is presented, wherein the inner loop includes a classical repetitive controller that tracks a reference trajectory of known period, and the outer loop iteratively learns the desired reference trajectory using a combination of the system and cost function models and the measured cycle cost. This approach results in optimum steady-state cyclic operation. A steepest descent type algorithm is used in the outer loop, and via Lyapunov-like arguments, the existence of tuning parameters resulting in robust and optimal steady-state cyclic operation is discussed. Appropriate guidelines for parameter tuning are presented, and the proposed method is numerically validated using an example of an inverted pendulum.
经济重复控制的层次结构
对于许多新兴的重复控制应用,如风能和海洋能源发电系统,腿式运动中的步态-周期跟踪,遥感,监视和侦察,重复控制(RC)的主要目标是优化循环成本,如每圈平均产生的功率和运动的代谢成本,而不是通过系统输出跟踪已知参考轨迹的传统要求。对于这类较新的应用,只有一个适用于循环操作的参考轨迹范围是先验已知的,该范围可能包含各种操作约束,并且作为重复控制的一部分,希望在多个操作周期内,循环成本或经济指标得到优化。基于这一潜在动机,提出了一种分层解决方案,其中内环包括一个经典的重复控制器,该控制器跟踪已知周期的参考轨迹,外环使用系统和成本函数模型以及测量周期成本的组合迭代学习所需的参考轨迹。该方法可获得最佳稳态循环运行。外环采用最陡下降算法,并通过李雅普诺夫类论证,讨论了导致鲁棒和最优稳态循环运行的调谐参数的存在性。给出了适当的参数整定准则,并以倒立摆为例对所提方法进行了数值验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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