Data-Driven Active Learning Control for Bridge Cranes

Haojie Lin, Xuyang Lou
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Abstract

For positioning and anti-swing control of bridge cranes, the active learning control method can reduce the dependence of controller design on the model and the influence of unmodeled dynamics on the controller’s performance. By only using the real-time online input and output data of the bridge crane system, the active learning control method consists of the finite-dimensional approximation of the Koopman operator and the design of an active learning controller based on the linear quadratic optimal tracking control. The effectiveness of the control strategy for positioning and anti-swing of bridge cranes is verified through numerical simulations.
桥式起重机数据驱动主动学习控制
对于桥式起重机的定位和防摆控制,主动学习控制方法可以减少控制器设计对模型的依赖,减少未建模动力学对控制器性能的影响。主动学习控制方法仅利用桥式起重机系统的实时在线输入和输出数据,由Koopman算子的有限维逼近和基于线性二次最优跟踪控制的主动学习控制器的设计组成。通过数值仿真验证了该控制策略对桥式起重机定位和防摆的有效性。
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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