迭代学习控制
解码方法
编码(内存)
计算机科学
量化(信号处理)
伯努利原理
跟踪误差
控制(管理)
强化学习
控制理论(社会学)
人工智能
算法
工程类
航空航天工程
作者
Yujuan Tao,Hongfeng Tao,Zhihe Zhuang,Vladimir Stojanović,Wojciech Paszke
标识
DOI:10.1177/01423312231225782
摘要
In practical applications, due to the limited communication bandwidth, the network control systems (NCSs) are prone to data dropouts when the load is high. In this paper, the problem of quantized iterative learning control (ILC) based on encoding and decoding mechanism for such communication-constrained systems is studied. By combining the encoding and decoding mechanism with the uniform quantizer, the network burden and the impact of quantization error on the tracking performance of the systems are significantly mitigated. Meanwhile, data dropouts are represented as the Bernoulli random variable model, and an ILC law based on gradient is designed. When data dropouts occur, the signals maintain the value of the previous trial, otherwise the signals are updated. For this kind of learning framework, the asymptotic zero-error tracking performance has been rigorously proven for the uniform quantizer. To validate the proposed design, a joint motion of an industrial robot in the horizontal plane is simulated as an example.
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