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A framework of iterative learning control under random data dropouts: Mean square and almost sure convergence

机译:随机数据丢失情况下的迭代学习控制框架:均方和几乎确定的收敛

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This paper addresses the iterative learning control problem under random data dropout environments. The recent progress on iterative learning control in the presence of data dropouts is first reviewed from 3 aspects, namely, data dropout model, data dropout position, and convergence meaning. A general framework is then proposed for the convergence analysis of all 3 kinds of data dropout models, namely, the stochastic sequence model, the Bernoulli variable model, and the Markov chain model. Both mean square and almost sure convergence of the input sequence to the desired input are strictly established for noise-free systems and stochastic systems, respectively, where the measurement output suffers from random data dropouts. Illustrative simulations are provided to verify the theoretical results.
机译:本文解决了随机数据丢失环境下的迭代学习控制问题。首先从数据丢失模型,数据丢失位置和收敛意义三个方面对存在数据丢失情况下迭代学习控制的最新进展进行了综述。然后提出了一个通用框架,对所有三种数据丢失模型进行收敛性分析,即随机序列模型,伯努利变量模型和马尔可夫链模型。对于无噪声系统和随机系统,分别严格建立了输入序列与所需输入的均方和几乎确定的收敛性,在无噪声系统和随机系统中,测量输出受到随机数据丢失的影响。提供了说明性仿真以验证理论结果。

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