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首页> 外文期刊>IEEE Control Systems Letters >Model-Free Learning for Massive MIMO Systems: Stochastic Approximation Adjoint Iterative Learning Control
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Model-Free Learning for Massive MIMO Systems: Stochastic Approximation Adjoint Iterative Learning Control

机译:MATLIVE MIMO系统的无模型学习:随机近似伴随迭代学习控制

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摘要

Learning can substantially increase the performance of control systems that perform repeating tasks. The aim of this letter is to develop an efficient iterative learning control algorithm for MIMO systems with a large number of inputs and outputs that does not require model knowledge. The gradient of the control criterion is obtained through dedicated experiments on the system. Using a judiciously selected randomization technique, an unbiased estimate of the gradient is obtained from a single dedicated experiment, resulting in fast convergence of a Robbins-Monro type stochastic gradient descent algorithm. Analysis shows that the approach is superior to earlier deterministic approaches and to related SPSA-type algorithms. The approach is illustrated on a multivariable example.
机译:学习可以大大提高执行重复任务的控制系统的性能。这封信的目的是为具有大量输入和输出的MIMO系统开发一个有效的迭代学习控制算法,这些输入和输出不需要模型知识。通过系统上的专用实验获得控制标准的梯度。使用明智地选择的随机化技术,从单个专用实验获得梯度的无偏估计,导致罗宾斯 - 单型随机梯度下降算法的快速收敛。分析表明,该方法优于前面的确定性方法和相关的SPSA型算法。该方法在多变量的例子上示出。

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