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An incremental Inter-agent learning method for adaptive control of multiple identical processes in mass production

机译:用于批量生产中多个相同过程的自适应控制的增量式智能体学习方法

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摘要

To enhance the individual control performance over the standalone control of each process in mass production, this paper explores information sharing among processes by proposing an incremental inter-agent learning (IIAL) method for the online estimation of the process model in the adaptive control of a class of processes modeled by linear-in-unknown-constant-parameters (LIP) formulae. Each individual process control system makes use of information from its own and other processes incrementally with time and across process. The application of the proposed work to a single layer RBF neural networks adaptive control shows that the speed of tracking error convergence of each process is improved. (c) 2018 Elsevier B.V. All rights reserved.
机译:为了提高批量生产中每个过程的独立控制的独立控制性能,本文提出了一种增量式智能体间学习(IIAL)方法,用于在线估计自适应控制的过程模型,从而探索过程之间的信息共享。一类由未知常数线性(LIP)公式建模的过程。每个单独的过程控制系统都会随着时间和跨过程逐步使用来自其自身和其他过程的信息。所提出的工作在单层RBF神经网络自适应控制中的应用表明,提高了每个过程的跟踪误差收敛速度。 (c)2018 Elsevier B.V.保留所有权利。

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