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Machine learning based adaptive production control for a multi-cell flexible manufacturing system operating in a random environment

机译:在随机环境中运行的多单元柔性制造系统的基于机器学习的自适应生产控制

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摘要

An adaptive production control approach is used for controlling a multi-cell FMS with machines subject to failures, operating in a highly changing produce-to- order environment. A probabilistic machine learning procedure is integrated within a tow-level Distribution Production Control System (DPCS). This enables the DPCS to adapt itself to large fluctuations in demand as well as to other stochastic factors. An extensive simulation study shows that the proposed adap- tive control approach significantly improves the production system performance in terms of a combined measure of the rough put and order tardiness. The proposed DPCS can be easily implemented as a real-time DPCS due to its simplicity, Modularity and the limited information it requires. The proposed adaptive Scheme can be integrated in any parametric production control system.
机译:自适应生产控制方法用于控制多单元FMS,其中FMS的机器在发生故障的生产环境中运行时会发生故障。概率式机器学习程序集成在两个级别的分销生产控制系统(DPCS)中。这使DPCS能够适应需求的巨大波动以及其他随机因素。广泛的仿真研究表明,所提出的自适应控制方法可以通过综合衡量粗略的订单和订单延迟来显着提高生产系统的性能。所提出的DPCS的简单性,模块化和所需的信息有限,因此可以轻松地实现为实时DPCS。所提出的自适应方案可以集成在任何参数生产控制系统中。

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