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An approach to improve flexible manufacturing systems with machine learning algorithms

机译:一种使用机器学习算法改进柔性制造系统的方法

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The electricity consumption in the industry occupies considerable ratio in the gross electricity consumption compared with the consumption in other sectors e.g. residential, agriculture etc. One crucial solution to this problem is to optimize the production structure. The grand plan “Industry 4.0” provides a more adaptable and flexible perspective for the smart factory. The complexity of a manufacturing system, on the other hand, has been enhanced. Machine learning algorithms are a cluster of excellent approaches to control a complex system and to optimize a stochastic process. In order to improve the performance of a production system, it must be formulated to an executive model at first, then the optional control policies can be selected to cope with it. In this paper, the classification algorithm and the Q-learning algorithm have been implemented to reduce the electricity consumption in an automation system. The simulation results prove that they are capable for manipulating the multi routes transporting system and the system can performance better with the implementation of the machine learning algorithms.
机译:与其他行业相比,该行业的电力消耗在总电力消耗中所占的比例相当大。解决这个问题的关键方法之一就是优化生产结构。宏伟的计划“工业4.0”为智能工厂提供了更灵活,更灵活的视角。另一方面,制造系统的复杂性已经提高。机器学习算法是控制复杂系统并优化随机过程的出色方法的集群。为了提高生产系统的性能,必须首先将其制定为执行模型,然后可以选择可选的控制策略来应对。为了降低自动化系统的电力消耗,本文采用了分类算法和Q学习算法。仿真结果表明,它们具有操纵多路线运输系统的能力,并且通过实施机器学习算法可以使系统性能更好。

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