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Total productive maintenance of make-to-stock production-inventory systems via artificial-intelligence-based iSMART

机译:通过基于人工智能的ISMART的股票生产库存系统的总生产力维护

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摘要

Total Productive Maintenance (TPM) is a critical activity that significantly reduces lead times and uncertainty in Make-To-Stock (MTS) production systems, thereby increasing the efficiency and profit margins of the associated firm. TPM problems can be set up as semi-Markov decision processes (SMDPs) and solved optimally using classical dynamic programming (DP) on small-scale problems. However, on large industrial-scale problems, DP breaks down, and one must then resort to an artificial intelligence (AI) technique called reinforcement learning (RL). This work presents a new AI algorithm for solving SMDPs, called iSMART, an acronym for imaging Semi-Markov Average Reward Technique. iSMART requires a significantly lower modelling and computational effort than classical DP, where estimating the transition probabilities can itself be very time-consuming and mathematically challenging for large-scale problems. Further, unlike previous RL algorithms for SMDPs, iSMART does not need exploration decay. This means iSMART eliminates an additional parameter that requires significant tuning in the traditional RL-based solution approach. Modern AI based in deep learning seeks to reduce dependence on tuning parameters. iSMART is designed in this spirit for solving TPM problems in MTS production systems, where it is shown to deliver optimal solutions on small-scale problems and near-optimal ones on large-scale problems.
机译:总生产力维护(TPM)是一种关键活动,可显着降低储蓄(MTS)生产系统中的交货时间和不确定性,从而提高了相关公司的效率和利润率。可以将TPM问题设置为半马尔可夫决策过程(SMDPS),并在大规模问题上使用经典动态编程(DP)进行最佳解决。然而,在大型工业规模问题上,DP崩溃,然后必须采取一个名为钢筋学习(RL)的人工智能(AI)技术。这项工作提出了一种新的AI算法,用于解决SMDPS,称为ISMART,用于成像半Markov平均奖励技术的首字母缩写。 ISMART需要比古典DP显着降低的建模和计算努力,其中估算过渡概率本身本身可以非常耗时,并且在数学上挑战大规模问题。此外,与SMDPS以前的RL算法不同,ISMART不需要探索衰减。这意味着ISMart消除了一个需要在传统的基于RL的解决方案方法中进行重大调整的附加参数。基于深度学习的现代AI旨在减少对调整参数的依赖性。 ISMART专为这种精神而设计,用于解决MTS生产系统中的TPM问题,其中显示在大规模问题上提供对小规模问题和近最优的最佳解决方案。

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