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Decision Support in Intelligent Maintenance-planning Systems Based on Contextual Multi-armed Bandit Algorithm

机译:基于上下文多武装强盗算法的智能维护规划系统决策支持

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In this paper we focus on two essential problems of maintenance decision support systems, namely, 1) detection of potential dangerous situation, and 2) classification of this situation in order to recommend an appropriate repair action. The former task is usually solved with the known statistical process control techniques. The latter problem can be reduced to the contextual multi- armed bandit problem. We propose a novel algorithm with Bayesian classification of abnormal situation and the softmax rule to explore the decision space. The dangerous situations are detected with the Shewhart control charts for the distances between the current and the normal situations. It is experimentally shown, that our algorithm is more accurate than the known contextual multi-armed methods with stochastic search strategies.
机译:在本文中,我们专注于维护决策支持系统的两个基本问题,即1)检测潜在的危险情况,以及2)这种情况的分类,以推荐适当的修复行动。前一项任务通常用已知的统计过程控制技术解决。后者问题可以减少到上下文多武装强盗问题。我们提出了一种具有异常情况的贝叶斯分类的新型算法和软墨西姆规则来探索决策空间。利用Shewhart控制图来检测危险情况,用于当前和正常情况之间的距离。它是通过实验显示的,因为我们的算法比具有随机搜索策略的已知的上下文多武装方法更准确。

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