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Analyzing the impact of maintenance on profitability using dynamic bayesian networks

机译:用动态贝叶斯网络分析维护对盈利能力的影响

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In the era of Industry 4.0,predictive maintenance is regarded as a key factor for reaching business objectives.Cost-effective deployment of Cyber Physical Production Systems raises the question whether data-driven and knowledge-based maintenance affects profitability of smart factories.Several studies reveal that an appropriate data-driven maintenance strategy should not only focus on increasing availability but also should consider economic parameters.This paper presents a novel approach and a proof-of-concept demonstrator using Dynamic Bayesian Networks (DBN).The proposed DBN model enables identifying and predicting the economic impact of maintenance on profitability as well as support planning and monitoring of maintenance activities.
机译:在4.0时代,预测维护被视为达到业务目标的关键因素。有效的网络物理生产系统的部署提出了数据驱动和基于知识的维护影响智能工厂的盈利能力。研究揭示了 适当的数据驱动维护策略不仅要关注增加可用性,而且应该考虑经济参数。本文提出了一种新的方法和使用动态贝叶斯网络(DBN)的概念证明示威者。建议的DBN模型启用了识别 并预测维护对盈利能力的经济影响以及对维护活动的支持规划和监测。

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