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Applying machine learning to AHP multicriteria decision making method to assets prioritization in the context of industrial maintenance 4.0

机译:在工业维护4.0中将机器学习应用于AHP多准则决策方法中的资产优先级排序

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The increasing competition among industries has led to the emergence of numerous tools and methods to support decision making focused on assets maintenance in a company, since ensuring good maintenance is directly linked with greater reliability and uptime for equipment, reducing losses in production processes and consequently increasing profitability. This work aims to use Machine Learning (ML) algorithms - Bayesian Networks (BN) and attribute relevance analysis (ARA), implemented in the Weka? platform, to process a dataset of event logs failure of industrial machine components. The approach aims to use the conditional probability relations generated by the BN and the ranking of criteria relevance for the design of an AHP decision-making model within the scope of industrial maintenance to prioritize which components of a specific machine are more susceptible to failures. The proposed integration mechanism aims to bring greater reliability to the weights assigned to the criteria of the AHP model, and consequently, a more accurate decision support. The results showed that the AHP model generated from a Bayesian Network is consistent with the conditional probabilities estimated by the BN, giving robustness to the decision sphere in the context of industrial maintenance. This AHP model can serve as a basis to be complemented by qualitative analysis criteria according to the need of the individual specialist, allowing the construction of strategic maintenance action plans.
机译:行业间日益激烈的竞争导致出现了许多工具和方法来支持针对公司资产维护的决策,因为确保良好的维护与设备的更高可靠性和正常运行时间直接相关,从而减少了生产过程中的损失并因此而增加盈利能力。这项工作旨在使用Weka?中实现的机器学习(ML)算法-贝叶斯网络(BN)和属性相关性分析(ARA)。平台,以处理工业机械组件故障事件日志的数据集。该方法旨在利用BN生成的条件概率关系以及在工业维护范围内设计AHP决策模型的标准相关性等级来确定特定机器的哪些组件更容易出现故障。提出的集成机制旨在为分配给AHP模型标准的权重带来更高的可靠性,从而提供更准确的决策支持。结果表明,贝叶斯网络生成的AHP模型与BN估计的条件概率一致,从而在工业维护的情况下为决策领域提供了鲁棒性。该AHP模型可以作为根据个别专家的需要定性分析标准进行补充的基础,从而可以制定战略性维护行动计划。

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