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Selection method of monitoring parameter optimization in prognostics and health management based on grey clustering decision

机译:基于灰色聚类决策的预测与健康管理参数优化选择方法

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摘要

Purpose - The purpose of the paper is to propose a novel approach, based on grey clustering decision, to fill in an omission of quantitative monitoring parameter selection methods. Design/methodology/approach - The basic monitoring parameter selection criteria and the corresponding calculation methods are presented. Then, the grey clustering decision model for monitoring parameter optimization selection is constructed, and an integrated weight determination method based on analytic hierarchy process (AHP) and information entropy is provided. Findings - Basic principle for monitoring parameter selection is proposed and quantitative description is carried out for selection principle in engineering application. Grey clustering decision-making model for monitoring parameter optimization selection is established Comprehensive weight ascertainment method based on AHP and information entropy is provided to make the index weight more scientific. Practical implications - At system design stage, it is of significance to carry out selection and optimization of monitoring parameters. After the optimization of monitoring parameters is confirmed, measurability analysis and design in parallel are carried out for convenience of timely information feedback and system design revision. Therefore, the system integration efficiency is improved and the cost of research and manufacturing is reduced. Originality/value - Monitoring parameter optimization selection process based on grey clustering decision-making model is described and the analysis result shows that the proposed method has certain degree of effectiveness, rationality and universality.
机译:目的-本文的目的是提出一种基于灰色聚类决策的新方法,以填补对定量监测参数选择方法的遗漏。设计/方法/方法-介绍了基本的监视参数选择标准和相应的计算方法。然后,构建了用于参数优化选择监测的灰色聚类决策模型,并提出了一种基于层次分析法和信息熵的综合权重确定方法。结果-提出了监控参数选择的基本原理,并对工程应用中的选择原理进行了定量描述。建立了用于参数优化选择的灰色聚类决策模型,建立了基于层次分析法和信息熵的综合权重确定方法,使指标权重更加科学。实际意义-在系统设计阶段,进行监控参数的选择和优化很重要。确定监控参数的最优化后,并行进行可测量性分析和设计,以方便及时的信息反馈和系统设计修订。因此,提高了系统集成效率并且降低了研究和制造成本。描述了基于灰色聚类决策模型的新颖性/价值-监测参数优化选择过程,分析结果表明,该方法具有一定的有效性,合理性和普遍性。

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