Prognostics and Health Management for Maintenance Practitioners - Review, Implementation and Tools Evaluation

IF 1.4 Q2 ENGINEERING, MULTIDISCIPLINARY
V. Atamuradov, K. Medjaher, P. Dersin, B. Lamoureux, N. Zerhouni
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引用次数: 149

Abstract

In literature, prognostics and health management (PHM) systems have been studied by many researchers from many different engineering fields to increase system reliability, availability, safety and to reduce the maintenance cost of engineering assets. Many works conducted in PHM research concentrate on designing robust and accurate models to assess the health state of components for particular applications to support decision making. Models which involve mathematical interpretations, assumptions and approximations make PHM hard to understand and implement in real world applications, especially by maintenance practitioners in industry. Prior knowledge to implement PHM in complex systems is crucial to building highly reliable systems. To fill this gap and motivate industry practitioners, this paper attempts to provide a comprehensive review on PHM domain and discusses important issues on uncertainty quantification, implementation aspects next to prognostics feature and tool evaluation. In this paper, PHM implementation steps consists of; (1) critical component analysis, (2) appropriate sensor selection for condition monitoring (CM), (3) prognostics feature evaluation under data analysis and (4) prognostics methodology and tool evaluation matrices derived from PHM literature. Besides PHM implementation aspects, this paper also reviews previous and on-going research in high-speed train bogies to highlight problems faced in train industry and emphasize the significance of PHM for further investigations.
维修从业人员的预后和健康管理-审查、实施和工具评估
在文献中,来自不同工程领域的许多研究人员对预测和健康管理(PHM)系统进行了研究,以提高系统的可靠性、可用性、安全性和降低工程资产的维护成本。在PHM研究中进行的许多工作集中在设计健壮和准确的模型来评估特定应用程序组件的健康状态,以支持决策制定。涉及数学解释、假设和近似的模型使PHM难以在现实世界的应用中理解和实现,特别是对于工业中的维护从业者。在复杂系统中实现PHM的先验知识对于构建高可靠性系统至关重要。为了填补这一空白并激励行业从业者,本文试图对PHM领域进行全面回顾,并讨论不确定性量化、实施方面的重要问题,其次是预测特征和工具评估。在本文中,PHM的实现步骤包括;(1)关键成分分析;(2)为状态监测(CM)选择合适的传感器;(3)数据分析下的预测特征评估;(4)从PHM文献中导出的预测方法和工具评估矩阵。除了PHM的实施方面,本文还回顾了高速列车转向架以往和正在进行的研究,突出了列车行业面临的问题,强调了PHM对进一步研究的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.90
自引率
9.50%
发文量
18
审稿时长
9 weeks
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