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对制造领域的诊断和预后能力及最佳实践的综述。

A review of diagnostic and prognostic capabilities and best practices for manufacturing.

作者信息

Vogl Gregory W, Weiss Brian A, Helu Moneer

机构信息

Engineering Laboratory, National Institute of Standards and Technology (NIST), 100 Bureau Drive, Gaithersburg, MD 20899-8220, USA.

出版信息

J Intell Manuf. 2019 Jan;30(1):79-95. doi: 10.1007/s10845-016-1228-8. Epub 2016 Jun 9.


DOI:10.1007/s10845-016-1228-8
PMID:30820072
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6391061/
Abstract

Prognostics and health management (PHM) technologies reduce time and costs for maintenance of products or processes through efficient and cost-effective diagnostic and prognostic activities. PHM systems use real-time and historical state information of subsystems and components to provide actionable information, enabling intelligent decision-making for improved performance, safety, reliability, and maintainability. However, PHM is still an emerging field, and much of the published work has been either too exploratory or too limited in scope. Future smart manufacturing systems will require PHM capabilities that overcome current challenges, while meeting future needs based on best practices, for implementation of diagnostics and prognostics. This paper reviews the challenges, needs, methods, and best practices for PHM within manufacturing systems. This includes PHM system development of numerous areas highlighted by diagnostics, prognostics, dependability analysis, data management, and business. Based on current capabilities, PHM systems are shown to benefit from open-system architectures, cost-benefit analyses, method verification and validation, and standards.

摘要

预测与健康管理(PHM)技术通过高效且具成本效益的诊断和预测活动,减少产品或流程维护的时间和成本。PHM系统利用子系统和组件的实时及历史状态信息来提供可操作的信息,从而实现智能决策,以提升性能、安全性、可靠性和可维护性。然而,PHM仍是一个新兴领域,且许多已发表的工作要么过于探索性,要么范围过于有限。未来的智能制造系统将需要具备PHM能力,这些能力既能克服当前的挑战,又能基于最佳实践满足未来需求,以实现诊断和预测。本文回顾了制造系统中PHM的挑战、需求、方法和最佳实践。这包括由诊断、预测、可靠性分析、数据管理和业务所突出的众多领域的PHM系统开发。基于当前能力,PHM系统显示出受益于开放系统架构、成本效益分析、方法验证和确认以及标准。

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[7]
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[8]
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[9]
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[10]
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本文引用的文献

[1]
The Current State of Sensing, Health Management, and Control for Small-To-Medium-Sized Manufacturers.

Proc ASME Int Conf Manuf Sci Eng. 2016

[2]
A Sensor-Based Method for Diagnostics of Machine Tool Linear Axes.

Proc Annu Conf Progn Health Manag Soc. 2015

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