工业故障预测中选择机器学习技术的多准则框架

IF 3.6 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Miguel A. De C. Michalski;Carlos A. Murad;Fabio N. Kashiwagi;Gilberto F. M. De Souza;Halley J. B. Da Silva;Hyghor M. Côrtes
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引用次数: 0

摘要

选择适当的机器学习(ML)技术进行故障预测仍然是开发工业系统预测性维护策略的关键步骤,但通常是不结构化的步骤。虽然许多研究应用机器学习来估计剩余使用寿命(RUL)或预测故障概率,但模型选择通常由特殊实践或狭窄的性能指标指导,忽略了诸如数据可用性、可解释性、自动化级别和部署可行性等上下文因素。本文提出了一个参数化的多标准决策框架,以支持机器学习技术在故障预测中的选择,特别是在能源相关应用中。该框架源于结构化的文献调查,引入了12个选择参数,分为主要要求和次要评价标准。这些参数,如标签要求、模型复杂性和可移植性,允许用户排除不合适的技术,并根据特定于应用程序的约束对可行的候选技术进行排序。该框架应用于一个涉及变电站故障预测的真实用例,说明了它如何支持透明、可复制和操作接地的模型选择。结果表明,该框架对不同工业环境的适应性及其与能源系统决策的相关性。通过将经验见解与实施需求相结合,所提出的方法提供了一种实用的工具,可以将机器学习技术选择与能源部门预测和维护计划的目标相结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Criteria Framework for Selecting Machine Learning Techniques for Industrial Fault Prognosis
Selecting appropriate Machine Learning (ML) techniques for fault prognosis remains a critical yet often understructured step in developing predictive maintenance strategies for industrial systems. While numerous studies apply ML to estimate Remaining Useful Life (RUL) or forecast failure probabilities, model selection is frequently guided by ad hoc practices or narrow performance metrics, overlooking contextual factors such as data availability, interpretability, automation level, and deployment feasibility. This paper presents a parameterized, multi-criteria decision-making framework to support ML techniques selection in fault prognosis, particularly within energy-related applications. Derived from a structured literature survey, the framework introduces twelve selection parameters, divided into primary requirements and secondary evaluation criteria. These parameters, such as label requirements, model complexity, and transferability, allow users to eliminate unsuitable techniques and rank viable candidates according to application-specific constraints. The framework is applied to a real-world use case involving failure prediction in electrical substations, illustrating how it supports transparent, replicable, and operationally grounded model selection. Results demonstrate the framework’s adaptability to different industrial contexts and its relevance for decision-making in energy systems. By bridging empirical insights with implementation demands, the proposed approach offers a practical tool for aligning ML technique selection with the goals of energy-sector prognostics and maintenance planning.
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来源期刊
IEEE Access
IEEE Access COMPUTER SCIENCE, INFORMATION SYSTEMSENGIN-ENGINEERING, ELECTRICAL & ELECTRONIC
CiteScore
9.80
自引率
7.70%
发文量
6673
审稿时长
6 weeks
期刊介绍: IEEE Access® is a multidisciplinary, open access (OA), applications-oriented, all-electronic archival journal that continuously presents the results of original research or development across all of IEEE''s fields of interest. IEEE Access will publish articles that are of high interest to readers, original, technically correct, and clearly presented. Supported by author publication charges (APC), its hallmarks are a rapid peer review and publication process with open access to all readers. Unlike IEEE''s traditional Transactions or Journals, reviews are "binary", in that reviewers will either Accept or Reject an article in the form it is submitted in order to achieve rapid turnaround. Especially encouraged are submissions on: Multidisciplinary topics, or applications-oriented articles and negative results that do not fit within the scope of IEEE''s traditional journals. Practical articles discussing new experiments or measurement techniques, interesting solutions to engineering. Development of new or improved fabrication or manufacturing techniques. Reviews or survey articles of new or evolving fields oriented to assist others in understanding the new area.
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