Machine Learning Approaches for Diagnostics and Prognostics of Industrial Systems Using Open Source Data from PHM Data Challenges: A Review
Hanqi Su, Jay Lee

TL;DR
This review comprehensively analyzes machine learning methods applied to industrial diagnostics and prognostics using open-source data from PHM Data Challenges, highlighting challenges, advancements, and future directions.
Contribution
It provides a unified ML framework and systematic categorization of approaches, challenges, and solutions in PHM data competitions from 2018 to 2023.
Findings
Categorization of ML approaches in PHM challenges
Identification of data and model-related challenges
Summary of potential solutions and future research directions
Abstract
In the field of Prognostics and Health Management (PHM), recent years have witnessed a significant surge in the application of machine learning (ML). Despite this growth, the field grapples with a lack of unified guidelines and systematic approaches for effectively implementing these ML techniques and comprehensive analysis regarding industrial open-source data across varied scenarios. To address these gaps, this paper provides a comprehensive review of ML approaches for diagnostics and prognostics of industrial systems using open-source datasets from PHM Data Challenge Competitions held between 2018 and 2023 by PHM Society and IEEE Reliability Society and summarizes a unified ML framework. This review systematically categorizes and scrutinizes the problems, challenges, methodologies, and advancements demonstrated in these competitions, highlighting the evolving role of both…
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Taxonomy
TopicsFault Detection and Control Systems · Machine Fault Diagnosis Techniques · Anomaly Detection Techniques and Applications
