Gulizhati Hailati, Shengxin Sun, Da Xie, Kai Zhou, Feng Ding, Xiaochao Fan, Yiheng Hu, Nan Zhao
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Subsequently, the study utilises machine learning algorithms to predict labels for normal operation, phase loss faults and overload faults, incorporating health degradation levels as knowledge-embedded foundations for the health state assessment. Finally, the Comprehensive Health Index (CHI) was evaluated, achieving 98.1% health assessment accuracy on test datasets in environments with data sampling frequencies below 1 Hz and relatively low data quality. This methodology establishes relationships between health states and actual fault records through a dynamic weight allocation strategy that provides quantified percentage values, reflecting actual equipment usage patterns and degradation trends. It bridges the gap between theoretical diagnostic accuracy and practical industrial implementation requirements, providing highly robust maintenance strategies for industrial scenarios.</p>","PeriodicalId":13352,"journal":{"name":"Iet Electric Power Applications","volume":"19 1","pages":""},"PeriodicalIF":1.5000,"publicationDate":"2025-08-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://ietresearch.onlinelibrary.wiley.com/doi/epdf/10.1049/elp2.70090","citationCount":"0","resultStr":"{\"title\":\"Multicondition Health Condition Assessment for Electric Motors Based on Knowledge Embedding Machine Learning and Statistical Data Fusion\",\"authors\":\"Gulizhati Hailati, Shengxin Sun, Da Xie, Kai Zhou, Feng Ding, Xiaochao Fan, Yiheng Hu, Nan Zhao\",\"doi\":\"10.1049/elp2.70090\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>In industrial applications, motor operational status is crucial for production efficiency. 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Multicondition Health Condition Assessment for Electric Motors Based on Knowledge Embedding Machine Learning and Statistical Data Fusion
In industrial applications, motor operational status is crucial for production efficiency. However, timely detection and prediction of motor faults present significant challenges, often resulting in production incidents and substantial maintenance costs. This paper presents a novel approach for assessing motor equipment health based on knowledge-embedded machine learning and statistical data evaluation. Specifically, the methodology first employs mechanism-based motor operational models and statistical methods to identify key variable parameters associated with typical operational states from extensive monitoring variables, serving as input layers for machine learning algorithms. Subsequently, the study utilises machine learning algorithms to predict labels for normal operation, phase loss faults and overload faults, incorporating health degradation levels as knowledge-embedded foundations for the health state assessment. Finally, the Comprehensive Health Index (CHI) was evaluated, achieving 98.1% health assessment accuracy on test datasets in environments with data sampling frequencies below 1 Hz and relatively low data quality. This methodology establishes relationships between health states and actual fault records through a dynamic weight allocation strategy that provides quantified percentage values, reflecting actual equipment usage patterns and degradation trends. It bridges the gap between theoretical diagnostic accuracy and practical industrial implementation requirements, providing highly robust maintenance strategies for industrial scenarios.
期刊介绍:
IET Electric Power Applications publishes papers of a high technical standard with a suitable balance of practice and theory. The scope covers a wide range of applications and apparatus in the power field. In addition to papers focussing on the design and development of electrical equipment, papers relying on analysis are also sought, provided that the arguments are conveyed succinctly and the conclusions are clear.
The scope of the journal includes the following:
The design and analysis of motors and generators of all sizes
Rotating electrical machines
Linear machines
Actuators
Power transformers
Railway traction machines and drives
Variable speed drives
Machines and drives for electrically powered vehicles
Industrial and non-industrial applications and processes
Current Special Issue. Call for papers:
Progress in Electric Machines, Power Converters and their Control for Wave Energy Generation - https://digital-library.theiet.org/files/IET_EPA_CFP_PEMPCCWEG.pdf