MACHINE LEARNING POWERED ANOMALY DETECTION FOR MAINTENANCE WORK ORDERS

An industrial work order analysis system applies statistical and machine learning analytics to both open and closed work orders to identify problems and abnormalities that could impact manufacturing and maintenance operations. The analysis system applies algorithms to learn normal maintenance behavi...

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Bibliographic Details
Main Authors Doulas, Peter, Hogan, William, Mirhoseininejad, Seyedmorteza, Esmalifalak, Mohammad, Mathewson, Taylor, Emery, Francis, Yu, Min Hua, Iyengar, Akshay
Format Patent
LanguageEnglish
French
German
Published 25.01.2023
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Summary:An industrial work order analysis system applies statistical and machine learning analytics to both open and closed work orders to identify problems and abnormalities that could impact manufacturing and maintenance operations. The analysis system applies algorithms to learn normal maintenance behaviors or characteristics for different types of maintenance tasks and to flag abnormal maintenance behaviors that deviate significantly from normal maintenance procedures. Based on this analysis, embodiments of the work order analysis system can identify unnecessarily costly maintenance procedures or practices, as well as predict asset failures and offer enterprise-specific recommendations intended to reduce machine downtime and optimize the maintenance process.
Bibliography:Application Number: EP20220186342