Litcius/Paper detail

Enabling Data-Driven Condition Monitoring of Power Electronic Systems With Artificial Intelligence: Concepts, Tools, and Developments

Shuai Zhao, Huai Wang

2021IEEE Power Electronics Magazine87 citationsDOI

Abstract

Condition monitoring is a proactive measure to realize operation optimization, predictive maintenance, and high availability of Power Electronic Systems (PES). It is demanded by reliability-, safety-, or availability-critical applications. The core of condition monitoring is a prediction based on historical and present information. Artificial Intelligence (AI) could play a role in addressing optimization, regression, and classification problems in predicting the operation or health status of PES. Besides AI algorithms, quality data collection, objective formulation, and result validation require an in-depth understanding of the PES. The nexus between PES and AI expects to create overarching effects in the condition monitoring area. This article presents exploratory efforts in the data-driven condition monitoring of PES in the view of existing challenges and emerging opportunities.

Topics & Concepts

Condition monitoringReliability (semiconductor)Nexus (standard)Computer scienceQuality (philosophy)Risk analysis (engineering)Artificial intelligenceReliability engineeringPower (physics)Machine learningEngineeringEmbedded systemEpistemologyQuantum mechanicsMedicinePhilosophyElectrical engineeringPhysicsSilicon Carbide Semiconductor TechnologiesPower System Reliability and MaintenanceMultilevel Inverters and Converters
Enabling Data-Driven Condition Monitoring of Power Electronic Systems With Artificial Intelligence: Concepts, Tools, and Developments | Litcius