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Review of Machine Learning Techniques for Power Electronics Control and Optimization

Maryam Bahrami, Zeyad Khashroum

2023COMPUTATIONAL RESEARCH PROGRESS IN APPLIED SCIENCE &amp ENGINEERING20 citationsDOIOpen Access PDF

Abstract

In the rapidly advancing landscape of contemporary technology, power electronics assume a pivotal role across diverse applications, ranging from renewable energy systems to electric vehicles and consumer electronics. The efficacy and precision of these power electronics systems stand as cornerstones of their functionality. Within this context, the integration of machine learning techniques assumes paramount significance. This article endeavors to present an extensive and comprehensive review of the machine learning techniques that find application in power electronics control and optimization. Through meticulous exploration, we aim to elucidate the profound potential of these methods in shaping the future of power electronics control and optimization.

Topics & Concepts

Power electronicsContext (archaeology)ElectronicsComputer scienceControl (management)Systems engineeringPower optimizationControl engineeringArtificial intelligencePower (physics)EngineeringElectrical engineeringPower consumptionPaleontologyQuantum mechanicsPhysicsVoltageBiologyAdvanced Battery Technologies ResearchPower System Reliability and MaintenanceMultilevel Inverters and Converters