A review on Machine Learning Enhanced Predictive Maintenance for Electric Vehicle Power Electronics: A Pathway to Improved Reliability and Longevity

The emergence of electric vehicles (EVs) as a mainstream mode of transportation presents new challenges in the realm of power electronics, particularly concerning reliability and longevity. Power electronics are the cornerstone of EV performance, dictating efficiency, durability, and overall vehicle...

Full description

Bibliographic Details
Main Authors: Gupta Priyanka, A.B Gurulakshmi, Nijhawan Ginni, Praveen, Tyagi Lalit Kumar, Hussien Raghad Ahmed
Format: Article
Language:English
Published: EDP Sciences 2024-01-01
Series:E3S Web of Conferences
Subjects:
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2024/35/e3sconf_icarae2023_03017.pdf
_version_ 1797235289405521920
author Gupta Priyanka
A.B Gurulakshmi
Nijhawan Ginni
Praveen
Tyagi Lalit Kumar
Hussien Raghad Ahmed
author_facet Gupta Priyanka
A.B Gurulakshmi
Nijhawan Ginni
Praveen
Tyagi Lalit Kumar
Hussien Raghad Ahmed
author_sort Gupta Priyanka
collection DOAJ
description The emergence of electric vehicles (EVs) as a mainstream mode of transportation presents new challenges in the realm of power electronics, particularly concerning reliability and longevity. Power electronics are the cornerstone of EV performance, dictating efficiency, durability, and overall vehicle health. Traditional maintenance strategies fall short in addressing the dynamic operational demands and complex failure mechanisms inherent in EV power systems. This paper introduces a machine learning (ML)-enhanced predictive maintenance framework designed to revolutionize the upkeep of EV power electronics. By harnessing advanced ML algorithms, the framework predicts potential system failures and degradation patterns, enabling preemptive maintenance actions. A robust data-driven approach is employed, utilizing operational data and failure modes to train the predictive models. The efficacy of the proposed method is demonstrated through extensive simulation and real-world EV power system analyses, showcasing significant improvements in fault identification accuracy and maintenance scheduling optimization. The result is a substantial extension of component lifespan and a reduction in unplanned downtimes, propelling EV power electronics towards higher reliability standards. This work not only contributes a novel predictive maintenance methodology but also paves the way for adaptive maintenance regimes, tailored to the unique demands of EV power electronics systems in the pursuit of sustainable and resilient transportation solutions.
first_indexed 2024-04-24T16:45:36Z
format Article
id doaj.art-ec3f8e8c14984ee684a92551037ea073
institution Directory Open Access Journal
issn 2267-1242
language English
last_indexed 2024-04-24T16:45:36Z
publishDate 2024-01-01
publisher EDP Sciences
record_format Article
series E3S Web of Conferences
spelling doaj.art-ec3f8e8c14984ee684a92551037ea0732024-03-29T08:30:16ZengEDP SciencesE3S Web of Conferences2267-12422024-01-015050301710.1051/e3sconf/202450503017e3sconf_icarae2023_03017A review on Machine Learning Enhanced Predictive Maintenance for Electric Vehicle Power Electronics: A Pathway to Improved Reliability and LongevityGupta Priyanka0A.B Gurulakshmi1Nijhawan Ginni2Praveen3Tyagi Lalit Kumar4Hussien Raghad Ahmed5Institute of Aeronautical EngineeringDepartment of Electronics and Comunication Engineering, New Horizon College of EngineeringLovely Professional UniversityLloyd Institute of Engineering & TechnologyLloyd Institute of Management and TechnologyHilla university collegeThe emergence of electric vehicles (EVs) as a mainstream mode of transportation presents new challenges in the realm of power electronics, particularly concerning reliability and longevity. Power electronics are the cornerstone of EV performance, dictating efficiency, durability, and overall vehicle health. Traditional maintenance strategies fall short in addressing the dynamic operational demands and complex failure mechanisms inherent in EV power systems. This paper introduces a machine learning (ML)-enhanced predictive maintenance framework designed to revolutionize the upkeep of EV power electronics. By harnessing advanced ML algorithms, the framework predicts potential system failures and degradation patterns, enabling preemptive maintenance actions. A robust data-driven approach is employed, utilizing operational data and failure modes to train the predictive models. The efficacy of the proposed method is demonstrated through extensive simulation and real-world EV power system analyses, showcasing significant improvements in fault identification accuracy and maintenance scheduling optimization. The result is a substantial extension of component lifespan and a reduction in unplanned downtimes, propelling EV power electronics towards higher reliability standards. This work not only contributes a novel predictive maintenance methodology but also paves the way for adaptive maintenance regimes, tailored to the unique demands of EV power electronics systems in the pursuit of sustainable and resilient transportation solutions.https://www.e3s-conferences.org/articles/e3sconf/pdf/2024/35/e3sconf_icarae2023_03017.pdfpredictive maintenanceelectric vehiclepower electronicsmachine learningreliability
spellingShingle Gupta Priyanka
A.B Gurulakshmi
Nijhawan Ginni
Praveen
Tyagi Lalit Kumar
Hussien Raghad Ahmed
A review on Machine Learning Enhanced Predictive Maintenance for Electric Vehicle Power Electronics: A Pathway to Improved Reliability and Longevity
E3S Web of Conferences
predictive maintenance
electric vehicle
power electronics
machine learning
reliability
title A review on Machine Learning Enhanced Predictive Maintenance for Electric Vehicle Power Electronics: A Pathway to Improved Reliability and Longevity
title_full A review on Machine Learning Enhanced Predictive Maintenance for Electric Vehicle Power Electronics: A Pathway to Improved Reliability and Longevity
title_fullStr A review on Machine Learning Enhanced Predictive Maintenance for Electric Vehicle Power Electronics: A Pathway to Improved Reliability and Longevity
title_full_unstemmed A review on Machine Learning Enhanced Predictive Maintenance for Electric Vehicle Power Electronics: A Pathway to Improved Reliability and Longevity
title_short A review on Machine Learning Enhanced Predictive Maintenance for Electric Vehicle Power Electronics: A Pathway to Improved Reliability and Longevity
title_sort review on machine learning enhanced predictive maintenance for electric vehicle power electronics a pathway to improved reliability and longevity
topic predictive maintenance
electric vehicle
power electronics
machine learning
reliability
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2024/35/e3sconf_icarae2023_03017.pdf
work_keys_str_mv AT guptapriyanka areviewonmachinelearningenhancedpredictivemaintenanceforelectricvehiclepowerelectronicsapathwaytoimprovedreliabilityandlongevity
AT abgurulakshmi areviewonmachinelearningenhancedpredictivemaintenanceforelectricvehiclepowerelectronicsapathwaytoimprovedreliabilityandlongevity
AT nijhawanginni areviewonmachinelearningenhancedpredictivemaintenanceforelectricvehiclepowerelectronicsapathwaytoimprovedreliabilityandlongevity
AT praveen areviewonmachinelearningenhancedpredictivemaintenanceforelectricvehiclepowerelectronicsapathwaytoimprovedreliabilityandlongevity
AT tyagilalitkumar areviewonmachinelearningenhancedpredictivemaintenanceforelectricvehiclepowerelectronicsapathwaytoimprovedreliabilityandlongevity
AT hussienraghadahmed areviewonmachinelearningenhancedpredictivemaintenanceforelectricvehiclepowerelectronicsapathwaytoimprovedreliabilityandlongevity
AT guptapriyanka reviewonmachinelearningenhancedpredictivemaintenanceforelectricvehiclepowerelectronicsapathwaytoimprovedreliabilityandlongevity
AT abgurulakshmi reviewonmachinelearningenhancedpredictivemaintenanceforelectricvehiclepowerelectronicsapathwaytoimprovedreliabilityandlongevity
AT nijhawanginni reviewonmachinelearningenhancedpredictivemaintenanceforelectricvehiclepowerelectronicsapathwaytoimprovedreliabilityandlongevity
AT praveen reviewonmachinelearningenhancedpredictivemaintenanceforelectricvehiclepowerelectronicsapathwaytoimprovedreliabilityandlongevity
AT tyagilalitkumar reviewonmachinelearningenhancedpredictivemaintenanceforelectricvehiclepowerelectronicsapathwaytoimprovedreliabilityandlongevity
AT hussienraghadahmed reviewonmachinelearningenhancedpredictivemaintenanceforelectricvehiclepowerelectronicsapathwaytoimprovedreliabilityandlongevity