An Adaptive Fault Diagnosis of Electric Vehicles: An Artificial Intelligence Blended Signal Processing Methodology

IF 2.1 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Canadian Journal of Electrical and Computer Engineering Pub Date : 2023-06-19 DOI:10.1109/ICJECE.2023.3264852
Lingli Gong;Anshuman Sharma;Mohammad Abdul Bhuiya;Hilmy Awad;Mohamed Z. Youssef
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Abstract

This article demonstrates an innovative design of a sensorless technique to diagnose, monitor, and broadcast faults in an electric vehicle’s (EV) propulsion operating conditions. By utilizing the artificial intelligence with a signal processing mixed clustering technique, an onboard health monitoring system (HMS) has been presented. The clustering technique uses a data-mining approach to prevent future failures for predictive maintenance planning, which is novel. For example, the propulsion inverter is equipped with a diagnostic system that uses the proposed algorithm to compare the reference gate-driving signal with the actual output voltage of the voltage source inverter (VSI). This article presents different failure scenarios of the inverter and demonstrates the capability to be applied to other components, such as brakes and motors. To validate the proposed technique, the necessary algorithm calculations, simulation, and laboratory prototype results are provided. The proposed work is proven accurate with fast response in healthy and faulty conditions.
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电动汽车自适应故障诊断:一种人工智能混合信号处理方法
本文展示了一种无传感器技术的创新设计,用于诊断、监测和广播电动汽车(EV)推进运行条件下的故障。利用人工智能和信号处理混合聚类技术,提出了一种机载健康监测系统。聚类技术使用数据挖掘方法来预防预测性维护计划的未来故障,这是一种新颖的方法。例如,推进逆变器配备有诊断系统,该诊断系统使用所提出的算法将参考栅极驱动信号与电压源逆变器(VSI)的实际输出电压进行比较。本文介绍了逆变器的不同故障场景,并展示了应用于其他部件(如制动器和电机)的能力。为了验证所提出的技术,提供了必要的算法计算、仿真和实验室原型结果。所提出的工作被证明是准确的,在健康和故障条件下反应迅速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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