Data-Driven Detection of Physical Faults and Cyber Attacks in Dual-Motor EV Powertrains

2022 IEEE/AIAA TRANSPORTATION ELECTRIFICATION CONFERENCE AND ELECTRIC AIRCRAFT TECHNOLOGIES SYMPOSIUM (ITEC+EATS 2022)(2022)

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摘要
In the last decades, with the pervasive utilization of digital control units and communication networks in modern electric vehicle powertrains, such safety-critical systems have become highly vulnerable to potential cyber threats. Current research primarily focuses on aggressive attacks, which usually cause drastic changes and disturbances to the systems. However, little research has addressed how to detect more stealthy attacks targeting electric vehicle powertrains and distinguish between such attacks and common physical faults. This paper bridges this gap by proposing a data-driven approach to detecting and diagnosing hidden attacks and common physical faults in the dual-motor electric vehicle powertrain. The proposed method achieves promising performance in detecting and diagnosing cyber-attacks and physical faults. It reaches an accuracy of nearly 100% on detecting anomalies and above 90% on distinguishing stealthy attacks from common physical faults.
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关键词
dual motor electric vehicle powertrain,dual motor EV,detecting anomalies,detecting diagnosing cyber-attacks,hidden attacks,data driven approach,stealthy attacks,drastic changes,aggressive attacks,potential cyber threats,safety critical systems,modern electric vehicle powertrains,communication networks,digital control units,pervasive utilization,cyber attacks,data driven detection
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