lang, wangjie ORCID: https://orcid.org/0000-0001-8343-2957 (2023) Artificial Intelligence -Based Condition Monitoring Techniques for Powertrains in Electric Vehicles. PhD thesis, University of York.
Abstract
With the rapid development and wide application of electric vehicles (EVs), condition monitoring and fault diagnosis of EV motors have become key tasks to ensure the reliability and safety of EVs. The aim of this study is to propose an integrated approach to achieve accurate monitoring of electric vehicle motor status and timely diagnosis of faults. This research utilizes a variety of data-driven methods including few-shot learning and graph neural networks to improve the reliability and efficiency of these systems. The first segment explores the use of AI in fault detection and diagnosis (FDD), particularly in Permanent Magnet Synchronous Motors (PMSMs). By employing a hybrid few-shot learning network that amalgamates model-driven and data-driven methods, the research addresses the limitations in acquiring sufficient quality data for fault diagnosis. It particularly focuses on detecting Voltage Source Inverter (VSI) open-circuit faults, enhancing diagnostic certainty through attention-based vision transformer models. The second part delves into vibration analysis, a vital aspect of motor condition monitoring. It introduces an attention-based spatial-spectral graph convolutional network (ASSGCN) aimed at reducing the number of required sensors while maintaining accurate vibration signal reconstruction. The model investigates the spectral features and spatial configurations of the vibration signals, predicting them at different sensor sampling points effectively. Lastly, the research presents a spatial-spectral-based inductive graph neural network specifically designed to tackle the challenges of high evaluation accuracy with fewer vibration sensors. This algorithm aggregates and extracts features of sensor graph signals and employs convolutional networks for reconstructing vibration signals at virtual sensor points. Collectively, these approaches contribute to the reduction of operational costs, enhancement of system reliability, and improvement of fault diagnostic accuracy. Experimental verifications have been carried out on a 21 kW IPMSM testing rig equipped with Brüel & Kjær's vibration sensing technology, confirming the efficacy of the proposed methods. These techniques pave the way for more efficient, reliable, and cost-effective condition monitoring and fault detection in electric motor systems across various applications.
Metadata
Supervisors: | Mohammad, Nasr Esfahani |
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Keywords: | Electric vehicle; Fault diagnosis; Data-driven algorithm; Vibration signal |
Awarding institution: | University of York |
Academic Units: | The University of York > School of Physics, Engineering and Technology (York) |
Academic unit: | Department of Physics, Engineering and Technology |
Depositing User: | Mr wangjie lang |
Date Deposited: | 08 Dec 2023 13:51 |
Last Modified: | 08 Dec 2023 13:51 |
Open Archives Initiative ID (OAI ID): | oai:etheses.whiterose.ac.uk:33975 |
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