Presentation Type
Lecture

Artificial Intelligence-Assisted Design and Fault Diagnosis of Electric Motors for Green Transportation

Presenter
Title

Min-Fu Hsieh

Country
TWN
Affiliation
National Chen Kung University

Presentation Menu

Abstract

The impact of artificial intelligence (AI) is rapidly growing and is increasingly pivotal across a wide range of disciplines, from innovative scientific research to practical, everyday applications. The powerful capabilities of AI—spanning data analysis, predictive modeling, and beyond—equip researchers and professionals with unparalleled tools to tackle complex problems, push the boundaries of scientific discovery, and elevate productivity to unprecedented levels. This talk will explore the integration of AI in diagnosing motor faults and advancing motor design, highlighting how AI can significantly enhance the reliability and performance of electric motors in green transportation. It will delve into the use of machine learning and deep learning models to predict and prevent motor failures (e.g., inter-turn short-circuits, demagnetization, and bearing faults) [1]-[3], which is essential for ensuring safety and reliability in transportation and industry. Furthermore, the talk will highlight AI-driven innovations in motor design [4], such as noise-reduction, offering insights into how AI can revolutionize traditional motor systems and contribute to ongoing improvements in predictive maintenance and design practices.

[1]  A. Mohammad-Alikhani, B. Nahid-Mobarakeh, and M. F. Hsieh, “One-Dimensional LSTM-Regulated Deep Residual Network for Data-Driven Fault Detection in Electric Machines,” IEEE Trans. Industrial Elect. vol. 71, no. 3, pp. 3083-3092, Mar 2024.
[2]  A. Mohammad-Alikhani, B. Nahid-Mobarakeh, and M. F. Hsieh, “Diagnosis of Mechanical and Electrical Faults in Electric Machines Using a Lightweight Frequency-Scaled Convolutional Neural Network,” IEEE Trans. Energy Conver., early access, Nov 2024, doi: 10.1109/TEC.2024.3490736.
[3]  K. J. Shih, M. F. Hsieh, B. J. Chen, and S. F. Huang, “Machine Learning for Inter-Turn Short-Circuit Fault Diagnosis in Permanent Magnet Synchronous Motors,” IEEE Trans. Magn., vol. 58, no. 8, 8204307, Apr 2022.
[4]  M. F. Hsieh, L. H. Lin, T. A. Huynh, and D. Dorrell, “Development of Machine Learning-Based Design Platform for Permanent Magnet Synchronous Motor Toward Simulation Free,” IEEE Trans. Magn., vol. 59, no. 11, 8204307, Aug 2023.