DOI: 10.1115/1.4063245 ISSN:

Incremental Learning Strategy Assisted Multi-Objective Optimization for An Oil-Water Mixed Cooling Motor

Wei Li, Yongsheng Li, Congbo Li, Ningbo Wang, Jiadong Fu
  • Fluid Flow and Transfer Processes
  • General Engineering
  • Condensed Matter Physics
  • General Materials Science

Abstract

As the core component of electric vehicles (EVs), the performance of motors affects the use of EVs. Motors are sensitive to temperature, and overheated operating temperature may cause the deterioration of the magnetic properties and the reduction of efficiency. To effectively improve the heat dissipation of the motor, this work presents an incremental learning strategy assisted multi-objective optimization method for an oil-water mixed cooling induction motor (IM). The key parameters of the motor are modeled parametrically, and design of experiment is carried out by Latin hypercube method. The incremental learning strategy is used to improve the low accuracy of surrogate model. Four multi-objective optimization algorithms are used to drive the optimization process, and the optimal cooling system parameters are obtained. The reliability of the proposed method is verified by motor bench experiments. The optimization results suggest that the maximum temperature of the motor is reduced by 5 K after optimization, and the heat dissipation of the motor is improved effectively, which provides a theoretical basis for further promotion and improvement of induction motor.

More from our Archive