Multi-Objective Optimization of Electrical Machines using a Hybrid Data-and Physics-Driven Approach
Parekh, Vivek, Flore, Dominik, Schöps, Sebastian, Theisinger, Peter
–arXiv.org Artificial Intelligence
Magneto-static finite element (FE) simulations make numerical optimization of electrical machines very time-consuming and computationally intensive during the design stage. In this paper, we present the application of a hybrid data-and physics-driven model for numerical optimization of permanent magnet synchronous machines (PMSM). Following the data-driven supervised training, deep neural network (DNN) will act as a meta-model to characterize the electromagnetic behavior of PMSM by predicting intermediate FE measures. These intermediate measures are then post-processed with various physical models to compute the required key performance indicators (KPIs), e.g., torque, shaft power, and material costs. We perform multi-objective optimization with both classical FE and a hybrid approach using a nature-inspired evolutionary algorithm. We show quantitatively that the hybrid approach maintains the quality of Pareto results better or close to conventional FE simulation-based optimization while being computationally very cheap.
arXiv.org Artificial Intelligence
Jun-15-2023
- Country:
- North America > United States (0.05)
- Europe > Germany
- Hesse > Darmstadt Region
- Darmstadt (0.06)
- Baden-Württemberg > Stuttgart Region
- Stuttgart (0.05)
- Hesse > Darmstadt Region
- Genre:
- Research Report (0.51)
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