T30.3 - Embedding-Encoded Artificial Neural Network Model for MOSFET Preselection: Integrating Analytic Loss Models with Dynamic Characteristics from Datasheets
The rapid emergence of wide-bandgap deviceshas greatly expanded the choices of components. Efforts have been devoted to developing analytical models for calculating power losses. However, the complexity arises due to the dependence of power losses on various variables and operation conditions, making the computation intensive and challenging when comparing hundreds of components. To address these limitations and expedite power loss estimation for a wide range of component choices and operation conditions, this paper proposes the application of an embedding encoding Artificial Neural Network (ANN) for power MOSFETs loss modelling. The ANN models the power losses with the dynamic parameters from datasheets under the required operational conditions. In the meantime, Embedding encoding is implemented to include the categories’ information in ANN to guarantee a one-to-one mapping between categories and their encoding. The structure of the proposed ANN is optimized to reach a low training, validating and testing error. Experimental validation on a SiC device confirms the efficacy of the proposed ANN model for estimating power losses on MOSFETs.