Parasitic Parameter Prediction for Planar Transformers Based on Neural Network
Chang Tan,
Jianxun Hong,
Zihao Wu
et al.
Abstract:Parasitic parameters such as leakage inductance and distributed capacitance of planar transformers have a direct impact on the performance and efficiency of transformers. Traditional methods for parasitic parameter prediction are commonly based on empirical formulas or simulation software, but they have problems of high computational complexity, time-consuming and low accuracy. In this paper, a method for predicting parasitic parameters of planar transformers based on a multilayer perceptron (MLP) under a spec… Show more
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