基于变压器的编码器-投影-解码器神经网络结构预测电力磁力的B-H回路

Haoran Li, Diego Serrano, Shukai Wang, T. Guillod, Min Luo, Minjie Chen
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引用次数: 1

摘要

本文提出了一种基于变压器的编码器-投影-解码器神经网络结构,用于电力磁B-H磁滞环的建模。基于变压器的编码器-解码器网络架构将磁通密度激励波形(B)映射到相应的磁场强度波形(H)。预测的B-H回路可用于估计铁芯损耗和支持电路中的磁模拟。在变压器编码器和解码器之间添加一个投影仪,以捕获其他输入(如频率、温度和直流偏置)的影响。设计、训练和测试了一个变压器神经网络实例,证明了该结构的有效性。
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Predicting the B-H Loops of Power Magnetics with Transformer-based Encoder-Projector-Decoder Neural Network Architecture
This paper presents a transformer-based encoder-projector-decoder neural network architecture for modeling power magnetics B-H hysteresis loops. The transformer-based encoder-decoder network architecture maps a flux density excitation waveform (B) into the corresponding magnetic field strength (H) waveform. The predicted B-H loop can be used to estimate the core loss and support magnetics-in-circuit simulations. A projector is added between the transformer encoder and decoder to capture the impact of other inputs such as frequency, temperature, and dc bias. An example transformer neural network is designed, trained, and tested to prove the effectiveness of the proposed architecture.
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