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Prediction of power losses in transformer cores using feed forward neural network and genetic algorithm

机译:基于前馈神经网络和遗传算法的变压器铁心功率损耗预测

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摘要

A mathematical model for core losses was improved for frequency and geometrical effects using experimental data obtained from toroidal wound cores. The improved mathematical model was applied to the other soft magnetic materials and optimizes its parameters with the aim of neural networks. A 6-neuron input layer, 9-neuron output layer model with two hidden layers were developed. While the input neurons were geometrical parameters, magnetising frequency, magnetic induction and resistivity of the soft magnetic materials, output neurons were correlation coefficients and the power loss. The network has been trained by the genetic algorithm. The linear correlation coefficient was found to be 99percent.
机译:使用从环形绕线铁芯获得的实验数据,针对频率和几何效应改进了铁芯损耗的数学模型。将改进的数学模型应用于其他软磁材料,并以神经网络为目标对其参数进行优化。建立了具有两个隐藏层的6神经元输入层,9神经元输出层模型。输入神经元是几何参数,磁化频率,软磁材料的磁感应强度和电阻率,而输出神经元是相关系数和功率损耗。该网络已通过遗传算法训练。发现线性相关系数为99%。

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