Application of AI to Predict PMSM Temperature

Sharanabasappa L. Paramoji, Basavaraj N. Pyati
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引用次数: 0

Abstract

Technology transformation in mobility solution has given electric motors higher attentions. So, it's essential to understand electric motor's thermal behavior to avoid failures and improve cycle efficiency. Its cumbersome to estimate inner components temperature with available testing & simulation methods. In this work, attempt was made to analyze the electric motor sensor data at various load conditions and build a correlation matrix of various parameters. This enabled a good understanding of dependent parameters to predict the rotor and stator temperature. Critical parameters in the data set were segregated and different regression models were investigated. The outcome of Machine Learning models was not satisfactory in terms of accuracy. Hence various Deep Learning models such as ANN, CNN and RNN were considered for further evaluation. Deep Learning Models with hyper parameter tuning technique yielded 95% regression score.
人工智能在PMSM温度预测中的应用
移动解决方案的技术变革使电动机受到越来越多的关注。因此,了解电动机的热行为对避免故障和提高循环效率至关重要。用现有的测试和模拟方法来估计内部元件的温度是很麻烦的。在本工作中,尝试对各种负载条件下的电动机传感器数据进行分析,建立各种参数的相关矩阵。这使得一个很好的理解依赖参数来预测转子和定子的温度。对数据集中的关键参数进行分离,并研究了不同的回归模型。机器学习模型的结果在准确性方面并不令人满意。因此,考虑了ANN、CNN和RNN等各种深度学习模型进行进一步评估。采用超参数调整技术的深度学习模型的回归得分为95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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