Deep Residual Convolutional and Recurrent Neural Networks for Temperature Estimation in Permanent Magnet Synchronous Motors

Wilhelm Kirchgässner, O. Wallscheid, J. Böcker
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引用次数: 42

Abstract

Most traction drive applications using permanent magnet synchronous motors (PMSMs) lack accurate temperature monitoring capabilities so that safe operation is ensured through expensive, oversized materials at the cost of its effective utilization. Classic thermal modeling is conducted with e.g. lumped-parameter thermal networks (LPTNs), which help to estimate internal component temperatures rather precisely but also require expertise in choosing model parameters and lack physical interpretability as soon as their degrees of freedom are curtailed in order to meet the real-time requirement. In this work, deep recurrent and convolutional neural networks with residual connections are empirically evaluated for their feasibility on the sequence learning task of predicting latent high-dynamic temperatures inside PMSMs, which, to the authors' best knowledge, has not been elaborated in previous literature. In a highly utilized PMSM for electric vehicle applications, the temperature profile in the stator teeth, winding, and yoke as well as the rotor's permanent magnets are modeled while their ground truth is available as test bench data. A model hyperparameter search is conducted sequentially via Bayesian optimization across different random number generator seeds in order to evaluate model training consistency and to find promising topologies as well as optimization strategies systematically. It has been found that the mean squared error and maximum absolute deviation performances of both, deep recurrent and convolutional neural networks with residual connections, meet those of LPTNs, without requiring domain expertise for their design. Code is available at [1] to assist related work.
基于深度残差卷积和递归神经网络的永磁同步电机温度估计
大多数使用永磁同步电机(pmms)的牵引驱动应用缺乏精确的温度监测能力,因此,通过昂贵的超大材料来确保安全运行,以其有效利用为代价。经典的热建模是用集总参数热网络(lptn)进行的,它有助于相当精确地估计内部组件的温度,但也需要在选择模型参数方面的专业知识,并且一旦为了满足实时性要求而限制了它们的自由度,就缺乏物理可解释性。在这项工作中,具有残差连接的深度递归和卷积神经网络对预测pmms内部潜在高动态温度的序列学习任务的可行性进行了实证评估,据作者所知,这在以前的文献中尚未得到阐述。在电动汽车应用的高度利用的永磁同步电机中,定子齿,绕组和轭以及转子永磁体中的温度分布被建模,而它们的地面真实值可作为试验台数据。通过贝叶斯优化,在不同的随机数生成器种子上依次进行模型超参数搜索,以评估模型训练的一致性,并系统地寻找有前途的拓扑和优化策略。研究发现,具有残差连接的深度递归神经网络和卷积神经网络的均方误差和最大绝对偏差性能满足lptn的性能,而不需要领域专业知识来设计。代码可在[1]中获得,以协助相关工作。
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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