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Investigation of long short-term memory networks to temperature prediction for permanent magnet synchronous motors

机译:长短期记忆网络对永磁同步电动机温度预测的研究

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Monitoring critical temperatures in permanent magnet synchronous motors (PMSMs) is crucial to ensure safe operation and maximum device utilization as well. In this work, the application of recurrent neural networks featuring memory blocks (LSTMs/GRUs) are investigated upon their suitability to accurate temperature time series prediction inside PMSMs or similar motor types, which is the first time in literature to the author's best knowledge. Considered motor components are stator yoke, teeth and winding as well as the rotor's permanent magnets of a highly-utilized PMSM for electric vehicle applications. Having benchmark data available, numerous neural networks are trained and optimized with the aid of the Chainer framework and particle swarm optimization is conducted for finding suitable model hyper-parameters (e.g. number of hidden neurons or layers) on a computing cluster. It is found, that the Euclidean norm performance (in the range of 1-3 K) is similar but the worst-case predication errors (in the range of 9-14 K) are significantly higher compared to established modeling techniques like lumped-parameter thermal networks (LPTNs). This initial investigation motivates future research to increase ANN-based estimation accuracy by taken other ANN topologies, training methods or hyper-parameter optimization approaches into account.
机译:监测永磁同步电动机(PMSMS)中的临界温度至关重要,以确保安全运行和最大的设备利用。在这项工作中,在适用于PMSMS或类似电机类型的准确温度时间序列预测时,研究了经常性神经网络的应用,这些内存块(LSTMS / GRUS)进行了准确的温度时间序列预测,这是文学中的第一次与作者最佳知识的第一次。考虑到电动机部件是定子轭,齿和绕组以及用于电动车辆应用的高利用PMSM的转子的永磁体。具有基准数据可用,许多神经网络借助借助Chaper框架进行培训并进行优化,并进行粒子群优化,用于在计算集群上查找合适的模型超参数(例如隐藏神经元或层数)。找到,与既定的建模技术相比,欧几里德规范性能(在1-3 k)的范围内(在1-3 k)的范围内是相似的,而是最坏情况的预测误差(在9-14 k的范围内)显着更高,如Lumped-参数热网络(LPTN)。本次初步调查激发了未来的研究通过涉及其他ANN拓扑,培训方法或超参数优化方法来增加基于安基的估计准确性。

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