Temperature monitoring is critical for electrical motors to determine if device protection measures should be executed. However, the complexity of the internal structure of Permanent Magnet Synchronous Motors (PMSM) makes the direct temperature measurement of the internal components difficult. This work pragmatically develops three deep learning models to estimate the PMSMs' internal temperature based on readily measurable external quantities. The proposed supervised learning models exploit Long Short-Term Memory (LSTM) modules, bidirectional LSTM, and attention mechanism to form encoder-decoder structures to predict simultaneously the temperatures of the stator winding, tooth, yoke, and permanent magnet. Experiments were conducted in an exhaustive manner on a benchmark dataset to verify the proposed models' performances. The comparative analysis shows that the proposed global attention-based encoder-decoder (EnDec) model provides a competitive overall performance of 1.72 Mean Squared Error (MSE) and 5.34 Mean Absolute Error (MAE).
翻译:温度监测对于电动机确定是否应当执行装置保护措施至关重要,然而,永久磁铁同步机动车的内部结构复杂,使得内部组件的直接温度测量十分困难。这项工作务实地开发了三种深层学习模型,以根据易于测量的外部数量估算磁铁同步机动车的内部温度。拟议的受监督学习模型利用长期短期内存模块、双向LSTM,以及形成编码器分解器结构的注意机制,以同时预测振动器的温度、牙齿、枷锁和永久磁铁。对基准数据集进行了详尽的实验,以核实拟议模型的性能。比较分析表明,拟议的全球注意编码分解器(EnDec)模型提供了1.72的中位方错误和5.34的中位绝对误(MAE)的竞争性总体性能。