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Design and empirical identification of a lumped parameter thermal network for permanent magnet synchronous motors with physically motivated constraints

机译:具有物理动力约束的永磁同步电动机集总参数热网络的设计和经验识别

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Monitoring critical temperatures in permanent magnet synchronous motors (PMSM) is essential to prevent device failures or excessive motor life time reduction due to thermal stress. A lumped parameter thermal network (LPTN) consisting of four nodes is designed to model the most important motor parts, i.e. the stator yoke, stator winding, stator teeth and the permanent magnets. An empirical approach based on comprehensive experimental training data and an global particle swarm optimisation are used to identify the LPTN parameters of a 60 kW automotive traction PMSM. Here, varying parameters and physically motivated constraints are taken into account to extend the model scope beyond the training data domain. The model accuracy is cross-validated with independent load profiles and a maximum estimation error of 5 ?? C regarding all considered motor temperatures is achieved.
机译:监视永磁同步电动机(PMSM)的临界温度对于防止设备故障或由于热应力而导致的电动机使用寿命过短至关重要。设计了由四个节点组成的集总参数热网络(LPTN),以对最重要的电动机零件(即定子磁轭,定子绕组,定子齿和永磁体)进行建模。基于综合实验训练数据和全局粒子群优化的经验方法用于识别60 kW汽车牵引PMSM的LPTN参数。在此,考虑了各种参数和身体上的约束,以将模型范围扩展到训练数据域之外。使用独立的载荷曲线对模型精度进行交叉验证,最大估计误差为5 ??。达到关于所有考虑的电动机温度的C。

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