AC Loss Analysis Approaches for Hairpin Winding Configuration: Analytical, Hybrid Model, and FEA

P. S. Ghahfarokhi, A. Kallaste, Andrejs Podgornovs, A. M. Cardoso, A. Belahcen, T. Vaimann
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Abstract

One of the effective options to achieve higher power density and lower-weight electric motors for electric vehicle (EV) applications is to replace the conventional winding with a hairpin configuration. This novel concept has several advantages, but the biggest drawback is high AC loss. Therefore, as this type of winding utilizes in EV motors for high-speed application, the correct estimations of this loss are essential during the design procedure. This paper presents three primary approaches to model and calculate the AC loss of hairpin windings: analytical, hybrid model, and FEA methods. In addition, the FEA method is used to validate and evaluate the accuracy of two other methods. Accordingly, both analytical and hybrid model results agree with FEA results. However, the hybrid model has higher accuracy rather than the analytical method.
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发夹绕组结构的交流损耗分析方法:解析、混合模型和有限元分析
实现电动汽车(EV)应用中更高功率密度和更轻重量的电动机的有效选择之一是用发夹结构取代传统的绕组。这种新颖的概念有几个优点,但最大的缺点是高交流损耗。因此,由于这种类型的绕组用于高速应用的电动电机,在设计过程中对这种损耗的正确估计是必不可少的。本文介绍了模拟和计算发夹绕组交流损耗的三种主要方法:解析法、混合模型和有限元法。此外,利用有限元法对另外两种方法的精度进行了验证和评价。因此,分析模型和混合模型的计算结果与有限元分析结果一致。然而,混合模型比解析方法具有更高的精度。
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