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Dynamic Equivalent Modeling of Induction Motors based on K-means Clustering Algorithm

机译:基于K-Means聚类算法的感应电动机动态等效建模

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It is unrealistic to establish the model for analyzing dynamic characteristic of each induction motor. In order to ensure that the equivalent induction motor models impose similar impact on the electric system compared with the original induction motors group, the critical slip scr and the load rate KL of the induction motor were taken as the clustering indicators in this paper. Induction motors group was clustered based on the K-means algorithm to get different cluster numbers. Then the optimal clustering result was obtained by the F statistics. After the clustering, induction motors in different classes were equalized and the accurate dynamic equivalent models were established. The simulation curves were obtained after comparing the established equivalent models with the original models and the classic models in the short circuit fault condition through the example system. The simulation results proved that the method proposed in this paper were reliable.
机译:建立分析每个感应电动机的动态特性的模型是不现实的。为了确保等效的感应电动机模型与原始感应电动机组相比对电动系统的影响相似,临界滑动 cr 并且在本文中将感应电机的负载率K1作为聚类指示器。基于K-Means算法群集感应电机组以获得不同的簇号。然后通过统计获得最佳聚类结果。在聚类之后,不同类别中的感应电机均衡,建立了准确的动态等效模型。通过示例系统将建立的等效模型和短路故障情况下的经典模型进行比较,获得模拟曲线。仿真结果证明了本文提出的方法可靠。

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