The document proposes an active learning entropy sampling-based optimization method for clustering electricity data using FCM clustering and PCA to improve accuracy. The method addresses challenges in electricity user classification due to the increase in power data and aims to enhance grid stability and resource utilization. Experimental results indicate a significant accuracy improvement of up to 2 percentage points compared to traditional methods, demonstrating the effectiveness of integrating active learning and entropy sampling in data clustering.
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