随机加权深度神经学习模型在电力客户分类中的应用

Gang Xu, Yuanpeng Tan, Yu Zhang, Pengxiang Gao
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引用次数: 0

摘要

随着配电网中电气传感器和智能电表的增加,当地用电用户的用电负荷数据逐渐呈现出规模大、品种多、生成快、值密度低的特点。这些特性给负载模式分析和模式分类带来了新的挑战,传统的方法和技术在分类精度和耗时方面都不能满足当前模式分类的性能要求。针对用电负荷数据,提出了一种基于随机加权深度神经学习的电力客户分类方法。该方法通过训练具有小中心层的多层自关联随机权重神经网络,提取用电负荷数据的有效特征信息。然后,结合训练好的特征信息和基本负荷特征指标,采用单层神经网络完成测试样本的电力客户分类任务。对比实验结果验证了该方法的优异性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Approach on random weighted deep neural learning model for electricity customer classification
With the increase of electrical sensors and smart meters installed in distribution networks, the consumption load data of local electricity customers gradually shows its following properties: large scale, big variety, fast generation and low value density. These properties have brought new challenges to load pattern analysis and pattern classification, since traditional methods and technologies cannot be able to meet the current performance requirements of pattern classification on both of the classification accuracy and time consuming. In this paper, facing electricity consumption load data, a novel electricity customer classification method is proposed based on random weighted deep neural learning. In this proposed method, the effective feature information of electricity consumption load data is extracted by training multi-layer auto-associative random weight neural networks with a small size central layer. Then, by combining the well-trained feature information and basic load feature indexes, single-layer neural network is employed to fulfill the electricity customer classification tasks of test samples. Comparative experimental results verified the outstanding performances of our proposed method.
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