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A Distributed Anomaly Detection Method of Operation Energy Consumption using Smart Meter Data

机译:使用智能仪表数据的运行能耗的分布式异常检测方法

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Along with the rapid development of communication network construction, the operation energy consumption grows significantly in recent years, and the expensive electricity cost is hard to be ignored. Therefore, it is necessary to develop an operation energy anomaly detection mechanism to enhance the control ability of electricity cost. According to the practical distribution and data characteristic of smart meters, this paper presents a distributed anomaly detection method of operation energy consumption based on deep learning methods. An IOT-based distributed structure is implemented to execute data interaction. Stacked sparse autoencoder is used to extract the high-level representation from massive monitoring data acquired automatically from actual smart meter network. Then softmax is used for classification to detect anomaly and send alarm messages using web technologies. The experimental results show that the proposed method with good prospect for intelligent applications achieves better accuracy and meanwhile decreases computing delay caused by central arithmetic method.
机译:随着通信网络建设的快速发展,近年来,运营能耗大幅增长,昂贵的电力成本很难被忽略。因此,有必要开发一种操作能量异常检测机制,以提高电力成本的控制能力。根据智能电表的实用分布和数据特性,本文提出了一种基于深度学习方法的运行能耗的分布式异常检测方法。实现了基于IOT的分布式结构以执行数据交互。堆叠稀疏的AutoEncoder用于从实际智能仪表网络自动获取的大规模监控数据中提取高级表示。然后SoftMax用于分类以检测异常并使用Web技术发送警报消息。实验结果表明,智能应用良好前景的提出方法实现了更好的准确性,同时降低了中央算术方法引起的计算延误。

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