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Deep Attention-based Neural Network for Electricity Theft Detection

机译:基于深度注意力的神经网络,用于窃电检测

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Electricity theft causes significant harm to social and economic development. In recent years, as a powerful technique in data mining, deep learning has attached much attention and become popular in electricity consumption sequence analysis. Nevertheless, existing methods mainly focus on short-term numerical data modeling, while the records in real-world scenarios (1) usually consist of multiple temporal features and (2) are often of large scale. In this paper, to overcome the two fundamental challenges, we propose a novel method called Deep Attention-based Neural Network for Electricity Theft Detection (DANN-ETD). Specifically, we first respectively decompose the electricity sequences into the trend, seasonal and residual views to fully exploit the temporal features. To effectively and efficiently model the large-scale time series, we then split the series into several snapshots and further design the deep attention-based recurrent neural networks which can detect the fine-grained evolution of electricity consumption. Experimental results on realworld datasets demonstrate that our method outperforms the state of the arts.
机译:窃电对社会和经济发展造成重大损害。近年来,深度学习作为一种强大的数据挖掘技术,备受关注,并在用电序列分析中广受欢迎。尽管如此,现有方法主要集中在短期数值数据建模上,而现实场景中的记录(1)通常由多个时间特征组成,而(2)通常是大规模的。在本文中,为了克服这两个基本挑战,我们提出了一种新的方法,称为基于深度注意力的电力盗窃检测神经网络(DANN-ETD)。具体而言,我们首先分别将电序列分解为趋势图,季节图和残差图,以充分利用时间特征。为了有效,高效地对大型时间序列建模,我们将序列划分为几个快照,并进一步设计了基于深度关注的循环神经网络,该网络可以检测出细微的用电量变化。在真实数据集上的实验结果表明,我们的方法优于最新技术。

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