基于DSR-Net的电商审计异常数据检测

Yiming Li, Linjuan Zhang, Changqing Xu, Lili Wang, Chao Qiu
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引用次数: 0

摘要

随着中国国家电网公司建立的用电信息采集系统“全覆盖、全采集、全成本控制”目标的逐步实现,以信息化、自动化、交互性为基本技术特征的智能电网已进入全面建成阶段。因此,电力大数据技术的应用已成为电力行业智能化发展的必然要求,而电力数据异常检测一直是重中之重。与传统方法相比,该方法更能收集到数据之间相同的特征关系,具有较强的泛化能力。经过实验比较,DSR-Net的F1评分评价指标为92.56,比传统的支持向量机算法提高了9.33%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abnormal data detection of power marketing audit based on DSR-Net
With the gradual realization of the goal of "full coverage, full collection and full cost control" of the power consumption information acquisition system established by the State Grid Corporation of China, the smart grid with the basic technical characteristics of informatization, automation and interaction has entered the stage of full completion. Therefore, the application of power big data technology has become an inevitable requirement for the intelligent development of the power industry, and power data anomaly detection has always been the top priority. Compared with traditional methods, this method is more able to collect the same feature relationship between data, and has strong generalization ability. After experimental comparison, the F1 score evaluation index of DSR-Net is 92.56, which is 9.33% higher than the traditional support vector machine algorithm.
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