Nontechnical Loss Detection using Neural Architecture Search and Outlier Detection

Ke Fei, Qi Li*, Can Cui, Xue Chen, Xinxin Xu, Benshan Xue, Weifeng Cai

*Corresponding author for this work

Research output: Contribution to journalConference articlepeer-review

Abstract

Electricity supply is essential to economy growth and improvement of people's life. For a long time, illegal electricity theft not only affects the supply of power, but also causes significant economic loss. Traditional techniques for detecting electricity theft are inefficient and time-consuming. Data-based detecting algorithms become a new solution. This article analyses the features of electricity consumption, current, voltage and opening records under various electricity theft modes and proposes a new simulation method for electricity theft users. Based on the simulation dataset, a feature extraction method based on neural architecture search (NAS) is proposed. The advantage of this feature extraction model is demonstrated in the comparison experiments with other feature extraction model. Finally, the effectiveness and accuracy of the electricity theft detection method based on NAS model and outlier detection are verified through an industrial case study.

Original languageEnglish
Article number01025
JournalE3S Web of Conferences
Volume256
DOIs
Publication statusPublished - 10 May 2021
Event2021 International Conference on Power System and Energy Internet, PoSEI 2021 - Chengdu, China
Duration: 16 Apr 202118 Apr 2021

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