A Non-intrusive Method Based on Deep Learning for Abnormal Electricity Consumption Detection of Electric Bicycles
ID:282 View Protection:ATTENDEE Updated Time:2021-12-03 13:17:07 Hits:1215 Oral Presentation

Start Time:2021-12-15 15:30(Asia/Shanghai)

Duration:15min

Session:F AI-driven technology » F1Session 6

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Abstract
Abnormal electricity consumption of electric bicycles has given rise to many severe accidents (e.g., explosion and fire accidents). Primary causes of these accidents are users’ incorrect charging behavior and lack of stipulated safety standard designed for different charging devices. From utility’s perspective, it is of great importance to detect abnormal electricity consumption of electric bicycles in a non-intrusive way considering the customers’ privacy concern. Therefore, this paper proposed a non-intrusive method based on deep learning for abnormal electricity consumption detection of electric bicycles. Firstly, charging curve and charging process of electric bicycles are studied. Then customers’ electricity consumption data is analyzed, the missing values are filled in and the outliers are removed to prepare dataset. Afterwards, convolutional neural network (CNN) model is constructed and trained to identify the abnormal data. Finally, results of CNN model are compared with deep neural network (DNN) and other machine learning techniques in order to demonstrate the effectiveness of this method.
Keywords
charging behavior;deep learning;electric bicycles;non-intrusive method
Speaker
Xuecen Zhang
Student Southeast University

Submission Author
Junnan Li State Grid Henan Marketing Service
Wei Li State Grid Henan Marketing Service
Xuecen Zhang Southeast University
Yi Tang Southeast University
Xinming He State Grid Henan Marketing Service
Wei Tai Nanjing Dongbo Smart Energy Research Institute
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Important Date
  • Conference Date

    Jul 11

    2023

    to

    Aug 18

    2023

  • Nov 10 2021

    Draft paper submission deadline

  • Dec 10 2021

    Registration deadline

  • Dec 11 2021

    Contribution Submission Deadline

Sponsored By
IEEE IAS
Organized By
IEEE IAS Student Chapter of Southwest Jiaotong University (SWJTU)
IEEE IAS Student Chapter of Huazhong University of Science and Technology (HUST)
IEEE PELS (Power Electronics Society) Student Chapter of HUST