A Study of Electric Bicycle Lithium Battery Charging Monitoring Using CNN and BiLSTM Networks Model with NILM Method

Author:

Liu Jiameng12,Wang Chao12,Xu Liangfeng12,Wang Mengjiao1,Hu Dongfang3,Jin Weiya12,Li Yuebing12

Affiliation:

1. Institute of Process Equipment and Control Engineering, Zhejiang University of Technology, Hangzhou 310023, China

2. Institute of Innovation Research, Zhejiang University of Technology, Shengzhou 312400, China

3. Beijing Key Laboratory of Health Monitoring and Self-Recovery for High-End Mechanical Equipment, Beijing University of Chemical Technology, Beijing 100029, China

Abstract

Electric bicycles offer convenient short-distance travel, but improper battery charging poses a fire risk, especially indoors, potentially causing significant accidents, property damage, and even threats to life. Recognizing the charging state of electric bicycle batteries is crucial for safety. This paper proposes a novel method to identify the charging process of lithium batteries in electric bicycles. Methods that do not require physical alterations to the equipment are used to acquire users’ electricity consumption data, with current signals preprocessed and input into a combined model integrating convolutional neural networks (CNN) and bidirectional long short-term memory (BiLSTM) networks. The proposed model captures complex patterns and features in the charging data, effectively identifying the charging characteristics of lithium batteries. Validation using NASA’s lithium battery dataset and real experimental data shows that the combined model achieves recognition accuracy of 96% and 97% on training data and 93% and 94% on validation data. Further validation under multiple device loads and comparison with other models indicate that the proposed method is highly accurate, outperforming traditional CNN and LSTM models by 4–9%. This research enhances the safety and regulation of electric bicycle battery charging and provides a reliable method for non-intrusive load identification in smart monitoring systems, contributing to improved safety measures and energy management in residential environments.

Funder

Scientific Research Fund of Zhejiang Provincial Education Department

National Natural Science Foundation of China

Natural Science Foundation of Zhejiang Province

Publisher

MDPI AG

Reference57 articles.

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3. (2024, July 04). The Decision to Amend the Shanghai Non-Motorized Vehicle Safety Management Regulations Will Come into Effect on June 1st of This Year, Available online: https://www.shrd.gov.cn/n8347/n8483/u1ai266310.html.

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