Identifying Unusual Charging Patterns of Electric Vehicles Using Artificial Intelligence

2022 IEEE PES 14th Asia-Pacific Power and Energy Engineering Conference (APPEEC)(2022)

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摘要
Some of the most challenging parts of finding new approaches to lowering residential energy use involve studying, detecting, and visualizing households' anomalous power usage patterns. This research presents a novel method for identifying irregularities in electric vehicle energy use by extracting features using a modified long-short-term memory model. The latter is implemented to extract load features by analysing intent-driven user consumption instances occurring throughout the day. In addition to feature extraction, we explore the use of a deep neural network, specifically the LSTM architecture, to efficiently detect and classify anomalies in Electric Vehicles. In the following, we provide a novel anomaly visualisation technique based on a scatter representation of the classes, which gives customers a simple way to comprehend unusual actions. These encouraging findings validate the effectiveness of the suggested deep learning approach for identifying abnormal energy usage, encouraging energy-efficient behaviour, and cutting down on energy waste.
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EVs,LSTM,DNN
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