Citywide Electric Vehicle Charging Demand Prediction Approach Considering Urban Region and Dynamic Influences
Haoxuan Kuang, Kunxiang Deng, Linlin You, Jun Li

TL;DR
This paper introduces CityEVCP, a novel learning approach for citywide electric vehicle charging demand prediction that accounts for urban region attributes and dynamic influences using hypergraph networks and adaptive mechanisms.
Contribution
It presents a new clustering method for urban areas and integrates hypergraph networks with attention and gating mechanisms to improve demand prediction accuracy.
Findings
Outperforms existing baselines in demand prediction accuracy.
Effectively captures dynamic influences on charging demand.
Demonstrates the importance of urban region attributes in modeling.
Abstract
Electric vehicle charging demand prediction is important for vacant charging pile recommendation and charging infrastructure planning, thus facilitating vehicle electrification and green energy development. The performance of previous spatio-temporal studies is still far from satisfactory nowadays because urban region attributes and multivariate temporal influences are not adequately taken into account. To tackle these issues, we propose a learning approach for citywide electric vehicle charging demand prediction, named CityEVCP. To learn non-pairwise relationships in urban areas, we cluster service areas by the types and numbers of points of interest in the areas and develop attentive hypergraph networks accordingly. Graph attention mechanisms are employed for information propagation between neighboring areas. Additionally, we propose a variable selection network to adaptively learn…
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Taxonomy
TopicsElectric Vehicles and Infrastructure · Transportation and Mobility Innovations
Methodstravel james · Linear Layer · Dense Connections · Multi-Head Attention · Adam · Softmax · Dropout · Absolute Position Encodings · Label Smoothing · Byte Pair Encoding
