Transformer-based Graph Neural Networks for Battery Range Prediction in AIoT Battery-Swap Services
Zhao Li, Yang Liu, Chuan Zhou, Xuanwu Liu, Xuming Pan, Buqing Cao,, Xindong Wu

TL;DR
This paper introduces a Transformer-based model called SEB-Transformer that predicts e-bike battery range using a dynamic graph approach, improving accuracy and operational efficiency in AIoT battery-swap services.
Contribution
The paper presents a novel Transformer model integrated with graph structures for accurate battery range prediction in shared e-bike systems, enhancing user experience and service sustainability.
Findings
Outperforms nine baseline models in real-world datasets
Improves battery range prediction accuracy
Enables dynamic route adjustment for users
Abstract
The concept of the sharing economy has gained broad recognition, and within this context, Sharing E-Bike Battery (SEB) have emerged as a focal point of societal interest. Despite the popularity, a notable discrepancy remains between user expectations regarding the remaining battery range of SEBs and the reality, leading to a pronounced inclination among users to find an available SEB during emergency situations. In response to this challenge, the integration of Artificial Intelligence of Things (AIoT) and battery-swap services has surfaced as a viable solution. In this paper, we propose a novel structural Transformer-based model, referred to as the SEB-Transformer, designed specifically for predicting the battery range of SEBs. The scenario is conceptualized as a dynamic heterogeneous graph that encapsulates the interactions between users and bicycles, providing a comprehensive…
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