Low-frequency-data-driven energy consumption prediction for battery electric vehicles: Integrating continuous trip segments and multi-task learning
Cunzhi Xu,
Reuben S.K. Agbozo,
Tao Peng and
Renzhong Tang
Energy, 2025, vol. 335, issue C
Abstract:
Battery electric vehicles (BEVs) have yet fully crossed the barriers of range anxiety. Existing energy consumption prediction for BEVs typically relies on single-task learning and requires high-frequency (≥1Hz) vehicle data combined with environmental/road information. This raises infrastructure costs and privacy concerns. In this study, a novel framework using only low-frequency vehicle data (0.1Hz) is proposed for BEV energy consumption prediction. First, a Continuous Trip Segment Division (CTSD) algorithm is developed to implicitly capture environmental context, and then a novel Transformer-Conv1D Multi-Task Learning (TCMTL) model is built to enhance feature representation and generalization capability. The TCMTL model could simultaneously predict energy consumption (main task) and travel distance (auxiliary task). Real-world experiments demonstrate that the proposed approach reduces prediction errors by 37.1 % MAE and 31.2 % RMSE compared to the machine learning methods in existing research. Optimal results were obtained using 15-min trip segments and balanced task weights. Model interpretability analysis reveals that multi-task learning enhances performance by expanding feature representation space and systematically reallocating parameter importance toward driving inputs and vehicle response metrics. This study provides a cost-effective, privacy-preserving solution for BEV energy management.
Keywords: Energy consumption; Battery electric vehicles; Deep learning; Multi-task learning; Trip segment division (search for similar items in EconPapers)
Date: 2025
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Persistent link: https://EconPapers.repec.org/RePEc:eee:energy:v:335:y:2025:i:c:s0360544225037624
DOI: 10.1016/j.energy.2025.138120
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