Submitted:
28 February 2025
Posted:
06 March 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Related Work
3. Dataset Description
3.1. Preprocessing and Data Preparation
| Variable | Type | Description |
|---|---|---|
| DayNum | Numeric | Numerical representation of the day |
| VehId | Numeric | Unique vehicle identifier |
| Trip | Numeric | Identifier for each trip |
| Timestamp (ms) | Numeric | Time recorded in milliseconds |
| Latitude, Longitude | Numeric | Geographical coordinates |
| Vehicle Speed (km/h) | Numeric | Speed of the vehicle |
| OAT (°C) | Numeric | Outside ambient temperature |
| AC Power (W), Heater Power (W) | Numeric | Power usage of AC and heater |
| HV Battery Current (A) | Numeric | High-voltage battery current |
| HV Battery SOC (%) | Numeric | State of charge of the battery |
| HV Battery Voltage (V) | Numeric | Voltage of the battery |
| Elevation Raw/Smoothed (m) | Numeric | Raw and processed elevation values |
| Gradient | Numeric | Road slope gradient |
| Energy Consumption (kWh) | Numeric | Energy used per trip |
| Matched Latitude Longitude | Numeric | Matched GPS coordinates |
| Match Type | Categorical | Type of GPS match |
| Speed Limit (km/h) | Numeric | Road speed limit |
| Speed Limit (Direction) (km/h) | Numeric | Speed limit considering direction |
| Variable | Type | Description |
|---|---|---|
| 1min Interval | Numeric | Time interval in minutes |
| Energy Consumption (kWh) | Numeric | Total energy consumed in the interval |
| Acceleration (Mean, Max, Min, Median, Std) | Numeric | Statistical measures of vehicle acceleration |
| Speed (Mean, Max, Min, Median, Std) | Numeric | Statistical measures of vehicle speed |
| OAT (Mean, Max, Min, Median, Std) | Numeric | Outside ambient temperature statistics |
| AC Power (Mean, Max, Min, Median, Std) | Numeric | Air conditioning power usage statistics |
| Heater Power (Mean, Max, Min, Median, Std) | Numeric | Heater power usage statistics |
| Elevation (Mean, Max, Min, Median, Std) | Numeric | Statistical measures of elevation |
4. Methodology
4.1. Machine Learning Models

4.2. Different Input Space
- 1.
- Energy Consumption Lags Only: This configuration relies solely on past values of energy consumption to predict future consumption, identifying auto-correlations within the dataset [34].
- 2.
- Feature Lags Only: his setup includes only lagged values of relevant features (e.g., vehicle speed, air-conditioning, and environmental factors), excluding past energy consumption values. This approach evaluates the influence of external factors on energy consumption over time [35].
- 3.
- Combined Lags: This configuration integrates both energy consumption lags and feature lags, providing a comprehensive analysis of the relationships between past consumption patterns and vehicle dynamics.
4.3. Configurations
4.4. Evaluation Metrics
5. Experimental Results



6. Conclusions
Funding
References
- Jose, P. S., A. Natarajan, S. Karthikeyan, and T. Bogaraj. Environmental and social impact of electric vehicles. In Advanced Technologies in Electric Vehicles. Elsevier, 2024, pp. 107–125.
- Sanguesa, J. A., V. Torres-Sanz, P. Garrido, F. J. Martinez, and J. M. Marquez-Barja. A review on electric vehicles: Technologies and challenges. Smart Cities, Vol. 4, No. 1, 2021, pp. 372–404. [CrossRef]
- Chen, T., B. Zhang, H. Pourbabak, A. Kavousi-Fard, and W. Su. Optimal routing and charging of an electric vehicle fleet for high-efficiency dynamic transit systems. IEEE Transactions on Smart Grid, Vol. 9, No. 4, 2016, pp. 3563–3572. [CrossRef]
- Alanazi, F. Electric vehicles: benefits, challenges, and potential solutions for widespread adaptation. Applied Sciences, Vol. 13, No. 10, 2023, p. 6016. [CrossRef]
- Akshay, K., G. H. Grace, K. Gunasekaran, and R. Samikannu. Power consumption prediction for electric vehicle charging stations and forecasting income. Scientific Reports, Vol. 14, No. 1, 2024, p. 6497. [CrossRef]
- Longo, M., D. Zaninelli, F. Viola, P. Romano, and R. Miceli. How is the spread of the Electric Vehicles? In 2015 IEEE 1st International Forum on Research and Technologies for Society and Industry Leveraging a better tomorrow (RTSI). IEEE, 2015, pp. 439–445.
- Klyuev, R. V., I. D. Morgoev, A. D. Morgoeva, O. A. Gavrina, N. V. Martyushev, E. A. Efremenkov, and Q. Mengxu. Methods of forecasting electric energy consumption: A literature review. Energies, Vol. 15, No. 23, 2022, p. 8919. [CrossRef]
- Chudy-Laskowska, K. and T. Pisula. An Analysis of the Use of Energy from Conventional Fossil Fuels and Green Renewable Energy in the Context of the European Union’s Planned Energy Transformation. Energies, Vol. 15, No. 19, 2022, p. 7369. [CrossRef]
- Huang, H., B. Li, Y. Wang, Z. Zhang, and H. He. Analysis of factors influencing energy consumption of electric vehicles: Statistical, predictive, and causal perspectives. Applied Energy, Vol. 375, 2024, p. 124110. [CrossRef]
- Petkevicius, L., S. Saltenis, A. Civilis, and K. Torp. Probabilistic deep learning for electric-vehicle energy-use prediction. In Proceedings of the 17th International Symposium on Spatial and Temporal Databases. 2021, pp. 85–95.
- Hua, Y., M. Sevegnani, D. Yi, A. Birnie, and S. McAslan. Fine-grained RNN with transfer learning for energy consumption estimation on EVs. IEEE Transactions on Industrial Informatics, Vol. 18, No. 11, 2022, pp. 8182–8190. [CrossRef]
- Athanasakis, E., G. Spanos, A. Papadopoulos, A. Lalas, K. Votis, and D. Tzovaras. a Comprehensive Leakage-Free Forecasting Pipeline for Segmented Time Series: Application to Cross-Trip State-of-Charge Prediction in Automated Electric Vehicles. IEEE Transactions on Intelligent Vehicles. [CrossRef]
- Chen, X., Z. Lei, and S. V. Ukkusuri. Prediction of road-level energy consumption of battery electric vehicles. In 2022 IEEE 25th International Conference on Intelligent Transportation Systems (ITSC). IEEE, 2022, pp. 2550–2555.
- Tang, X., T. Jia, X. Hu, Y. Huang, Z. Deng, and H. Pu. Naturalistic data-driven predictive energy management for plug-in hybrid electric vehicles. IEEE Transactions on Transportation Electrification, Vol. 7, No. 2, 2020, pp. 497–508. [CrossRef]
- Polymeni, S., V. Pitsiavas, G. Spanos, Q. Matthewson, A. Lalas, K. Votis, and D. Tzovaras. Toward sustainable mobility: AI-enabled automated refueling for Fuel Cell Electric Vehicles. Energies, Vol. 17, No. 17, 2024, p. 4324. [CrossRef]
- Brooker, A., J. Gonder, L. Wang, E. Wood, S. Lopp, and L. Ramroth. FASTSim: A model to estimate vehicle efficiency, cost and performance. Tech. rep., SAE technical paper, 2015.
- Zhang, S., D. Fatih, F. Abdulqadir, T. Schwarz, and X. Ma. Extended vehicle energy dataset (eVED): an enhanced large-scale dataset for deep learning on vehicle trip energy consumption. arXiv preprint arXiv:2203.08630. [CrossRef]
- Oh, G., D. J. Leblanc, and H. Peng. Vehicle energy dataset (VED), a large-scale dataset for vehicle energy consumption research. IEEE Transactions on Intelligent Transportation Systems, Vol. 23, No. 4, 2020, pp. 3302–3312. [CrossRef]
- Mediouni, H., A. Ezzouhri, Z. Charouh, K. El Harouri, S. El Hani, and M. Ghogho. Energy consumption prediction and analysis for electric vehicles: A hybrid approach. energies, Vol. 15, No. 17, 2022, p. 6490. [CrossRef]
- Yang, X., C. Zhuge, C. Shao, Y. Huang, J. H. C. G. Tang, M. Sun, P. Wang, and S. Wang. Characterizing mobility patterns of private electric vehicle users with trajectory data. Applied Energy, Vol. 321, 2022, p. 119417. [CrossRef]
- Spanos, G., K. M. Giannoutakis, K. Votis, and D. Tzovaras. Combining statistical and machine learning techniques in IoT anomaly detection for smart homes. In 2019 IEEE 24th International Workshop on Computer Aided Modeling and Design of Communication Links and Networks (CAMAD). IEEE, 2019, pp. 1–6.
- Spanos, G., K. M. Giannoutakis, K. Votis, B. Viaño, J. Augusto-Gonzalez, G. Aivatoglou, and D. Tzovaras. A lightweight cyber-security defense framework for smart homes. In 2020 International Conference on INnovations in Intelligent SysTems and Applications (INISTA). IEEE, 2020, pp. 1–7.
- Meire, M., M. Ballings, and D. Van den Poel. The added value of auxiliary data in sentiment analysis of Facebook posts. Decision Support Systems, Vol. 89, 2016, pp. 98–112. [CrossRef]
- Aivatoglou, G., M. Anastasiadis, G. Spanos, A. Voulgaridis, K. Votis, and D. Tzovaras. A tree-based machine learning methodology to automatically classify software vulnerabilities. In 2021 ieee international conference on cyber security and resilience (csr). IEEE, 2021, pp. 312–317.
- Aivatoglou, G., M. Anastasiadis, G. Spanos, A. Voulgaridis, K. Votis, D. Tzovaras, and L. Angelis. A RAkEL-based methodology to estimate software vulnerability characteristics & score-an application to EU project ECHO. Multimedia Tools and Applications, Vol. 81, No. 7, 2022, pp. 9459–9479. [CrossRef]
- Rathore, H., H. K. Meena, and P. Jain. Prediction of ev energy consumption using random forest and xgboost. In 2023 International Conference on Power Electronics and Energy (ICPEE). IEEE, 2023, pp. 1–6.
- Breiman, L. Random forests. Machine learning, Vol. 45, 2001, pp. 5–32. [CrossRef]
- Chen, T. and C. Guestrin. Xgboost: A scalable tree boosting system. In Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining. 2016, pp. 785–794.
- Pankratz, A. Forecasting with dynamic regression models. John Wiley & Sons, 2012.
- Wang, Z., Y. Wang, R. Zeng, R. S. Srinivasan, and S. Ahrentzen. Random Forest based hourly building energy prediction. Energy and Buildings, Vol. 171, 2018, pp. 11–25. [CrossRef]
- Ma, Z., H. Chang, Z. Sun, F. Liu, W. Li, D. Zhao, and C. Chen. Very short-term renewable energy power prediction using XGBoost optimized by TPE algorithm. In 2020 4th International Conference on HVDC (HVDC). IEEE, 2020, pp. 1236–1241.
- Watanabe, S. Tree-structured parzen estimator: Understanding its algorithm components and their roles for better empirical performance. arXiv preprint arXiv:2304.11127.
- Moslemi, Z., L. Clark, S. Kernal, S. Rehome, S. Sprengel, A. Tamizifar, S. Tuli, V. Chokshi, M. Nomeli, E. Liang, et al. Comprehensive Forecasting of California’s Energy Consumption: A Multi-Source and Sectoral Analysis Using ARIMA and ARIMAX Models. arXiv preprint arXiv:2402.04432.
- Sun, Q., J. Liu, X. Rong, M. Zhang, X. Song, Z. Bie, and Z. Ni. Charging load forecasting of electric vehicle charging station based on support vector regression. In 2016 IEEE PES Asia-Pacific Power and Energy Engineering Conference (APPEEC). IEEE, 2016, pp. 1777–1781.
- Saly, G., F. Szauter, and S. Kocsis Szürke. Comprehensive Analysis of the Factors Affecting the Energy Efficiency of Electric Vehicles and Methods to Reduce Consumption: A Review. Engineering Proceedings, Vol. 79, No. 1, 2024, p. 79. [CrossRef]
- Xiao, S., Y. Shao, Y. Li, H. Yin, Y. Shen, and B. Cui. LECF: recommendation via learnable edge collaborative filtering. Science China Information Sciences, Vol. 65, No. 1, 2022, p. 112101. [CrossRef]
- Liashchynskyi, P. and P. Liashchynskyi. Grid search, random search, genetic algorithm: a big comparison for NAS. arXiv preprint arXiv:1912.06059.
- Hyndman, R. J. and A. B. Koehler. Another look at measures of forecast accuracy. International journal of forecasting, Vol. 22, No. 4, 2006, pp. 679–688. [CrossRef]
- Polymeni, S., G. Spanos, D. Tsiktsiris, E. Athanasakis, K. Votis, D. Tzovaras, and G. Kormentzas. everWeather: A Low-Cost and Self-Powered AIoT Weather Forecasting Station for Remote Areas. In Environmental Informatics. Springer, 2023, pp. 141–158.

Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2025 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).