Difference between revisions of "Predicting Energy Consumption for Heavy-Duty Vehicles via Time Series Embeddings (in collaboration with Volvo)"
Line 1: | Line 1: | ||
{{StudentProjectTemplate | {{StudentProjectTemplate | ||
|Summary=Develop deep learning based methods for time series forecasting; explore self-supervised learning methods for multi-variate time series embeddings | |Summary=Develop deep learning based methods for time series forecasting; explore self-supervised learning methods for multi-variate time series embeddings | ||
+ | |TimeFrame=2024 Fall | ||
|References=Nalmpantis, C., & Vrakas, D. (2019, May). Signal2vec: Time series embedding representation. In International conference on engineering applications of neural networks (pp. 80-90). Cham: Springer International Publishing. | |References=Nalmpantis, C., & Vrakas, D. (2019, May). Signal2vec: Time series embedding representation. In International conference on engineering applications of neural networks (pp. 80-90). Cham: Springer International Publishing. | ||
Revision as of 10:58, 30 September 2024
Title | Predicting Energy Consumption for Heavy-Duty Vehicles via Time Series Embeddings (in collaboration with Volvo) |
---|---|
Summary | Develop deep learning based methods for time series forecasting; explore self-supervised learning methods for multi-variate time series embeddings |
Keywords | |
TimeFrame | 2024 Fall |
References | Nalmpantis, C., & Vrakas, D. (2019, May). Signal2vec: Time series embedding representation. In International conference on engineering applications of neural networks (pp. 80-90). Cham: Springer International Publishing.
Foumani, N. M., Tan, C. W., Webb, G. I., Rezatofighi, H., & Salehi, M. (2024). Series2vec: similarity-based self-supervised representation learning for time series classification. Data Mining and Knowledge Discovery, 1-25. Lee, S., Park, T., & Lee, K. (2023). Learning to embed time series patches independently. arXiv preprint arXiv:2312.16427. https://github.com/seunghan96/pits Luo, D., & Wang, X. (2024). Moderntcn: A modern pure convolution structure for general time series analysis. In The Twelfth International Conference on Learning Representations. https://github.com/luodhhh/ModernTCN?tab=readme-ov-file Fraikin, A., Bennetot, A., & Allassonnière, S. (2023). T-Rep: Representation Learning for Time Series using Time-Embeddings. arXiv preprint arXiv:2310.04486. Wen, Q., Zhou, T., Zhang, C., Chen, W., Ma, Z., Yan, J., & Sun, L. (2022). Transformers in time series: A survey. arXiv preprint arXiv:2202.07125. Ahmed, S., Nielsen, I. E., Tripathi, A., Siddiqui, S., Ramachandran, R. P., & Rasool, G. (2023). Transformers in time-series analysis: A tutorial. Circuits, Systems, and Signal Processing, 42(12), 7433-7466. |
Prerequisites | |
Author | |
Supervisor | Yuantao Fan & TBD |
Level | Master |
Status | Draft |
Accurate energy consumption prediction is crucial for optimizing the operation of electric commercial heavy-duty vehicles, particularly for efficient route planning, refining charging strategies, and ensuring optimal truck configuration for specific tasks. This thesis project will explore, develop, and evaluate machine learning-based methods to forecast energy consumption of commercial heavy-duty vehicles, focusing on transformer-based approaches and self-supervised learning for time series embedding representation generation.