Physics-Informed Long-Sequence Forecasting from Multi-Resolution Spatiotemporal Data
Abstract
Spatiotemporal data aggregated over regions or time windows at various resolutions demonstrate heterogeneous patterns and dynamics in each resolution. Meanwhile, the multi-resolution characteristic provides rich contextual information, which is critical for effective long-sequence forecasting. The importance of such inter-resolution information is more significant in practical cases, where fine-grained data is usually collected via approaches with lower costs but also lower qualities compared to those for coarse-grained data. However, existing works focus on uni-resolution data and cannot be directly applied to fully utilize the aforementioned extra information in multi-resolution data. In this work, we propose Spatiotemporal Koopman Multi-Resolution Network (ST-KMRN), a physics-informed learning framework for long-sequence forecasting from multi-resolution spatiotemporal data. Our method jointly models data aggregated in multiple resolutions and captures the inter-resolution dynamics with the self-attention mechanism. We also propose downsampling and upsampling modules among resolutions to further strengthen the connections among data of multiple resolutions. Moreover, we enhance the modeling of intra-resolution dynamics with physics-informed modules based on Koopman theory. Experimental results demonstrate that our proposed approach achieves the best performance on the long-sequence forecasting tasks compared to baselines without a specific design for multi-resolution data.
Cite
Text
Meng et al. "Physics-Informed Long-Sequence Forecasting from Multi-Resolution Spatiotemporal Data." International Joint Conference on Artificial Intelligence, 2022. doi:10.24963/IJCAI.2022/304Markdown
[Meng et al. "Physics-Informed Long-Sequence Forecasting from Multi-Resolution Spatiotemporal Data." International Joint Conference on Artificial Intelligence, 2022.](https://mlanthology.org/ijcai/2022/meng2022ijcai-physics/) doi:10.24963/IJCAI.2022/304BibTeX
@inproceedings{meng2022ijcai-physics,
title = {{Physics-Informed Long-Sequence Forecasting from Multi-Resolution Spatiotemporal Data}},
author = {Meng, Chuizheng and Niu, Hao and Habault, Guillaume and Legaspi, Roberto and Wada, Shinya and Ono, Chihiro and Liu, Yan},
booktitle = {International Joint Conference on Artificial Intelligence},
year = {2022},
pages = {2189-2195},
doi = {10.24963/IJCAI.2022/304},
url = {https://mlanthology.org/ijcai/2022/meng2022ijcai-physics/}
}