Earthformer: Exploring Space-Time Transformers for Earth System Forecasting

12 Jul 2022  ·  Zhihan Gao, Xingjian Shi, Hao Wang, Yi Zhu, Yuyang Wang, Mu Li, Dit-yan Yeung ·

Conventionally, Earth system (e.g., weather and climate) forecasting relies on numerical simulation with complex physical models and are hence both expensive in computation and demanding on domain expertise. With the explosive growth of the spatiotemporal Earth observation data in the past decade, data-driven models that apply Deep Learning (DL) are demonstrating impressive potential for various Earth system forecasting tasks. The Transformer as an emerging DL architecture, despite its broad success in other domains, has limited adoption in this area. In this paper, we propose Earthformer, a space-time Transformer for Earth system forecasting. Earthformer is based on a generic, flexible and efficient space-time attention block, named Cuboid Attention. The idea is to decompose the data into cuboids and apply cuboid-level self-attention in parallel. These cuboids are further connected with a collection of global vectors. We conduct experiments on the MovingMNIST dataset and a newly proposed chaotic N-body MNIST dataset to verify the effectiveness of cuboid attention and figure out the best design of Earthformer. Experiments on two real-world benchmarks about precipitation nowcasting and El Nino/Southern Oscillation (ENSO) forecasting show Earthformer achieves state-of-the-art performance. Code is available: https://github.com/amazon-science/earth-forecasting-transformer .

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Earth Surface Forecasting EarthNet2021 IID Track Earthformer EarthNetScore 0.3425 # 1
Earth Surface Forecasting EarthNet2021 OOD Track Earthformer EarthNetScore 0.3252 # 1
Weather Forecasting SEVIR Earthformer MSE 3.6957 # 2
mCSI 0.4419 # 2
Weather Forecasting SEVIR ConvLSTM MSE 3.7532 # 3
mCSI 0.4185 # 3

Methods