LightNet+: A dual-source lightning forecasting network with bi-direction spatiotemporal transformation

作者:Xinyuan Zhou, Yangli-ao Geng, Haomin Yu, Qingyong Li, Liangtao Xu, Wen Yao, Dong Zheng, Yijun Zhang

摘要

Lightning disaster causes a huge threat to human lives and industrial facilities. Data-driven lightning forecasting plays an effective role in alleviating such disaster losses. The forecasting process usually faces multi-source meteorological data characterized by spatiotemporal structure. However, established data-driven forecasting methods are mostly built on classic convolutional and recurrent neural blocks which processes one local neighborhood at a time, failing to capture long-range spatiotemporal dependencies within data. To address this issue, we propose a dual-source lightning forecasting network with bi-direction spatiotemporal transformation, referred to as LightNet\(+\). The core of LightNet\(+\) is a novel module, namely bi-directional spatiotemporal propagator, which aims to model long-range connections among different spatiotemporal locations, going beyond the constraints of the receptive field of a local neighborhood. Moreover, a spatiotemporal encoder is introduced to extract historical trend information from recent observation data. Finally, all the obtained features are organically fused via a non-local spatiotemporal decoder, which then produces final forecasting results. We evaluate LightNet\(+\) on a real-world lightning dataset from North China and compare it with several state-of-the-art data-driven lightning forecasting methods. Experimental results show that the proposed LightNet\(+\) yields overall best performance.

论文关键词:Spatiotemporal sequence prediction, Lightning forecasting, Non-local mechanism, Deep learning, Data mining

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论文官网地址:https://doi.org/10.1007/s10489-021-03089-5