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Precipitation forecasting with radar echo maps based on interactive spatiotemporal context with self-attention and the MIM model.

Authors :
Qu, Lianen
Qu, Zhongwei
Hu, Qiang
Liu, Minghua
Ren, Zhikao
Source :
Geografiska Annaler Series A: Physical Geography. Jun-Sep2023, Vol. 105 Issue 2/3, p166-178. 13p.
Publication Year :
2023

Abstract

A sequence of radar echo maps can visually show the motion and variation trends of the echo area, making it a common tool for precipitation forecasting. The spatiotemporal context reveals the correlations of variation trends among different parts within the echo area. This paper proposes a novel precipitation forecasting model, ISTC-SA-MIM (Interactive Spatiotemporal Context Learning with Self-Attention and Memory in Memory), based on the MIM. Leveraging the spatiotemporal interactions and self-attention mechanism of the ISTC-SA structure, the proposed model effectively captures both long-term and short-term spatiotemporal contexts. By memorizing the spatiotemporal context and non-stationary information, ISTC-SA-MIM can accurately predict the motion and variation trends of the echo area. Radar echo data from the Qingdao station are collected as the dataset to evaluate the commonly used spatiotemporal models and ISTC-SA-MIM. The experiments demonstrate that ISTC-SA-MIM can predict the variation trends of the echo area more accurately by learning the spatiotemporal context. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
04353676
Volume :
105
Issue :
2/3
Database :
Academic Search Index
Journal :
Geografiska Annaler Series A: Physical Geography
Publication Type :
Academic Journal
Accession number :
179023318
Full Text :
https://doi.org/10.1080/04353676.2024.2332864