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Published in: Neural Computing and Applications 11/2024

18-01-2024 | Original Article

A data-driven approach for high accurate spatiotemporal precipitation estimation

Authors: Minh Khiem Pham, Phi Le Nguyen, Viet Hung Vu, Thao Nguyen Truong, Hoa Vo-Van, Thanh Ngo-Duc

Published in: Neural Computing and Applications | Issue 11/2024

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Abstract

Precipitation is a fundamental factor affecting many fields, including freshwater reservation, flood warning and prevention, agriculture, and hydropower planning. Observation-based precipitation data usually come from two primary sources, namely gauges and satellite images. The former provides high reliability but sparse coverage, while the latter offers fine-grained data but is still inaccurate. There have been several efforts to estimate precipitation, including mathematical and probabilistic models and machine learning-based techniques. All existing solutions consider the target problem as a satellite data calibration with gauge data as complementary information. However, this approach fails to provide accurate predictive results due to the sparsity of gauges and significant errors in satellite data. This paper presents a novel precipitation estimating method that highlights the importance of gauge data, the most trustworthy data source. To be more precise, we formulate the precipitation estimation issue as a spatial prediction task with the goal of predicting rainfall data for non-monitoring locations using gauge data at the monitored sites. To this end, we propose a data-driven approach that exploits the encoder–decoder architecture, graph neural network, and the multimodal data fusion strategy. Specifically, we design an encoder that leverages a graph neural network for capturing the spatial relationship among the gauges. Meanwhile, the decoder exploits the convolutional networks to learn the temporal correlation within the historical data. Finally, we integrate satellite images and meteorological information using a multimodal data fusion based on a multilayer perceptron to enhance prediction accuracy. The experimental results show that our proposed model increases the estimation accuracy from 24.3 to 65.2% compared to the state-of-the-art.

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Appendix
Available only for authorised users
Footnotes
1
The PERSIANN-CCS dataset has global coverage from \(50^\circ S\) to \(50^\circ N\) and a resolution of \(0.04^\circ \times 0.04^\circ\). The PERSIANN dataset has coverage from \(50^\circ S\) to \(50^\circ N\) with the spatial resolution of \(0.25^\circ \times 0.25^\circ\).
 
2
for the Cau Lau monitoring station on the Thu Bon river basin in Quang Nam province.
 
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Metadata
Title
A data-driven approach for high accurate spatiotemporal precipitation estimation
Authors
Minh Khiem Pham
Phi Le Nguyen
Viet Hung Vu
Thao Nguyen Truong
Hoa Vo-Van
Thanh Ngo-Duc
Publication date
18-01-2024
Publisher
Springer London
Published in
Neural Computing and Applications / Issue 11/2024
Print ISSN: 0941-0643
Electronic ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-023-09397-w

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