Research on Drought Monitoring Based on Deep Learning: A Case Study of the Huang-Huai-Hai Region in China

Author:

Zhou Junwei1,Fan Yanguo1,Guan Qingchun1ORCID,Feng Guangyue1

Affiliation:

1. College of Oceanography and Space Informatics, China University of Petroleum (East China), Qingdao 266580, China

Abstract

As climate change intensifies, drought has become a major global engineering and environmental challenge. In critical areas such as agricultural production, accurate drought monitoring is vital for the sustainable development of regional agriculture. Currently, despite extensive use of traditional meteorological stations and remote sensing methods, these approaches have proven to be inadequate in capturing the full extent of drought information and adequately reflecting spatial characteristics. Therefore, to improve the accuracy of drought forecasts and achieve predictions across extensive areas, this paper employs deep learning models, specifically introducing an attention-weighted long short-term memory network model (AW-LSTM), constructs a composite drought monitoring index (CDMI) and validates the model. Results show that: (1) The AW-LSTM model significantly outperforms traditional long short-term memory (LSTM), support vector machine (SVM) and artificial neural network (ANN) models in drought monitoring, offering not only better applicability in meteorological and agricultural drought monitoring but also the ability to accurately predict drought events one month in advance compared to machine learning models, providing a new method for precise and comprehensive regional drought assessment. (2) The Huang-Huai-Hai Plain has shown significant regional variations in drought conditions across different years and months, with the drought situation gradually worsening in the northern part of Hebei Province, Beijing, Tianjin, the southern part of Huai North and the central part of Henan Province from 2001 to 2022, while drought conditions in the northern part of Huai North, southern Shandong Province, western Henan Province and southwestern Hebei Province have been alleviated. (3) During the sowing (June) and harvesting (September) periods for summer maize, the likelihood of drought occurrences is higher, necessitating flexible adjustments to agricultural production strategies to adapt to varying drought conditions.

Funder

National Natural Science Youth Fund

Shandong Natural Science Youth Fund

Self-innovation Project-Strategic Special Project

Science and Technology Unveiling Special Project

Publisher

MDPI AG

Reference40 articles.

1. Drought Assessment in the Districts of Assam Using Standardized Precipitation Index;Singh;J. Earth Syst. Sci.,2024

2. Khan, N., Shahid, S., Chung, E.-S., Kim, S., and Ali, R. (2019). Influence of Surface Water Bodies on the Land Surface Temperature of Bangladesh. Sustainability, 11.

3. Seasonal Comparisons of Meteorological and Agricultural Drought Indices in Morocco Using Open Short Time-Series Data;Ezzine;Int. J. Appl. Earth Obs. Geoinf.,2014

4. New progress and prospect of drought research since the 21st century;Wang;J. Arid Meteorol.,2022

5. Progress and prospect on the study of causes and variation regularity of droughts in China;Zhang;Acta Meteorol. Sin.,2020

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