Spatio-temporal modeling of climate change impacts on drought forecast using Generative Adversarial Network: A case study in Africa

被引:14
作者
Ferchichi, Ahlem [1 ,2 ]
Chihaoui, Mejda [1 ]
Ferchichi, Aya [2 ]
机构
[1] Univ Hail, Comp Sci Dept, Appl Coll, Hail 55424, Saudi Arabia
[2] Univ Manouba, RIADI GDL Lab, ENSI, Manouba 2010, Tunisia
关键词
GAN; Spatio-temporal modeling; Climate change impacts; Drought forecasting; Multivariate time series; Remote sensing data; Africa; AREAS;
D O I
10.1016/j.eswa.2023.122211
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Drought is an extreme weather event, affecting the ecological conditions of vegetation and agricultural productivity, poses challenges for millions of people in Africa, and its long-term prediction is definitely important. Accurate drought forecasting is a challenging subject due to its dependence on different climatic variables, and its spatio-temporal, nonstationary and non-linear characteristics. In particular, Deep Learning technologies have achieved excellent results in long-term time series forecasting. Thus, this study proposes a Generative Adversarial Networks (GAN) model which combines Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) network for drought forecasting in Africa. This approach focuses on how the future spatio-temporal variations of drought will vary under climate change effects using multivariate remote sensing data over Africa from 1999-2022. We considered hydrological, meteorological and vegetation spectral factors for GAN as model input variables. The study assessed agricultural drought using the soil moisture index (SMI) as a response parameter. Experimental results confirmed the reliability of the proposed model for forecasting agricultural drought. Compared to existing deep learning models, the proposed GAN based CNN-LSTM model achieved the lowest RMSE, MAPE, and MAE values of 1.008, 0.009, and 0.739, respectively. The findings demonstrate that the proposed model can be used as a reliable forecasting method that helps to estimate drought in arid and semi-arid regions.
引用
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页数:13
相关论文
共 48 条
[31]   Deep Learning for Monitoring Agricultural Drought in South Asia Using Remote Sensing Data [J].
Prodhan, Foyez Ahmed ;
Zhang, Jiahua ;
Yao, Fengmei ;
Shi, Lamei ;
Pangali Sharma, Til Prasad ;
Zhang, Da ;
Cao, Dan ;
Zheng, Minxuan ;
Ahmed, Naveed ;
Mohana, Hasiba Pervin .
REMOTE SENSING, 2021, 13 (09)
[32]   Meteorological drought forecasting for ungauged areas based on machine learning: Using long-range climate forecast and remote sensing data [J].
Rhee, Jinyoung ;
Im, Jungho .
AGRICULTURAL AND FOREST METEOROLOGY, 2017, 237 :105-122
[33]   A simple interpretation of the surface temperature/vegetation index space for assessment of surface moisture status [J].
Sandholt, I ;
Rasmussen, K ;
Andersen, J .
REMOTE SENSING OF ENVIRONMENT, 2002, 79 (2-3) :213-224
[34]   SATELLITE DATA-DRIVEN DEEP LEARNING APPROACH FOR MONITORING GROUNDWATER DROUGHT IN SOUTH KOREA [J].
Seo, Jae Young ;
Lee, Sang-Il .
2022 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS 2022), 2022, :6312-6315
[35]   Construction of a drought monitoring model using deep learning based on multi-source remote sensing data [J].
Shen, Runping ;
Huang, Anqi ;
Li, Bolun ;
Guo, Jia .
INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION, 2019, 79 :48-57
[36]   Assessing the spatio-temporal variability of vegetation productivity in Africa: quantifying the relative roles of climate variability and human activities [J].
Ugbaje, Sabastine U. ;
Odeh, Inakwu O. A. ;
Bishop, Thomas F. A. ;
Li, Jianlong .
INTERNATIONAL JOURNAL OF DIGITAL EARTH, 2017, 10 (09) :879-900
[37]  
Wilhite D. A., 1985, Water International, V10, P111, DOI 10.1080/02508068508686328
[38]   Understanding the complex impacts of drought: A key to enhancing drought mitigation and preparedness [J].
Wilhite, Donald A. ;
Svoboda, Mark D. ;
Hayes, Michael J. .
WATER RESOURCES MANAGEMENT, 2007, 21 (05) :763-774
[39]   Identifying Droughts Affecting Agriculture in Africa Based on Remote Sensing Time Series between 2000-2016: Rainfall Anomalies and Vegetation Condition in the Context of ENSO [J].
Winkler, Karina ;
Gessner, Ursula ;
Hochschild, Volker .
REMOTE SENSING, 2017, 9 (08)
[40]   Anomaly Detection Based on Convolutional Recurrent Autoencoder for IoT Time Series [J].
Yin, Chunyong ;
Zhang, Sun ;
Wang, Jin ;
Xiong, Neal N. .
IEEE TRANSACTIONS ON SYSTEMS MAN CYBERNETICS-SYSTEMS, 2022, 52 (01) :112-122