A hybrid deep learning model for rainfall in the wetlands of southern Iraq

被引:0
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作者
Fehaid Alqahtani
Mostafa Abotaleb
Alhumaima Ali Subhi
El-Sayed M. El-Kenawy
Abdelaziz A. Abdelhamid
Khder Alakkari
Amr Badr
H. K. Al-Mahdawi
Abdelhameed Ibrahim
Ammar Kadi
机构
[1] King Fahad Naval Academy,Department of Computer Science
[2] South Ural State University,Department of System Programming
[3] University of Diyala,Electronic and Computer Center
[4] Delta Higher Institute of Engineering and Technology,Department of Communications and Electronics
[5] Ain Shams University,Department of Computer Science, Faculty of Computer and Information Sciences
[6] Shaqra University,Department of Computer Science, College of Computing and Information Technology
[7] University of Tishreen,Department of Statistics and Programming, Faculty of Economics
[8] University of New England,Faculty of Science, School of Science and Technology
[9] University of Diyala,Electronic Computer Centre
[10] Mansoura University,Computer Engineering and Control Systems Department, Faculty of Engineering
[11] South Ural State University,Department of Food and Biotechnology
关键词
Wetlands; Mesopotamia marshes; Hybrid deep-learning; Optimization; CNN; Machine learning;
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学科分类号
摘要
Machine learning is being used by researchers and computer scientists to develop a new method for predicting rainfall. Due to the non-linear relationship between input data and output conditions, rainfall prediction is hard, so deep neural network (DNN) models substitute for costly, complex systems. Deep neural network-based weather forecasting models can be designed quickly and cheaply to predict rainfall. On the other hand, water levels depend on rainfall. Unpredictable rainfall due to climate change might cause floods or droughts. Many individuals, especially farmers, rely on rain forecasts. In our study, we focus on the area of marshes in southern Iraq, some of the most famous landmarks in the area (and the world), where the Shatt al-Arab flows into the Arabic Gulf and the Tigris and Euphrates rivers developed within the Mesopotamian plain to create a natural balance. Since the beginning of the 1980s, the wetlands, sometimes known as "the marshes," have experienced droughts. And by the late 1990s, a sizable portion of the marshes had dried up, leaving the arid and salty Sabkha lands void of life, particularly lands with vast bodies of water and high levels of human activity. Moreover, the corresponding regions have undergone visible hydrological and climatic changes. In this study focuses on the marshes of southern Iraq and aims to develop a rainfall forecasting model. We propose a novel approach based on optimized LSTM and hybrid deep learning algorithms to improve the forecasting of average monthly rainfall. To evaluate the efficiency of the predictions, a comparison of the predicted rainfall and the actual recorded rainfall is made, and the performance and accuracy of the models are examined. The hybrid convolutional stacked bidirectional long-short term memory (CNN-BDLSTMs) outperformed the other models.
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页码:4295 / 4312
页数:17
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