S-Transformer: a new deep learning model enhanced by sequential transformer encoders for drought forecasting

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Date

2025

Authors

Ali Danandeh Mehr
Amir Aminzadeh Ghavifekr
Elman Ghazaei
Mir Jafar Sadegh Safari
Changqing Ke
Vahid Nourani

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Publisher

Springer Science and Business Media Deutschland GmbH

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HYBRID

Green Open Access

No

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Top 10%
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Average
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Top 10%

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Abstract

Droughts are prolonged periods of rainfall deficit the frequency of which has increased due to global warming causing severe impacts on water resources agriculture ecosystems and food security. Given their significance accurate monitoring and forecasting of droughts are crucial for effective water resource management. This paper introduces sequential-based transformers (S-Transformer) a novel deep-learning approach aimed to apply for meteorological droughts prediction using their historical events. The core of the S-transformer algorithm is the orderly computing of an output by utilizing the sequence of inputs. Training of the S-transformer involves forward and backward passes through the network to adjust the weights and biases using gradient descent optimization. This process uses fixed-size dynamic windows to minimize the difference between the observed and forecasted outputs. To demonstrate the effectiveness and performance of the new model two case studies were presented based on the observed standardized precipitation index in Isparta and Burdur cities Türkiye. In addition the S-Transformer efficiency was compared with those of three benchmark models including a classic multilayer perceptron a deep learning long-short-term memory and a deep classic transformer model. The promising results of the proposed model proved its superiority over its counterparts in terms of different performance metrics. In Isparta and Burdur cities the S-Transformer achieved the root mean squared values of 0.096 and 0.098 on the testing set respectively. © 2025 Elsevier B.V. All rights reserved.

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Keywords

Drought, Dynamic Training, Long Short-term Memory, Prediction, Sequential Transformer Encoder, Water Resources Engineering, Algorithm, Drought, Forecasting Method, Machine Learning, Rainfall, Water Management, Water Resource, Burdur, Isparta, algorithm, drought, forecasting method, machine learning, rainfall, water management, water resource, Burdur, Isparta

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OpenCitations Citation Count
2

Source

Earth Science Informatics

Volume

18

Issue

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Scopus : 4

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Mendeley Readers : 16

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