Estimation of drought trends and comparison between SPI and SPEI with prediction using machine learning models in Rangpur, Bangladesh

Q1 Earth and Planetary Sciences
Mst. Labony Akter, Md. Naimur Rahman, Syed Anowerul Azim, Md. Rakib Hasan Rony, Md. Salman Sohel, Hazem Ghassan Abdo
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引用次数: 1

Abstract

This study investigates drought trends, SPI-SPEI comparisons, and predictions in Rangpur, Bangladesh, from 1979 to 2020. We employed Modified Mann-Kendall for trend analysis, SPI and SPEI for drought assessment, and Pearson Correlation Coefficient and Simple Linear Regression for evaluating SPI and SPEI relationships. Additionally, we utilized ANN, SVM, and RF for prediction. The study revealed notable negative trends in seasonal and annual drought, with the highest z statistics observed for SPI 06 (-2.75), SPI 09 (-4.50), SPI 12 (5.60), SPI 24 (-8.40), SPEI 06 (-5.13), SPEI 09 (-6.82), SPEI 12 (-8.04), and SPEI 24 (-11.20). Strong correlations were identified across all SPI and SPEI indices, with coefficients peaking at 97%, 98%, 98%, and 97% for 06, 09, 12, and 24-month periods, respectively. The comparative assessment favored SPEI over SPI, highlighting its superiority and accuracy. The ANN prediction model showed significant results for short-term and seasonal drought forecasts, projecting SPEI 03 and SPEI 06 increases of 0.02 and 0.24, respectively. However, long-term drought estimation exhibited insignificant performance across all predictive models. This emphasizes the need for developing essential predictive tools for future drought variability.
在孟加拉国Rangpur使用机器学习模型预测干旱趋势的估计和SPI和SPEI之间的比较
本研究调查了1979年至2020年孟加拉国Rangpur的干旱趋势、SPI-SPEI比较和预测。采用修正Mann-Kendall进行趋势分析,SPI和SPEI进行干旱评价,Pearson相关系数和简单线性回归评价SPI和SPEI之间的关系。此外,我们利用人工神经网络、支持向量机和射频进行预测。季节性和年度干旱呈显著负相关,其中spi06(-2.75)、spi09(-4.50)、spi12(5.60)、spi24(-8.40)、spi06(-5.13)、spi09(-6.82)、spi12(-8.04)和spi24(-11.20)的z统计量最高。所有SPI和SPEI指数之间均存在强相关性,其系数分别在06、09、12和24个月期间达到97%、98%、98%和97%的峰值。对比评价偏向于SPEI而非SPI,突出了其优越性和准确性。人工神经网络模型对短期和季节性干旱的预测结果显著,预测SPEI 03和SPEI 06分别增加0.02和0.24。然而,长期干旱估计在所有预测模型中表现不显著。这强调需要开发预测未来干旱变化的基本工具。
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来源期刊
Geology, Ecology, and Landscapes
Geology, Ecology, and Landscapes Earth and Planetary Sciences-Geology
CiteScore
10.90
自引率
0.00%
发文量
32
审稿时长
30 weeks
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