Auto-Machine-Learning Models for Standardized Precipitation Index Prediction in North–Central Mexico

IF 3 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES
Climate Pub Date : 2024-07-12 DOI:10.3390/cli12070102
R. Magallanes-Quintanar, C. E. Galván-Tejada, J. Galván-Tejada, Hamurabi Gamboa-Rosales, S. J. Méndez-Gallegos, Antonio García-Domínguez
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引用次数: 0

Abstract

Certain impacts of climate change could potentially be linked to alterations in rainfall patterns, including shifts in rainfall intensity or drought occurrences. Hence, predicting droughts can provide valuable assistance in mitigating the detrimental consequences associated with water scarcity, particularly in agricultural areas or densely populated urban regions. Employing predictive models to calculate drought indices can be a useful method for the effective characterization of drought conditions. This study applied an Auto-Machine-Learning approach to deploy Artificial Neural Network models, aiming to predict the Standardized Precipitation Index in four regions of Zacatecas, Mexico. Climatological time-series data spanning from 1979 to 2020 were utilized as predictive variables. The best models were found using performance metrics that yielded a Mean Squared Error, Mean Absolute Error, and Coefficient of Determination ranging from 0.0296 to 0.0388, 0.1214 to 0.1355, and 0.9342 to 0.9584, respectively, for the regions under study. As a result, the Auto-Machine-Learning approach successfully developed and tested Artificial Neural Network models that exhibited notable predictive capabilities when estimating the monthly Standardized Precipitation Index within the study region.
墨西哥中北部标准化降水指数预测的自动机器学习模型
气候变化的某些影响可能与降雨模式的改变有关,包括降雨强度的变化或干旱的发生。因此,预测干旱可为减轻与缺水相关的有害后果提供宝贵帮助,尤其是在农业地区或人口稠密的城市地区。采用预测模型计算干旱指数是有效描述干旱状况的有用方法。本研究采用自动机器学习方法部署人工神经网络模型,旨在预测墨西哥萨卡特卡斯四个地区的标准化降水指数。研究利用 1979 年至 2020 年的气候时间序列数据作为预测变量。根据性能指标,研究区域的平均平方误差、平均绝对误差和判定系数分别为 0.0296 至 0.0388、0.1214 至 0.1355 和 0.9342 至 0.9584,从而找到了最佳模型。因此,自动机器学习方法成功地开发和测试了人工神经网络模型,这些模型在估算研究区域内的月标准化降水指数时表现出显著的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Climate
Climate Earth and Planetary Sciences-Atmospheric Science
CiteScore
5.50
自引率
5.40%
发文量
172
审稿时长
11 weeks
期刊介绍: Climate is an independent, international and multi-disciplinary open access journal focusing on climate processes of the earth, covering all scales and involving modelling and observation methods. The scope of Climate includes: Global climate Regional climate Urban climate Multiscale climate Polar climate Tropical climate Climate downscaling Climate process and sensitivity studies Climate dynamics Climate variability (Interseasonal, interannual to decadal) Feedbacks between local, regional, and global climate change Anthropogenic climate change Climate and monsoon Cloud and precipitation predictions Past, present, and projected climate change Hydroclimate.
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