Advancements in Downscaling Global Climate Model Temperature Data in Southeast Asia: A Machine Learning Approach

Teerachai Amnuaylojaroen
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Abstract

Southeast Asia (SEA), known for its diverse climate and broad coastal regions, is particularly vulnerable to the effects of climate change. The purpose of this study is to enhance the spatial resolution of temperature projections over Southeast Asia (SEA) by employing three machine learning methods: Random Forest (RF), Gradient Boosting Machine (GBM), and Decision Tree (DT). Preliminary analyses of raw General Circulation Model (GCM) data between the years 1990 and 2014 have shown an underestimation of temperatures, which is mostly due to the insufficient amount of precision in its spatial resolution. Our findings show that the RF method has a significant concordance with high-resolution observational data, as evidenced by a low mean squared error (MSE) value of 2.78 and a high Pearson correlation coefficient of 0.94. The GBM method, while effective, had a broader range of predictions, indicated by a mean squared error (MSE) score of 5.90. The Decision Tree (DT) method performed the best, with the lowest mean squared error (MSE) value of 2.43, which closely matched the actual data. The first General Circulation Model (GCM) data, on the other hand, exhibited significant forecast errors, as evidenced by a mean squared error (MSE) value of 7.84. The promise of machine learning methods, notably the Random Forest (RF) and Decision Tree (DT) algorithms, in improving temperature predictions for the Southeast Asian region is highlighted in the present study.
东南亚全球气候模型气温数据降尺度研究进展:机器学习方法
东南亚(SEA)因其多样的气候和广阔的沿海地区而闻名,特别容易受到气候变化的影响。本研究的目的是通过采用三种机器学习方法来提高东南亚气温预测的空间分辨率:随机森林(RF)、梯度提升机(GBM)和决策树(DT)。对 1990 年至 2014 年的原始大气环流模式(GCM)数据进行的初步分析表明,气温被低估了,这主要是由于其空间分辨率不够精确。我们的研究结果表明,RF 方法与高分辨率观测数据具有显著的一致性,其平均平方误差 (MSE) 值低至 2.78,皮尔逊相关系数高达 0.94。GBM 方法虽然有效,但预测范围较广,平均平方误差 (MSE) 值为 5.90。决策树(DT)方法表现最佳,平均平方误差(MSE)值最低,为 2.43,与实际数据非常吻合。另一方面,第一个大气环流模式(GCM)数据则显示出明显的预测误差,平均平方误差(MSE)值为 7.84。本研究强调了机器学习方法,特别是随机森林(RF)和决策树(DT)算法在改善东南亚地区气温预测方面的前景。
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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CiteScore
5.80
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