采用三重耦合随机森林方法对地球系统模型得出的 Divandareh-Bijar 盆地(伊朗西部)降水量集合数据进行偏差校正

IF 3.5 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES
Faezeh Zebarjadian, Neda Dolatabadi, Banafsheh Zahraie, Hossein Yousefi Sohi, Omid Zandi
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引用次数: 0

摘要

气候变化预计将改变降水的频率、持续时间、强度和模式,因此需要准确的预测工具。地球系统模式(ESM)是这一努力中的宝贵工具,可模拟气候变量在时间和空间维度上的变化。本研究旨在开发一种方法,通过纠正 ESM 输出中固有的偏差,生成精确的日降水量地图。建议的方法包括降尺度模拟历史日降水量,从而提高日降水量表示的保真度。为此,采用了耦合模式相互比较项目第 6 阶段(CMIP6)的 14 个模式。随机森林(RF)机器学习方法用于纠正这些 ESM 输出中的偏差。这项研究的新颖之处在于将基于网格的随机森林分类模型(用于区分雨天和非雨天)的结果与两个随机森林回归模型(用于估算接收极端降水和非极端降水的网格单元的降水量)的结果整合在一起,生成了ESM输出集合。由此产生的方法被称为三重耦合法(EN-RF),利用伊朗西部 Divandareh-Bijar 盆地的降水数据进行了验证,以模拟历史气候条件。此外,还将所开发的三重耦合方法的准确性与常用的基于单一机器学习的降尺度模型(EN-Single-RF)的准确性进行了比较。与常用的基于机器学习的单一降尺度模型(EN-Single-RF)的比较分析表明,EN-RF 方法在复制日降水强度和分布方面表现出色。此外,在三重耦合框架内,支持向量机(SVM)被用来模拟每日历史降水量(EN-SVM),而量化映射(QM)方法则作为基准。结果比较显示,就各种精度指标(克林-古普塔效率 = 0.95,均方误差 = 0.22)而言,EN-RF 优于其他方法(EN-Single-RF、EN-SVM 和 QM)。研究结果表明,利用 RF 算法提出的三重耦合框架能够利用 ESM 降水输出模拟降水的时空分布。所开发的框架可用于制作可靠的预测,以深入了解气候变化对区域降水模式的潜在影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Triple coupling random forest approach for bias correction of ensemble precipitation data derived from Earth system models for Divandareh-Bijar Basin (Western Iran)

Triple coupling random forest approach for bias correction of ensemble precipitation data derived from Earth system models for Divandareh-Bijar Basin (Western Iran)

Climate change is expected to change the frequency, duration, intensity, and pattern of precipitation, underscoring the need for accurate predictive tools. Earth system models (ESMs) serve as invaluable instruments in this endeavour, simulating climate variable variations across temporal and spatial dimensions. This study aims to develop a methodology for generating precise daily precipitation maps by rectifying biases inherent in ESM outputs. The proposed methodology includes downscaling ESM outputs to simulate historical daily grid-based precipitation, thereby enhancing the fidelity of daily precipitation representation. For this purpose, 14 models from the Coupled Model Intercomparison Project Phase 6 (CMIP6) were employed. Random forest (RF) machine learning method was used to correct biases in these ESM outputs. This study's novelty lies in integrating results of a grid-based RF classification model, employed to distinguish between rainy and non-rainy days, with those obtained by two RF regression models, to estimate precipitation amounts for grid cells receiving extreme and non-extreme precipitation, to generate an ensemble of ESM outputs. The resulting method, termed the triple coupling method (EN-RF), was validated using precipitation data from the Divandareh-Bijar Basin in western Iran to simulate historical climate conditions. Furthermore, the accuracy of the developed triple coupling approach was compared with that of a commonly used single machine learning-based downscaling model (EN-Single-RF). Comparative analysis against a commonly used single machine learning-based downscaling model (EN-Single-RF) revealed the superior performance of the EN-RF approach in replicating the intensity and distribution of daily precipitation. Furthermore, within the triple coupling framework, support vector machine (SVM) was utilized to simulate daily historical precipitation (EN-SVM), while the quantile mapping (QM) method served as a benchmark. Comparison of the results showed superiority of the EN-RF to other methods (EN-Single-RF, EN-SVM, and QM) in terms of various accuracy metrics (Kling-Gupta Efficiency = 0.95, mean square error = 0.22). The findings indicated the capability of the proposed triple coupling framework using the RF algorithm to simulate the spatio-temporal distribution of precipitation using the ESM precipitation outputs. The developed framework can be used to produce reliable projections to gain deeper insights into the potential impacts of climate change on regional precipitation patterns.

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来源期刊
International Journal of Climatology
International Journal of Climatology 地学-气象与大气科学
CiteScore
7.50
自引率
7.70%
发文量
417
审稿时长
4 months
期刊介绍: The International Journal of Climatology aims to span the well established but rapidly growing field of climatology, through the publication of research papers, short communications, major reviews of progress and reviews of new books and reports in the area of climate science. The Journal’s main role is to stimulate and report research in climatology, from the expansive fields of the atmospheric, biophysical, engineering and social sciences. Coverage includes: Climate system science; Local to global scale climate observations and modelling; Seasonal to interannual climate prediction; Climatic variability and climate change; Synoptic, dynamic and urban climatology, hydroclimatology, human bioclimatology, ecoclimatology, dendroclimatology, palaeoclimatology, marine climatology and atmosphere-ocean interactions; Application of climatological knowledge to environmental assessment and management and economic production; Climate and society interactions
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