Multidimensional analysis of climate-induced streamflow variability using CMIP6 data and advanced modeling techniques

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Publication Details

Author listPhyo Thandar Hlaing, Usa Wannasingha Humphries & Muhammad Waqas

PublisherTaylor and Francis Group

Publication year2025

Volume number40

Issue number1

Start page1

End page27

Number of pages27

ISSN1010-6049

eISSN1752-0762

URLhttps://www.tandfonline.com/doi/full/10.1080/10106049.2025.2504362

LanguagesEnglish-Great Britain (EN-GB)


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Abstract

The climate driven streamflow changes in Thailand’s TC-Basin are assessed with CMIP6 GCMs, machine learning (Random Forest, XGBoost) and Bayesian Model Averaging (BMA). For precipitation (R2 ¼ 0.90, RMSE ¼ 2.26–2.37 mm) and temperature (R2 ¼ 0.82– 0.91, RMSE ¼ 0.78–1.43 �C), RF/XGBoost achieved high accuracy. For precipitation downscaling, GFDL-ESM4 was suitable, and CNRM-CM6-1 was best for temperature. The BMA ensembles improved reliability (precipitation: R2 ¼ 0.84, RMSE ¼ 4.24– 5.45 mm; temperature: R2 ¼ 0.91, RMSE ¼ 0.78–1.17 �C). Annual precipitation increased to 96,151.50 mm under SSP585, and maximum temperatures were 33.66 �C. Wet season (June–October) increases by 9–10% (higher flood risks), dry season (March–April) decreases by 40–43% (water scarcity), and cool, dry season flows increase by 33–56% are projected. Variation of wind speed was moderate (R2 ¼ 0.88, RMSE ¼ 1.80–3.03 m/s), and humidity was stable (R2 > 0.89). This framework combines ML, GCMs, and BMA to quantify hydroclimatic shifts under climate extremes.


Keywords

Bayesian ensemble modelingclimate changemachine learning downscalingstreamflow prediction


Last updated on 2025-23-05 at 00:00