Modeling Short-Term Drought for SPEI in Mainland China Using the XGBoost Model

文献类型: 外文期刊

第一作者: Zeng, Fanchao

作者: Zeng, Fanchao;Gao, Qing;Rao, Zhilong;Wang, Zihan;Yao, Fuqi;Wu, Lifeng;Zhang, Xinjian;Sun, Jinwei

作者机构:

关键词: CPSO-XGBoost model; standardized precipitation evapotranspiration index; multi-timescale analysis; drought prediction; swarm intelligence optimization; China

期刊名称:ATMOSPHERE ( 影响因子:2.3; 五年影响因子:2.5 )

ISSN:

年卷期: 2025 年 16 卷 4 期

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收录情况: SCI

摘要: Accurate drought prediction is crucial for optimizing water resource allocation, safeguarding agricultural productivity, and maintaining ecosystem stability. This study develops a methodological framework for short-term drought forecasting using SPEI time series (1979-2020) and evaluates three predictive models: (1) a baseline XGBoost model (XGBoost1), (2) a feature-optimized XGBoost variant incorporating Pearson correlation analysis (XGBoost2), and (3) an enhanced CPSO-XGBoost model integrating hybrid particle swarm optimization with dual mechanisms of binary feature selection and parameter tuning. Key findings reveal spatiotemporal prediction patterns: temporal-scale dependencies show all models exhibit limited capability at SPEI-1 (R-2: 0.32-0.41, RMSE: 0.68-0.79) but achieve progressive accuracy improvement, peaking at SPEI-12 where CPSO-XGBoost attains optimal performance (R-2: 0.85-0.90, RMSE: 0.33-0.43) with 18.7-23.4% error reduction versus baselines. Regionally, humid zones (South China/Central-Southern) demonstrate peak accuracy at SPEI-12 (R-2 approximate to 0.90, RMSE < 0.35), while arid regions (Northwest Desert/Qinghai-Tibet Plateau) show dramatic improvement from SPEI-1 (R-2 < 0.35, RMSE > 1.0) to SPEI-12 (R-2 > 0.85, RMSE reduction > 52%). Multivariate probability density analysis confirms the model's robustness through enhanced capture of nonlinear atmospheric-land interactions and reduced parameterization uncertainties via swarm intelligence optimization. The CPSO-XGBoost's superiority stems from synergistic optimization: binary particle swarm feature selection enhances input relevance while adaptive parameter tuning improves computational efficiency, collectively addressing climate variability challenges across diverse terrains. These findings establish an advanced computational framework for drought early warning systems, providing critical support for climate-resilient water management and agricultural risk mitigation through spatiotemporally adaptive predictions.

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