人民长江 ›› 2025, Vol. 56 ›› Issue (5): 97-104.doi: 10.16232/j.cnki.1001-4179.2025.05.013

• • 上一篇    

基于多模型集成的和田河流域中长期融雪径流预测

刘东琪,何厚军,邱禹,王蕊,李胜阳,王文   

  • 收稿日期:2024-07-23 出版日期:2025-05-28 发布日期:2025-05-28

Mid-and long-term snowmelt runoff prediction in Hetian River Basin based on multi-model integration

LIU Dongqi,HE Houjun,QIU Yu,WANG Rui,LI Shengyang,WANG Wen   

  • Received:2024-07-23 Online:2025-05-28 Published:2025-05-28

摘要: 融雪径流是西北干旱地区水资源的重要组成部分,准确的径流预测是水资源管理工作的基础。利用 2001~2023 年新疆和田河流域 MODIS 积雪资料和实测流量资料,以积雪覆盖率、雪线高度与大尺度气象 - 气候指数等作为预报因子,通过主成分分析筛选出主要预报因子,然后采用多元回归分析、支持向量机和随机森林 3 种方法建立和田河流域两断面融雪径流的数据驱动模型,再基于 Stacking 融合算法对上述模型进行集成,建立集成预报模型进行融雪径流预测。结果表明:3 种模型在中长期融雪径流预报上均具有较好的预报效果,且随机森林模型预报精度整体优于多元回归模型和支持向量回归模型;基于 Stacking 融合算法,将多元回归模型、支持向量机模型和随机森林模型融合后的集成模型性能优于单一模型,预测精度得以提升,RMSE 从 0.308m³/s 降低至 0.240 m³/s,MAE 从 0.227m³/s 降低至 0.188m³/s,R² 从 0.864 提升至 0.874。研究成果可为西北地区水资源分配与调度、洪涝灾害防御等提供参考。

关键词: 融雪径流;积雪覆盖率;多模型集成;数据驱动模型;Stacking 算法;和田河流域;新疆

Abstract: Snowmelt runoff is an important component of water resources in arid regions of Northwest China, and accurate runoff prediction is the basis for water resource management. Using MODIS snow cover data and measured flow data in the Hetian River Basin, Xinjiang from 2001 to 2023, with snow cover rate, snow line height, and large-scale meteorological-climate indices as forecast factors, the main forecast factors were screened out by principal component analysis. Then, data-driven models for snowmelt runoff at two sections in the Hetian River Basin were established using three methods: multiple regression analysis, support vector machine, and random forest. An integrated forecast model was developed for snowmelt runoff prediction by integrating the above models based on the Stacking fusion algorithm. The results show that all three models have good forecasting performance for mid-and long-term snowmelt runoff, and the random forest model overall has higher forecasting accuracy than the multiple regression model and support vector regression model. The integrated model formed by fusing the multiple regression model, support vector machine model, and random forest model based on the Stacking fusion algorithm outperforms single models, with improved prediction accuracy: RMSE decreased from 0.308 m³/s to 0.240 m³/s, MAE decreased from 0.227 m³/s to 0.188 m³/s, and R² increased from 0.864 to 0.874. The research results can provide a reference for water resource allocation and dispatch, flood control, and disaster prevention in Northwest China.

Key words: snowmelt runoff; snow cover rate; multi-model integration; data-driven model; Stacking algorithm; Hetian River Basin; Xinjiang