高级检索

      基于物理公式-随机森林残差修正的感潮河段过闸流量估算

      Estimation of Gate Discharge in Tidal River Reaches Based on Physical Formula and Random Forest Residual Learning

      • 摘要: 感感潮河段过闸流量精确估算是闸群调度水量平衡校核与水质响应评估的前提。本文以青松控制片北泖泾闸、洞泾港闸、大涨泾闸三座闸门为对象,提出基于能量方程的物理公式与随机森林残差修正的混合估算模型。物理公式引入淹没修正系数处理感潮河段流态转换,随机森林以14维特征变量学习物理公式的残差修正项。以2025年ACDP实测流量数据率定参数,2026年ACDP实测流量数据验证。相较于直接使用物理公式,引入随机森林残差修正后,R²从0.789提升至0.908,RMSE降低33.9%,MAE降低28.1%。特征重要性分析揭示上游水头和开度比是影响残差的关键因素。结果表明,物理公式结合随机森林残差修正能够有效提高流量估算的精度。

         

        Abstract: Accurate estimation of gate flow in tidal reach segments is a prerequisite for water balance calibration and water quality response assessment in gate group dispatch. Taking the three gates of Beilaojing, Dongjinggang, and Dazhangjing in the Qingsong control area as study objects, this paper proposes a hybrid estimation model combining a physics-based energy equation with random forest residual correction. The physical formula incorporates a submerged correction coefficient to handle flow regime transitions in tidal reaches, while the random forest model learns the residual correction term using 14-dimensional feature variables. The model parameters are calibrated with ACDP measured flow data from 2025 and validated with data from 2026. Compared with the direct use of the physical formula, the introduction of random forest residual correction improves R² from 0.789 to 0.908, reduces RMSE by 33.9%, and reduces MAE by 28.1%. Feature importance analysis reveals that upstream water head and gate opening ratio are key factors influencing the residuals. The results demonstrate that the combination of the physical formula and random forest residual correction can effectively enhance the accuracy of flow estimation.

         

      /

      返回文章
      返回