河流水质变分数据同化研究OA
Research on variational data assimilation for river water quality modelling
在水质监测数据日益丰富的背景下,为提高河流水质模拟与预测的精度,基于偏微分方程最优控制理论,建立了一维非恒定河流水质模拟的变分数据同化模型,并采用孪生数值试验方法开展了以水质衰减系数、初始条件、上游边界条件和入河负荷过程为控制变量的数值试验.结果表明,模型可提取观测资料中的有用信息,快速校正模型控制变量,识别空间分布式的水质衰减系数、初始条件、上游边界条件以及入河负荷过程等,使预测结果逼近河流的真实水质过程.
Given the increasing abundance of water quality monitoring data,this study develops a variational data assimilation model for one-dimensional unsteady river water quality simulation based on the optimal control theory of partial differential equations,with the goal of improving the accuracy of river water quality simulation and prediction.Twin numerical experiments are conducted using the water quality decay coefficient,initial conditions,upstream boundary conditions,and river pollutant load processes as control variables.The results indicate that the model can extract useful information from observations,rapidly correct the control variables,and identify spatially distributed water quality decay coefficients,initial conditions,upstream boundary conditions,and river pollutant load processes,thereby enabling model predictions to approach the actual water quality dynamics of the river.
徐健;赖锡军
上海市水务规划设计研究院(上海市海洋规划设计研究院)中国科学院南京地理与湖泊研究所湖泊与流域水安全全国重点实验室
水质模拟河网变分法数据同化数学模型
water quality modellingriver networkvariational methoddata assimilationmathematical model
《水利水电科技进展》 2026 (3)
37-41,101,6
国家重点研发计划项目(2024YFC3211700)
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