首页> 外文OA文献 >Stochastic Modeling of the Rainfall Runoff-Process for Nonpoint Source Pollutant Load Estimation
【2h】

Stochastic Modeling of the Rainfall Runoff-Process for Nonpoint Source Pollutant Load Estimation

机译:非点源污染物负荷估算的降雨径流过程的随机模型

摘要

A stochastic simulation methodology was developed for the rainfall-runoff process to assist in the assessment of nonpoint source pollutant loads, particularly for ungauged watersheds where there is a scarcity or complete lack of historical data. The methodology was developed based on simulating individual rainfall-runoff events. A simulation model employed a rainfall simulator to stochastically generate rainfall event characteristics for input into basin hydrologic transformation functions which then predicted the corresponding runoff hydrography characteristics.Also addressed was the impact of limited data availability on the ability to model the rainfall-runoff process. An evaluation was conducted to the degree to which committing valuable resources to expand the data base would provide measurable improvement in model results. Specifically, the probability of achieving certain levels of accuracy with the simulation model was statistically assessed as a function of the number of observed rainfall-runoff events used for model development. The probability of monitoring various numbers of rainfall-runoff events in specified time intervals was also established as an aid for planning field monitoring studies.The simulation methodology was applied to a study watershed in the Lake Ray Hubbard reservoir drainage basin near Dallas, Texas. Regional rainfall characteristics were established using historical hourly data from the Federal Aviation Administration rain gage at Love Field Airport in Dallas, Texas. Hourly rainfall data were resolved into individual rainfall events and probability density functions were identified for event volume, time between events, and event duration. Linear hydrologic transformation functions were derived and incorporated into the simulation model by applying a unique stepwise least squares optimization procedure using observed data from the study watershed. Both total direct runoff and peak runoff rate were shown to be functions of rainfall event volume and a white noise component. Verification of the model was achieved by statistically demonstrating that long-term simulation results and observed field data were drawn from the same underlying population.
机译:针对降雨-径流过程开发了一种随机模拟方法,以帮助评估非点源污染物负荷,特别是对于缺少或完全缺乏历史数据的无污染流域。该方法是在模拟单个降雨径流事件的基础上开发的。一个模拟模型使用降雨模拟器随机生成降雨事件特征以输入流域水文转换函数,然后预测相应的径流水文特征,还解决了有限的数据可用性对降雨径流过程建模能力的影响。进行了某种程度的评估,即在一定程度上投入宝贵的资源来扩展数据库将在模型结果方面提供可衡量的改进。具体来说,将模拟模型达到一定精度水平的概率根据用于模型开发的观测降雨径流事件的数量进行统计评估。还建立了在指定时间间隔内监视各种降雨径流事件的可能性,以帮助进行现场监测研究。该模拟方法被应用于德克萨斯州达拉斯附近的雷哈伯德湖水库流域的研究分水岭。使用得克萨斯州达拉斯Love Field机场的美国联邦航空管理局雨量计的历史小时数据来确定区域降雨特征。将每小时的降雨数据分解为单个降雨事件,并确定事件量,事件之间的时间和事件持续时间的概率密度函数。通过使用独特的逐步最小二乘法优化程序,使用研究分水岭的观测数据,得出线性水文转换函数并将其合并到模拟模型中。总直接径流量和峰值径流量均显示为降雨事件量和白噪声分量的函数。该模型的验证是通过统计证明长期模拟结果和观察到的现场数据均来自相同的基础种群而实现的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号