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A random search methodology for examining parametric uncertainty in water quality models

机译:用于检查水质模型中参数不确定性的随机搜索方法

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摘要

The advent of the modern high-speed digital computer has tremendously enhanced the utility of Monte Carlo methods for evaluating complex environmental simulation models. In particular, random searching is becoming popular, as thousands of model runs can now be executed quickly and with minimal effort Indeed, the issues of computational burden and inefficiency, hitherto the bane of random searching, are now receding. This paper presents one such method, uniform covering by probabilistic rejection (UCPR), which combines a pure random search with a probabilistic rejection algorithm that significantly enhances its efficiency. Using nearest-neighbor distances, an ensemble of points in a predefined parameter sampling domain migrates to locate and define a final distribution of optimal parameter vectors, thus providing a realistic depiction of parameter uncertainty. In a prototypical case study of the Oconee River (Georgia, USA), UCPR and regionalized sensitivity analysis, are employed for identifying the parameters of sediment-transport-associated nutrient dynamics, a dynamic river water quality model. Results indicate the existence of a complex interactive parameter structure, evidenced by multiple sets of optimal points widely dispersed over a broad domain of feasible parameter values.
机译:现代高速数字计算机的出现极大地增强了蒙特卡洛方法在评估复杂环境模拟模型中的实用性。尤其是,随机搜索正变得越来越流行,因为成千上万的模型运行现在可以快速且省力地进行。的确,迄今为止,计算负担和效率低下的问题正在逐渐消失。本文提出了一种这样的方法,即通过概率拒绝统一覆盖(UCPR),该方法将纯随机搜索与概率拒绝算法相结合,可以显着提高其效率。使用最近邻居距离,预定义参数采样域中的点集合将迁移以定位和定义最佳参数向量的最终分布,从而提供对参数不确定性的真实描述。在奥科尼河(美国乔治亚州)的典型案例研究中,采用UCPR和区域敏感性分析来确定与沉积物运输相关的养分动力学参数,这是一种动态河流水质模型。结果表明存在复杂的交互式参数结构,这由分散在可行参数值的广泛域中的多组最佳点所证明。

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