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首页> 外文期刊>Journal of Hydrology >A hybrid genetic - instance based learning algorithm for CE-QUAL-W2 calibration
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A hybrid genetic - instance based learning algorithm for CE-QUAL-W2 calibration

机译:CE-QUAL-W2标定的基于混合遗传实例的学习算法

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This paper presents a calibration model for CE-QUAL-W2. CE-QUAL-W2 is a two-dimensional (2D) longitudinal/vertical hydrodynamic and water quality model for surface water bodies, modeling eutrophication processes such as temperature-nutrient-algae-dissolved oxygen-organic matter and sediment relationships. The proposed methodology is a combination of a 'hurdle-race' and a hybrid Genetic-k-Nearest Neighbor algorithm (GA-kNN). The 'hurdle race' is formulated for accepting-rejecting a proposed set of parameters during a CE-QUAL-W2 simulation; the k-Nearest Neighbor algorithm (kNN)-for approximating the objective function response surface; and the Genetic Algorithm (GA)-for linking both. The proposed methodology overcomes the high, non-applicable, computational efforts required if a conventional calibration search technique was used, while retaining the quality of the final calibration results. Base runs and sensitivity analysis are demonstrated on two example applications: a synthetic hypothetical example calibrated for temperature, serving for tuning the GA-kNN parameters; and the Lower Columbia Slough case study in Oregon US calibrated for temperature and dissolved oxygen. The GA-kNN algorithm was found to be robust and reliable, producing similar results to those of a pure GA, while reducing running times and computational efforts significantly, and adding additional insights and flexibilities to the calibration process. (C) 2005 Elsevier B.V. All rights reserved.
机译:本文介绍了CE-QUAL-W2的校准模型。 CE-QUAL-W2是用于地表水体的二维(2D)纵向/垂直水动力和水质模型,用于模拟富营养化过程,例如温度-营养-藻类-溶解氧-有机质和沉积物之间的关系。所提出的方法是“障碍竞赛”和混合遗传k最近邻算法(GA-kNN)的组合。 “跨栏赛跑”的制定是为了在CE-QUAL-W2仿真期间接受-拒绝提议的一组参数; k-最近邻算法(kNN)-用于逼近目标函数响应面;和遗传算法(GA)-用于链接两者。所提出的方法克服了如果使用常规校准搜索技术而需要的大量的,不适用的计算工作,同时又保留了最终校准结果的质量。在两个示例应用程序上演示了基本运行和灵敏度分析:一个针对温度校准的合成假设示例,用于调整GA-kNN参数;以及在美国俄勒冈州进行的针对下哥伦比亚斯劳的案例研究,对温度和溶解氧进行了校准。发现GA-kNN算法稳定可靠,可产生与纯GA相似的结果,同时显着减少了运行时间和计算量,并为校准过程增加了更多见识和灵活性。 (C)2005 Elsevier B.V.保留所有权利。

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