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Calibration of hydrologic models using distributed surrogate model optimization techniques: A WATCLASS case study.

机译:使用分布式替代模型优化技术对水文模型进行校准:WATCLASS案例研究。

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摘要

This thesis presents a new approach to the calibration of hydrologic models using distributed computing framework. Distributed hydrologic models are known to be very computationally intensive and difficult to calibrate. To cope with the high computational cost of the process a Surrogate Model Optimization (SMO) technique built for distributed computing facilities is proposed. The proposed method along with two analogous SMO methods are employed to calibrate the WATCLASS hydrologic model. This model has been developed at the University of Waterloo and is now a part of the Environment Canada MESH (Environment Canada community environmental modeling system called Modelisation Environmentale Communautaire (MEC) for Surface Hydrology (SH)) systems. SMO has the advantage of being less sensitive to the "curse of dimensionality" and it is very efficient for large scale and computationally expensive models. In this technique, a mathematical model is constructed based on a small set of simulated data from the original expensive model. SMO technique follows an iterative strategy which in each iteration the SM map the region of optimum more precisely.;To evaluate the performance of the proposed SMO method, it has been applied to five well-known test functions and the results are compared to two other analogous SMO methods. Since the performance of all SMOs are promising, two instances of WATCLASS modeling Smoky River watershed are calibrated using these three adopted SMOs and the resultant Nash numbers are reported.;A new comprehensive method based on a smooth regression model is proposed for the calibration of WATCLASS. This method has at least two advantages over the previously proposed methods: it does not require a large number of training data and it does not have many model parameters and therefore its construction and validation process is not demanding.
机译:本文提出了一种利用分布式计算框架进行水文模型标定的新方法。众所周知,分布式水文模型计算量大且难以校准。为了应对该过程的高计算成本,提出了一种为分布式计算设施构建的代理模型优化(SMO)技术。所提出的方法与两个类似的SMO方法一起用于校准WATCLASS水文模型。该模型是在滑铁卢大学开发的,现已成为加拿大环境部MESH(加拿大环境部社区环境建模系统,称为表面水文学(SH)的模型化环境通信委员会(MEC))的一部分。 SMO的优点是对“维数诅咒”较不敏感,并且对于大规模和计算昂贵的模型非常有效。在这种技术中,基于来自原始昂贵模型的一小组模拟数据来构建数学模型。 SMO技术遵循一种迭代策略,在每次迭代中,SM都会更精确地映射出最佳区域。为了评估所提出的SMO方法的性能,该方法已应用于五个著名的测试函数,并将结果与​​其他两个函数进行了比较。类似的SMO方法。由于所有SMO的性能都有希望,因此使用这三个采用的SMO校准了WATCLASS建模烟河流域的两个实例,并报告了产生的纳什数。;提出了一种基于平滑回归模型的综合方法来进行WATCLASS的校准。与先前提出的方法相比,该方法至少具有两个优点:它不需要大量的训练数据,并且没有很多模型参数,因此不需要构造和验证过程。

著录项

  • 作者

    Kamali, Mahtab.;

  • 作者单位

    University of Waterloo (Canada).;

  • 授予单位 University of Waterloo (Canada).;
  • 学科 Systems science.;Hydrologic sciences.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 136 p.
  • 总页数 136
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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