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Multiobjective Calibration of Reservoir Water Quality Modeling Using Multiobjective Particle Swarm Optimization (MOPSO)

机译:基于多目标粒子群算法(MOPSO)的水库水质模型多目标标定

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摘要

Water resource management encounters large variety of multi objective problems that require powerful optimization tools in order to fully characterize the existing tradeoffs between various objectives that can be minimizing difference between forecasted physical, chemical, and biological behaviors of model and measured data. Calibration of complex water quality models for river and reservoir systems may include conflicting objectives addressed by various combinations of interacting calibration parameters. Calibration of the two dimensional CE-QUAL-W2 water quality and hydrodynamic model is an excellent example where the model must be calibrated for both hydrodynamic and water quality behavior. The aim of the present study is to show how multiobjective particle swarm optimization (MOPSO) can be implemented for automatic calibration of water quality and hydrodynamic parameters of a 2-dimensional, hydrodynamic, and water quality models (CEQUAL-W2) to predict physical, chemical, and biological behaviors of a water body, and then focus on a relevant case study. So MOPSO is utilized to generate Pareto optimal solutions for two conflicting calibration objectives. A combined measure of thermal and reservoir water level is considered as the first calibration objective. The second objective is formulated to forecast the best physical, chemical, and biological behavior of the model. Realizing the strong interactions between water quality and hydrodynamic issues of water bodies and their dependencies on the same set of calibration parameters, the proposed multiobjective approach may provide a wide version of all possible calibration solutions for better decision making to select best solution from pareto front.
机译:水资源管理遇到各种各样的多目标问题,这些问题需要强大的优化工具,才能充分刻画各种目标之间的现有权衡,从而可以最大程度地减少模型和测量数据的预测物理,化学和生物学行为之间的差异。用于河流和水库系统的复杂水质模型的校准可能包括相互矛盾的目标,这些目标通过相互作用的校准参数的各种组合解决。二维CE-QUAL-W2水质和水动力模型的校准是一个很好的例子,其中必须针对水动力和水质行为对模型进行校准。本研究的目的是展示如何实现多目标粒子群优化(MOPSO)来自动校准二维,水动力和水质量模型(CEQUAL-W2)的水质和水动力参数,以预测物理量,水体的化学和生物学行为,然后重点研究相关的案例研究。因此,利用MOPSO为两个相互矛盾的校准目标生成帕累托最优解。热量和储层水位的综合测量被认为是第一个校准目标。制定第二个目标是预测模型的最佳物理,化学和生物学行为。认识到水质和水体水动力问题之间的强相互作用以及它们对同一组校准参数的依赖性,建议的多目标方法可以提供所有可能的校准解决方案的广泛版本,以便更好地进行决策,以便从最前面选择最佳解决方案。

著录项

  • 来源
    《Water Resources Management》 |2013年第7期|19311932-1947|共17页
  • 作者单位

    Department of Civil Engineering, Iran University of Science and Technology, PO Box 16765-163,Narmak, Tehran 16844, Iran;

    Department of Civil Engineering, Portland State University, Portland, OR, USA,Maseeh College of Engineering and Computer Science, The Northwest Center for Engineering, Science and Technology (Engineering Building), 1930 SW Fourth Avenue Suite 500, Portland, OR 97201, USA;

    Department of Civil Engineering, Portland State University, Portland, OR, USA,Maseeh College of Engineering and Computer Science, The Northwest Center for Engineering, Science and Technology (Engineering Building), 1930 SW Fourth Avenue Suite 500, Portland, OR 97201, USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    multiobjective particle swarm optimization algorithm; multiobjective calibration; water quality modeling; karkheh reservoir- ce-qual-w2;

    机译:多目标粒子群优化算法;多目标校准水质模型;karkheh水库ce-qual-w2;

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