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Applying micro-genetic algorithm in the one-dimensional unsteady hydraulic model for parameter optimization

机译:微观遗传算法在一维非定常水力模型中的参数优化

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摘要

Selection of an appropriate value for Manning's roughness coefficient could significantly impact the accuracy of a hydraulic model. However, it is highly variable and depends on flow circumstances, such as water stage and flow quantity; a stream's geomorphology, such as the fluvial process and river meandering; and physical conditions, such as the channel surface roughness and irregularities. Nevertheless, choosing proper roughness coefficients is not easy, especially with limited information and time in a practical application. Even it is done for a specific event it may not apply to another event due to its time- and site-dependency. This study proposes a visual Basic (VB)-based system, which integrates the HEC-RAS modeling tool and the μGA to efficiently search for Manning's roughness coefficients. The matching coefficients will thereafter improve the accuracy of hydraulic modeling. Two events in the Yilan River Basin were applied to test the feasibility of the system and four evaluation criteria were used to evaluate the system performance. The results showed that μGA efficiently converged and the hydraulic model showed good agreement in comparison with the measured data. The system can be used as a good tool for finding onsite Manning's roughness coefficients in hydraulic modeling when detailed information is not available.
机译:选择曼宁粗糙度系数的适当值可能会严重影响水力模型的准确性。但是,它变化很大,并取决于流量情况,例如水位和流量。河流的地貌,例如河流过程和河流蜿蜒;和物理条件,例如通道表面的粗糙度和不规则性。然而,选择合适的粗糙度系数并不容易,特别是在实际应用中信息和时间有限的情况下。即使是针对特定事件完成的操作,由于其时间和站点依赖性,也可能不适用于其他事件。这项研究提出了一个基于视觉Basic(VB)的系统,该系统集成了HEC-RAS建模工具和μGA,可以有效地搜索Manning的粗糙度系数。此后,匹配系数将提高水力建模的准确性。宜兰河流域发生了两次事件,测试了系统的可行性,并使用了四个评估标准来评估系统的性能。结果表明,μGA有效收敛,水力模型与实测数据吻合良好。当没有详细信息时,该系统可以用作在水力模型中查找曼宁粗糙度系数的好工具。

著录项

  • 来源
    《Journal of Hydroinformatics》 |2014年第4期|772-783|共12页
  • 作者单位

    Hydrotech Division,Taiwan Typhoon and Flood Research Institute,National Applied Research Laboratories,11F., No. 97, Sec. 1,Roosevelt Rd,Taipei City 10093,Taiwan;

    Hydrotech Division,Taiwan Typhoon and Flood Research Institute,National Applied Research Laboratories,No. 22, Keyuan Rd,Situn District,Taichung City 40763,Taiwan;

    Hydrotech Division,Taiwan Typhoon and Flood Research Institute,National Applied Research Laboratories,11F., No. 97, Sec. 1,Roosevelt Rd,Taipei City 10093,Taiwan;

    Hydrotech Division,Taiwan Typhoon and Flood Research Institute,National Applied Research Laboratories,11F., No. 97, Sec. 1,Roosevelt Rd,Taipei City 10093,Taiwan;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    HEC-RAS; Manning's roughness coefficient; micro-genetic algorithm; parameter Optimization;

    机译:HEC-RAS;曼宁粗糙度系数;微遗传算法;参数优化;

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