首页> 外文期刊>Advances in Water Resources >New dynamic two-layer model for predicting depth-averaged velocity in open channel flows with rigid submerged canopies of different densities
【24h】

New dynamic two-layer model for predicting depth-averaged velocity in open channel flows with rigid submerged canopies of different densities

机译:用不同密度的刚性淹没檐孔预测开放通道中深度平均速度的新动态两层模型

获取原文
获取原文并翻译 | 示例
           

摘要

The depth-averaged velocity is the commonly used engineering quantity in natural rivers, and it needs to be predicted in advance, especially in flood seasons. A model that can provide a unified physical foundation for open channel flows with different canopy densities remains lacking despite ongoing researches. Here, we use the concept of the auxiliary bed to describe the influence of momentum exchange on rigid canopy elements with varying density and submergence. The auxiliary bed divides the vegetated flow into a basal layer and a suspension layer to predict average velocity in each layer separately. In the basal layer, the velocity profile is assumed to be uniform. In the suspension layer, a parameter called "penetration depth" is applied to present the variations in velocity distribution. We also apply a data-driven method, called genetic programming (GP), to derive Chezy-like predictors for average velocity in the suspension layer. Compared to the hydraulic resistance equation for rough-wall flows, the new formulae calculated by the weighted combination method show sound physical meanings. In addition, comparison with other models shows that the new dynamic two-layer model achieves high accuracy in flow rate estimation, especially for vegetated flow with sparse canopies.
机译:深度平均速度是天然河流中常用的工程量,需要预先预测,特别是在洪水季节中。尽管正在进行的研究,但仍然缺乏具有不同冠层密度的开放通道流动的统一物理基础。在这里,我们使用辅助床的概念来描述具有不同密度和浸没的刚性冠层元素对刚性冠层元素的影响。辅助床将植被流分成基底层和悬浮层,以分别预测每层的平均速度。在基底层中,假设速度曲线是均匀的。在悬挂层中,应用称为“穿透深度”的参数以呈现速度分布的变化。我们还应用一种被称为遗传编程(GP)的数据驱动方法,以获得Chezy-Lign的预测器,以实现悬架层中的平均速度。与粗壁流动的液压电阻方程相比,由加权组合方法计算的新公式显示出声音物理含义。此外,与其他模型的比较表明,新的动态双层模型在流量估计中实现了高精度,特别是对于稀疏檐篷的植被流动。

著录项

相似文献

  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号