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Direct solutions for normal depth in parabolic and rectangular open channels using asymptotic matching technique

机译:使用渐近匹配技术直接求解抛物线形和矩形明渠中法线深度的问题

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摘要

Normal flow depth is an important parameter in design of open channels and analysis of gradually varied flow. In open channels with parabolic and rectangular cross-sections, the governing equations are nonlinear in terms of the normal depth and thus solution of the implicit equations involves numerical methods. In current research explicit solutions for these channels have been obtained using asymptote matching technique. For the parabolic channel, the maximum error of proposed equation for normal depth is less than 0.07% (near exact solution). But, in rectangular channels, the maximum error of proposed equation for normal depth is less than 1.94% which is not very accurate. The efficiency of the asymptote matching technique can be considerably improved by adding a power-law function between two asymptotes. For rectangular channel a new solution for normal flow depth is developed using the improved asymptote matching technique proposed in this research. The maximum error of this full range solution is less than 0.12%. The results showed that the improvement in proposed solution is substantial. Proposed full range solutions have definite physical concept, high accuracy and easy calculation and are well-suited for manual calculations and computer programming. (C) 2015 Elsevier Ltd. All rights reserved.
机译:正常流量深度是明渠设计和流量逐渐变化的分析中的重要参数。在具有抛物线形和矩形横截面的明渠中,控制方程在法向深度方面是非线性的,因此隐式方程的求解涉及数值方法。在当前的研究中,使用渐近线匹配技术已经获得了针对这些通道的明确解决方案。对于抛物线形通道,所建议方程式的正常深度的最大误差小于0.07%(接近精确解)。但是,在矩形通道中,所提出方程的法向深度的最大误差小于1.94%,这不是很准确。通过在两个渐近线之间添加幂律函数,可以大大提高渐近线匹配技术的效率。对于矩形通道,使用本研究中提出的改进渐近线匹配技术,开发了一种新的法向流动深度解决方案。该全量程解决方案的最大误差小于0.12%。结果表明,所提出解决方案的改进是实质性的。拟议的全范围解决方案具有明确的物理概念,高精度且易于计算,非常适合于手动计算和计算机编程。 (C)2015 Elsevier Ltd.保留所有权利。

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