Data arrangements to train an artificial neural network within solving the tasks for calculating the Chézy roughness coefficient under uncertainty of parameters determining the hydraulic resistance to flow in river channels

Yaroslav V. Khodnevych, D. Stefanyshyn
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Abstract

Hydraulic calculations and mathematical modelling of open flows in river channels keep still being among the most topical hydro-engineering today’s problems in terms of practice. While solving them, independently on the research topic and purpose, and methods used, a number of simplifications and assumptions are usually accepted and applied. Moreover, there is a range of methodological, structural, and parametric uncertainties, which to be overcome require complex empirical pre-researches. First of all, these uncertainties relate to assessing hydraulic resistances and establishing numerical characteristics of them, which depend on many factors varying spatially and temporally.One of the most frequently used integral empirical characteristics expressing the hydraulic resistance to open flows in river channels is the Chézy roughness coefficient C. However, despite a large number of empirical and semi-empirical formulas and dependencies to calculate the Chézy coefficient, there is no ideal way or method to determine this empirical characteristic unambiguously. On the one hand, while opting for an appropriate formula to calculate the Chézy coefficient, we need to take into account practical experience based on comprehensive options analysis considering different empirical equations used alternatively to represent the hydraulic resistance to open flows. On the other hand, the fullness and comprehensiveness of field researches of numerous hydro-morphological factors and parameters characterizing various aspects of the hydraulic resistance to open flows can also have an essential role. In particular, the accuracy assessment of the Chézy coefficient computing based on field data, despite methods and formulas, indicates that the accuracy of field measurements of the parameters included in selected formulas largely determines the relative error of such calculations.This paper deals with the problem of data arrangements and the development of general rules for the formation of training and test samples of data to train artificial neural networks being elaborated to compute the Chézy coefficient taking into account the parametric uncertainty of data on the hydro-morphological factors and parameters characterizing the hydraulic resistance in river channels. The problem is solved on the example of an artificial neural network of direct propagation with one hidden layer and a sigmoid logistic activation function.
通过数据整理训练人工神经网络,解决了在参数不确定的情况下计算ch兹粗糙度系数的问题,从而确定了河道的水力阻力
河道明渠水流的水力计算和数学建模仍然是当今水利工程实践中最热门的问题之一。在解决这些问题时,独立于研究主题和目的以及使用的方法,通常会接受和应用一些简化和假设。此外,还存在一系列方法上、结构上和参数上的不确定性,需要进行复杂的实证预研究才能克服。首先,这些不确定性涉及水力阻力的评估和数值特征的建立,这取决于许多时空变化的因素。最常用的表示河道明流水力阻力的积分经验特征之一是ch逍遥粗糙度系数c。然而,尽管有大量的经验和半经验公式和依赖关系来计算ch逍遥系数,但没有理想的方式或方法来明确地确定这一经验特征。一方面,在选择合适的计算ch zy系数的公式时,我们需要考虑基于综合选项分析的实际经验,考虑使用不同的经验方程来交替表示开流的水力阻力。另一方面,对表征明流阻力各方面的众多水文形态因素和参数进行充分和全面的实地研究也可以发挥重要作用。特别是,尽管有各种方法和公式,但对基于实地数据计算chameszy系数的准确性评价表明,所选公式中所包括的参数的实地测量的准确性在很大程度上决定了这种计算的相对误差。本文讨论了数据的排列问题和数据训练和测试样本形成的一般规则的发展,以训练正在编制的人工神经网络来计算ch兹系数,同时考虑到水文形态因素和表征河道水力阻力的参数数据的参数不确定性。以具有一个隐层和一个s型逻辑激活函数的直接传播人工神经网络为例,解决了这一问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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