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水力发电学报

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基于深度学习的河道非恒定流糙率反演方法

  

  • 出版日期:2024-04-25 发布日期:2024-04-25

Roughness inversion method for river unsteady flow simulations based on deep learning

  • Online:2024-04-25 Published:2024-04-25

摘要: 糙率是反映水流阻力影响的一个综合性系数,直接影响一维非恒定流的模拟精度。以往糙率反演研究很少考虑其随流量或水位的变化。为此,本文将糙率视为流量的分段线性函数,提出一种基于长短期记忆神经网络的河道非恒定流糙率反演方法,以数据驱动方式实现对糙率的直接反演;并针对天然长河段计算断面多、流量变化范围大的特点,提出一种基于逐次逼近的分步反演策略来降低反演求解维度。以向家坝库区河道为例进行数值检验,结果表明:利用不同流量级下的糙率反演值进行一维非恒定流计算,得到的沿程水位变化过程与实测资料较为吻合,且计算精度明显高于不考虑糙率随流量变化的结果。该结果验证了方法的有效性,为天然长河道糙率反演提供了新途径。

Abstract: As a comprehensive indicator of flow resistance, Manning’s roughness coefficient significantly affects the accuracy of one-dimensional unsteady flow simulations. The variation of the roughness with the discharge or water level were seldom investigated in previous studies on roughness inversion. To address this issue, a roughness inversion method for river unsteady flow simulations based on long short-term memory neural network is proposed to realize the direct inversion of roughness by data-driven method, in which the roughness is regarded as a continuous piecewise linear function of discharge. Moreover, in view of the characteristics of the long natural rivers with many cross sections and large discharge variation range, a successive-approximation based stepwise inversion strategy is developed to reduce the dimension of inversion solution. The proposed inversion method is evaluated through a case study on the reaches of the Xiangjiaba Reservoir, China. The results show that the water stage hydrographs computed from the roughness inversion values under different discharge strata at the observation stations are in good agreement with the measured data, and the calculation accuracy of the proposed method is obviously higher than the method without considering the variation of the roughness with the discharge. The results verify the effectiveness of the propose method and provide a novel approach for the inverse estimation of roughness in long river flows.

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