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Shape optimisation of the sharp-heeled Kaplan draft tube: Performance evaluation using Computational Fluid Dynamics

机译:尖锐的Kaplan牵引管形状优化:使用计算流体动力学的性能评估

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摘要

A methodology to assess the performance of an elbow-type draft tube is outlined. This was achieved using Computational Fluid Dynamics (CFD) to evaluate the pressure recovery and mechanical energy losses along a draft tube design, while using open-source and commercial software to parameterise and regenerate the geometry and CFD grid. An initial validation study of the elbow-type draft tube is carried out, focusing on the grid-regeneration methodology, steady-state assumption, and turbulence modelling approach for evaluating the design's efficiency. The Grid Convergence Index (GCI) technique was used to assess the uncertainty of the pressure recovery to the grid resolution. It was found that estimating the pressure recovery through area-weighted averaging significantly reduced the uncertainty due to the grid. Simultaneously, it was found that this uncertainty fluctuated with the local cross-sectional area along the geometry. Subsequently, a study of the inflow cone and outer-heel designs on the flowfield and pressure recovery was carried out. Catmull-Rom splines were used to parameterise these components, so as to recreate a number of proposed designs from the literature. GCI analysis is also applied to these designs, demonstrating the robustness of the grid-regeneration methodology. (C) 2020 Elsevier Ltd. All rights reserved.
机译:概述了评估肘型牵伸管的性能的方法。这是使用计算流体动力学(CFD)实现的,以评估沿着管道设计的压力恢复和机械能损失,同时使用开源和商业软件来参数化和再生几何和CFD网格。进行肘部型牵伸管的初始验证研究,专注于用于评估设计效率的网格再生方法,稳态假设和湍流建模方法。网格收敛指数(GCI)技术用于评估压力恢复到网格分辨率的不确定性。发现通过面积加权平均估计压力恢复显着降低了由于电网而导致的不确定性。同时,发现这种不确定性与沿着几何形状的局部横截面积波动。随后,进行了对流动场和压力恢复的流入锥和外脚跟设计的研究。 Catmull-ROM样条均用于参数化这些组件,以便从文献中重新创建一些提出的设计。 GCI分析也适用于这些设计,展示了网格再生方法的稳健性。 (c)2020 elestvier有限公司保留所有权利。

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