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Modelling Modelling large floating bodies in urban area flash-floods via a Smoothed Particle Hydrodynamics model

机译:建模通过平滑粒子流体动力学模型对市区暴洪中的大型浮体进行建模

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Large debris, including vehicles parked along floodplains, can cause severe damage and significant loss of life during urban area flash-floods. In this study, the authors validated and applied the Smoothed Particle Hydrodynamics (SPH) model, developed in Amicarelli et al. (2015), which reproduces in 3D the dynamics of rigid bodies driven by free surface flows, to the design of flood mitigation measures. To validate the model, the authors compared the model's predictions to the results of an experimental setup, involving a dam breach that strikes two fixed obstacles and three transportable floating bodies. Given the accuracy of the results, in terms of water depth over time and the time history of the bodies' movements, the SPH model explored in this study was used to analyse the mitigation efficiency of a proposed structural intervention - the use of small barriers (groynes) to prevent the transport of floating bodies. Different groynes configurations were examined to identify the most appropriate design and layout for urban area flash flood damage mitigation. The authors found that groynes positioned upstream and downstream of each floating body can be effective as a risk mitigation measure for damage resulting from their movement. (C) 2016 Elsevier B.V. All rights reserved.
机译:大碎片,包括沿洪泛区停放的车辆,可能会在市区山洪泛滥期间造成严重破坏并严重丧命。在这项研究中,作者验证并应用了Amicarelli等人开发的平滑粒子流体动力学(SPH)模型。 (2015),该模型以3D方式再现了自由表面流驱动的刚体动力学,并用于防洪措施的设计。为了验证模型,作者将模型的预测结果与实验设置的结果进行了比较,实验设置涉及击中两个固定障碍物和三个可移动浮体的大坝破坏。给定结果的准确性,就随时间推移的水深和人体运动的时间历史而言,本研究中探索的SPH模型用于分析拟议的结构性干预措施的缓解效率-使用小障碍物(丁香)以防止漂浮体的运输。检查了不同的防波堤配置,以找出最适合减轻市区山洪暴发危害的设计和布局。作者发现,位于每个浮体上游和下游的防波堤可以有效地减轻因其移动而造成的损害,是一种降低风险的措施。 (C)2016 Elsevier B.V.保留所有权利。

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