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The importance of entrainment and bulking on debris flow runout modeling: examples from the Swiss Alps

机译:夹带和膨胀对泥石流跳动模型的重要性:来自瑞士阿尔卑斯山的例子

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This study describes an investigation of channel-bed entrainment of sediment by debris flows. An entrainment model, developed using field data from debris flows at the Illgraben catchment, Switzerland, was incorporated into the existing RAMMS debris-flow model, which solves the 2-D shallow-water equations for granular flows. In the entrainment model, an empirical relationship between maximum shear stress and measured erosion is used to determine the maximum potential erosion depth. Additionally, the average rate of erosion, measured at the same field site, is used to constrain the erosion rate. The model predicts plausible erosion values in comparison with field data from highly erosive debris flow events at the Spreitgraben torrent channel, Switzerland in 2010, without any adjustment to the coefficients in the entrainment model. We find that by including bulking due to entrainment (e.g., by channel erosion) in runout models a more realistic flow pattern is produced than in simulations where entrainment is not included. In detail, simulations without entrainment show more lateral outflow from the channel where it has not been observed in the field. Therefore the entrainment model may be especially useful for practical applications such as hazard analysis and mapping, as well as scientific case studies of erosive debris flows.
机译:这项研究描述了由泥石流夹带通道床沉积物的研究。利用瑞士Illgraben流域的泥石流实地数据开发的夹带模型被合并到现有的RAMMS泥石流模型中,该模型解决了二维浅水颗粒流方程。在夹带模型中,最大剪切应力与测得的侵蚀之间的经验关系用于确定最大潜在侵蚀深度。另外,在同一现场测得的平均侵蚀速率用于约束侵蚀速率。与来自2010年瑞士Spreitgraben洪流通道的高侵蚀性泥石流事件的现场数据相比,该模型预测了可能的侵蚀值,而对夹带模型的系数没有进行任何调整。我们发现,在跳动模型中通过将夹带引起的膨胀(例如,由于渠道侵蚀)包括在内,与不包括夹带的模拟相比,产生了更逼真的流动模式。详细地,没有夹带的模拟显示了更多的从通道的横向流出,而在现场尚未观察到。因此,该夹带模型对于实际应用尤其有用,例如危害分析和绘图以及侵蚀性泥石流的科学案例研究。

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