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首页> 外文期刊>Computers,environment and urban systems >Predicting dam failure risk for sustainable flood retention basins: A generic case study for the wider Greater Manchester area
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Predicting dam failure risk for sustainable flood retention basins: A generic case study for the wider Greater Manchester area

机译:预测可持续洪灾保留盆地的大坝破坏风险:大曼彻斯特地区更广泛的案例研究

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摘要

This study aims to provide a rapid screening tool for assessment of sustainable flood retention basins (SFRBs) to predict corresponding dam failure risks. A rapid expert-based assessment method for dam failure of SFRB supported by an artificial neural network (ANN) model has been presented. Flood storage was assessed for 110 SFRB and the corresponding Dam Failure Risk was evaluated for all dams across the wider Greater Manchester study area. The results show that Dam Failure Risk can be estimated by using the variables Dam Height, Dam Length, Maximum Flood Water Volume, Flood Water Surface Area, Mean Annual Rainfall (based on Met Office data), Altitude, Catchment Size, Urban Catchment Proportion, Forest Catchment Proportion and Managed Maximum Flood Water Volume. A cross-validation R~2 value of 0.70 for the ANN model signifies that the tool is likely to predict variables well for new data sets. Traditionally, dams are considered safe because they have been built according to high technical standards. However, many dams that were constructed decades ago do not meet the current state-of-the-art dam design guidelines. Spatial distribution maps show that dam failure risks of SFRB located near cities are higher than those situated in rural locations. The proposed tool could be used as an early warning system in times of heavy rainfall.
机译:这项研究旨在为评估可持续洪灾保留盆地(SFRB)提供一种快速筛选工具,以预测相应的大坝倒塌风险。提出了基于人工神经网络(ANN)模型的SFRB大坝快速专家评估方法。评估了110 SFRB的洪水存储量,并评估了大曼彻斯特研究区域内所有大坝的相应大坝破坏风险。结果表明,可以使用变量坝高,坝长,最大洪水量,洪水表面积,年平均降雨量(基于大都会办公室的数据),海拔高度,集水面积,城市集水比例,森林集水比例和管理的最大洪水量。 ANN模型的交叉验证R〜2值为0.70,表明该工具可能很好地预测新数据集的变量。传统上,大坝被认为是安全的,因为它们是根据高技术标准建造的。但是,数十年前建造的许多大坝不符合当前最新的大坝设计准则。空间分布图显示,位于城市附近的SFRB的大坝倒塌风险要高于农村地区。拟议的工具可在暴雨时用作预警系统。

著录项

  • 来源
    《Computers,environment and urban systems》 |2012年第5期|p.423-433|共11页
  • 作者单位

    Civil Engineering Research Centre, School of Computing, Science and Engineering, The University of Salford, Newton Building, Salford M5 4WT, England, United Kingdom;

    Civil Engineering Research Centre, School of Computing, Science and Engineering, The University of Salford, Newton Building, Salford M5 4WT, England, United Kingdom;

    Civil Engineering Research Centre, School of Computing, Science and Engineering, The University of Salford, Newton Building, Salford M5 4WT, England, United Kingdom;

    Civil Engineering Research Centre, School of Computing, Science and Engineering, The University of Salford, Newton Building, Salford M5 4WT, England, United Kingdom;

    Civil Engineering Research Centre, School of Computing, Science and Engineering, The University of Salford, Newton Building, Salford M5 4WT, England, United Kingdom;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    agglomerative clustering; artificial neural networks; dam safety; flood control; rapid screening tool; spatial distribution map;

    机译:聚集聚类;人工神经网络;大坝安全;防洪;快速筛选工具空间分布图;

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