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Improved methodology for processing raw LiDAR data to support urban flood modelling - accounting for elevated roads and bridges

机译:改进的用于处理原始LiDAR数据以支持城市洪水建模的方法-考虑高架道路和桥梁

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Digital Terrain Models (DTMs) represent an essential source of information that can allow the behaviour of the urban floodplain, and its interactions with the drainage system, to be examined, understood and predicted. Typically, such data are obtained via Light Detection and Ranging (LiDAR). If a DTM does not contain adequate representation of urban features the results from the modelling efforts can be. This is due to the fact that urban environments contain variety of features, which can have functions of storing and/or diverting flows during flood events. The work described in this paper concerns further improvements of a LiDAR filtering algorithm which was discussed in a previous work. The key characteristics of this improved algorithm are: ability to deal with buildings, detect elevated road and represent them accordance to reality and deal with bridges and riverbanks. The algorithm was tested using a real-life data from a case study of Kuala Lumpur. The results have shown that the newly developed MPMA2 algorithm has better capabilities of identifying some of the features that are vital for urban flood modelling applications than any of the currently available algorithms and it leads to better agreement between simulated and observed flood depths and flood extents.
机译:数字地形模型(DTM)代表了一种重要的信息来源,可以让人们检查,理解和预测城市洪泛区的行为及其与排水系统的相互作用。通常,此类数据是通过光检测和测距(LiDAR)获得的。如果DTM不能充分体现城市特征,则可以通过建模工作得出结果。这是由于以下事实:城市环境包含各种功能,在洪水事件发生时可能具有存储和/或转移流量的功能。本文描述的工作涉及对LiDAR滤波算法的进一步改进,该算法已在先前的工作中进行了讨论。该改进算法的关键特征是:处理建筑物,检测高架道路并根据实际情况表示它们以及处理桥梁和河岸的能力。该算法使用来自吉隆坡的案例研究的真实数据进行了测试。结果表明,新开发的MPMA2算法具有比当前任何可用算法更好的识别对于城市洪水建模应用至关重要的某些功能的能力,并且它导致模拟和观测的洪水深度与洪水范围之间的更好一致性。

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