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A web-based geovisual analytics platform for identifying potential contributors to culvert sedimentation

机译:一个基于网络的地理视觉分析平台,用于识别潜在的涵洞沉积物

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摘要

Sediment accumulation at culverts involves large-scale and interlinked environmental processes that are difficult to address with experimental or physical modeling methods. This article presents an alternative data-driven investigation for shedding insights into these processes. Accordingly, a web-based geovisual analytics application, the lowaDOT platform, was developed, which allows users to explore the complex processes associated with the sediment deposition at culverts. The platform provides systematic procedures for (1) collecting and integrating analytical variables into a single dataset, (2) quantifying the degree of culvert sedimentation using lime series of aerial images, (3) identifying drivers that contribute to culvert sedimentation processes from a variety of culvert structural and upstream landscape characteristics using a tree-based feature selection algorithm, and (4) facilitating the understanding of complex spatial and relational patterns of culvert sedimentation processes using multivariate geovisualizations supported by a self-organizing map (SOM). As the outcomes of this study, these patterns identify culvert sedimentation-prone regions in Iowa and quantify empirical relationships between the drivers and culvert sedimentation degrees. A simple evaluation of the platform was performed to assess the usefulness and user satisfaction of the tool by professional users, and positive feedbacks are received. (C) 2019 Elsevier B.V. All rights reserved.
机译:涵洞的沉积物积聚涉及大规模的,相互联系的环境过程,这些过程很难用实验或物理建模方法解决。本文提出了另一种以数据为依据的调查,以减少对这些过程的见解。因此,开发了基于网络的地理视觉分析应用程序lowaDOT平台,该应用程序允许用户探索与涵洞处的沉积物沉积相关的复杂过程。该平台提供了系统的程序,用于(1)将分析变量收集和整合到单个数据集中;(2)使用石灰系列的航拍图像来量化涵洞的沉积程度;(3)从各种不同的模式中识别有助于涵洞沉降过程的驱动因素使用基于树的特征选择算法来计算涵洞的结构和上游景观特征,以及(4)使用自组织图(SOM)支持的多元地理可视化来促进涵洞沉积过程的复杂空间和关系模式的理解。作为这项研究的结果,这些模式确定了爱荷华州的涵洞沉积倾向区域,并量化了驱动因素与涵洞沉降程度之间的经验关系。对平台进行了简单的评估,以评估专业用户对该工具的实用性和用户满意度,并收到了积极的反馈。 (C)2019 Elsevier B.V.保留所有权利。

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