Application of LiDAR-Derived Data using Multi-Criteria Evaluation (MCE) and Stochastic Modelling; A Flood Risk Analysis of the Mersey River, Nova Scotia

Alejandro Nieto, D. E. Almuina Pica, Tyler Stange
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Abstract

The Maritime province of Nova Scotia has seen coastal flooding become a more frequent phenomenon during the past decades due to the changing climate regime. This has influenced the interest provincial and federal governments have in flood risk modelling, who often incorporate Geographic Information Systems (GIS) as useful tools in their analysis. Incorporating LiDAR-derived digital elevation models (DEMs) in their workflows is the next step in hydrological analysis, as LiDAR-derived DEMs offer high resolution data for the analysis of flood risk without the need to rely on biotic or hydrological data. This study aims to follow this theme in order to model the effects of inland flooding in the low relief landscape of the Mersey River, located in Queen’s County, Nova Scotia, and its effects on the infrastructure built along the river network. The analysis included multi-criteria evaluation (MCE) methods coupled with a stochastic simulation approach in order to determine areas where vulnerability is the most certain. Results indicated that high flood risk is present in urbanized areas within 1 km of the Mersey River at a low degree of uncertainty, making them the best candidates for flood-preventive measures. The accuracy provided by LiDAR-derived DEMs supported a high-quality workflow for the MCE and DEM error analysis, proving their utility for floodplain delineation. The addition of historical and hydrological data to future projects could build on the results presented in this study, adding more to the literature on flood risk modelling along the Mersey River.
多准则评价与随机建模在激光雷达数据提取中的应用新斯科舍默西河洪水风险分析
在过去的几十年里,由于气候变化,沿海省份新斯科舍省的洪水变得更加频繁。这影响了省级和联邦政府对洪水风险建模的兴趣,他们经常将地理信息系统(GIS)作为有用的分析工具。将激光雷达衍生的数字高程模型(dem)纳入其工作流程是水文分析的下一步,因为激光雷达衍生的dem为洪水风险分析提供了高分辨率数据,而无需依赖生物或水文数据。本研究旨在遵循这一主题,以模拟内陆洪水对位于新斯科舍省皇后县默西河低地势景观的影响,以及其对沿河网络建设的基础设施的影响。分析包括多准则评价(MCE)方法和随机模拟方法,以确定最确定的脆弱性区域。结果表明,默西河1公里以内的城市化地区存在高洪水风险,不确定性程度较低,是采取防洪措施的最佳候选地。由lidar衍生的DEM提供的精度为MCE和DEM误差分析提供了高质量的工作流程,证明了它们在漫滩描绘中的实用性。在未来的项目中增加历史和水文数据可以建立在本研究结果的基础上,为默西河沿岸的洪水风险建模增加更多的文献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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