Geomatics Program, Department of Built Environment, North Carolina A&T State University, Greensboro, NC 27411, USA.
North Carolina Emergency Management, Geodetic Survey; NC 27699-4298, USA.
Sensors (Basel). 2018 Nov 9;18(11):3843. doi: 10.3390/s18113843.
Among the different types of natural disasters, floods are the most devastating, widespread, and frequent. Floods account for approximately 30% of the total loss caused by natural disasters. Accurate flood-risk mapping is critical in reducing such damages by correctly predicting the extent of a flood when coupled with rain and stage gage data, supporting emergency-response planning, developing land use plans and regulations with regard to the construction of structures and infrastructures, and providing damage assessment in both spatial and temporal measurements. The reliability and accuracy of such flood assessment maps is dependent on the quality of the digital elevation model (DEM) in flood conditions. This study investigates the quality of an Unmanned Aerial Vehicle (UAV)-based DEM for spatial flood assessment mapping and evaluating the extent of a flood event in Princeville, North Carolina during Hurricane Matthew. The challenges and problems of on-demand DEM production during a flooding event were discussed. An accuracy analysis was performed by comparing the water surface extracted from the UAV-derived DEM with the water surface/stage obtained using the nearby US Geologic Survey (USGS) stream gauge station and LiDAR data.
在各种自然灾害中,洪水是最具破坏性、最广泛和最频繁的。洪水约占自然灾害总损失的 30%。准确的洪水风险图对于减少此类损失至关重要,因为它可以结合降雨和水位计数据正确预测洪水的范围,支持应急响应规划,制定与建筑物和基础设施建设有关的土地利用计划和法规,并提供空间和时间测量的损害评估。这种洪水评估图的可靠性和准确性取决于洪水条件下数字高程模型 (DEM) 的质量。本研究调查了基于无人机 (UAV) 的 DEM 在空间洪水评估制图中的质量,并评估了飓风马修期间北卡罗来纳州王子城的洪水事件范围。讨论了在洪水事件中按需制作 DEM 时面临的挑战和问题。通过将从无人机衍生的 DEM 中提取的水面与附近美国地质调查局 (USGS) 河流水位站和激光雷达数据获得的水面/水位进行比较,进行了精度分析。