Li Shu, Dao Vu, Kumar Mukesh, Nguyen Phu, Banerjee Tirtha
Department of Civil and Environmental Engineering, University of California, Irvine, Irvine, CA, 92697, USA.
Sci Rep. 2022 Apr 6;12(1):5789. doi: 10.1038/s41598-022-09707-7.
Due to the mixed distribution of buildings and vegetation, wildland-urban interface (WUI) areas are characterized by complex fuel distributions and geographical environments. The behavior of wildfires occurring in the WUI often leads to severe hazards and significant damage to man-made structures. Therefore, WUI areas warrant more attention during the wildfire season. Due to the ever-changing dynamic nature of California's population and housing, the update frequency and resolution of WUI maps that are currently used can no longer meet the needs and challenges of wildfire management and resource allocation for suppression and mitigation efforts. Recent developments in remote sensing technology and data analysis algorithms pose new opportunities for improving WUI mapping methods. WUI areas in California were directly mapped using building footprints extracted from remote sensing data by Microsoft along with the fuel vegetation cover from the LANDFIRE dataset in this study. To accommodate the new type of datasets, we developed a threshold criteria for mapping WUI based on statistical analysis, as opposed to using more ad-hoc criteria as used in previous mapping approaches. This method removes the reliance on census data in WUI mapping, and does not require the calculation of housing density. Moreover, this approach designates the adjacent areas of each building with large and dense parcels of vegetation as WUI, which can not only refine the scope and resolution of the WUI areas to individual buildings, but also avoids zoning issues and uncertainties in housing density calculation. Besides, the new method has the capability of updating the WUI map in real-time according to the operational needs. Therefore, this method is suitable for local governments to map local WUI areas, as well as formulating detailed wildfire emergency plans, evacuation routes, and management measures.
由于建筑物和植被的混合分布,城乡交错带(WUI)地区具有复杂的燃料分布和地理环境。发生在城乡交错带的野火行为往往会导致严重危害并对人造建筑造成重大破坏。因此,在野火季节,城乡交错带地区需要更多关注。由于加利福尼亚州人口和住房的动态变化,目前使用的城乡交错带地图的更新频率和分辨率已无法满足野火管理以及灭火和减灾工作资源分配的需求与挑战。遥感技术和数据分析算法的最新发展为改进城乡交错带制图方法带来了新机遇。在本研究中,利用微软从遥感数据中提取的建筑物足迹以及来自LANDFIRE数据集的燃料植被覆盖情况,直接绘制了加利福尼亚州的城乡交错带地区。为适应新型数据集,我们基于统计分析制定了城乡交错带制图的阈值标准,而非像以往制图方法那样使用更多临时标准。该方法消除了城乡交错带制图对人口普查数据的依赖,且无需计算住房密度。此外,这种方法将每栋建筑物相邻的大片密集植被区域指定为城乡交错带,这不仅能将城乡交错带地区的范围和分辨率细化到单个建筑物,还能避免分区问题以及住房密度计算中的不确定性。此外,新方法具备根据业务需求实时更新城乡交错带地图的能力。因此,该方法适用于地方政府绘制当地城乡交错带地区地图,以及制定详细的野火应急预案、疏散路线和管理措施。