A GIS-based Binary Logistic Regression Model for the Inundation Analysis; A Case Study on Elapatha DS Division, Ratnapura District, Sri Lanka

Ekanayaka H.D.M., Jayasinghe G.Y., Priyankara P.
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Abstract

Flood susceptibility analysis (FSA) is a prerequisite for adopting flood mitigation and adaptation techniques. A number of technologies and models have emerged through time, and this study focuses on the Binary Logistic Regression Model (BLRM) to investigate flood vulnerability of Elapatha Divisional secretariat (DS), Ratnapura District, Sri Lanka where has high impact from inundation. Rainfall, land use and land cover (LULC), elevation, slope, slope aspect, distance to the river, topographic wetness index (TWI), and stream power index (SPI) were the factors used in the model construction. These components were investigated in terms of their contribution to flood susceptibility using all location data and field plotting of responsible parameters in the study area using Geographic Information System (GIS) software, and all extracted data points were 96489, of which 50% were used for BLRM development using SPSS statistical software and remaining 50% for model validation. The coefficient of rainfall parameters, log value of elevation in meters, the tan value of slope in degrees, radiant value of aspect in degrees, (distance from the river)0.1, the ratio between SPI and TWI (SPI/TWI) and LULC band values of built-up area, water bodies and vegetations were 0.023, -2.254, -1.018, -0.005, -0.164, -0.003, 2.707, -.067 and -0.004 respectively. The accuracy was validated using Mean standard error (MSE) and area under curve (AUC) analysis, with values of 0.031 and 0.724 respectively. The Built-up area, elevation, and slope had the most impact on the inundation Elapatha DS division, and model performance represents 72.4% accuracy. Therefore, mitigation of inundation problems can be achieved through proper landscaping in the area. Keywords: Binary logistic Regression, Flood susceptibility Analysis, GIS software, Spatial analysis
基于地理信息系统的淹没分析二元逻辑回归模型;斯里兰卡 Ratnapura 区 Elapatha DS 分部案例研究
洪水易发性分析(FSA)是采用洪水缓解和适应技术的先决条件。随着时间的推移,出现了许多技术和模型,本研究侧重于二元逻辑回归模型(BLRM),以调查斯里兰卡 Ratnapura 区 Elapatha 分部秘书处(DS)的洪水脆弱性,该地区受洪水影响较大。构建模型时使用的因素包括降雨量、土地利用和土地覆盖(LULC)、海拔、坡度、坡向、与河流的距离、地形湿润指数(TWI)和溪流动力指数(SPI)。利用地理信息系统(GIS)软件对研究区域的所有位置数据和责任参数进行实地绘制,调查了这些因素对洪水易感性的贡献,共提取了 96489 个数据点,其中 50%用于利用 SPSS 统计软件开发 BLRM,其余 50%用于模型验证。雨量参数系数、高程对数值(米)、坡度 tan 值(度)、纵向辐射值(度)、(与河流的距离)0.1、SPI 与 TWI 之比(SPI/TWI)以及建筑区、水体和植被的 LULC 波段值分别为 0.023、-2.254、-1.018、-0.005、-0.164、-0.003、2.707、-.067 和 -0.004。使用平均标准误差 (MSE) 和曲线下面积 (AUC) 分析验证了准确性,其值分别为 0.031 和 0.724。建成区、海拔和坡度对淹没埃拉帕塔 DS 分区的影响最大,模型的准确度为 72.4%。因此,可以通过对该地区进行适当的景观美化来缓解淹没问题。关键词二元逻辑回归、洪水易感性分析、GIS 软件、空间分析
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