Reza Putra, Wirastuto Widyatmanti, R. Jatmiko, T. Adji, D. Umarhadi
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Topographic elements were extracted by using Toposhape and Topographic Position Index (TPI). Contours derived from the topographic map showed the highest accuracy for extraction of topographic elements compared to ALOS PALSAR DEM and DEMNAS, hence it was used for further analysis. Binary logistic regression was applied to estimate the probability of cave entrance locations based on the variables used. The result shows that three topographic variables: ravine, stream, and midslope drainage had a significant value for estimating cave entrance location. Using these variables, logit equation was formulated to generate a probability map. The result shows that cave entrances are likely to be located in a dry valley. The accuracy assessment using the field data showed that 52.77% of cave entrances are located in medium to high potential areas. 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引用次数: 0
摘要
溶洞入口资料是岩溶地区地下水资源清查的主要指标。传统的数据收集方式是实地调查,但成本高,效率低。遥感和地理信息系统(GIS)可以帮助更有效地估计洞穴入口的位置。本研究利用遥感和GIS技术确定洞口识别的变量。此外,还检验了二元logistic回归的洞穴入口定位模型(CELM)的准确性。利用ALOS PALSAR数字高程模型(DEM)、国家数字高程模型(DEMNAS)、地形地质图等遥感和地质数据。利用topshape和Topographic Position Index (TPI)提取地形要素。与ALOS PALSAR DEM和DEMNAS相比,从地形图中提取的等高线显示出最高的地形要素提取精度,因此用于进一步分析。根据选取的变量,采用二元逻辑回归方法估计洞口位置的概率。结果表明,峡谷、河流和中坡水系3个地形变量对洞口位置的估计具有重要的参考价值。利用这些变量,建立了logit方程,生成了概率图。结果表明,洞穴入口可能位于干燥的山谷中。利用野外资料进行精度评价,52.77%的溶洞入口位于中、高电位区。说明中高潜力区可作为岩溶地区潜在水资源的指示区。
Cave entrance location model using binary logistic regression: the case study of south Gombong karst region, Indonesia
Cave entrance data are crucial as the primary indicators in the underground water inventory of a karst area. The data collection was traditionally conducted by field survey, but it is very costly and not efficient. Remote sensing and Geographic Information System (GIS) can help estimate cave entrance locations more efficiently. In this study, variables for cave entrance identification were determined using remote sensing and GIS. In addition, the accuracy of the Cave Entrance Location Model (CELM) derived from binary logistic regression was examined. Several remote sensing and geological data were used including ALOS PALSAR Digital Elevation Model (DEM), Digital Elevation Model Nasional (DEMNAS), topographic and geological map. Topographic elements were extracted by using Toposhape and Topographic Position Index (TPI). Contours derived from the topographic map showed the highest accuracy for extraction of topographic elements compared to ALOS PALSAR DEM and DEMNAS, hence it was used for further analysis. Binary logistic regression was applied to estimate the probability of cave entrance locations based on the variables used. The result shows that three topographic variables: ravine, stream, and midslope drainage had a significant value for estimating cave entrance location. Using these variables, logit equation was formulated to generate a probability map. The result shows that cave entrances are likely to be located in a dry valley. The accuracy assessment using the field data showed that 52.77% of cave entrances are located in medium to high potential areas. This suggests that the moderatehigh potential area can indicate potential water resources in karst area.