ارزیابی روش رگرسیون لجستیک در بررسی پتانسیل وقوع زمین لغزش مطالعه ی موردی: کرانه ی جنوبی حوضه ی آبریز اهر چای از روستای نصیرآباد تا سد ستارخان (مقاله علمی وزارت علوم)
درجه علمی: نشریه علمی (وزارت علوم)
آرشیو
چکیده
این ﭘﮋﻭﻫﺶ ﺑﺎ ﻫﺪﻑ ﺷﻨﺎﺳﺎیی ﻋﻮﺍﻣﻞ ﻣﺆﺛﺮ ﺩﺭ ﺍیﺠﺎﺩ ﭘﺪیﺪﻩ ی ﺯﻣیﻦ ﻟﻐﺰﺵ ﻭ ﺗﻌییﻦ ﻣﻨﺎﻃﻖ ﺩﺍﺭﺍی ﭘﺘﺎﻧﺴیﻞ ﺯﻣ یﻦ ﻟﻐ ﺰﺵ ﺩﺭکرانه های جنوبی اهرچای از روستای نصیرآباد تا سد ستارخان ﺣﻮﺿ ﻪ ی جنوبی اهرچای ﺑ ﺎ ﺍﺳﺘﻔﺎﺩﻩ ﺍﺯ ﺭﻭﺵ ﺭﮔﺮﺳیﻮﻥ ﻟﺠﺴﺘیﮏ ﺍﻧﺠﺎﻡ ﺷﺪﻩ ﺍﺳﺖ. به همین منظور از تصویر سنجده Resourcesat ، 2014 ماهواره IRS استفاده شد. فاکتورهای مؤثر وقوع زمین لغزش در محیط GIS آماده و سپس با لایه ی پراکنش زمین لغزش ها قطع داده شده و نقشه ی پهنه بندی خطر زمین لغزش در روش فوق تولید شد. نتایج نشان داد که روش رگرسیون لجستیک نتایج بهتری را در بررسی پتانسیل وقوع زمین لغزش در منطقه ی مورد مطالعه دارد. بر اساس نقشه ی تهیه شده بخش های غربی و جنوبی و محدوده ی شمال شرق منطقه ی مورد مطالعه از نظر وقوع زمین لغزش بیشترین پتانسیل وقوع زمین لغزش را دارد. با توجه به اطلاعات به دست آمده، 19/17درصد از اراضی محدوده ی مورد مطالعه با پتانسیل متوسط به بالا (34 درصد زمین لغزش ها) و 3 درصد از مساحت منطقه ی مورد مطالعه در محدوده با پتانسیل خیلی زیاد که بیش از 18 درصد زمین لغزش ها در آن به وقوع پیوسته است قرار دارد.Logistic Regression Assessment in the Investigation of the Landslide Potential (Case Study: From Nasirabad to Sattar Khan Dam)
Introduction
Iranian territory has the main prerequisites for the occurrence of a wide range of landslides due to its mountainous topography, tectonic activities, high seismicity, and different geological and climatic conditions. Therefore, reducing the effects of natural disasters, particularly landslides, is one of the key challenges for land-use planners and policymakers in this field. In this study, the southern side of the Ahar Chai basin from Nasirabad Village to Sattarkhan Dam is evaluated for the probability of the landslide occurrence. This region is highly susceptible to landslide occurrence because of the extensive manipulation and its natural conditions. Indeed, the occurrence of the large shallow landslides in this region is an indication of this susceptibility. In this study, Linear Regression Model has been used to prepare the landslide zonation.
Methodology
The study area was the southern sides of the Ahar Chai River, from Nasirabad village in Varzaghan to the Sattarkhan Dam, with an area of 128 km2. In order to study the potential of the landslide occurrence in this region, nine main factors including slope, slope direction, lithology, land use, precipitation, distance from the fault, distance from the river, distance from the road, and vegetation were identified. The model which was used in this study was Logistic Regression. This model is one of the predictive statistical methods for dependent variables in which zero and one respectively indicate the occurrence and non-occurrence of landslides. In addition, instead of being linear, the regression of the variables is S-shaped or logistic curve and the estimations are in the range of zero-one. Indeed, values close to zero indicate the low probability of the occurrence and values close to one indicate the high probability of the occurrence.
Discussion
In Logistic Regression model, after entering the data into the Logistic Regression model and using the effective parameters in Idrisi software, the coefficients of the model were extracted. A value of 965, which represents a very high correlation between the independent and dependent variables, was obtained for the ROC index. After determining the validity of the Logistic Regression model, using the above indicators, landslide sensitivity zonation map was prepared. In the present model, the land use factor with the highest coefficient was the best predictive variable in determining the probability of the landslide occurrence in this region. In addition, the SPI index and the distance from the fault had respectively the second and third highest coefficients. After zoning the landslide, the slip area was calculated for each class and its results showed that zones with highest risk had the lowest area percentage and these areas were located in the western slopes.
Conclusion
The results showed that while land use, lithology factors, and SPI index with positive coefficients had higher correlation, the other factors with negative coefficients had lower correlation. Based on the map, the western, southern, and the north-eastern parts of the region have the highest potential for landslide occurrence. Furthermore, the high value of the ROC index and its proximity to number one indicates that landslides in the study area have a strong correlation with the probability values derived from the Logistic Regression Model. In addition, the assessment of the SCAI scaling hazard zonation map shows that there is a high correlation between the hazard map with the existing slip points and the field observations of the area. It can be said that, in addition to the natural factors, some human factors including unstructured road construction may play an important role in the occurrence of the landslides. It is also necessary to avoid making changes in the ecosystems and land use. Finally, any policies to construct structures should be commensurate with the geomorphologic and geological conditions.