پهنه بندی حساسیت وقوع سیل در مناطق شمالی ایران با استفاده از الگوریتم‌های پیشرفته داده‌کاوی (منطقه مورد مطالعه: حوزه آبخیز هراز)

نوع مقاله : مقاله پژوهشی

نویسنده

دانشیار گروه ژئومورفولوژی، دانشکده منابع طبیعی، دانشگاه کردستان، عضو گروه پژوهشی مطالعات محیطی دریاچه زریبار، پژوهشکده کردستان شناسی، دانشگاه کردستان، سنندج، ایران

چکیده

سیل یکی از مخاطرات محیطی است که از دیرباز تا کنون جامعه بشری شاهد وقوع آن می­باشد. در ایران به دلیل وسعت زیاد، اقلیم­های متعدد، تراکم زمانی و مکانی بارش­ها در اکثر حوزه­های آبخیز از جمله حوزه آبخیز هراز، همه ساله شاهد سیلاب­های عظیمی می­باشیم که خسارات جانی، مالی و محیطی متعددی را به­همراه دارد. یکی از راهکارهای اساسی جهت کاهش خسارت ناشی از سیل، تهیه و استفاده از نقشه­های حساسیت به وقوع سیل در سیاست­گذاری­ها و برنامه­ریزی­های عملیاتی و اجرایی می­باشد. در این تحقیق با استفاده از الگوریتم‌های پیشرفته داده‌کاوی (مدل­های بگینگ و آنتروپی شانون) جهت تهیه نقشه پهنه­بندی حساسیت به وقوع سیل استفاده شده است. فرایند انجام پژوهش به این صورت است که ابتدا داده­های 201 موقعیت نقاط سیلابی آماده گردید. در ادامه از 201 موقعیت، 70 درصد آن جهت مدل­سازی و تهیه نقشه استفاده شد و از 30 درصد باقی­مانده، که به صورت تصادفی تهیه شدند، جهت اعتبارسنجی نقشه­های تولید شده استفاده گردید. در این تحقیق از ده فاکتور موثر شامل شیب، انحنای زمین، فاصله از رودخانه،  طبقات ارتفاعی، بارش، شاخص توان رودخانه (SPI)، شاخص رطوبت توپوگرافی (TWI)، لیتولوژی، کاربری اراضی و شاخص تفرق پوشش گیاهی ((NDVI استفاده شده است و وزن تاثیر هر فاکتور با استفاده از الگوریتم­های داده­کاوی مشخص شد و منحنی  ROC ترسیم و سطح زیرمنحنی (AUC) برای اعتبارسنجی نقشه حساسیت به وقوع سیل محاسبه گردید. نتایج پژوهش نشان داد که جهت تهیه نقشه حساسیت به وقوع سیل، مدل بگینگ نسبت به مدل آنتروپی شانون، از دقت بالاتری برخوردار می­باشد و صحت بالای این مدل حاکی از قابل اعتماد بودن آن به ویژه در حوزه­های فاقد آمار می­باشد.

کلیدواژه‌ها


عنوان مقاله [English]

Flood susceptibility mapping in northern regions of Iran using advanced data mining algorithms (Case study: Haraz watershed)

نویسنده [English]

  • Himan Shahabi
. Associate Professor, Department of Geomorphology, Faculty of Natural Resources, University of Kurdistan, Sanandaj, Iran (Department of Zrebar Lake Environmental Research, Kurdistan Studies Institute, University of Kurdistan)
چکیده [English]

Floods are one of the phenomena in nature that human beings have been witnessing for a long time. In Iran, due to the large area, diffident climates, temporal and spatial density of rainfall in most watersheds, we see huge floods every year. Flood susceptibility mapping is one of the basic strategies to reduce the loss of life and property due to floods. In this study, Bagging and Shannon Entropy methods have been used to prepare flood susceptibility maps. In the current study, 201 floodplain locations were prepared. Of the 201 positions, 70% were used for modeling and map preparation. The remaining 30%, which were randomly generated, were used to validate the maps produced. Furthermore, ten effective factors including slope, land curvature, distance to river, elevation, rainfall, stream power index (SPI), topographic wetness index (TWI), lithology, land use and normalized difference vegetation index (NDVI) were used. The mentioned models determined the effect weight of each factor affecting the occurrence of floods. The ROC curve was drawn and the area below the curve (AUC) was calculated to validate the flood susceptibility map. The results showed that Bagging model has a higher accuracy than Shannon Entropy model. Therefore, the high accuracy of this model indicates that it is reliable for preparing a flood susceptibility map in areas without statistics.
The results showed that Bagging model has a higher accuracy than Shannon Entropy model. Therefore, the high accuracy of this model indicates that it is reliable for preparing a flood susceptibility map in areas without statistics.
 
Extended Abstract
Introduction
Due to the importance of flood hazards and Its growing trend in recent years, the preparation of flood maps and flood sensitization zoning has received special attention from researchers and experts. To prepare flood maps There are different hydraulic (by HEC-RAS) and hydrological methods and in recent years Many statistical and probabilistic models have been tested for flood susceptibility maps. also GIS software as a basic analysis tool has been used for spatial management and data manipulation due to its ability to handle large amounts of spatial data and the combination of statistical and probabilistic models with RS and GIS has attracted a lot of attention from researchers.
Northern regions of Iran, due to its special natural and climatic conditions, in terms of population and forest cover, they are one of the most densely populated areas in the country. In addition to high population density and forest cover, in these areas Every year, considerable crops, livestock, orchards, etc. are produced and it shows the importance of this region in various indicators of local and regional development. However, every year there are different natural hazards We are among the floods in the northern regions of the country, including the Haraz watershed in some cases, in addition to extensive financial losses, there are casualties. To prevent these accidents and reduce these damages and casualties, identify places and areas prone to floods and in general, sensitive areas in this area, it seems necessary and logical. In this study, an attempt has been made Based on various factors such as Slope, curvature of the earth, distance from the river, elevation, precipitation, river power index and …, Flood susceptibility zoning map in the watershed of Haraz Using advanced data mining algorithms Be prepared and validated. Therefore, the basic questions that the researcher in this research seeks to investigate as follows: In which part of the Haraz watershed are areas with high flood susceptibility? and to prepare a flood susceptibility map in Haraz watershed, which of entropy Shannon's and Baggind models work best?
 
Methodology
The aim of this applied research, is a preparation flood susceptibility mapping in Haraz watershed using the advanced data mining algorithms that Done with the quantitatively Method, required data According to the objectives of the research Collected from relevant organizations and agencies (Regional Water Company, Natural Resources Department, etc.) and to analyze this data ArcGIS software is used. Overall The research process is as follows First Prepared List of past floods in the study area and so on the effective parameters in the occurrence of flooding have been identified and Using two models, Shannon and Bagging entropy, it is provided Flood susceptibility zoning map in Haraz watershed in northern Iran. Then using the ROC curve, the accuracy and validation of the models have been investigated.
 
Results and discussion
Validation of sensitivity maps prepared in this study Obtained by calculating the relative characteristics index or ROC. This curve Is one of the most efficient methods in providing the ability to determine, identify potential and predict systems that Estimates the accuracy of the model quantitatively. In this way, Area below the curve or AUC It has values ​​between 0.5 and 1, and It is used to evaluate the accuracy of the model. best model Has a level below the curve close to 1, while Values ​​close to 0.5 Indicates the inaccuracy in the model. The results indicate that That Bagging model (0.96) It has a higher accuracy than the Shannon entropy model (0.88).  Although both models are acceptable, But the Bagging Model It has the highest acceptable accuracy in preparing flood susceptibility maps in Haraz watershed.
 
Conclusion
Due to floods in the northern parts of the country and Their growing trend, Preparation of flood susceptibility map, it is a background for cognition Factors affecting flood occurrence, Its occurrence, risk management and risk prevention methods. The purpose of the present study Prioritize the factors that affect the occurrence of floods Using Shanghai bagging and entropy models. after preparing the location map of the floods, 10 factors Included the Slope, curvature of the earth, elevation, Distance from the river, Rainfall, TWI, SPI, lithology, land use and NDVI, they were selected as the factors influencing the flooding of Haraz watershed in Mazandaran province. Prioritize the factors influencing the occurrence of floods Using the Shannon Entropy Index, it showed The NDVI layers weigh (2.03), Distance from the river (1/1), SPI (1.09), Elevation classes (0.995), Slope (0.847), Rainfall (0.54), Lithology (0.421), TWI (0.309), Land use (0.223) and Earth's curvature (0.136) Respectively Have had the most to the least impact on the occurrence of floods. Based on ROC curve results, bagging model It has the highest accuracy in predicting flood susceptibility maps in Haraz watershed and Then there is the Shannon entropy model. According to the final flood susceptibility map, Around the Haraz River Has a high sensitivity to flooding. So it should Refrain from the construction of residential areas or Fruit orchards and even agricultural lands around the river and to Residential areas and existing gardens be made Precautions such as flood walls or graves until the Avoid causing too much damage to these parts. Thus Preparation of sensitivity maps for natural disasters such as floods, landslides, etc. It is necessary for future management and planning until the Be prevented from the loss of life and property to these sectors. Use the results of this research It is necessary to offices and organizations Agricultural Jihad, Natural Resources, Regional Water, Ministry of Energy, Housing and Urban Development, Islamic Revolution Housing Foundation and all researchers and decision makers, and even urban and rural managers, to think about the necessary arrangements to prevent and reduce the destructive effects of floods and their side effects.

کلیدواژه‌ها [English]

  • Bagging
  • Shannon entropy
  • Haraz watershed
  • Flood susceptibility
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