GIS-based groundwater potential analysis using novel ensemble weights-of-evidence with logistic regression and functional tree models.
暂无分享,去创建一个
Wei Chen | Baharin Bin Ahmad | Mahdi Panahi | Jiale Wang | Wei Chen | M. Panahi | Jiale Wang | Xiaoshen Xie | B. Ahmad | Chen Guo | E. Hou | Enke Hou | Shengquan Wang | Xiaoshen Xie | Hui Li | Chen Guo | Guirong Wang | Tao Li | Tao Peng | Chao Niu | Lele Xiao | Tao Li | Hui Li | C. Niu | Lele Xiao | Guirong Wang | Shengquan Wang | Tao Peng
[1] B. Pradhan,et al. Application of GIS based data driven evidential belief function model to predict groundwater potential zonation , 2014 .
[2] A. Zhu,et al. Application of fuzzy weight of evidence and data mining techniques in construction of flood susceptibility map of Poyang County, China. , 2018, The Science of the total environment.
[3] F. Quiel,et al. Groundwater study using remote sensing and geographic information systems (GIS) in the central highlands of Eritrea , 2006 .
[4] Seyed Amir Naghibi,et al. A comparative assessment of GIS-based data mining models and a novel ensemble model in groundwater well potential mapping , 2017 .
[5] E. Dudewicz,et al. Modern Mathematical Statistics. , 1990 .
[6] Biswajeet Pradhan,et al. Suitability estimation for urban development using multi-hazard assessment map. , 2017, The Science of the total environment.
[7] Dieu Tien Bui,et al. A novel hybrid artificial intelligence approach for flood susceptibility assessment , 2017, Environ. Model. Softw..
[8] H. Zeinivand,et al. Application of GIS-based data-driven models for groundwater potential mapping in Kuhdasht region of Iran , 2017 .
[9] Wei Chen,et al. GIS-based assessment of landslide susceptibility using certainty factor and index of entropy models for the Qianyang County of Baoji city, China , 2015, Journal of Earth System Science.
[10] A. Erener,et al. Improvement of statistical landslide susceptibility mapping by using spatial and global regression methods in the case of More and Romsdal (Norway) , 2010 .
[11] A. Al-Abadi,et al. A comparison between index of entropy and catastrophe theory methods for mapping groundwater potential in an arid region , 2015, Environmental Monitoring and Assessment.
[12] Biswajeet Pradhan,et al. Application of probabilistic-based frequency ratio model in groundwater potential mapping using remote sensing data and GIS , 2014, Arabian Journal of Geosciences.
[13] C. Gokceoglu,et al. GIS-based landslide susceptibility mapping with probabilistic likelihood ratio and spatial multi-criteria evaluation models (North of Tehran, Iran) , 2014, Arabian Journal of Geosciences.
[14] Wei Chen,et al. A comparative study of statistical index and certainty factor models in landslide susceptibility mapping: a case study for the Shangzhou District, Shaanxi Province, China , 2015, Arabian Journal of Geosciences.
[15] A-Xing Zhu,et al. Landslide susceptibility modelling using GIS-based machine learning techniques for Chongren County, Jiangxi Province, China. , 2018, The Science of the total environment.
[16] G. Bonham-Carter. Geographic Information Systems for Geoscientists: Modelling with GIS , 1995 .
[17] A. Corsini,et al. Weight of evidence and artificial neural networks for potential groundwater spring mapping: an application to the Mt. Modino area (Northern Apennines, Italy) , 2009 .
[18] J. Epting,et al. Combining monitoring and modelling tools as a basis for city-scale concepts for a sustainable thermal management of urban groundwater resources. , 2018, The Science of the total environment.
[19] P. T. Ghazvinei,et al. Mapping of regional potential groundwater springs using Logistic Regression statistical method , 2016, Water Resources.
[20] G. Rawat,et al. Application of binary logistic regression analysis and its validation for landslide susceptibility mapping in part of Garhwal Himalaya, India , 2007 .
[21] H. Pourghasemi,et al. Application of GIS-based data driven random forest and maximum entropy models for groundwater potential mapping: A case study at Mehran Region, Iran , 2016 .
[22] M. Conforti,et al. Geomorphology and GIS analysis for mapping gully erosion susceptibility in the Turbolo stream catchment (Northern Calabria, Italy) , 2011 .
[23] H. Pourghasemi,et al. GIS-based frequency ratio and index of entropy models for landslide susceptibility assessment in the Caspian forest, northern Iran , 2014, International Journal of Environmental Science and Technology.
[24] A. Zhu,et al. GIS-based landslide susceptibility evaluation using a novel hybrid integration approach of bivariate statistical based random forest method , 2018 .
[25] C. Gokceoğlu,et al. Assessment of landslide susceptibility for a landslide-prone area (north of Yenice, NW Turkey) by fuzzy approach , 2002 .
[26] B. Pham,et al. Landslide susceptibility assesssment in the Uttarakhand area (India) using GIS: a comparison study of prediction capability of naïve bayes, multilayer perceptron neural networks, and functional trees methods , 2017, Theoretical and Applied Climatology.
[27] L. Ayalew,et al. The application of GIS-based logistic regression for landslide susceptibility mapping in the Kakuda-Yahiko Mountains, Central Japan , 2005 .
[28] Mustafa Neamah Jebur,et al. Flood susceptibility mapping using a novel ensemble weights-of-evidence and support vector machine models in GIS , 2014 .
[29] K. Ogata,et al. A global review on ambient Limestone-Precipitating Springs (LPS): Hydrogeological setting, ecology, and conservation. , 2016, The Science of the total environment.
[30] B. Pradhan,et al. Groundwater spring potential mapping using bivariate statistical model and GIS in the Taleghan Watershed, Iran , 2015, Arabian Journal of Geosciences.
[31] Saro Lee,et al. Regional groundwater productivity potential mapping using a geographic information system (GIS) based artificial neural network model , 2012, Hydrogeology Journal.
[32] Hamid Reza Pourghasemi,et al. Assessment of a data-driven evidential belief function model and GIS for groundwater potential mapping in the Koohrang Watershed, Iran , 2015 .
[33] Seyed Amir Naghibi,et al. A Comparative Assessment Between Three Machine Learning Models and Their Performance Comparison by Bivariate and Multivariate Statistical Methods in Groundwater Potential Mapping , 2015, Water Resources Management.
[34] Hyung-Sup Jung,et al. GIS-based groundwater potential mapping using artificial neural network and support vector machine models: the case of Boryeong city in Korea , 2018 .
[35] Saro Lee,et al. Application of a weights-of-evidence method and GIS to regional groundwater productivity potential mapping. , 2012, Journal of environmental management.
[36] Tomoko Hasegawa,et al. Global land-use allocation model linked to an integrated assessment model. , 2017, The Science of the total environment.
[37] Biswajeet Pradhan,et al. Application of a neuro-fuzzy model to landslide-susceptibility mapping for shallow landslides in a tropical hilly area , 2011, Comput. Geosci..
[38] Wei Chen,et al. Spatial prediction of landslide susceptibility using an adaptive neuro-fuzzy inference system combined with frequency ratio, generalized additive model, and support vector machine techniques , 2017, Geomorphology.
[39] P. McCullagh,et al. Generalized Linear Models , 1984 .
[40] João Gama,et al. Functional Trees , 2001, Machine Learning.
[41] Isik Yilmaz,et al. Landslide susceptibility mapping using frequency ratio, logistic regression, artificial neural networks and their comparison: A case study from Kat landslides (Tokat - Turkey) , 2009, Comput. Geosci..
[42] Saro Lee,et al. Statistical analysis of landslide susceptibility at Yongin, Korea , 2001 .
[43] Wei Chen,et al. Spatial prediction of landslide susceptibility using data mining-based kernel logistic regression, naive Bayes and RBFNetwork models for the Long County area (China) , 2019, Bulletin of Engineering Geology and the Environment.
[44] A. Al-Abadi,et al. A GIS-based combining of frequency ratio and index of entropy approaches for mapping groundwater availability zones at Badra–Al Al-Gharbi–Teeb areas, Iraq , 2016, Sustainable Water Resources Management.
[45] Hamid Reza Pourghasemi,et al. Application of analytical hierarchy process, frequency ratio, and certainty factor models for groundwater potential mapping using GIS , 2015, Earth Science Informatics.
[46] Wei Chen,et al. A novel hybrid artificial intelligence approach based on the rotation forest ensemble and naïve Bayes tree classifiers for a landslide susceptibility assessment in Langao County, China , 2017 .
[47] S. Foster,et al. Managed groundwater development for water-supply security in Sub-Saharan Africa: investment priorities , 2012 .
[48] A. Ozdemir. Using a binary logistic regression method and GIS for evaluating and mapping the groundwater spring potential in the Sultan Mountains (Aksehir, Turkey) , 2011 .
[49] Ian H. Witten,et al. Data mining: practical machine learning tools and techniques, 3rd Edition , 1999 .
[50] Zohre Sadat Pourtaghi,et al. GIS-based multivariate adaptive regression spline and random forest models for groundwater potential mapping in Iran , 2016, Environmental Earth Sciences.
[51] Zohre Sadat Pourtaghi,et al. GIS-based groundwater spring potential assessment and mapping in the Birjand Township, southern Khorasan Province, Iran , 2014, Hydrogeology Journal.
[52] H. Pourghasemi,et al. Flood susceptibility mapping using novel ensembles of adaptive neuro fuzzy inference system and metaheuristic algorithms. , 2018, The Science of the total environment.
[53] A. Ozdemir. GIS-based groundwater spring potential mapping in the Sultan Mountains (Konya, Turkey) using frequency ratio, weights of evidence and logistic regression methods and their comparison , 2011 .
[54] Seyed Amir Naghibi,et al. GIS-based groundwater potential mapping using boosted regression tree, classification and regression tree, and random forest machine learning models in Iran , 2015, Environmental Monitoring and Assessment.
[55] Hamid Reza Pourghasemi,et al. A comparison between ten advanced and soft computing models for groundwater qanat potential assessment in Iran using R and GIS , 2018, Theoretical and Applied Climatology.
[56] I. Moore,et al. Digital terrain modelling: A review of hydrological, geomorphological, and biological applications , 1991 .
[57] A. Al-Abadi. Groundwater potential mapping at northeastern Wasit and Missan governorates, Iraq using a data-driven weights of evidence technique in framework of GIS , 2015, Environmental Earth Sciences.
[58] B. Pham,et al. A comparative assessment of decision trees algorithms for flash flood susceptibility modeling at Haraz watershed, northern Iran. , 2018, The Science of the total environment.
[59] B. Pradhan,et al. GIS-based modeling of rainfall-induced landslides using data mining-based functional trees classifier with AdaBoost, Bagging, and MultiBoost ensemble frameworks , 2016, Environmental Earth Sciences.
[60] Eric R. Ziegel,et al. Generalized Linear Models , 2002, Technometrics.
[61] Wei Chen,et al. A novel ensemble approach of bivariate statistical-based logistic model tree classifier for landslide susceptibility assessment , 2018 .
[62] B. Niyazi,et al. Groundwater potential mapping using remote sensing techniques and weights of evidence GIS model: a case study from Wadi Yalamlam basin, Makkah Province, Western Saudi Arabia , 2015, Environmental Earth Sciences.
[63] Wei Chen,et al. GIS-based landslide susceptibility modelling: a comparative assessment of kernel logistic regression, Naïve-Bayes tree, and alternating decision tree models , 2017 .
[64] F. Quiel,et al. Groundwater study using remote sensing and geographic information systems (GIS) in the central highlands of Eritrea , 2006 .
[65] Mustafa Neamah Jebur,et al. Flood susceptibility analysis and its verification using a novel ensemble support vector machine and frequency ratio method , 2015, Stochastic Environmental Research and Risk Assessment.
[66] Biswajeet Pradhan,et al. Spatial prediction models for shallow landslide hazards: a comparative assessment of the efficacy of support vector machines, artificial neural networks, kernel logistic regression, and logistic model tree , 2016, Landslides.
[67] F. Agterberg,et al. Integration of Geological Datasets for Gold Exploration in Nova Scotia , 2013 .