LEADER 06157nam 22006615 450 001 9910855372203321 005 20250807145506.0 010 $a981-9977-07-X 024 7 $a10.1007/978-981-99-7707-9 035 $a(MiAaPQ)EBC31319372 035 $a(Au-PeEL)EBL31319372 035 $a(CKB)31918625800041 035 $a(DE-He213)978-981-99-7707-9 035 $a(EXLCZ)9931918625800041 100 $a20240504d2024 u| 0 101 0 $aeng 135 $aurcnu|||||||| 181 $ctxt$2rdacontent 182 $cc$2rdamedia 183 $acr$2rdacarrier 200 10$aGeomorphic Risk Reduction Using Geospatial Methods and Tools /$fedited by Raju Sarkar, Sunil Saha, Basanta Raj Adhikari, Rajib Shaw 205 $a1st ed. 2024. 210 1$aSingapore :$cSpringer Nature Singapore :$cImprint: Springer,$d2024. 215 $a1 online resource (328 pages) 225 1 $aDisaster Risk Reduction, Methods, Approaches and Practices,$x2196-4114 311 08$a981-9977-06-1 327 $aLandslide Susceptibility Assessment Based on Machine Learning Techniques -- Measuring landslide susceptibility in Jakholi region of Garhwal Himalaya applying novel ensembles of statistical and machine learning algorithms -- Landslide Susceptibility Mapping using GIS-based Frequency Ratio, Shannon Entropy, Information Value and Weight-of-Evidence approaches in part of Kullu district, Himachal Pradesh, India -- An advanced hybrid machine learning technique for assessing the susceptibility to landslides in the Meenachil river basin of Kerala, India -- Novel ensemble of M5P and Deep learning neural network for predicting landslide susceptibility: A cross-validation approach -- Artificial neural network ensemble with General linear model for modeling the Landslide Susceptibility in Mirik region of West Bengal, India -- Modeling gully erosion susceptibility using advanced machine learning method in Pathro River Basin, India -- Quantitative Assessment of Interferometric Synthetic Aperture 2 Radar(INSAR) for Landslide Monitoring and Mitigation -- Assessment of Landslide Vulnerability using Statistical and Machine Learning Methods in Bageshwar District of Uttarakhand, India -- Assessing the shifting of the River Ganga along Malda District of West Bengal, India -- An ensemble of J48 Decision Tree with AdaBoost, and Bagging for flood susceptibility mapping in the Sundarban of West Bengal, India -- Assessment of mouza level flood resilience in lower part of Mayurakshi River basin, Eastern India -- Spatial flashflood modeling in Beas River Basin of Himachal Pradesh, India using GIS-based machine learning algorithms -- Geospatial study of river shifting and erosion deposition phenomenon along a selected stretch of River Damodar, West Bengal, India -- An Evaluation of Hydrological Modeling Using CN Method in Ungauged Barsa River Basin of Pasakha, Bhutan -- The Adoption of Random Forest (RF) and Support Vector Machine (SVM) with Cat Swarm Optimization (CSO) to Predict the Soil Liquefaction. 330 $aThis book explores the use of advanced geospatial techniques in geomorphic hazards modelling and risk reduction. It also compares the accuracy of traditional statistical methods and advanced machine learning methods and addresses the different ways to reduce the impact of geomorphic hazards. In recent years with the development of human infrastructures, geomorphic hazards are gradually increasing, which include landslides, flood and soil erosion, among others. They cause huge loss of human property and lives. Especially in mountainous, coastal, arid and semi-arid regions, these natural hazards are the main barriers for economic development. Furthermore, human pressure and specific human actions such as deforestation, inappropriate land use and farming have increased the danger of natural disasters and degraded the natural environment, making it more difficult for environmental planners and policymakers to develop appropriate long-term sustainability plans. The most challenging task is to develop a sophisticated approach for continuous inspection and resolution of environmental problems for researchers and scientists. However, in the past several decades, geospatial technology has undergone dramatic advances, opening up new opportunities for handling environmental challenges in a more comprehensive manner. With the help of geographic information system (GIS) tools, high and moderate resolution remote sensing information, such as visible imaging, synthetic aperture radar, global navigation satellite systems, light detection and ranging, Quickbird, Worldview 3, LiDAR, SPOT 5, Google Earth Engine and others deliver state-of-the-art investigations in the identification of multiple natural hazards. For a thorough examination, advanced computer approaches focusing on cutting-edge data processing, machine learning and deep learning may be employed. To detect and manage various geomorphic hazards and their impact, several models with a specific emphasis on natural resources and the environment may be created. 410 0$aDisaster Risk Reduction, Methods, Approaches and Practices,$x2196-4114 606 $aNatural disasters 606 $aGeographic information systems 606 $aGeomorphology 606 $aMachine learning 606 $aArtificial intelligence 606 $aNatural Hazards 606 $aGeographical Information System 606 $aGeomorphology 606 $aMachine Learning 606 $aArtificial Intelligence 615 0$aNatural disasters. 615 0$aGeographic information systems. 615 0$aGeomorphology. 615 0$aMachine learning. 615 0$aArtificial intelligence. 615 14$aNatural Hazards. 615 24$aGeographical Information System. 615 24$aGeomorphology. 615 24$aMachine Learning. 615 24$aArtificial Intelligence. 676 $a363.34 702 $aSarkar$b Raju 801 0$bMiAaPQ 801 1$bMiAaPQ 801 2$bMiAaPQ 906 $aBOOK 912 $a9910855372203321 996 $aGeomorphic Risk Reduction Using Geospatial Methods and Tools$94264790 997 $aUNINA