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      Flash-Flood Potential Mapping Using Deep Learning, Alternating Decision Trees and Data Provided by Remote Sensing Sensors

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          Abstract

          There is an evident increase in the importance that remote sensing sensors play in the monitoring and evaluation of natural hazards susceptibility and risk. The present study aims to assess the flash-flood potential values, in a small catchment from Romania, using information provided remote sensing sensors and Geographic Informational Systems (GIS) databases which were involved as input data into a number of four ensemble models. In a first phase, with the help of high-resolution satellite images from the Google Earth application, 481 points affected by torrential processes were acquired, another 481 points being randomly positioned in areas without torrential processes. Seventy percent of the dataset was kept as training data, while the other 30% was assigned to validating sample. Further, in order to train the machine learning models, information regarding the 10 flash-flood predictors was extracted in the training sample locations. Finally, the following four ensembles were used to calculate the Flash-Flood Potential Index across the Bâsca Chiojdului river basin: Deep Learning Neural Network–Frequency Ratio (DLNN-FR), Deep Learning Neural Network–Weights of Evidence (DLNN-WOE), Alternating Decision Trees–Frequency Ratio (ADT-FR) and Alternating Decision Trees–Weights of Evidence (ADT-WOE). The model’s performances were assessed using several statistical metrics. Thus, in terms of Sensitivity, the highest value of 0.985 was achieved by the DLNN-FR model, meanwhile the lowest one (0.866) was assigned to ADT-FR ensemble. Moreover, the specificity analysis shows that the highest value (0.991) was attributed to DLNN-WOE algorithm, while the lowest value (0.892) was achieved by ADT-FR. During the training procedure, the models achieved overall accuracies between 0.878 (ADT-FR) and 0.985 (DLNN-WOE). K-index shows again that the most performant model was DLNN-WOE (0.97). The Flash-Flood Potential Index (FFPI) values revealed that the surfaces with high and very high flash-flood susceptibility cover between 46.57% (DLNN-FR) and 59.38% (ADT-FR) of the study zone. The use of the Receiver Operating Characteristic (ROC) curve for results validation highlights the fact that FFPI DLNN-WOE is characterized by the most precise results with an Area Under Curve of 0.96.

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          Deep learning in neural networks: An overview

          In recent years, deep artificial neural networks (including recurrent ones) have won numerous contests in pattern recognition and machine learning. This historical survey compactly summarizes relevant work, much of it from the previous millennium. Shallow and Deep Learners are distinguished by the depth of their credit assignment paths, which are chains of possibly learnable, causal links between actions and effects. I review deep supervised learning (also recapitulating the history of backpropagation), unsupervised learning, reinforcement learning & evolutionary computation, and indirect search for short programs encoding deep and large networks.
            Bookmark
            • Record: found
            • Abstract: not found
            • Article: not found

            Landslide hazard mapping at Selangor, Malaysia using frequency ratio and logistic regression models

              Bookmark
              • Record: found
              • Abstract: not found
              • Article: not found

              Flood susceptibility mapping using a novel ensemble weights-of-evidence and support vector machine models in GIS

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                Author and article information

                Journal
                Sensors (Basel)
                Sensors (Basel)
                sensors
                Sensors (Basel, Switzerland)
                MDPI
                1424-8220
                04 January 2021
                January 2021
                : 21
                : 1
                : 280
                Affiliations
                [1 ]Research Institute of the University of Bucharest, 90-92 Sos. Panduri, 5th District, 050663 Bucharest, Romania; romulus.costache@ 123456icub.unibuc.ro
                [2 ]National Institute of Hydrology and Water Management, București-Ploiești Road, 97E, 1st District, 013686 Bucharest, Romania
                [3 ]Department of Geomorphology, Tarbiat Modares University, Tehran 36581-17994, Iranmailto
                [4 ]Department of Geoinformatics–Z_GIS, University of Salzburg, 5020 Salzburg, Austria; Thomas.Blaschke@ 123456sbg.ac.at
                [5 ]Environmental Quality, Atmospheric Science and Climate Change Research Group, Ton Duc Thang University, Ho Chi Minh City 700000, Vietnam
                [6 ]Faculty of Environment and Labour Safety, Ton Duc Thang University, Ho Chi Minh City 700000, Vietnam
                [7 ]Geotechnical Engineering Deparment, University of Transport Technology, Hanoi 100000, Vietnam; binhpt@ 123456utt.edu.vn
                [8 ]University Center for Research & Development (UCRD), Chandigarh University, Punjab 140413, India; manish07sep@ 123456gmail.com
                [9 ]Department of Civil Engineering, University Institute of Engineering, Chandigarh University, Punjab 140413, India
                [10 ]Department of Geography, Faculty of Natural Sciences, Jamia Millia Islamia, New Delhi 110025, India; aman.jmi01@ 123456gmail.com
                [11 ]Institute of Research and Development, Duy Tan University, Danang 550000, Vietnam; nguyentthuylinh58@ 123456duytan.edu.vn
                [12 ]Faculty of Environmental and Chemical Engineering, Duy Tan University, Danang 550000, Vietnam
                [13 ]Faculty of Geography, University of Bucharest, Bd. Nicolae Bălcescu No 1, 1st District, 010041 Bucharest, Romania; iulia.elena.costache@ 123456gmail.com
                Author notes
                Author information
                https://orcid.org/0000-0002-6876-8572
                https://orcid.org/0000-0002-1142-1666
                https://orcid.org/0000-0002-1860-8458
                https://orcid.org/0000-0002-0468-5962
                https://orcid.org/0000-0001-9707-840X
                https://orcid.org/0000-0001-8291-2043
                https://orcid.org/0000-0001-9396-8720
                Article
                sensors-21-00280
                10.3390/s21010280
                7796316
                33406613
                9a1fe71f-107e-4372-9ace-ca91f93b2bf7
                © 2021 by the authors.

                Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license ( http://creativecommons.org/licenses/by/4.0/).

                History
                : 06 November 2020
                : 22 December 2020
                Categories
                Article

                Biomedical engineering
                flash-flood potential index,remote sensing sensors,bivariate statistics,deep learning neural network,alternating decision trees,ensemble models

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