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Evaluating the Efficiency of Different Regression, Decision Tree, and Bayesian Machine Learning Algorithms in Spatial Piping Erosion Susceptibility Using ALOS/PALSAR Data

  • Piping erosion is one form of water erosion that leads to significant changes in the landscape and environmental degradation. In the present study, we evaluated piping erosion modeling in the Zarandieh watershed of Markazi province in Iran based on random forest (RF), support vector machine (SVM), and Bayesian generalized linear models (Bayesian GLM) machine learning algorithms. For this goal, duePiping erosion is one form of water erosion that leads to significant changes in the landscape and environmental degradation. In the present study, we evaluated piping erosion modeling in the Zarandieh watershed of Markazi province in Iran based on random forest (RF), support vector machine (SVM), and Bayesian generalized linear models (Bayesian GLM) machine learning algorithms. For this goal, due to the importance of various geo-environmental and soil properties in the evolution and creation of piping erosion, 18 variables were considered for modeling the piping erosion susceptibility in the Zarandieh watershed. A total of 152 points of piping erosion were recognized in the study area that were divided into training (70%) and validation (30%) for modeling. The area under curve (AUC) was used to assess the effeciency of the RF, SVM, and Bayesian GLM. Piping erosion susceptibility results indicated that all three RF, SVM, and Bayesian GLM models had high efficiency in the testing step, such as the AUC shown with values of 0.9 for RF, 0.88 for SVM, and 0.87 for Bayesian GLM. Altitude, pH, and bulk density were the variables that had the greatest influence on the piping erosion susceptibility in the Zarandieh watershed. This result indicates that geo-environmental and soil chemical variables are accountable for the expansion of piping erosion in the Zarandieh watershed.zeige mehrzeige weniger

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  • Gefördert durch das Programm Open Access Publizieren der DFG und den Publikationsfonds der Bauhaus-Universität Weimar.

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Metadaten
Dokumentart:Artikel (Wissenschaftlicher)
Verfasserangaben: Shahab S. BandORCiD, Saeid JanizadehORCiD, Sunil SahaORCiD, Kaustuv Mukherjee, Saeid Khosrobeigi Bozchaloei, Artemi CerdàORCiD, Manouchehr ShokriORCiD, Amir Hosein MosaviORCiD
DOI (Zitierlink):https://doi.org/10.3390/land9100346Zitierlink
URN (Zitierlink):https://nbn-resolving.org/urn:nbn:de:gbv:wim2-20210122-43424Zitierlink
URL:https://www.mdpi.com/2073-445X/9/10/346
Titel des übergeordneten Werkes (Englisch):Land
Verlag:MDPI
Verlagsort:Basel
Sprache:Englisch
Datum der Veröffentlichung (online):21.01.2021
Datum der Erstveröffentlichung:23.09.2020
Datum der Freischaltung:22.01.2021
Veröffentlichende Institution:Bauhaus-Universität Weimar
Institute und Partnereinrichtugen:Fakultät Bauingenieurwesen / Institut für Strukturmechanik (ISM)
Jahrgang:2020
Ausgabe / Heft:volume 9, issue 10, article 346
Seitenzahl:22
Erste Seite:1
Letzte Seite:22
Freies Schlagwort / Tag:OA-Publikationsfonds2020
geoinformatics; random forest; support vector machine
GND-Schlagwort:Maschinelles Lernen; Bayes-Verfahren; Naturkatastrophe
DDC-Klassifikation:000 Informatik, Informationswissenschaft, allgemeine Werke / 000 Informatik, Wissen, Systeme
BKL-Klassifikation:54 Informatik / 54.72 Künstliche Intelligenz
Open Access Publikationsfonds:Open-Access-Publikationsfonds 2020
Lizenz (Deutsch):License Logo Creative Commons 4.0 - Namensnennung (CC BY 4.0)