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Erschienen in: Environmental Management 2/2012

01.02.2012

Spatial Prediction of Ground Subsidence Susceptibility Using an Artificial Neural Network

verfasst von: Saro Lee, Inhye Park, Jong-Kuk Choi

Erschienen in: Environmental Management | Ausgabe 2/2012

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Abstract

Ground subsidence in abandoned underground coal mine areas can result in loss of life and property. We analyzed ground subsidence susceptibility (GSS) around abandoned coal mines in Jeong-am, Gangwon-do, South Korea, using artificial neural network (ANN) and geographic information system approaches. Spatial data of subsidence area, topography, and geology, as well as various ground-engineering data, were collected and used to create a raster database of relevant factors for a GSS map. Eight major factors causing ground subsidence were extracted from the existing ground subsidence area: slope, depth of coal mine, distance from pit, groundwater depth, rock-mass rating, distance from fault, geology, and land use. Areas of ground subsidence were randomly divided into a training set to analyze GSS using the ANN and a test set to validate the predicted GSS map. Weights of each factor’s relative importance were determined by the back-propagation training algorithms and applied to the input factor. The GSS was then calculated using the weights, and GSS maps were created. The process was repeated ten times to check the stability of analysis model using a different training data set. The map was validated using area-under-the-curve analysis with the ground subsidence areas that had not been used to train the model. The validation showed prediction accuracies between 94.84 and 95.98%, representing overall satisfactory agreement. Among the input factors, “distance from fault” had the highest average weight (i.e., 1.5477), indicating that this factor was most important. The generated maps can be used to estimate hazards to people, property, and existing infrastructure, such as the transportation network, and as part of land-use and infrastructure planning.

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Metadaten
Titel
Spatial Prediction of Ground Subsidence Susceptibility Using an Artificial Neural Network
verfasst von
Saro Lee
Inhye Park
Jong-Kuk Choi
Publikationsdatum
01.02.2012
Verlag
Springer-Verlag
Erschienen in
Environmental Management / Ausgabe 2/2012
Print ISSN: 0364-152X
Elektronische ISSN: 1432-1009
DOI
https://doi.org/10.1007/s00267-011-9766-5

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