DocumentCode :
20989
Title :
A Remote Sensing-Based Approach for Debris-Flow Susceptibility Assessment Using Artificial Neural Networks and Logistic Regression Modeling
Author :
Elkadiri, Racha ; Sultan, Mohamed ; Youssef, Ahmed M. ; Elbayoumi, Tamer ; Chase, Ronald ; Bulkhi, Ali B. ; Al-Katheeri, Mohamed M.
Author_Institution :
Dept. of Geosci., Western Michigan Univ., Kalamazoo, MI, USA
Volume :
7
Issue :
12
fYear :
2014
fDate :
Dec. 2014
Firstpage :
4818
Lastpage :
4835
Abstract :
Efforts to map the distribution of debris flows, to assess the factors controlling their development, and to identify the areas susceptible to their occurrences are often hampered by the paucity of monitoring systems and historical databases in many parts of the world. In this paper, we develop and successfully apply methodologies that rely heavily on readily available remote-sensing datasets over the Jazan province in the Red Sea hills of Saudi Arabia. A fivefold exercise was conducted: 1) a geographical information system (GIS) with a Web interface was generated to host and analyze relevant coregistered remote-sensing data and derived products; 2) an inventory was compiled for debris flows identified from satellite datasets (e.g., GeoEye, Orbview), a subset of which was field verified; 3) spatial analyses were conducted in a GIS environment and 10 predisposing factors were identified; 4) an artificial neural network (ANN) model and a logistic regression (LR) model were constructed, optimized, and validated; and 5) the generated models were used to produce debris-flow susceptibility maps. Findings include: 1) excellent prediction performance for both models (ANN: 96.1%; LR: 96.3%); 2) the high correspondence between model outputs (91.5% of the predictions were common) reinforces the validity of the debris-flow susceptibility results; 3) the variables with the highest predictive power were topographic position index (TPI), slope, distance to drainage line (DTDL), and normalized difference vegetation index (NDVI); and 4) the adopted methodologies are reliable, cost-effective, and could potentially be applied over many of the world´s data-scarce mountainous lands, particularly along the Red Sea Hills.
Keywords :
geographic information systems; geophysical image processing; geophysical techniques; image registration; neural nets; remote sensing; vegetation; GIS environment; Jazan province; Red Sea hills; Saudi Arabia; Web interface; artificial neural networks; coregistered remote-sensing data; debris flow distribution; debris-flow susceptibility assessment; distance-to-drainage line; geographical information system; historical databases; logistic regression model; logistic regression modeling; normalized difference vegetation index; remote sensing-based approach; remote-sensing datasets; Analytical models; Artificial neural networks; Data models; Indexes; Neural networks; Regression analysis; Remote sensing; Artificial neural networks (ANN); data mining; data-scarce field regions; debris flows; geographical information system (GIS); logistic regression (LR); remote sensing;
fLanguage :
English
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
Publisher :
ieee
ISSN :
1939-1404
Type :
jour
DOI :
10.1109/JSTARS.2014.2337273
Filename :
6875897
Link To Document :
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