An optimized solution of multi-criteria evaluation analysis of landslide susceptibility using fuzzy sets and Kalman filter
Authors:
- Pece V. Gorsevski,
- Piotr Jankowski
Abstract
The Kalman recursive algorithm has been very widely used for integrating navigation sensor data to achieve optimal system performances. This paper explores the use of the Kalman filter to extend the aggregation of spatial multi-criteria evaluation (MCE) and to find optimal solutions with respect to a decision strategy space where a possible decision rule falls. The approach was tested in a case study in the Clearwater National Forest in central Idaho, using existing landslide datasets from roaded and roadless areas and terrain attributes. In this approach, fuzzy membership functions were used to standardize terrain attributes and develop criteria, while the aggregation of the criteria was achieved by the use of a Kalman filter. The approach presented here offers advantages over the classical MCE theory because the final solution includes both the aggregated solution and the areas of uncertainty expressed in terms of standard deviation. A comparison of this methodology with similar approaches suggested that this approach is promising for predicting landslide susceptibility and further application as a spatial decision support system. © 2010 Elsevier Ltd.
- Record ID
- UAMbe74329e0d4a4d15982f003fb9848a4b
- Author
- Journal series
- Computers & Geosciences, ISSN 0098-3004
- Issue year
- 2010
- Vol
- 36
- Pages
- 1005-1020
- ASJC Classification
- ;
- DOI
- DOI:10.1016/j.cageo.2010.03.001 Opening in a new tab
- Language
- (en) English
- Score (nominal)
- 0
- Score source
- journalList
- Publication indicators
- = 57; = 61; : 2010 = 1.655; : 2010 (2 years) = 1.416 - 2010 (5 years) =1.632
- Uniform Resource Identifier
- https://researchportal.amu.edu.pl/info/article/UAMbe74329e0d4a4d15982f003fb9848a4b/
- URN
urn:amu-prod:UAMbe74329e0d4a4d15982f003fb9848a4b
* presented citation count is obtained through Internet information analysis and it is close to the number calculated by the Publish or PerishOpening in a new tab system.