FORESTIST
Araştırma Makalesi (Research Article)

Fuzzy rule-based landslide susceptibility mapping in Yığılca Forest District (Northwest of Turkey)

1.

Duzce University, Faculty of Forestry, 81620, Duzce, Turkey

FORESTIST 2016; 66: 559-571
DOI: 10.17099/jffiu.48480
Read: 1212 Downloads: 633 Published: 20 December 2019

Landslide susceptibility map of Yığılca Forest District was formed based on developed fuzzy rules using GIS-based FuzzyCell software. An inventory of 315 landslides was updated through fieldworks after inventory map previously generated by the authors. Based on the landslide susceptibility mapping study previously made in the same area, for the comparison of two maps, same 8 landslide conditioning parameters were selected and then fuzzified for the landslide susceptibility mapping: land use, lithology, elevation, slope, aspect, distance to streams, distance to roads, and plan curvature. Mamdani model was selected as fuzzy inference system. After fuzzy rules definition, Center of Area (COA) was selected as defuzzification method in model. The output of developed model was normalized between 0 and 1, and then divided five classes such as very low, low, moderate, high, and very high. According to developed model based 8 conditioning parameters, landslide susceptibility in Yığılca Forest District varies between 32 and 67 (in range of 0-100) with 0.703 Area Under the Curve (AUC) value. According to classified landslide susceptibility map, in Yığılca Forest District, 32.89% of the total area has high and very high susceptibility while 29.59% of the area has low and very low susceptibility and the rest located in moderate susceptibility. The result of developed fuzzy rule based model compared with previously generated landslide map with logistic regression (LR). According to comparison of the results of two studies, higher differences exist in terms of AUC value and dispersion of susceptibility classes. This is because fuzzy rule based model completely depends on how parameters are classified and fuzzified and also depends on how truly the expert composed the rules. Even so, GIS-based fuzzy applications provide very valuable facilities for reasoning, which makes it possible to take into account inaccuracies and uncertainties. 

Cite (Atıf) : Aydin, A., Eker, R., 2016. Fuzzy rule-based landslide susceptibility mapping in Yığılca Forest District (Northwest of Turkey). Journal of the Faculty of Forestry Istanbul University 66(2): 559-571. DOI: 10.17099/jffiu.48480

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