http://www.cnr.it/ontology/cnr/individuo/prodotto/ID289853
The effect of landslide representation and sample size on susceptibility assessments applied to different landslide types and case study areas (Abstract/Poster in atti di convegno)
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- Label
- The effect of landslide representation and sample size on susceptibility assessments applied to different landslide types and case study areas (Abstract/Poster in atti di convegno) (literal)
- Anno
- 2014-01-01T00:00:00+01:00 (literal)
- Alternative label
Hussin. H.; Zumpano, V.; Reichenbach, P.; Sterlacchini, S.; Micu, M.; Van Westen, C.j.; Balteanu, D. (2014)
The effect of landslide representation and sample size on susceptibility assessments applied to different landslide types and case study areas
in International Conference on Analysis and Management of Changing Risks for Natural Hazards, Padua, Italy, 18 - 19 November 2014
(literal)
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- Hussin. H.; Zumpano, V.; Reichenbach, P.; Sterlacchini, S.; Micu, M.; Van Westen, C.j.; Balteanu, D. (literal)
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- http://www.changes-itn.eu/Conference/Programme/DetailedProgramme/tabid/157/Default.aspx (literal)
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- Analysis and Management of Changing Risks for Natural Hazard (literal)
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- Http://www.cnr.it/ontology/cnr/pubblicazioni.owl#affiliazioni
- Faculty of Geo-Information Science and Earth Observation (ITC), University of Twente
Institute of Geography, Romanian Academy, Bucharest, Romania
CNR-IRPI, Perugia, Italy
CNR-IDPA, Milan, Italy (literal)
- Titolo
- The effect of landslide representation and sample size on susceptibility assessments applied to different landslide types and case study areas (literal)
- Abstract
- Statistical based landslide susceptibility models are widely used in medium to regional scale
assessments. The two main inputs in these models are the landslide inventory of past events
and the landslide caustative factor maps. In this study we assessed how the performance
and prediction capability of the Weights-of-Evidence (WofE) susceptibility model is affected
by the way we represent landslides in the pixel format, considering the entire polygon or only
the landslide centroid. Influence of pixel density representing the landslide polygon was also
taken into account. The second part of the research concidered the effect of the landslide
model training and prediction sample sizes on the performance and prediction rates of the
WofE model. Two case study areas were chosen to apply the representation and sampling
tests: (1) the Fella River Basin (Eastern Italian Alps) containing debris flows and (2) the four
times larger Buzau County (Romanian Carpathians) containing shallow landslides. Both
areas are very different in terms of size,
landslide types and geo-environmental factors, and
were chosen in order to determine the applicability and flexibility of our analysis. Our results
indicate that there is only a minor increase in performance and prediction when increasing
the number of pixels to represent the entire landslide polygon. As the number of pixels
increased from a single centroid to all pixels within the polygon, we found that the relative
increase in pixels was similar within all classes (e.g. grass-land, forest, bare rock) of each
thematic factor map like land-use or litholo
gy. This indicated that the landslides have a
similar size across the entire study area and is one of the causes of the lack of significant
increase in model performance. The similari
ty in performance and prediction rates for
different landslide representation tests was in contrast to their respective susceptibility maps,
which did show significant differences among each-other. This requires further analysis in
future studies to determine which susceptibility map should be chosen for decision making.
As for the sample size analysis, we have found that using 10 to 20% of all landslides to train
the WofE model in both case studies is sufficient to predict the remaining 80 to 90% of the
landslides. Modeling with more than 20% of the landslides causes a \"plateau effect\" in the
performance and prediction rates. This indicate
s that only a small percentage of all the
landslides in an inventory are needed for good prediction results, making it also unnecessary
to map every landslide in the area for a suffici
ent performing landslide susceptibility analysis. (literal)
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