Integration of multi-criteria and nearest neighbour analysis with kernel density functions for improving sinkhole susceptibility models: the case study of Enemonzo (NE Italy)
The significance of intra-mountain valleys to infrastructure and human settlements and the
need to mitigate the geo-hazard affecting these assets are fundamental to the economy of
Italian alpine regions. Therefore, there is a real need to recognize and assess possible geohazards
affecting them. This study proposes the use of GIS-based analyses to construct a
sinkhole susceptibility model based on conditioning factors such as land use, geomorphology,
thickness of shallow deposits, distance to drainage network and distance to faults. Thirtytwo
models, applied to a test site (Enemonzo municipality, NE Italy), were produced using a
method based on the Likelihood Ratio (λ) function, nine with only one variable and 23 applying
different combinations. The sinkhole susceptibility model with the best forecast performance,
with an Area Under the Prediction Rate Curve (AUPRC) of 0.88, was that combining the
following parameters: Nearest Sinkhole Distance (NSD), land use and thickness of the
surficial deposits. The introduction of NSD as a continuous variable in the computation
represents an important upgrade in the prediction capability of the model. Additionally, the
model was refined using a kernel density estimation that produced a significant improvement