Publications
Détails
Dewitte, O., Daoudi, M., Bosco, C. & Van Den Eeckhaut, M. 2015. ‘Predicting the susceptibility to gully initiation in data-poor regions’. Geomorphology 228: 101-115. Elsevier. I.F. 2.785.
Article dans une revue scientifique / Article dans un périodique
Permanent gullies are common features in many landscapes and quite often they represent the dominant soil
erosion process. Once a gully has initiated, field evidence shows that gully channel formation and headcut migration
rapidly occur. In order to prevent the undesired effects of gullying, there is a need to predict the places where
new gullies might initiate. From detailed field measurements, studies have demonstrated strong inverse relationships
between slope gradient of the soil surface (S) and drainage area (A) at the point of channel initiation across
catchments in different climatic and morphological environments. Such slope–area thresholds (S–A) can be used
to predict locations in the landscape where gullies might initiate. However, acquiring S–A requires detailed field
investigations and accurate high resolution digital elevation data, which are usually difficult to acquire. To circumvent
this issue, we propose a two-step method that uses published S–A thresholds and a logistic regression
analysis (LR). S–A thresholds from the literature are used as proxies of field measurement. The method is calibrated
and validated on a watershed, close to the town of Algiers, northern Algeria, where gully erosion affects most
of the slopes. The gullies extend up to several kilometres in length and cover 16% of the study area. First we reconstruct
the initiation areas of the existing gullies by applying S–A thresholds for similar environments. Then,
using the initiation area map as the dependent variable with combinations of topographic and lithological predictor
variables, we calibrate several LR models. It provides relevant results in terms of statistical reliability, prediction
performance, and geomorphological significance. This method using S–A thresholds with data-driven
assessment methods like LR proves to be efficient when applied to common spatial data and establishes a methodology
that will allow similar studies to be undertaken elsewhere.