共 35 条
Understanding land degradation induced by gully erosion from the perspective of different geoenvironmental factors
被引:31
|作者:
Jaafari, Abolfazl
[1
]
Janizadeh, Saeid
[2
]
Abdo, Hazem Ghassan
[3
,4
,5
]
Mafi-Gholami, Davood
[6
]
Adeli, Behzad
[7
]
机构:
[1] Agr Res Educ & Extens Org AREEO, Res Inst Forests & Rangelands, Tehran 1496813111, Iran
[2] Tarbiat Modares Univ, Fac Nat Resources & Marine Sci, Dept Watershed Management Engn & Sci, Tehran 14115111, Iran
[3] Tartous Univ, Fac Arts & Humanities, Geog Dept, Tartous, Syria
[4] Damascus Univ, Fac Arts & Humanities, Geog Dept, Damascus, Syria
[5] Tishreen Univ, Fac Arts & Humanities, Geog Dept, Latakia, Syria
[6] Shahrekord Univ, Fac Nat Resources & Earth Sci, Dept Forest Sci, Shahrekord 8818634141, Iran
[7] Petro Omid Asia POA Co, Tehran, Iran
关键词:
Gully erosion;
Machine learning;
Prediction;
Random forest;
SUSCEPTIBILITY;
LANDSLIDE;
REGION;
MODEL;
D O I:
10.1016/j.jenvman.2022.115181
中图分类号:
X [环境科学、安全科学];
学科分类号:
08 ;
0830 ;
摘要:
Complex interrelationships between landscape-level geoenvironmental factors and natural phenomena have rendered land degradation control measures ineffective. For control to be effective, this study argues that the interactions between different geoenvironmental factors and gully erosion (as an indicator of land degradation) should be more fully investigated and spatially mapped. To do so, gully locations of the Konduran watershed, Iran, were detected in the field and modeled in response to seventeen geoenvironmental factors using three machine learning methods, i.e., multivariate adaptive regression splines (MARS), random forest (RF), regularized random forest (RRF), and Bayesian generalized linear model (Bayesian GLM). The models' performance was validated, the relationship of gully occurrence with each factor was quantified, the probability of gully erosion (i. e., land degradation) was retrospectively estimated, and the spatially explicit maps of land degradation susceptibility were produced. Based on the area under the receiver operating characteristic curve (AUC), the RRF and MARS models with AUC = 0.98 achieved the greatest goodness-of-fit with the training dataset, whereas the RF model with AUC = 0.83 showed the greatest ability in predicting future gully occurrences. Further scrutinization using the sensitivity and specificity metrics demonstrated the efficiency of the RF model for correctly classifying the gully (sensitivity-training = 92%; sensitivity-validation = 90%) and non-gully (specificity training = 95%; specificity-validation = 68%) pixels. Nearly 13% of the study area ended up being the hardest hit region due to their general characteristics of distance from roads and rives, altitude, and normalized difference vegetation index (NDVI) that were identified as the most influential factors in gully erosion occurrence. Given the resolution quality and reliable predictive accuracy, our spatially explicit maps of land susceptibility to gully erosion can be used by authorities and urban planners for identifying the target areas for rehabilitation and making more informed decisions for infrastructure development. Although our study was strictly focused on a certain region, our recommendations and implications are of global significance.
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