Flood susceptibility mapping using support vector regression and hyper-parameter optimization

被引:18
|
作者
Salvati, Aryan [1 ]
Nia, Alireza Moghaddam [1 ]
Salajegheh, Ali [1 ]
Ghaderi, Kayvan [2 ]
Asl, Dawood Talebpour [3 ]
Al-Ansari, Nadhir [4 ]
Solaimani, Feridon [5 ]
Clague, John J. [6 ]
机构
[1] Univ Tehran, Fac Nat Resources, Dept Arid & Mt Reg Reclamat, Karaj, Iran
[2] Univ Kurdistan, Fac Engn, Dept Informat Technol & Comp Engn, Sanandaj, Iran
[3] Univ Kurdistan, Fac Nat Resources, Dept Geomorphol, Sanandaj, Iran
[4] Lulea Univ Technol, Dept Civil Environm & Nat Resources Engn, Lulea, Sweden
[5] Khuzestan Agr & Nat Resources Res & Educ Ctr, Dept Soil Conservat & Watershed Management Res, AREEO, Ahvaz, Iran
[6] Simon Fraser Univ, Dept Earth Sci, Burnaby, BC, Canada
来源
JOURNAL OF FLOOD RISK MANAGEMENT | 2023年 / 16卷 / 04期
关键词
flood susceptibility; GIS; hyper-parameter optimization; Iran; linear kernel; SVR; ANALYTIC HIERARCHY PROCESS; WEIGHTS-OF-EVIDENCE; LOGISTIC-REGRESSION; DECISION TREE; STATISTICAL-MODELS; GENETIC ALGORITHM; FREQUENCY RATIO; SURFACE RUNOFF; MACHINE; REGION;
D O I
10.1111/jfr3.12920
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Floods are both complex and destructive, and in most parts of the world cause injury, death, loss of agricultural land, and social disruption. Flood susceptibility (FS) maps are used by land-use managers and land owners to identify areas that are at risk from flooding and to plan accordingly. This study uses machine learning ensembles to produce objective and reliable FS maps for the Haraz watershed in northern Iran. Specifically, we test the ability of the support vector regression (SVR), together with linear kernel (LK), base classifier (BC), and hyper-parameter optimization (HPO), to identify flood-prone areas in this watershed. We prepared a map of 201 past floods to predict future floods. Of the 201 flood events, 151 (75%) were used for modeling and 50 (25%) were used for validation. Based on the relevant literature and our field survey of the study area, 10 effective factors were selected and prepared for flood zoning. The results show that three of the 10 factors are most important for predicting flood-sensitive areas, specifically and in order of importance, slope, distance to the river and river. Additionally, the SVR-HPO model, with area under the curve values of 0.986 and 0.951 for the training and testing phases, outperformed the other two tested models.
引用
收藏
页数:18
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