基于径向基函数分类器和Fisher线性判别函数的洪水敏感性建模

IF 2.4 Q2 GEOSCIENCES, MULTIDISCIPLINARY VIETNAM JOURNAL OF EARTH SCIENCES Pub Date : 2021-10-12 DOI:10.15625/2615-9783/16626
Chinh Luu, Duc Dam Nguyen, M. Amiri, Phong Tran Van, Quynh Duy Bui, Indra Prakash, Binh Thai Pham
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引用次数: 9

摘要

洪水是影响世界范围内生命、财产和环境的最常见的严重灾害之一。虽然有各种模型可用于预测洪水易感性,但没有一个模型足够精确,可以用于所有洪水易发地区。采用不同算法开发模型是一个不断提高洪水敏感性预测精度的过程。本文以广平省为例,利用径向基函数和Fisher线性判别函数建立了洪水敏感性图。模型的开发使用了10个变量(高程、坡度、曲率、河流密度、与河流的距离、地貌、土地利用、流量积累、流向和降雨量)。在模型训练和验证中,输入数据根据洪水位置分成70:30的比例。采用统计指标评价模型的性能,如受试者工作特征、ROC曲线下面积、均方根误差、准确性、敏感性、特异性和Kappa指数。结果表明,基于统计度量的径向基函数分类器模型(PPV = 92.00%, NPV = 87.00%, SST = 87.62%, SPF = 91.58%, ACC = 89.50%, Kappa = 0.790, MAE = 0.204, RMSE = 0.292, AUC = 0.957)对洪水易感区有较好的预测效果。因此,径向基函数分类器算法模型适合于平省洪水易感性预测。
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Flood susceptibility modeling using Radial Basis Function Classifier and Fisher’s linear discriminant function
Floods are among the most frequent highly disastrous hazards affecting life, property, and the environment worldwide. While various models are available to predict flood susceptibility, no model is accurate enough to be used for all flood-prone areas. Model development using different algorithms is a continuous process to improve the prediction accuracy of flood susceptibility. In the study, we used the Radial Basis Function and Fisher’s linear discriminant function to develop a flood susceptibility map for a case study of Quang Binh Province. The model development used ten variables (elevation, slope, curvature, river density, distance from river, geomorphology, land use, flow accumulation, flow direction, and rainfall). For model training and validation, input data was split into a 70:30 ratio according to flood locations. Statistical indexes were used to evaluate model performance such as Receiver Operating Characteristic, the Area Under the ROC Curve, Root Mean Square Error, Accuracy, Sensitivity, Specificity, and Kappa index. Results indicated that the radial basis function classifier model had better performance in predicting flood susceptible areas based on the statistical measures (PPV = 92.00%, NPV = 87.00%, SST = 87.62%, SPF = 91.58%, ACC = 89.50%, Kappa = 0.790, MAE = 0.204, RMSE = 0.292 and AUC = 0.957. Therefore, the radial basis function classifier algorithm model is appropriate for predicting flood susceptibility in Quang Binh Province.
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来源期刊
VIETNAM JOURNAL OF EARTH SCIENCES
VIETNAM JOURNAL OF EARTH SCIENCES GEOSCIENCES, MULTIDISCIPLINARY-
CiteScore
3.60
自引率
20.00%
发文量
0
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