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Flood spatial prediction modeling using a hybrid of meta-optimization and support vector regression modeling

机译:洪水空间预测建模使用元优化的混合,支持向量回归建模

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Flood spatial susceptibility prediction is the first essential step in developing flood mitigation strategies and reducing flood damage. Flood occurrence is a complex process that is not easily predicted through simple methods. This study describes optimization of support vector regression (SVR) using meta-optimization algorithms including the grasshopper optimization algorithm (GOA) and particle swarm optimization (PSO) for flood modeling at Qazvin Plain, Iran. Geospatial data including nine readily available geo-environmental flood conditioning factors (i.e., ground slope, aspect, elevation, planform curvature, profile curvature, proximity to a river, land use, lithology and rainfall) were derived. The information gain ratio (IGR) method was used to determine the relative importance of input variables. A historical flood inventory map for 43 locations was created from existing reports. The geospatial data and historical flood levels were used to construct the training and testing datasets. Then, the training dataset was used to generate flood-susceptibility maps using the optimized SVR model with the GOA and PSO algorithms. Finally, the predictive accuracy of the models was quantified using the statistical measures of root mean square error (RMSE), mean absolute error (MAE), and area under the receiver operating characteristic (ROC) curve (AUC). Although both the GOA and PSO algorithms improved SVR performance, the SVR-GOA model performed best (AUC = 0.959, RMSE = 0.31 and MSE = 0.098), followed by the SVR-PSO model (AUC = 0.959, RMSE = 0.33 and MSE = 0.11) and standalone SVR model (AUC = 0.87, RMSE = 0.35 and MSE = 0.12). Elevation, lithology and aspect had the highest IGR values and were identified as the most effective predictors of flood susceptibility.
机译:洪水空间敏感性预测是制定防洪策略和减少洪水损失的第一步。洪水发生是一个复杂的过程,不容易通过简单的方法预测。本研究描述了使用元优化算法优化支持向量回归(SVR),包括用于伊朗Qazvin平原洪水建模的蚱蜢优化算法(GOA)和粒子群优化算法(PSO)。得出了地理空间数据,包括九个现成的地理环境洪水调节因子(即地面坡度、坡向、高程、平面曲率、剖面曲率、河流附近、土地利用、岩性和降雨量)。信息增益比(IGR)法用于确定输入变量的相对重要性。根据现有报告创建了43个地点的历史洪水清单地图。利用地理空间数据和历史洪水位构建训练和测试数据集。然后,利用训练数据集,利用优化的SVR模型,结合GOA和PSO算法生成洪水敏感性图。最后,使用均方根误差(RMSE)、平均绝对误差(MAE)和受试者工作特性(ROC)曲线下面积(AUC)的统计指标对模型的预测精度进行量化。虽然GOA和PSO算法都提高了SVR性能,但SVR-GOA模型表现最好(AUC=0.959,RMSE=0.31,MSE=0.098),其次是SVR-PSO模型(AUC=0.959,RMSE=0.33,MSE=0.11)和独立SVR模型(AUC=0.87,RMSE=0.35,MSE=0.12)。海拔、岩性和坡向的IGR值最高,被认为是洪水敏感性的最有效预测因子。

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