Geographic Information Science Research Group, Ton Duc Thang University, Ho Chi Minh City, Viet Nam.
Faculty of Environment and Labour Safety, Ton Duc Thang University, Ho Chi Minh City, Viet Nam.
Sci Rep. 2020 Jul 31;10(1):12937. doi: 10.1038/s41598-020-69703-7.
Floods in urban environments often result in loss of life and destruction of property, with many negative socio-economic effects. However, the application of most flood prediction models still remains challenging due to data scarcity. This creates a need to develop novel hybridized models based on historical urban flood events, using, e.g., metaheuristic optimization algorithms and wavelet analysis. The hybridized models examined in this study (Wavelet-SVR-Bat and Wavelet-SVR-GWO), designed as intelligent systems, consist of a support vector regression (SVR), integrated with a combination of wavelet transform and metaheuristic optimization algorithms, including the grey wolf optimizer (GWO), and the bat optimizer (Bat). The efficiency of the novel hybridized and standalone SVR models for spatial modeling of urban flood inundation was evaluated using different cutoff-dependent and cutoff-independent evaluation criteria, including area under the receiver operating characteristic curve (AUC), Accuracy (A), Matthews Correlation Coefficient (MCC), Misclassification Rate (MR), and F-score. The results demonstrated that both hybridized models had very high performance (Wavelet-SVR-GWO: AUC = 0.981, A = 0.92, MCC = 0.86, MR = 0.07; Wavelet-SVR-Bat: AUC = 0.972, A = 0.88, MCC = 0.76, MR = 0.11) compared with the standalone SVR (AUC = 0.917, A = 0.85, MCC = 0.7, MR = 0.15). Therefore, these hybridized models are a promising, cost-effective method for spatial modeling of urban flood susceptibility and for providing in-depth insights to guide flood preparedness and emergency response services.
城市环境中的洪水常常导致生命损失和财产破坏,并带来许多负面的社会经济影响。然而,由于数据稀缺,大多数洪水预测模型的应用仍然具有挑战性。因此,需要开发基于历史城市洪水事件的新型混合模型,例如使用元启发式优化算法和小波分析。本研究中检查的混合模型(Wavelet-SVR-Bat 和 Wavelet-SVR-GWO)作为智能系统,由支持向量回归(SVR)组成,与小波变换和元启发式优化算法的组合相结合,包括灰狼优化算法(GWO)和蝙蝠优化算法(Bat)。使用不同的截止相关和截止独立评估标准,包括接收者操作特征曲线下的面积(AUC)、准确性(A)、马修斯相关系数(MCC)、误分类率(MR)和 F 分数,评估了新型混合和独立 SVR 模型对城市洪水淹没的空间建模效率。结果表明,两种混合模型都具有非常高的性能(Wavelet-SVR-GWO:AUC=0.981,A=0.92,MCC=0.86,MR=0.07;Wavelet-SVR-Bat:AUC=0.972,A=0.88,MCC=0.76,MR=0.11),与独立的 SVR 相比(AUC=0.917,A=0.85,MCC=0.7,MR=0.15)。因此,这些混合模型是一种很有前途、具有成本效益的方法,可以对城市洪水易感性进行空间建模,并为洪水准备和应急响应服务提供深入的见解。