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Flash flood susceptibility modeling using an optimized fuzzy rule based feature selection technique and tree based ensemble methods

机译:基于优化的基于模糊规则的特征选择技术和基于树的集成方法的山洪敏感性分析

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The main objective of the present study was to provide a novel methodological approach for flash flood susceptibility modeling based on a feature selection method (FSM) and tree based ensemble methods. The FSM, used a fuzzy rule based algorithm FURIA, as attribute evaluator, whereas GA were used as the search method, in order to obtain optimal set of variables used in flood susceptibility modeling assessments. The novel FURIA-GA was combined with LogitBoost, Bagging and AdaBoost ensemble algorithms. The performance of the developed methodology was evaluated at the Bao Yen district and the Bac Ha district of Lao Cai Province in the Northeast region of Vietnam. For the case study, 654 floods and twelve geo-environmental variables were used. The predictive performance of each model was estimated through the calculation of the classification accuracy, the sensitivity, the specificity, the success and predictive rate curve and the area under the curves (AUC). The FURIA-GA FSM compared to a conventional rule based method gave more accurate predictive results. Also, the FURIA-GA based models, presented higher learning and predictive ability compared to the ensemble models that had not undergone a FSM. Based on the predictive classification accuracy, FURIA-GA-Bagging (93.37%) outperformed FURIA-GA-LogitBoost (92.35%) and FURIA-GA-AdaBoost (89.03%). FURIA-GA-Bagging showed also the highest sensitivity (96.94%) and specificity (89.80%). On the other hand, the FURIA-GA-LogitBoost showed the lowest percentage in very high susceptible zone and the highest relative flash-flood density, whereas the FURIA-GA-AdaBoost achieved the highest prediction AUC value (0.9740), based on the prediction rate curve, followed by FIJRIA-GABagging (0.9566), and FURIA-GA-LogitBoost (0.8955). It can be concluded that the usage of different statistical metrics, provides different outcomes concerning the best prediction model, which mainly could be attributed to sites specific settings. The proposed models could be considered as a novel alternative investigation tools appropriate for flash flood susceptibility mapping. (C) 2019 Elsevier B.V. All rights reserved.
机译:本研究的主要目的是提供一种基于特征选择方法(FSM)和基于树的集成方法的山洪敏感性建模的新方法。 FSM使用基于模糊规则的算法FURIA作为属性评估器,而GA被用作搜索方法,以便获得洪水敏感性建模评估中使用的最佳变量集。新颖的FURIA-GA与LogitBoost,Bagging和AdaBoost集成算法结合在一起。在越南东北部的老街省的宝安区和巴哈区,评估了所开发方法的性能。在案例研究中,使用了654次洪水和12个地球环境变量。通过计算分类准确性,敏感性,特异性,成功率和预测率曲线以及曲线下面积(AUC),估算了每种模型的预测性能。与传统的基于规则的方法相比,FURIA-GA FSM给出了更准确的预测结果。而且,与未经过FSM的集成模型相比,基于FURIA-GA的模型具有更高的学习和预测能力。根据预测分类准确性,FURIA-GA-Bagging(93.37%)优于FURIA-GA-LogitBoost(92.35%)和FURIA-GA-AdaBoost(89.03%)。 FURIA-GA-Bagging也显示出最高的灵敏度(96.94%)和特异性(89.80%)。另一方面,在预测的基础上,FURIA-GA-LogitBoost在极高的易感区域中显示出最低的百分比,相对闪蒸密度最高,而FURIA-GA-AdaBoost在预测的基础上获得了最高的预测AUC值(0.9740)。率曲线,然后是FIJRIA-GABagging(0.9566)和FURIA-GA-LogitBoost(0.8955)。可以得出结论,使用不同的统计指标可以提供有关最佳预测模型的不同结果,这主要可以归因于站点的特定设置。所提出的模型可以被认为是适用于山洪敏感性分析的新型替代调查工具。 (C)2019 Elsevier B.V.保留所有权利。

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