Department of Civil Engineering, Chongqing Three Gorges University, Wanzhou, China.
Department of Earth Sciences, Chengdu University of Technology, Chengdu, China.
PLoS One. 2023 Feb 2;18(2):e0281039. doi: 10.1371/journal.pone.0281039. eCollection 2023.
This paper proposes a new debris flow risk assessment method based on the Monte Carlo Simulation and an Improved Cloud Model. The new method tests the consistency of coupling weights according to the characteristics of the Cloud Model firstly, so as to determine the weight boundary of each evaluation index. Considering the uncertain characteristics of weights, the Monte Carlo Simulation is used to converge the weights in a minimal fuzzy interval, then the final weight value of each evaluation index is obtained. Finally, a hierarchical comprehensive cloud is established by the Improving Cloud Model, which is used to input the comprehensive expectation composed of weights to obtain the risk level of debris flow. Through statistical analysis, this paper selects Debris flow scale (X1), Basin area (X2), Drainage density (X3), Basin relative relief (X4), Main channel length (X5), Maximum rainfall (X6) as evaluation indexes. A total of 20 debris flow gullies were selected as study cases (8 debris flow gullies as model test, 12 debris flow gullies in reservoir area as example study). The comparison of the final evaluation results with those of other methods shows that the method proposed in this paper is a more reliable evaluation method for debris flow prevention and control.
本文提出了一种基于蒙特卡罗模拟和改进云模型的新的泥石流风险评估方法。该方法首先根据云模型的特点对耦合权重进行一致性检验,从而确定各评价指标的权重边界。考虑到权重的不确定特征,利用蒙特卡罗模拟在最小模糊区间内对权重进行收敛,得到各评价指标的最终权重值。最后,利用改进云模型建立分层综合云,将权重构成的综合期望输入其中,得到泥石流风险等级。通过统计分析,本文选取泥石流规模(X1)、流域面积(X2)、水系密度(X3)、流域相对高差(X4)、主沟长度(X5)、最大降雨量(X6)作为评价指标。共选取 20 个泥石流沟作为研究案例(8 个泥石流沟作为模型试验,12 个泥石流沟作为水库区实例研究)。最终评价结果与其他方法的比较表明,本文提出的方法是一种更可靠的泥石流防治评估方法。