首页> 外文期刊>Engineering with Computers >Grey wolf optimization approach for searching critical failure surface in soil slopes
【24h】

Grey wolf optimization approach for searching critical failure surface in soil slopes

机译:灰狼优化方法,用于在土坡中搜索临界失效表面

获取原文
获取原文并翻译 | 示例
           

摘要

Detection of critical failiu-e surface and associated minimum factor of safety (F) constitutes a constrained global optimization problem during the task of slope analysis. Morgenstern-Price method is an established limit equilibrium-based technique satisfying both moment and force equilibrium of all slices in the failure mass has been used to evaluate F against slope failure. The main objective of current study is to investigate the applicability and efficiency of grey wolf optimization (GWO) in solving slope stability problem. GWO is a nature inspired metaheuristic optimization method which mimics the social inter-action between a pack of grey wolves in their endeavour to search, hunt and prey. The effectiveness of the recently developed GWO is examined by analyzing four different slope problems. Each soil slope model has been analysed for wolf pack size (NP) range 10-50 and maximum iteration count (k_(miax)) range 50-250. In effect, the number of evaluated functions (NFE) is found to lie in the range of 500-12,500. The results demonstrate that the GWO technique can detect the critical failure surface with very good accuracy. Furthermore, the statistical analysis is presented in terms of best F_b, worst F_w, mean F~-, standard deviation (SD) and % error (%E) of the optimum solutions i.e. factor of safety (F) from 10 independent runs. The effect of GWO parameters such as NP and k_(max) to obtain optimum solution are also presented. The F_b, F_w,F~- and SD for 1st slope model are (1.7295, 1.7296, 1.7295, 0.000038) and they have been obtained for maximum NFE equal to 12,500. Similarly, for 2nd and 3rd slope model, the respective values are (1.4032, 1.4038, 1.4034, 0.000209) and (1.2530, 1.2546, 1.2537, 0.000741). The discrepancy or percentage error (%E) in best F_b from optimum (F) for NFE up to 500 are found to be equal to (0.0615, 0.2531, 0.8419) for studied slope models respectively. The evaluation of safety factor F for the fourth slope model has been studied for four different combinations of earthquake loadings and pore water pressures. The values of SD for all four cases are reported for maximum NFE equal to 12,500. It is found that uncertainty in reported F reduces if higher numbers of objective function evaluations are performed. This proves the excellent performance of GWO in evaluat-ing minimum F of the slope.
机译:检测临界故障-E表面和相关的最小因子安全(F)构成斜率分析任务期间的受约束的全局优化问题。 Morgenstern-Price方法是一种既定的基于极限平衡的技术,满足失效质量所有切片的力矩和力平衡,已被用于评估F反对斜率故障。目前研究的主要目的是探讨灰狼优化(GWO)在解决坡稳定性问题方面的适用性和效率。 GWO是一种自然启发了美术型优化方法,模仿一包灰狼之间的社会间行动,努力寻找,狩猎和猎物。通过分析四个不同的斜坡问题,检查了最近开发的GWO的有效性。已经分析了每个土壤斜率模型,用于狼包尺寸(NP)范围10-50和最大迭代计数(K_(MIAX))范围为50-250。实际上,发现评估功能(NFE)的数量位于500-12,500的范围内。结果表明,GWO技术可以以非常好的准确度检测临界失效表面。此外,统计分析以最佳的F_B,最差的F_W,平均值(SD)和%误差(%e)的最佳溶液I.。还提出了GWO参数如NP和K_(MAX)获得最佳解决方案的影响。第一个斜坡模型的F_B,F_W,F〜 - 和SD(1.7295,1.7296,1.7295,0000038),并获得最大NFE等于12,500。类似地,对于第2和第3斜率模型,各个值(1.4032,1.4038,1.4034,0.00029)和(1.2530,1.2546,1.2537,0.000741)。从最高可达500的NFE最佳(F)最佳F_B的差异或百分比误差(%e)被发现为分别等于(0.0615,0.2531,0.8419),用于研究斜率模型。研究了第四斜率模型的安全系数F的评估已经研究了四种不同组合的地震载荷和孔隙水压力。报告了所有四个案例的SD值,最大NFE等于12,500。结果发现报告F中的不确定性如果执行了较高数量的客观函数评估,则减少了。这证明了GWO在评估坡度的最小F中的优异性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号