In earthquake-prone zones, the seismic performance of reinforced concrete cantilever (RCC) retaining walls is significant. In this study, the seismic performance was investigated using horizontal and vertical pseudo-static coefficients. To tackle RCC weights and forces resulting from these earth pressures, 26 constraints for structural strengths and geotechnical stability along with 12 geometric variables are associated with each design. These constraints and design variables form a constraint optimization problem with a twelve-dimensional solution space. To conduct effective search and produce sustainable, economical, lightweight RCC designs robust against earthquake hazards, a novel adaptive fuzzy-based metaheuristic algorithm is applied. The proposed method divides the search space to sub-regions and establishes exploration, information sharing, and exploitation search capabilities based on its novel search components. Further, fuzzy inference systems were employed to address parameterization and computational cost evaluation issues. It was found that the proposed algorithm can achieve low-cost, low-weight, and low CO2 emission RCC designs under nine seismic conditions in comparison with several classical and best-performing design optimizers.
翻译:在地震易发区,加固混凝土(RCC)固凝岩壁的地震性能十分显著,在这项研究中,采用横向和垂直假静态系数对地震性能进行了调查。为了应对由这些地球压力造成的RCC重量和力量,每个设计都与结构强力和地质技术稳定性的26项限制以及12个几何变量有关。这些限制和设计变量形成一个12维解决方案空间的限制优化问题。为了进行有效的搜索和生产可持续、经济、轻量的RCC设计以抵御地震危害,采用了一种新的基于适应性的模糊计量算法。拟议方法将搜索空间划分为次区域,并根据其新的搜索组成部分建立勘探、信息共享和利用搜索能力。此外,还采用了模糊的推论系统来解决参数化和计算成本评估问题。发现,与几个经典和最佳设计优化器相比,拟议的算法可以在9个地震条件下实现低成本、低重量和低CO2排放的RCC设计。