A Novel Method for Optimizing Parameters influencing the Bearing Capacity of Geosynthetic Reinforced Sand Using RSM, ANN, and Multi-objective Genetic Algorithm

IF 0.7 Q4 MECHANICS Studia Geotechnica et Mechanica Pub Date : 2023-05-31 DOI:10.2478/sgem-2023-0006
Brahim Lafifi, A. Rouaiguia, E. Soltani
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引用次数: 1

Abstract

Abstract In this study, a novel method is proposed to optimize the reinforced parameters influencing the bearing capacity of a shallow square foundation resting on sandy soil reinforced with geosynthetic. The parameters to be optimized are reinforcement length (L), the number of reinforcement layers (N), the depth of the topmost layer of geosynthetic (U), and the vertical distance between two reinforcement layers (X). To achieve this objective, 25 laboratory small-scale model tests were conducted on reinforced sand. This laboratory-scale model has used two geosynthetics as reinforcement materials and one sandy soil. Firstly, the effect of reinforcement parameters on the bearing load was investigated using the analysis of variance (ANOVA). Both response surface methodology (RSM) and artificial neural networks (ANN) tools were applied and compared to model bearing capacity. Finally, the multiobjective genetic algorithm (MOGA) coupled with RSM and ANN models was used to solve multi objective optimization problems. The design of bearing capacity is considered a multi-objective optimization problem. In this regard, the two conflicting objectives are the need to maximize bearing capacity and minimize the cost. According to the obtained results, an informed decision regarding the design of the bearing capacity of reinforced sand is reached.
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基于RSM、ANN和多目标遗传算法优化土工合成砂承载力参数的新方法
摘要在本研究中,提出了一种新的方法来优化影响土工合成材料加固砂土上浅方形地基承载力的加固参数。要优化的参数是钢筋长度(L)、钢筋层数(N)、土工合成材料最顶层的深度(U)和两个钢筋层之间的垂直距离(X)。为了实现这一目标,对加筋砂进行了25次实验室小规模模型试验。该实验室规模的模型使用了两种土工合成材料作为加固材料和一种砂土。首先,采用方差分析法研究了配筋参数对承载力的影响。应用响应面方法(RSM)和人工神经网络(ANN)工具,并与模型承载力进行了比较。最后,将多目标遗传算法(MOGA)与RSM和ANN模型相结合,用于求解多目标优化问题。承载力设计是一个多目标优化问题。在这方面,两个相互冲突的目标是需要最大限度地提高承载能力和最大限度地降低成本。根据所得结果,对加筋砂的承载力设计做出了明智的决定。
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来源期刊
CiteScore
1.30
自引率
16.70%
发文量
20
审稿时长
16 weeks
期刊介绍: An international journal ‘Studia Geotechnica et Mechanica’ covers new developments in the broad areas of geomechanics as well as structural mechanics. The journal welcomes contributions dealing with original theoretical, numerical as well as experimental work. The following topics are of special interest: Constitutive relations for geomaterials (soils, rocks, concrete, etc.) Modeling of mechanical behaviour of heterogeneous materials at different scales Analysis of coupled thermo-hydro-chemo-mechanical problems Modeling of instabilities and localized deformation Experimental investigations of material properties at different scales Numerical algorithms: formulation and performance Application of numerical techniques to analysis of problems involving foundations, underground structures, slopes and embankment Risk and reliability analysis Analysis of concrete and masonry structures Modeling of case histories
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