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首页> 外文期刊>Journal of Soft Computing in Civil Engineering >Prediction of Concrete and Steel Materials Contained by Cantilever Retaining Wall by Modeling the Artificial Neural Networks
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Prediction of Concrete and Steel Materials Contained by Cantilever Retaining Wall by Modeling the Artificial Neural Networks

机译:用人工神经网络建模预测悬臂挡土墙所包含的混凝土和钢材。

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In this study, the Artificial Neural Network (ANN) application is implemented for predicting the required concrete volume and amount of the steel reinforcement within the inversed-T-shaped and stem-stepped reinforced concrete (RC) walls. For this aim, seven-different RC wall designs were approached differentiated within the wall heights and various internal friction angles of backfill materials. Each RC wall is proportionally designed and subjected to active lateral earth pressure defined with the Mononobe-Okabe approach foreseen by Turkish Specification for Building to be Built in Seismic Zones (TSC-2007)[14]. Following the stability analysis of the RC retaining walls, the structural and reinforced concrete analyses are performed according to the Turkish Standard on Requirements for Design and Construction in Reinforced Concrete Structures (TS500-2000)[15]. Input parameters such as concrete volumes, weights of the steel bars, soil and wall material properties are subjected to the ANN modeling. The prediction of the concrete volume and amount of the steel bars are achieved with the implementation of the ANN model trained with the Artificial Bee Colony (ABC) algorithm. As a result of this study, it is revealed that ANN models are useful for verifying the existing RC retaining wall designs or performing preliminary designs for the L-shaped and stem-stepped cantilever retaining walls.
机译:在这项研究中,使用了人工神经网络(ANN)应用程序来预测倒T形和阶梯状钢筋混凝土(RC)墙内所需的混凝土体积和钢筋数量。为了这个目的,采用了七种不同的RC壁设计,这些设计在壁高和回填材料的各种内部摩擦角方面有所不同。每个RC墙都是按比例设计的,并承受由Mononobe-Okabe方法确定的有效横向土压力,该方法由《土耳其要在地震带中建造的建筑物规范》(TSC-2007)[14]规定。在对钢筋混凝土挡土墙进行稳定性分析之后,根据土耳其《钢筋混凝土结构设计和建造要求》(TS500-2000)[15]进行结构和钢筋混凝土分析。输入参数,例如混凝土体积,钢筋重量,土壤和墙体材料特性均经过ANN建模。通过使用人工蜂群(ABC)算法训练的ANN模型,可以实现钢筋混凝土体积和数量的预测。这项研究的结果表明,人工神经网络模型可用于验证现有的RC挡土墙设计或对L形和杆状阶梯式悬臂挡土墙进行初步设计。

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