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首页> 外文期刊>Advances in civil engineering >Predicting Shear Capacity of FRP-Reinforced Concrete Beams without Stirrups by Artificial Neural Networks, Gene Expression Programming, and Regression Analysis
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Predicting Shear Capacity of FRP-Reinforced Concrete Beams without Stirrups by Artificial Neural Networks, Gene Expression Programming, and Regression Analysis

机译:人工神经网络,基因表达程序设计和回归分析预测无箍筋的FRP增强混凝土梁的抗剪承载力

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The shear strength prediction of fiber-reinforced polymer- (FRP-) reinforced concrete beams is one of the most complicated issues in structural engineering applications. Developing accurate and reliable prediction models is necessary and cost saving. This paper proposes three new prediction models, utilizing artificial neural networks (ANNs) and gene expression programming (GEP), as a recently developed artificial intelligent techniques, and nonlinear regression analysis (NLR) as a conventional technique. For this purpose, a large database including 269 shear test results of FRP-reinforced concrete members was collected from the literature. The performance of the proposed models is compared with a large number of available codes and previously proposed equations. The comparative statistical analysis confirmed that the ANNs, GEP, and NLR models, in sequence, showed excellent performance, great efficiency, and high level of accuracy over all other existing models. The ANNs model, and to a lower level the GEP model, showed the superiority in accuracy and efficiency, while the NLR model showed that it is simple, rational, and yet accurate. Additionally, the parametric study indicated that the ANNs model defines accurately the interaction of all parameters on shear capacity prediction and have a great ability to predict the actual response of each parameter in spite of its complexity and fluctuation nature.
机译:纤维增强聚合物(FRP-)增强混凝土梁的抗剪强度预测是结构工程应用中最复杂的问题之一。开发准确可靠的预测模型是必要的,而且可以节省成本。本文提出了三种新的预测模型,利用人工神经网络(ANN)和基因表达编程(GEP)作为最新开发的人工智能技术,以及利用非线性回归分析(NLR)作为常规技术。为此,从文献中收集了包括269个FRP增强混凝土构件的剪切试验结果的大型数据库。将所提出的模型的性能与大量可用代码和先前提出的方程进行比较。对比统计分析证实,与所有其他现有模型相比,按顺序排列的ANN,GEP和NLR模型显示出卓越的性能,出色的效率和较高的准确性。 ANNs模型和较低级别的GEP模型显示出准确性和效率上的优越性,而NLR模型显示出它简单,合理且准确。此外,参数研究表明,人工神经网络模型准确定义了所有参数在抗剪能力预测上的相互作用,并且尽管具有复杂性和波动性,但具有预测每个参数实际响应的强大能力。

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