CFRP板弯钢筋混凝土梁建模智能预测系统

I. Metwally
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引用次数: 2

摘要

摘要在过去的几年中,进行了大量的试验试验,以确定采用外粘结碳纤维增强聚合物(CFRP)加固的钢筋混凝土(RC)梁的极限强度。大多数抗弯加固的设计建议都是基于与特定结构相对应的实验数据的回归分析,这使得很难捕捉到所涉及参数之间的真实相互关系。为了避免这一问题,本文提出了一种基于人工神经网络(ANN)的智能预测系统来预测用该方法加固的混凝土梁的抗弯承载力。利用以往试验数据,建立了CFRP加固RC梁受弯破坏的人工神经网络模型。14个输入参数包括CFRP性能、梁几何性能和配筋性能;相应的输出为极限承载能力。本文提出的人工神经网络模型考虑了现有设计规范中没有综合考虑的这些参数的影响,以达到更可靠的设计目的。本文简要回顾了著名的美国建筑规范(ACI 440.2R-08)关于FRP复合材料加固钢筋混凝土梁的规定。采用相同的试验数据,用比较的方法检验了规范对加固梁抗弯承载力预测的准确性。研究表明,人工神经网络模型能较好地预测钢筋混凝土加固梁的极限抗弯强度。此外,研究表明,人工神经网络模型比aci440提供的设计公式更能预测frp加固梁的抗弯强度
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Intelligent Predicting System for Modeling of Flexurally – Strengthened Reinforced Concrete Beams with CFRP Laminates
Abstract In the last years, a great number of experimental tests have been performed to determine the ultimate strength of reinforced concrete (RC) beams retrofitted in flexure by means of externally bonded carbon fiber-reinforced polymers (CFRP). Most of design proposals for flexural strengthening are based on a regression analysis from experimental data corresponding to specific configurations which makes it very difficult to capture the real interrelation among the involved parameters. To avoid this, an intelligent predicting system such as artificial neural network (ANN) has been developed to predict the flexural capacity of concrete beams reinforced with this method. An artificial neural network model was developed using past experimental data on flexural failure of RC beams strengthened by CFRP laminates. Fourteen input parameters cover the CFRP properties, beam geometrical properties and reinforcement properties; the corresponding output is the ultimate load capacity. The proposed ANN model considers the effect of these parameters which are not generally account together in the current existing design codes with the purpose of reaching more reliable designs. This paper presents a short review of the well-known American building code provisions (ACI 440.2R-08) for the flexural strengthening of RC beams using FRP laminates. The accuracy of the code in predicting the flexural capacity of strengthened beams was also examined with comparable way by using same test data. The study shows that the ANN model gives reasonable predictions of the ultimate flexural strength of the strengthened RC beams. Moreover, the study concludes that the ANN model predicts the flexural strength of FRPstrengthened beams better than the design formulas provided by ACI 440
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