开发基于人工神经网络的混凝土 FRP 钢筋粘结强度预测模型

Nam Huynh Phuong, Duc Tran Le Anh, Nam Phan Hoang, Hai Nguyen Minh, Thao Phan Da
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摘要

近年来,纤维增强聚合物(FRP)钢筋因其卓越的耐腐蚀性能而受到越来越多的关注,为解决混凝土中钢筋腐蚀这一重大弊端提供了潜在的解决方案。为了在混凝土结构中广泛使用玻璃纤维增强聚合物条,确定玻璃纤维增强聚合物条与混凝土之间的粘结强度是一个至关重要的课题。本研究试图开发一个预测模型,利用来自 1010 次拉拔试验的扩展数据集来估算 FRP 钢筋在混凝土中的粘结强度。首先,研究评估了现有规范中几种粘结强度公式的适用性。随后,引入了两个预测模型,即多元线性回归模型和人工神经网络(ANN)模型,用于估算混凝土中玻璃钢条的粘结强度。结果表明,现有公式的评估值与实验值之间的相关性非常低。这是因为这些公式尚未更新,以适应玻璃钢条在不同表面处理方法和混凝土类型下的扩大使用范围。虽然多元线性回归模型的性能优于这些公式,但其准确性仍然相对较低;相比之下,ANN 的性能更优,验证集和测试集的 R^2 值均超过 0.92。研究结果突出表明,在考虑更广泛的应用时,与传统公式和线性回归模型相比,ANN 是准确预测混凝土中玻璃钢条粘结强度的可靠工具。这种评估方法为工程师在实际设计方案中使用各种形式的玻璃钢条和各种类型的混凝土提供了便捷、高精度的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of an artificial neural network based-prediction model for bond strength of FRP bars in concrete
Fiber-reinforced polymer (FRP) bars have garnered increasing attention in recent years due to their superior corrosion resistance, offering a potential solution to the significant drawback of steel corrosion in concrete. For the widespread utilization of FRP bars in concrete structures, determining the bond strength between FRP bars and concrete is a crucial topic. This study seeks to develop a prediction model to estimate the bond strength of FRP bars in concrete, utilizing an extended dataset from 1010 pull-out tests. Initially, the study evaluates the applicability of several bond strength formulas from existing codes. Subsequently, two prediction models, namely a multivariate linear regression model and an artificial neural network (ANN) model, are introduced for estimating the bond strength of FRP bars in concrete. The results indicate that the correlation between the evaluation values of existing formulas and the experimental value is very low. This is because these formulas have not yet been updated to encompass the expanded usage scopes of FRP bars with various surface processing methods and types of concrete. While the multivariate linear regression model outperforms these formulas, its accuracy is still relatively low; in contrast, the ANN demonstrates superior performance, achieving an R^2 value for both the validation and test set of more than 0.92. The findings highlight that, when considering a broader range of applications, the ANN serves as a robust tool for accurately predicting the bond strength of FRP bars in concrete, in comparison to traditional formulas and linear regression models. This assessment approach provides engineers with a convenient, high-precision tool for designs utilizing various forms of FRP bars and diverse types of concrete in practical design scenarios
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