预测 FRP 加固 RC 梁挠曲行为的机器学习模型

Nasih Habeeb Askander
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摘要

本研究的目的是通过探索应用机器学习来预测纤维增强聚合物(FRP)加固钢筋混凝土梁的抗弯行为,从而克服当前设计建议的局限性。尽管 FRP 复合材料已经彻底改变了结构加固,但要精确预测弯矩可能仍具有挑战性。本研究利用人工神经网络(ANN)模型,结合计算技术和统计分析,填补了理论和实验研究的空白。它包括收集数据、进行全面的文献综述以及开发三种模型:人工神经网络 (ANN)、非线性回归 (NLR) 和线性回归 (LR)。尽管有其他模型,但 ANN 模型因其卓越的性能和准确的预测而脱颖而出。了解材料特性、玻璃钢属性和梁尺寸对于预测抗弯强度至关重要。本研究中最重要的参数是梁的总深度(h),其次是底部抗弯加固的变化(ρ s)。此外,FRP 比率(ρ f)和梁宽(b)都被认为是影响 FRP 加固梁抗弯能力的重要属性。ANN 模型可以预测极限力矩(M u),误差范围在 -20% 到 +15% 之间,这表明在加固方法优化方面取得了重大进展。这一发展可以减少施工过程中昂贵的实验测试要求,从而提高结构工程程序的预测能力。此外,利用该模型(特别是 ANN)设计采用玻璃钢的抗弯加固 RC 梁也是可行的,而无需进行试验。
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Machine Learning Models for Predicting Flexural Behavior of FRP-Strengthened RC Beams
This study's objective is to overcome limitations in current design recommendations by exploring the application of machine learning to predict the flexural behavior of fiber-reinforced polymer (FRP)-strengthened reinforced concrete beams. Although FRP composites have completely changed structural strengthening, it might be challenging to predict bending moments with precision. This work fills the theoretical and experimental findings gaps by utilizing Artificial Neural Network (ANN) models in conjunction with computational techniques and statistical analysis. It includes gathering data, conducting a thorough literature review, and developing three models: Artificial neural network (ANN), Non-linear Regression (NLR), and Linear Regression (LR). Despite other models, the ANN model stands out for its superior performance and accurate predictions. Understanding material characteristics, FRP properties, and beam dimensions is critical in predicting flexural strength. The most significant parameter studied in this research is the overall depth of the beam (h), followed by the variation in bottom flexural reinforcement ( ρ s ). Additionally, the FRP ratio ( ρ f ) and beam width ( b ), which are both regarded as significant attributes, influence the flexural capacity of FRP-strengthened beams. The ultimate moment (M u ) may be predicted by the ANN model with an error range of -20% to +15%, indicating a significant advancement in strengthening approach optimization. This development could reduce the requirement for expensive experimental testing during construction, thereby enhancing the predictive capacity of structural engineering procedures. Furthermore, the design of flexurally strengthened RC beams with FRP may be made possible by depending on this model, specifically the ANN, without the need for experimental effort.
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