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A new and robust hybrid artificial bee colony algorithm - ANN model for FRP-concrete bond strength evaluation

机译:一种新的坚固混合人工蜂菌落算法 - ANN模型用于FRP - 混凝土粘合强度评价

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摘要

The present study describes the bond strength estimation between the FRP strip and the substrate concrete using machine learning approaches. To provide a precise model, a database including 656 single and double-lap direct shear test results was compiled from the literature. Artificial neural networks (ANN) and the combination of ANN with the artificial bee colony optimization algorithm (ABC-ANN) were implemented for the model development. The concrete compressive strength, the elasticity modulus of FRP strip, FRP thickness, the width of the FRP strip, and the width of concrete block were considered as input parameters of the models. The results of the ANN and the hybrid ABC-ANN were compared with those of existing models and international procedures. It was indicated that the accuracy of the proposed models outperforms the existing models. The correlation coefficients of the ABC-ANN and ANN approaches are 0.97 and 0.93, respectively. The robustness of the models was investigated using the distribution of absolute error values. It was demonstrated that the proposed ABC-ANN model is robust and resulted in the least error values, distributed in small ranges (less than 10%), compared to ANN and other methods. Using the hybrid ABC-ANN, a straightforward formulation for bond strength evaluation was proposed.
机译:本研究描述了使用机器学习方法的FRP条带和基板混凝土之间的键合强度估计。为了提供精确的模型,从文献中编制了一个数据库,包括656个单曲单圈和双液直接剪切测试结果。为模型开发实施了人工神经网络(ANN)和具有人造蜂殖民地优化算法(ABC-ANN)的ANN的组合。混凝土抗压强度,FRP条带的弹性模量,FRP厚度,FRP条的宽度以及混凝土块的宽度被认为是模型的输入参数。与现有模型和国际手术的人进行了比较了ANN和Hybrid Abc-Ann的结果。结果表明,所提出的模型的准确性优于现有的模型。 ABC-ANN和ANN方法的相关系数分别为0.97和0.93。使用绝对误差值的分布研究模型的稳健性。据证明,与ANN等方法相比,所提出的ABC-ANN模型具有稳健性,导致误差值(小于10%)分布。使用杂交ABC-ANN,提出了一种用于粘合强度评价的直接配方。

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