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BP Neural Network Improved by Sparrow Search Algorithm in Predicting Debonding Strain of FRP-Strengthened RC Beams

机译:BP神经网络通过Sparrow搜索算法改进了FRP加强RC梁的剥离应变

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To prevent debonding failure of FRP- (fiber reinforced polymer-) strengthened RC (reinforced concrete) beams, most codes proposed models for debonding strain limitation of FRP reinforcements. However, only a few factors that affect debonding failure are considered in the models. The experimental results show that these models cannot accurately evaluate debonding strain and have a large variability. In order to improve the accuracy of predicting the debonding strain of FRP-strengthened RC beams, a BP neural network model was developed based on the sparrow search algorithm (SSA). To predict the debonding strain of FRP reinforcements, the established neural network model was trained and simulated through experimental data. The results show that the coefficient of variation of the present SSA-BP neural network model is 13%. The main factors affecting debonding strain are the longitudinal reinforcement ratio, stirrup reinforcement ratio, and concrete strength, which are not considered in the code models. The present model has better prediction accuracy and more robustness than the traditional BP neural network and the code models.
机译:为了防止FRP-(纤维增强聚合物)强化RC(钢筋混凝土)梁的剥离失效,大多数代码提出了用于FRP增强剂的剥离应变限制的模型。但是,在模型中只考虑了影响剥离失败的几个因素。实验结果表明,这些模型不能准确地评估剥离菌株并具有大的可变性。为了提高预测FRP加强RC光束的剥离应变的准确性,基于Sparrow搜索算法(SSA)开发了BP神经网络模型。为了预测FRP增强件的剥离应变,通过实验数据培训和模拟所建立的神经网络模型。结果表明,目前SSA-BP神经网络模型的变异系数为13%。影响剥离菌株的主要因素是纵向加强比,搅拌率和混凝土强度,在代码模型中不考虑。本模型具有比传统的BP神经网络和代码模型更好的预测准确性和更具鲁棒性。

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