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Prediction of tensile capacity of single adhesive anchors using neural networks

机译:使用神经网络预测单个胶粘锚的拉伸能力

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摘要

The tensile capacity of single adhesive anchors depends on many design parameters. Some of these parameters, such as chemical resin type, resin system and anchor bolt type are difficult to quantify in design models. Due to the complexity of developing rational models for estimating the tensile capacity of such type of anchors, most specifications recommend that the performance of these anchors be determined by product-specific and condition-specific testing. In this study, an attempt to predict the tensile capacity of single adhesive anchors using artificial neural networks (ANNs) is presented. A multilayered feed-forward neural network trained with the back-propagation algorithm is constructed using 7 design variables as network inputs and the uniform bond strength of adhesive anchors as the only output. The ANN was trained and verified using the comprehensive worldwide adhesive anchor database of actual tests compiled by the ACI Committee 355. Different modes of failure observed in experiments but bolt breakage are covered by the trained ANN. The predictions obtained from the trained ANN showed that the tensile capacity of adhesive anchors is linearly proportional to the embedment depth as suggested by the uniform bond stress model. The effect of the concrete compres-sive strength on the tensile capacity of adhesive anchors is product dependent. The results indicate that ANNs are a useful technique for predicting the tensile capacity of adhesive anchors.
机译:单个粘合锚的拉伸能力取决于许多设计参数。其中一些参数,例如化学树脂类型,树脂体系和地脚螺栓类型,很难在设计模型中量化。由于开发用于估算此类锚固件抗拉能力的合理模型的复杂性,大多数规范建议通过特定于产品和针对特定条件的测试来确定这些锚固件的性能。在这项研究中,尝试使用人工神经网络(ANN)预测单个粘合剂锚的拉伸能力。使用7个设计变量作为网络输入,并使用粘合剂锚的均匀粘结强度作为唯一输出,构造了使用反向传播算法训练的多层前馈神经网络。使用由ACI委员会355汇编的全面的全球粘合剂实际测试数据库,对ANN进行了培训和验证。受过训练的ANN涵盖了在实验中观察到的各种失败模式,但螺栓断裂却涵盖了各种失败模式。从受过训练的人工神经网络获得的预测表明,如均匀粘结应力模型所建议的,粘合剂锚的拉伸能力与嵌入深度成线性比例。混凝土抗压强度对粘结锚的抗拉能力的影响取决于产品。结果表明,人工神经网络是一种用于预测胶粘锚的拉伸能力的有用技术。

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