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Artificial Neural Network Model for Predicting Ultimate Tensile Capacity of Adhesive Anchors

机译:人工神经网络模型预测胶粘锚的极限拉伸强度

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摘要

To predict the tensile capacity of adhesive anchors, a multilayered feed-forward neural network trained with the back-propagation algorithm is constructed. The ANN model have 5 inputs, including the compressive strength of concrete, tensile strength of concrete, anchor diameter, hole diameter, embedment of anchors, and ultimate load. The predictions obtained from the (rained ANN show a good agreement with the experiments. Meanwhile, the predicted ultimate tensile capacity of anchors is close to the one calculated from the strength formula of the combined cone-bond failure model.
机译:为了预测粘合剂锚的拉伸能力,构建了使用反向传播算法训练的多层前馈神经网络。 ANN模型有5个输入,包括混凝土的抗压强度,混凝土的抗拉强度,锚直径,孔直径,锚的埋入和极限载荷。从(受雨淋的人工神经网络得出的预测结果与实验结果吻合良好。)同时,预测的锚固极限抗拉能力接近于根据组合的圆锥粘结破坏模型的强度公式计算出的极限抗拉能力。

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