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Prediction of Load-Carrying Capacity in Steel Shear Wall with Opening Using Artificial Neural Network

机译:人工神经网络在开孔钢剪力墙承载力预测中的应用

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The effects of different parameters on steel plate shear wall (SPSW) are investigated. The studied parameters are thickness of plate, location of the opening, thickness of diagonal stiffeners, and thickness of circular stiffener. Load-carrying capacity of the SPSW is studied under static load using nonlinear geometrical and material analysis in ABAQUS and the obtained simulation results are verified. An artificial neural network (ANN) is proposed to model the effects of these parameters. According to the results the circular stiffener has more effect compared with the diagonal stiffeners. However, the thickness of the plate has the most significant effect on the SPSW behavior. The results show that the best place for the opening location is the center of SPSW. Multilayer perceptron (MLP) neural network was used to predict the maximum load in SPSW with opening. The predicted maximum load values using the proposed MLP model were compared with the simulated validated data. The obtained results show that the proposed ANN model has achieved good agreement with the validated simulated data, with correlation coefficient of more than 0.9975. Therefore, the proposed model is useful, reliable, fast, and cheap tools to predict the maximum load in SPSW.
机译:研究了不同参数对钢板剪力墙(SPSW)的影响。研究的参数是板的厚度,开口的位置,对角加劲肋的厚度和圆形加劲肋的厚度。利用ABAQUS中的非线性几何和材料分析研究了静载下SPSW的承载能力,并验证了仿真结果。提出了一种人工神经网络(ANN)对这些参数的影响进行建模。根据结果​​,与对角加强筋相比,圆形加强筋的作用更大。但是,板的厚度对SPSW行为的影响最大。结果表明,开放位置的最佳位置是SPSW的中心。多层感知器(MLP)神经网络用于预测SPSW打开时的最大负载。使用建议的MLP模型预测的最大负载值与模拟的验证数据进行了比较。结果表明,所建立的人工神经网络模型与验证的仿真数据吻合良好,相关系数大于0.9975。因此,提出的模型是预测SPSW中最大负载的有用,可靠,快速且便宜的工具。

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