非线性自回归外生人工神经网络预测屈曲约束支撑力

Ibrahim Choudhary, Khaled Assaleh, Mohammad AlHamaydeh
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引用次数: 9

摘要

本文提出了一种新的屈曲约束支撑(brb)非线性动力行为建模方法。该方法基于两种人工神经网络结构的结合,即非线性自回归外生神经网络(NARX)和前馈反馈传播神经网络(FFBP)。该模型根据支撑挠度及其变化历史和支撑力变化历史预测(输出)某一时刻的支撑力。用于模型训练和测试的数据来源于4个BRB试件的实验测试。提出的模型在一个样本的数据上进行训练,同时对其余样本进行测试,以证明其学习和泛化能力。经验选择各种网络参数的最优值,以获得最佳的网络性能。结果表明,对峰值响应(最大拉伸/压缩力)的预测误差在±5%的置信区间内。
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Nonlinear AutoRegressive eXogenous Artificial Neural Networks for predicting Buckling restrained braces force
This paper proposes a novel approach for modeling the nonlinear dynamic behavior of Buckling-Restrained Braces (BRBs). The proposed approach is based on a combination of two architectures of Artificial Neural Networks (ANN) namely, Nonlinear AutoRegressive eXogenous (NARX) ANN and feed forward back propagation (FFBP) ANN. The proposed model predicts (outputs) the brace force at a certain time from the brace deflection and its history and the history of the brace force. The data used in training and testing of the model is acquired from the experimental testing of four BRB specimens. The proposed model is trained on data from one specimen while tested against the rest to demonstrate its learning and generalization capability. Optimum values for various network parameters are selected empirically to obtain the best network performance. The results show that the prediction error for the peak response (maximum tensile/compressive force) lies within ±5% confidence interval for all cycles.
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