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Optimum seismic design of unbonded post-tensioned precast concrete walls using ANN

机译:基于ANN的无粘结后张预应力混凝土墙的最佳抗震设计

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Precast Seismic Structural Systems (PRESSS) provided an iterative procedure for obtaining optimum design of unbonded post-tensioned coupled precast concrete wall systems. Although PRESSS procedure is effective, however, it is lengthy and laborious. The purpose of this research is to employ Artificial Neural Network (ANN) to predict the optimum design parameters for such wall systems while avoiding the demanding iterative process. The developed ANN model is very accurate in predicting the non-dimensional optimum design parameters related to post-tensioning reinforcement area, yield force of shear connectors and ratio of moment resisted by shear connectors to the design moment. The Mean Absolute Percent Error (MAPE) for the test data for these design parameters is around % 1 and the correlation coefficient is almost equal to 1.0. The developed ANN model is then used to study the effect of different design parameters on wall behavior. It is observed that the design moment and the concrete strength have the most influence on the wall behavior as compared to other parameters. Several design examples were presented to demonstrate the accuracy and effectiveness of the ANN model.
机译:预制抗震结构系统(PRESSS)提供了一个迭代过程,可以使无粘结后张预应力混凝土预制墙系统获得最佳设计。尽管PRESSS程序是有效的,但是它费时又费力。这项研究的目的是利用人工神经网络(ANN)来预测此类墙体系统的最佳设计参数,同时避免进行繁琐的迭代过程。所开发的ANN模型在预测与后张钢筋区域,剪力连接器的屈服力以及剪力连接器抵抗的弯矩与设计弯矩之比有关的无量纲最佳设计参数方面非常准确。这些设计参数的测试数据的平均绝对百分比误差(MAPE)约为%1,并且相关系数几乎等于1.0。然后,使用已开发的ANN模型来研究不同设计参数对墙体行为的影响。可以看出,与其他参数相比,设计力矩和混凝土强度对墙体性能的影响最大。提出了几个设计实例,以证明ANN模型的准确性和有效性。

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