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Modeling of transfer length of prestressing strands using genetic programming and neuro-fuzzy

机译:基于遗传程序和神经模糊的预应力钢绞线传输长度建模

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摘要

In this study, the efficiency of neuro-fuzzy inference system (ANFIS) and genetic expression programming (GEP) in predicting the transfer length of prestressing strands in prestressed concrete beams was investigated. Many models suggested for the transfer length of prestressing strands usually consider one or two parameters and do not provide consistent accurate prediction. The alternative approaches such as GEP and ANFIS have been recently used to model spatially complex systems. The transfer length data from various researches have been collected to use in training and testing ANFIS and GEP models. Six basic parameters affecting the transfer length of strands were selected as input parameters. These parameters are ratio of strand cross-sectional area to concrete area, surface condition of strands, diameter of strands, percentage of debonded strands, effective prestress and concrete strength at the time of measurement. Results showed that the ANFIS and GEP models are capable of accurately predicting the transfer lengths used in the training and testing phase of the study. The GEP model results better prediction compared to ANFIS model.
机译:在这项研究中,研究了神经模糊推理系统(ANFIS)和遗传表达程序(GEP)在预测预应力混凝土梁中预应力钢绞线传输长度方面的效率。对于预应力钢绞线的传输长度建议的许多模型通常考虑一个或两个参数,并且不能提供一致的准确预测。最近已使用诸如GEP和ANFIS之类的替代方法来对空间复杂的系统进行建模。已经收集了来自各种研究的传输长度数据,以用于训练和测试ANFIS和GEP模型。选择影响股线转移长度的六个基本参数作为输入参数。这些参数是测量时的线束横截面积与混凝土面积之比,线束的表面状况,线束的直径,脱粘线束的百分比,有效预应力和混凝土强度。结果表明,ANFIS和GEP模型能够准确预测该研究的训练和测试阶段中使用的转移长度。与ANFIS模型相比,GEP模型的预测效果更好。

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