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Empirical modelling of shear strength of RC deep beams by genetic programming

机译:基于遗传规划的RC深梁抗剪强度经验建模。

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This paper investigates the feasibility of using genetic programming (GP) to create an empirical model for the complicated non-linear relationship between various input parameters associated with reinforced concrete (RC) deep beams and their ultimate shear strength. GP is a relatively new form of artificial intelligence, and is based on the ideas of Darwinian theory of evolution and genetics. The size and structural complexity of the empirical model are not specified in advance, but these characteristics evolve as part of the prediction. The engineering knowledge on RC deep beams is also included in the search process through the use of appropriate mathematical functions. The model produced by GP is constructed directly from a set of experimental results available in the literature The validity of the obtained model is examined by comparing its response with the shear strength of the training and other additional datasets. The developed model is then used to study the relationships between the shear strength and different influencing parameters. The predictions obtained from GP agree well with experimental observations.
机译:本文研究了使用遗传规划(GP)创建经验模型的可行性,该模型用于与钢筋混凝土(RC)深梁相关的各种输入参数与其极限抗剪强度之间的复杂非线性关系。 GP是一种相对较新的人工智能形式,它基于达尔文进化论和遗传学理论的思想。经验模型的大小和结构复杂性没有预先指定,但是这些特征作为预测的一部分而演变。通过使用适当的数学函数,RC深梁的工程知识也包括在搜索过程中。 GP生成的模型是直接从一组文献中获得的实验结果中构建的。通过将其响应与训练和其他数据集的剪切强度进行比较,来检验所获得模型的有效性。然后将开发的模型用于研究抗剪强度与不同影响参数之间的关系。从GP获得的预测与实验观察非常吻合。

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