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Response prediction of laced steel-concrete composite beams using machine learning algorithms

机译:机器学习算法对钢骨混凝土组合梁的响应预测

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摘要

This paper demonstrates the potential application of machine learning algorithms for approximate prediction of the load and deflection capacities of the novel type of Laced Steel Concrete-Composite(1) (LSCC) beams proposed by Anandavalli et al (Engineering Structures 2012). Initially, global and local responses measured on LSCC beam specimen min an experiment are used to validate nonlinear FE model of the LSCC beams The data for the machine learning algorithms is then generated using validated FE model for a range of values of the identified sensitive parameters. The performance of four well-known machine learning algorithms, viz, Support Vector Regression (SVR), Minimax Probability Machine Regression (MPMR), Relevance Vector Machine (RVM) and Multigene Genetic Programing (MGGP) for the approximate estimation of the load and deflection capacities are compared in terms of well-defined error indices. Through relative comparison of the estimated values, it is demonstrated that the algorithms explored in the present study provide a good alternative to expensive experimental testing and sophisticated numerical simulation of the response of LSCC beams. The load carrying and displacement capacity of the LSCC was predicted well by MGGP and MPMR, respectively.
机译:本文演示了机器学习算法在Anandavalli等人(Engineering Structures 2012)提出的新型钢-混凝土组合(1)(LSCC)新型梁的荷载和挠度预测中的潜在应用。最初,在实验中使用LSCC光束样本测量的整体和局部响应用于验证LSCC光束的非线性有限元模型。然后,使用经验证的有限元模型对确定的敏感参数值范围生成用于机器学习算法的数据。四种著名的机器学习算法的性能,即支持向量回归(SVR),最小极大概率机器回归(MPMR),相关向量机(RVM)和多基因遗传编程(MGGP),用于近似估计载荷和挠度根据定义明确的错误指数比较容量。通过估计值的相对比较,可以证明本研究中探索的算法为昂贵的实验测试和LSCC光束响应的复杂数值模拟提供了很好的选择。 MGGP和MPMR分别很好地预测了LSCC的承载能力和位移能力。

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