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Data driven models for compressive strength prediction of concrete at high temperatures

机译:高温混凝土压缩强度预测的数据驱动模型

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摘要

The use of data driven models has been shown to be useful for simulating complex engineering processes, when the only information available consists of the data of the process. In this study, four data-driven models, namely multiple linear regression, artificial neural network, adaptive neural fuzzy inference system, and K nearest neighbor models based on collection of 207 laboratory tests, are investigated for compressive strength prediction of concrete at high temperature. In addition for each model, two different sets of input variables are examined: a complete set and a parsimonious set of involved variables. The results obtained are compared with each other and also to the equations of NIST Technical Note standard and demonstrate the suitability of using the data driven models to predict the compressive strength at high temperature. In addition, the results show employing the parsimonious set of input variables is sufficient for the data driven models to make satisfactory results.
机译:当唯一可用信息包括过程的数据组成时,已示出使用数据驱动模型的使用对于模拟复杂的工程流程是有用的。在本研究中,四种数据驱动模型,即基于207实验室测试的集合的基于207个实验室测试的多个线性回归,人工神经网络,自适应神经模糊推理系统和K最近邻模型,用于高温混凝土的压缩强度预测。此外,对于每个模型,检查了两组不同的输入变量:完整的集合和一个解析的涉及变量。获得的结果与NIST技术说明标准的方程相互比较,并证明使用数据驱动模型来预测高温下的抗压强度的适用性。此外,采用ParsiMoMious输入变量的结果表明足以使数据驱动模型进行令人满意的结果。

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