Prediction of the Dynamic Properties of Concrete Using Artificial Neural Networks

Amjad A. Yasin
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Abstract

This study explores how dynamic characteristics of concrete, such as dynamic shear modulus, dynamic modulus of elasticity, and dynamic Poisson's ratio, affect stability and performance in civil engineering applications. Traditional testing procedures, which include the time-consuming and costly process of mixing and casting specimens, are both time-consuming and costly. The primary objective of this research is to improve efficiency by using Artificial Neural Networks (ANNs) and regression analysis to predict the dynamic properties of concrete, providing a machine-learning-based alternative to traditional experimental methodologies. A set of 72 concrete specimens was methodically built and evaluated, with compressive strengths of 50 MPa, aspect ratios ranging from 1 to 2.5, and an average density of 2400 kg/m3. An input dataset and ANN targets were built using these samples. The ANN model, which used cutting-edge deep learning techniques, went through extensive training, validation, and testing, as well as statistical regression analysis. A comparison shows that the predicted dynamic modulus of elasticity and shear modulus using both ANN and regression approaches nearly match the experimental values, with a maximum error of 5%. Despite good forecasts for the dynamic Poisson's ratio, errors of up to 20% were detected on occasion, which were attributed to sample shape variations. Doi: 10.28991/CEJ-2024-010-01-016 Full Text: PDF
利用人工神经网络预测混凝土的动态特性
本研究探讨了混凝土的动态特性(如动态剪切模量、动态弹性模量和动态泊松比)如何影响土木工程应用中的稳定性和性能。传统的测试程序包括耗时且成本高昂的混合和浇注试样过程。本研究的主要目的是利用人工神经网络(ANN)和回归分析预测混凝土的动态特性,提供一种基于机器学习的方法来替代传统的实验方法,从而提高效率。研究人员有条不紊地制作并评估了一组 72 个混凝土试件,试件的抗压强度为 50 兆帕,长宽比为 1 至 2.5,平均密度为 2400 千克/立方米。利用这些样本建立了输入数据集和 ANN 目标。ANN 模型采用了最先进的深度学习技术,经过了大量的训练、验证和测试以及统计回归分析。比较结果表明,使用 ANN 和回归方法预测的动态弹性模量和剪切模量几乎与实验值相吻合,最大误差为 5%。尽管对动态泊松比的预测良好,但有时也会发现高达 20% 的误差,这归因于样品形状的变化。Doi: 10.28991/CEJ-2024-010-016 全文:PDF
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