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Service life prediction of fly ash concrete using an artificial neural network

机译:使用人工神经网络进行粉煤灰混凝土的使用寿命预测

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摘要

Carbonation is one of the most aggressive phenomena affecting reinforced concrete structures and causing their degradation over time. Once reinforcement is altered by carbonation, the structure will no longer fulfill service requirements. For this purpose, the present work estimates the lifetime of fly ash concrete by developing a carbonation depth prediction model that uses an artificial neural network technique. A collection of 300 data points was made from experimental results available in the published literature. Backpropagation training of a three-layer perceptron was selected for the calculation of weights and biases of the network to reach the desired performance. Six parameters affecting carbonation were used as input neurons: binder content, fly ash substitution rate, water/binder ratio, CO2 concentration, relative humidity, and concrete age. Moreover, experimental validation carried out for the developed model shows that the artificial neural network has strong potential as a feasible tool to accurately predict the carbonation depth of fly ash concrete. Finally, a mathematical formula is proposed that can be used to successfully estimate the service life of fly ash concrete.
机译:碳化是影响钢筋混凝土结构的最具侵略性现象之一,并随着时间的推移导致其降解。一旦通过碳化改变了钢筋,该结构将不再满足服务要求。为此目的,目前的工作通过开发使用人工神经网络技术的碳酸化深度预测模型来估计飞灰混凝土的寿命。 300个数据点的集合由公开文献中提供的实验结果进行。选择三层Perceptron的BackPropagation训练用于计算网络的权重和偏差以达到所需的性能。影响碳酸化的六个参数用作输入神经元:粘合剂含量,粉煤灰取代率,水/粘合剂比,CO2浓度,相对湿度和具体年龄。此外,开发模型的实验验证表明,人工神经网络具有强大的潜力作为可行的工具,可以准确地预测粉煤灰混凝土的碳酸化深度。最后,提出了一种可以用于成功估计粉煤灰混凝土的使用寿命的数学公式。

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