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Carbonation model for fly ash concrete based on artificial neural network: Development and parametric analysis

机译:基于人工神经网络的粉煤灰混凝土碳化模型:发展与参数分析

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Control and prediction of the carbonation depth in reinforced concrete structures has great relevance for construction industry, since the carbonation process is directly related to the service life and durability of these structures. One challenge in carbonation modelling is to understand the complex relation between the main parameters of the phenomenon. An Artificial Neural Network (ANN) may overcome this challenge, finding solutions to these nonlinear and complex problems. In this study, an ANN with backpropagation algorithm is used in predicting the carbonation depth of concretes that contains fly ash addition. A total of 90 ANN topologies are implemented. It was observed in the training process that networks with two hidden layers are able to generate models with determination coefficient greater than 0.8. One of them is select as the one that best fit the problem. The optimized configuration provided smallest root mean square error associated with the best determination coefficient. Besides, the parametric study shown that the parameters that had most influence on the carbonation depth in fly ash-concretes were the cement consumption, fly ash content, CO2 rate and relative humidity. Besides, results indicate that the model can be applied to estimate the lifespan of concrete structures, and may be used as simulation tool in the development of engineering projects focused on durability. (C) 2020 Elsevier Ltd. All rights reserved.
机译:钢筋混凝土结构中碳化深度的控制和预测对建筑业具有很大的相关性,因为碳酸化过程与这些结构的使用寿命和耐用性直接相关。碳酸化建模中的一个挑战是了解该现象的主要参数之间的复杂关系。人工神经网络(ANN)可能会克服这一挑战,寻找对这些非线性和复杂问题的解决方案。在该研究中,具有背部衰减算法的ANN用于预测含有粉煤灰添加的混凝土的碳酸化深度。共有90个ANN拓扑。在训练过程中观察到,具有两个隐藏层的网络能够产生具有大于0.8的确定系数的模型。其中一个是选择最适合问题的选择。优化配置提供了与最佳确定系数相关的最小根均方误差。此外,参数研究表明,对粉煤灰混凝土中的碳化深度影响最大的参数是水泥消耗,粉煤灰含量,二氧化碳速率和相对湿度。此外,结果表明该模型可以应用于估计混凝土结构的寿命,并且可以用作耐用性的工程项目开发中的仿真工具。 (c)2020 elestvier有限公司保留所有权利。

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