...
首页> 外文期刊>Cement and Concrete Research >Analysis of carbonation behavior in concrete using neural network algorithm and carbonation modeling
【24h】

Analysis of carbonation behavior in concrete using neural network algorithm and carbonation modeling

机译:用神经网络算法和碳化模型分析混凝土碳化行为

获取原文
获取原文并翻译 | 示例
           

摘要

Carbonation on concrete structures in underground sites or metropolitan cities is one of the major causes of steel corrosion in RC (Reinforced Concrete) structures. For quantitative evaluation of carbonation, physico-chemo modeling for reaction with dissolved CO_2 and hydrates is necessary. Amount of hydrates and CO_2 diffusion coefficient play an important role in evaluation of carbonation behavior, however, it is difficult to obtain a various CO_2 diffusion coefficient from experiments due to limited time and cost. In this paper, a numerical technique for carbonation behavior using neural network algorithm and carbonation modeling is developed. To obtain the comparable data set of CO_2 diffusion coefficient, experimental results which were performed previously are analyzed. Mix design components such as cement content, water to cement ratio, and volume of aggregate including exposure condition of relative humidity are selected as neurons. Training of learning for neural network is carried out using back propagation algorithm. The diffusion coefficient of CO_2 from neural network are in good agreement with experimental data considering various conditions such as water to cement ratios (w/c: 0.42,0.50, and 0.58) and relative humidities (R.H.: 10 percent, 45 percent, 75 percent, and 90 percent). Furthermore, mercury intrusion porosimetry (M1P) test is also performed to evaluate the change in porosity under carbonation. Finally, the numerical technique which is based on behavior in early-aged concrete such as hydration and pore structure is developed considering CO_2 diffusion coefficient from neural network and changing effect on porosity under carbonation.
机译:地下场所或大城市中混凝土结构的碳化是RC(钢筋混凝土)结构中钢腐蚀的主要原因之一。对于碳酸化的定量评估,与溶解的CO_2和水合物反应的物理化学模型是必要的。水合物的量和CO 2扩散系数在评价碳酸化行为中起着重要的作用,但是,由于时间和成本的限制,难以从实验中获得各种CO 2扩散系数。本文研究了一种利用神经网络算法和碳化模型建立碳化行为的数值技术。为了获得可比较的CO 2扩散系数数据集,分析了先前进行的实验结果。选择诸如水泥含量,水灰比和包括相对湿度暴露条件在内的骨料体积之类的混合设计成分作为神经元。使用反向传播算法对神经网络进行学习训练。考虑到各种条件,例如水与水泥的比例(w / c:0.42、0.50和0.58)和相对湿度(RH:10%,45%,75%),来自神经网络的CO_2扩散系数与实验数据非常吻合。和90%)。此外,还进行了压汞法(M1P)测试,以评估碳化作用下孔隙率的变化。最后,考虑了神经网络中CO_2的扩散系数以及碳化作用下对孔隙度的变化影响,开发了基于早期混凝土的水化和孔结构等行为的数值技术。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号