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首页> 外文期刊>Nuclear Instruments & Methods in Physics Research >Estimation of volumetric water content during imbibition in porous building material using real time neutron radiography and artificial neural network
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Estimation of volumetric water content during imbibition in porous building material using real time neutron radiography and artificial neural network

机译:利用实时中子射线照相和人工神经网络估算多孔建筑材料吸收过程中的体积水含量

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摘要

Movement of fluids through porous media is of great significance in different sciences such as civil engineering and chemical technology. When a fluid is introduced to a porous media, the fluid starts moving and diffusing through that. In this condition, the amount of fluid in each position of the porous material is a function of the distance between the desired position and the fluid movement starting point as well as the elapsed time. In this research, a novel methodology is proposed for estimating the volumetric water content in different times and positions during the water imbibition inside the porous building materials using a combination of real time neutron radiography technique and artificial neural network (ANN). For this purpose, a brick as a porous construction sample was positioned in contact with a water container and 145 neutron radiographs were recorded during the water imbibition inside the brick. To extract the required data for training, testing and validating the ANN, a line of pixels in the center of brick's image along with the water movement direction inside the sample was considered. The calculated volumetric water content in each position of the mentioned line was used as the output of the ANN. In addition, the elapsed time and position were utilized as the two inputs of the ANN. After training, the proposed ANN model could estimate the volumetric water content in different times and positions in direction of water movement inside the brick with a mean square error (MSE) of less than 8.4x10(-4).
机译:流体通过多孔介质的运动在土木工程和化学技术等不同科学中具有重要意义。当将流体引入多孔介质时,流体开始移动并通过该介质扩散。在这种情况下,多孔材料每个位置的流体量是所需位置和流体运动起点之间的距离以及经过时间的函数。在这项研究中,提出了一种新颖的方法,通过结合实时中子射线照相技术和人工神经网络(ANN)来估计多孔建筑材料内部吸水过程中不同时间和位置的体积水含量。为此,将砖作为多孔结构样品放置在与水容器接触的位置,并在砖内部吸水期间记录了145个中子射线照相。为了提取训练,测试和验证ANN所需的数据,考虑了砖图像中心的像素线以及样品内部的水运动方向。计算出的上述各行中每个位置的体积水含量用作ANN的输出。此外,将经过的时间和位置用作ANN的两个输入。经过训练后,提出的人工神经网络模型可以估计砖块内部不同时间和位置的水分运动方向的体积水含量,均方误差(MSE)小于8.4x10(-4)。

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