利用基因表达编程提取水泥微观结构发育的三维元胞自动机

Zhifeng Liang, Bo Yang, Lin Wang, Xiaoqian Zhang, Nana He, A. Abraham
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引用次数: 1

摘要

本文建立了用于硅酸盐水泥微观结构发展模拟的三维CA模型。采用基因表达编程(Gene Expression Programming, GEP)算法作为学习算法,从水化反应引起的微观结构发展特征数据中反向演化出过渡规则。特征数据是通过微计算机断层扫描(Micro - computer Tomography, Micro - ct)技术获取的基于水泥实处理的8位灰度图像提取出来的。从初始微ct图像出发,利用GEP发现的CA规则构建28天水泥微观结构演化图像。实验结果表明,该模型与GEP设计的CA规则相比,模型预测与实验水化程度的一致性较高。此外,当水灰比和化学成分发生变化时,该模型仍具有良好的泛化能力。
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Extracting three-dimensional Cellular Automaton for cement microstructure development using Gene Expression Programming
A three-dimensional CA model for the simulation of Portland cement microstructure development has been developed in this paper. The Gene Expression Programming (GEP) algorithm is employed as the learning algorithm to evolve the transition rule reversely from the microstructure development characteristic data due to hydration reactions. The characteristic data is extracted from 8-bit gray images that based on the processing of real cement acquired by Micro Computed Tomography (micro-CT) technology. Starting with initial micro-CT image, cement microstructure evolution images of 28 days is constructed through CA rule discovered by GEP. The experimental results show that this model with the CA rule designed by GEP has higher agreement between the model predictions and experimental measurements for degree of hydration than other models. Furthermore, this model still has good generalization ability when changing the water-cement ratio and chemical composition.
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