基于深度学习和矿物学模型估算再生骨料表面附着的砂浆糊状物

Andrea Bisciotti , Derek Jiang , Yu Song , Giuseppe Cruciani
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引用次数: 0

摘要

从建筑和拆除废料(C&DW)中提取的再生骨料目前在新混凝土生产中利用率较低,因为其表面普遍粘有残留的水泥浆。基于光学技术的 C&DW 分选设备可以开发并应用于工业规模,从而提高这种二次原材料的整体质量。在这项研究中,我们提出了一种基于图像分析和矿物学实验室方法的新方法,用于确定残留的附着砂浆体积。通过聚类分析,我们对图像分析确定的水泥含量相当的 C&DW 样品进行了分类。从这些 C&DW 类别中机械提取剩余的水泥浆,并使用 X 射线粉末衍射和里特维尔德细化法进行检验。为了估算附着砂浆体积和水泥浆的碳化程度,我们提出了一个基于矿物学数据的新型数学模型。为了克服与图像分析相关的瓶颈问题,我们进一步采用了深度学习模型来自动确定砂浆体积,从而实现了在实际生产中对 C&DW 的高通量筛选。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating attached mortar paste on the surface of recycled aggregates based on deep learning and mineralogical models

Recycled aggregates, obtained from construction and demolition waste (C&DW), are currently underutilized in the production of new concrete given the incidence of widespread leftover cement paste adhering to the surface. C&DW sorting facilities based on optical technology can be developed and applied on an industrial scale, improving the overall quality of this secondary raw material. In this study, we present a novel approach based on image analysis and mineralogical laboratory methods to determine the residual attached mortar volume. Through clustering analysis, we classify C&DW samples with a comparable cement content determined by the image analysis. The leftover cement paste from these C&DW classes is mechanically extracted and examined using X-ray Powder Diffraction and Rietveld refinement. To estimate the attached mortar volume and the carbonation of the cement paste, we present a novel mathematical model based on the mineralogical data. To overcome the bottleneck associate with the image analysis, we further incorporate a deep learning model to automate the determination of the mortar volume, which enables high-throughput screening of C&DW in real production.

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CiteScore
9.20
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