一个简单快速的基于matlab的粒度分布分析工具

Q4 Engineering
Jesus D. Ortega, I. Vazquez, P. Vorobieff, C. Ho
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引用次数: 2

摘要

粒度分布是颗粒样品最重要的物理性质之一。估计几何粒度分布的传统粒度方法采用筛子分析(或级配试验),该方法需要通过一系列筛子过滤颗粒,并测量每个筛子上剩余的重量来估计数加权粒度分布。然而,这两个量只有在粒子是完美的球形和圆形时才具有相同的值。另一方面,像Malvern粒度分析仪这样的粒度分析仪,使用激光诊断来测量粒度,可能是一笔巨大的投资。另外,成像技术可以通过将参考尺寸缩放到像素尺寸来估计这些颗粒的大小,而像素尺寸又用于估计可见颗粒的大小。这项工作的重点是提出一种简单的方法,使用单反相机和发光的LED面板来产生足够的对比度。利用相机和镜头的属性,可以根据相机相对于目标的安装距离获得任何图像的比例或尺寸。在MATLAB中开发了一种分析工具,根据同一图像文件中嵌入的规定相机和镜头属性,用户只需输入相机安装距离,即可对图像进行自动处理。到目前为止,当比较使用ImageJ成像工具和筛选分析的测量结果时,结果显示出积极的一致性。未来的测试将分析不同的颗粒大小和类型,并使用马尔文粒度分析仪来证实结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A simple and fast matlab-based particle size distribution analysis tool
Particle size distribution is one of the most important physical properties of a particulate sample. Traditional particle-sizing methods to estimate a geometrical particle size distribution employ a sieve analysis (or gradation test), which entails filtering the particles through a series of sieves and measuring the weight remaining on each sieve to estimate the number-weighted particle size distribution. However, these two quantities have the same value only if particles are perfectly spherical and round. On the other hand, a particle sizer such as the Malvern particle size analyzer, which uses laser diagnostics to measure the particle sizes, can be a hefty investment. Alternatively, imaging techniques can be applied to estimate the size of these particles by scaling a reference dimension to the pixel size, which in turn is used to estimate the size of the visible particles. The focus of this work is to present a simple methodology using a DSLR camera and an illuminated LED panel to generate enough contrast. Using the camera and lens properties, the scale, or size, of any image can be obtained based on the mounting distance of the camera with respect to the target. An analysis tool was developed in MATLAB where the images are processed automatically based on the prescribed camera and lens properties embedded within the same image file and requiring the user to only input the mounting distance of the camera. So far, results show a positive agreement when comparing to measurements using ImageJ imaging tools and a sieve analysis. Future tests will analyze different particle sizes and types, as well as using a Malvern particle size analyzer to corroborate the results.
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来源期刊
CiteScore
1.10
自引率
0.00%
发文量
24
审稿时长
33 weeks
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