Determination of Moisture Content in Concrete Aggregates using Machine Learning algorithms and Hyperspectral Imaging

M. Delgado, Edson Effio, Ney Farfán, W. Ipanaqué, J. Soto
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引用次数: 2

Abstract

The quantification of moisture content in various economic areas and in different industrial processes has been a parameter investigated over many years because it serves to estimate the quality, durability and other important parameters at commercial and environmental level. This paper presents a summary of the advancement obtained in recent years in moisture measurement techniques, as well as a new classification of the most representative methods, as mentioned in research and scientific articles. The applications of traditional direct techniques, such as the Karl Fischer titration or the thermogravimetric method are discussed, as well as approaches that use NIR image processing, neural networks, or microwaves, among others. Environmental applications such as soil moisture measurement using radiometry and prediction algorithms are reviewed as well. Furthermore, the most prominent methods are analysed in detail, describing the way they are performed, their advantages and disadvantages, the most relevant applications and the main challenges that should be investigated further.
利用机器学习算法和高光谱成像测定混凝土骨料中的水分含量
多年来,各种经济领域和不同工业过程中水分含量的量化一直是一个研究参数,因为它有助于估计商业和环境水平上的质量、耐久性和其他重要参数。本文综述了近年来在水分测量技术方面取得的进展,并对研究和科学文章中提到的最具代表性的方法进行了新的分类。讨论了传统直接技术的应用,如卡尔菲舍尔滴定法或热重法,以及使用近红外图像处理、神经网络或微波等方法。环境应用,如土壤湿度测量使用辐射测量和预测算法进行了审查。此外,详细分析了最突出的方法,描述了它们的执行方式,它们的优点和缺点,最相关的应用以及应该进一步研究的主要挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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