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基于 RF 层析成像的回归 ML 对稻米水分含量的在线 3D 体积测量。

Inline 3D Volumetric Measurement of Moisture Content in Rice Using Regression-Based ML of RF Tomographic Imaging.

机构信息

Faculty of Electrical Engineering Technology, Universiti Malaysia Perlis (UniMAP), Arau 02600, Malaysia.

Advanced Sensor Technology, Centre of Excellence (CEASTech), Universiti Malaysia Perlis (UniMAP), Arau 02600, Malaysia.

出版信息

Sensors (Basel). 2022 Jan 5;22(1):405. doi: 10.3390/s22010405.

Abstract

The moisture content of stored rice is dependent on the surrounding and environmental factors which in turn affect the quality and economic value of the grains. Therefore, the moisture content of grains needs to be measured frequently to ensure that optimum conditions that preserve their quality are maintained. The current state of the art for moisture measurement of rice in a silo is based on grab sampling or relies on single rod sensors placed randomly into the grain. The sensors that are currently used are very localized and are, therefore, unable to provide continuous measurement of the moisture distribution in the silo. To the authors' knowledge, there is no commercially available 3D volumetric measurement system for rice moisture content in a silo. Hence, this paper presents results of work carried out using low-cost wireless devices that can be placed around the silo to measure changes in the moisture content of rice. This paper proposes a novel technique based on radio frequency tomographic imaging using low-cost wireless devices and regression-based machine learning to provide contactless non-destructive 3D volumetric moisture content distribution in stored rice grain. This proposed technique can detect multiple levels of localized moisture distributions in the silo with accuracies greater than or equal to 83.7%, depending on the size and shape of the sample under test. Unlike other approaches proposed in open literature or employed in the sector, the proposed system can be deployed to provide continuous monitoring of the moisture distribution in silos.

摘要

储存大米的水分含量取决于周围环境因素,而这些因素又会影响谷物的质量和经济价值。因此,需要频繁测量谷物的水分含量,以确保维持其质量的最佳条件。目前,筒仓中大米水分测量的最新技术是基于抓取采样,或者依赖于随机放置在谷物中的单根棒状传感器。目前使用的传感器非常局部化,因此无法提供筒仓中水分分布的连续测量。据作者所知,目前还没有商用的筒仓中大米水分含量的 3D 容积测量系统。因此,本文介绍了使用低成本无线设备进行的工作结果,这些设备可以放置在筒仓周围,以测量大米水分含量的变化。本文提出了一种基于射频层析成像的新技术,使用低成本无线设备和基于回归的机器学习,为储存的大米谷物提供非接触式无损 3D 容积水分含量分布。该技术可以检测筒仓中多个局部水分分布层,精度大于或等于 83.7%,具体取决于测试样品的大小和形状。与其他已公开文献中提出的方法或行业中采用的方法不同,所提出的系统可以部署用于提供筒仓中水分分布的连续监测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/71c0/8749697/e20c177c06aa/sensors-22-00405-g001.jpg

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