Predicting the true density of commercial biomass pellets using near-infrared hyperspectral imaging

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY Artificial Intelligence in Agriculture Pub Date : 2022-01-01 DOI:10.1016/j.aiia.2022.11.004
Lakkana Pitak , Khwantri Saengprachatanarug , Kittipong Laloon , Jetsada Posom
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引用次数: 1

Abstract

The use of biomass is increasing because it is a form of renewable energy that provides high heating value. Rapid measurements could be used to check the quality of biomass pellets during production. This research aims to apply a near-infrared (NIR) hyperspectral imaging system for the evaluation of the true density of individual biomass pellets during the production process. Real-time measurement of the true density could be beneficial for the operation settings, such as the ratio of the binding agent to the raw material, the temperature of operation, the production rate, and the mixing ratio. The true density could also be used for rough measurement of the bulk density, which is a necessary parameter in commercial production. Therefore, knowledge of the true density is required during production in order to maintain the pellet quality as well as operation conditions. A prediction model was developed using partial least squares (PLS) regression across different wavelengths selected using different spectral pre-treatment methods and variable selection methods. After model development, the performance of the models was compared. The best model for predicting the true density of individual pellets was developed with first-derivative spectra (D1) and variables selected by the genetic algorithm (GA) method, and the number of variables was reduced from 256 to 53 wavelengths. The model gave R2cal, R2val, SEC, SEP, and RPD values of 0.88, 0.89, 0.08 g/cm3, 0.07 g/cm3, and 3.04, respectively. The optimal prediction model was applied to construct distribution maps of the true density of individual biomass pellets, with the level of the predicted values displayed in colour bars. This imaging technique could be used to check visually the true density of biomass pellets during the production process for warnings to quality control equipment.

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利用近红外高光谱成像技术预测商用生物质颗粒的真实密度
生物质的使用正在增加,因为它是一种可再生能源,提供高热值。在生产过程中,可以使用快速测量来检查生物质颗粒的质量。本研究旨在应用近红外(NIR)高光谱成像系统来评估生产过程中单个生物质颗粒的真实密度。实时测量真实密度有助于操作设置,例如粘合剂与原料的比例、操作温度、生产速度和混合比例。真密度也可以用来粗略测量堆积密度,这是商业生产中必要的参数。因此,在生产过程中,为了保持颗粒质量和操作条件,需要了解真实密度。利用偏最小二乘(PLS)回归建立了不同波长的预测模型,采用不同的光谱预处理方法和变量选择方法。模型开发完成后,对模型的性能进行了比较。利用一阶导数光谱(D1)和遗传算法(GA)选择的变量建立了预测颗粒真实密度的最佳模型,并将变量的波长从256个减少到53个。模型的R2cal、R2val、SEC、SEP和RPD值分别为0.88、0.89、0.08 g/cm3、0.07 g/cm3和3.04。应用最优预测模型构建单个生物质颗粒真实密度分布图,预测值的水平以彩色条显示。这种成像技术可用于在生产过程中直观地检查生物质颗粒的真实密度,为质量控制设备提供警告。
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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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