Environmental assessment of soluble solids contents and pH of orange using hyperspectral method and machine learning

IF 6.3 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2024-08-27 DOI:10.1016/j.atech.2024.100544
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Abstract

Progress in non-destructive methods to detect the characteristics of fruits is a new and attractive process for researchers and specialists in this field. On the other hand, these researchers move toward identifying their impacts on their surroundings in line with diagnostic efficiency. One of these essential impacts is the environmental impact of the non-destructive detection process of fruits. Navel oranges are one of the most popular and widely consumed fruits, whose maturity indices such as soluble solids contents (SSC) values and acidity are considered as parameters in determining the quality of this product. This study used the hyperspectral method in the vis-NIR range to evaluate and measure navel oranges' SSC and acidity values. In the following, by applying the life cycle assessment method, the environmental impacts of measuring and evaluating these two parameters of the characteristics of navel oranges were investigated. The Impact2002+ method was used to evaluate the impact of the life cycle list. Based on the findings, the environmental impacts of SSC measurement are about 40, 42, 20, and 18 % higher than those of the environmental impacts of pH measurement from the point of view of endpoint impacts for Human Health, Ecosystem quality, climate change, and resources, respectively. The random forest modeling results showed a suitable and acceptable correlation and relationship (over 90 %) between the wavelengths selected from the feature selection stage and environmental impacts.

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利用高光谱方法和机器学习对橙子的可溶性固形物含量和 pH 值进行环境评估
对于该领域的研究人员和专家来说,非破坏性水果特征检测方法的进步是一个新的和有吸引力的过程。另一方面,这些研究人员也在根据诊断效率确定其对周围环境的影响。其中一个重要影响就是水果无损检测过程对环境的影响。脐橙是最受欢迎和最广泛食用的水果之一,其成熟度指数,如可溶性固形物含量(SSC)值和酸度,被认为是决定该产品品质的参数。本研究采用可见光-近红外范围的高光谱方法来评估和测量脐橙的可溶性固形物含量和酸度值。随后,通过应用生命周期评估方法,研究了测量和评估脐橙这两个特性参数对环境的影响。采用 Impact2002+ 方法评估了生命周期清单的影响。结果表明,从对人类健康、生态系统质量、气候变化和资源的终点影响角度来看,SSC 测量的环境影响分别比 pH 测量的环境影响高出约 40%、42%、20% 和 18%。随机森林建模结果表明,从特征选择阶段选出的波长与环境影响之间存在适当且可接受的相关性和关系(超过 90%)。
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