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Rapid Identification of Rainbow Trout Adulteration in Atlantic Salmon by Raman Spectroscopy Combined with Machine Learning

机译:拉曼光谱结合机器学习快速识别大西洋鲑虹鳟

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摘要

This study intends to evaluate the utilization potential of the combined Raman spectroscopy and machine learning approach to quickly identify the rainbow trout adulteration in Atlantic salmon. The adulterated samples contained various concentrations (0–100% w/w at 10% intervals) of rainbow trout mixed into Atlantic salmon. Spectral preprocessing methods, such as first derivative, second derivative, multiple scattering correction (MSC), and standard normal variate, were employed. Unsupervised algorithms, such as recursive feature elimination, genetic algorithm (GA), and simulated annealing, and supervised K-means clustering (KM) algorithm were used for selecting important spectral bands to reduce the spectral complexity and improve the model stability. Finally, the performances of various machine learning models, including linear regression, nonlinear regression, regression tree, and rule-based models, were verified and compared. The results denoted that the developed GA–KM–Cubist machine learning model achieved satisfactory results based on MSC preprocessing. The determination coefficient (R2) and root mean square error of prediction sets (RMSEP) in the test sets were 0.87 and 10.93, respectively. These results indicate that Raman spectroscopy can be used as an effective Atlantic salmon adulteration identification method; further, the developed model can be used for quantitatively analyzing the rainbow trout adulteration in Atlantic salmon.
机译:这项研究旨在评估拉曼光谱法和机器学习方法相结合的利用潜力,以快速识别大西洋鲑鱼中的虹鳟鱼掺假现象。掺假样品中混入大西洋鲑鱼的虹鳟鱼浓度各不相同(每10%间隔为0-100%w / w)。使用了光谱预处理方法,例如一阶导数,二阶导数,多重散射校正(MSC)和标准正态变量。使用非监督算法(例如递归特征消除,遗传算法(GA)和模拟退火)以及监督K均值聚类(KM)算法来选择重要的光谱带,以降低光谱复杂性并提高模型稳定性。最后,对各种机器学习模型(包括线性回归,非线性回归,回归树和基于规则的模型)的性能进行了验证和比较。结果表明,基于MSC预处理,开发的GA–KM–Cubist机器学习模型取得了令人满意的结果。测试集中预测系数的确定系数(R 2 )和均方根误差(RMSEP)分别为0.87和10.93。这些结果表明拉曼光谱可以用作一种有效的大西洋鲑鱼掺假鉴定方法。此外,开发的模型可用于定量分析大西洋鲑虹鳟的掺假情况。

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