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Prediction of soluble solids content in navel orange using Laser-Induced Fluorescence Spectroscopy

机译:激光诱导荧光光谱法预测脐橙脐橙中的可溶性固体含量

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Hyperspectral imaging is a non-contact, non-destructive technique that combines spectroscopy and imaging to extract information from a sample. This technology has recently emerged as a powerful technique for food analysis. In this study, the potential of Laser-Induced Fluorescence Spectroscopy (LIFS) to predict navel orange Soluble Solid Content (SSC) was investigated. The relationship between SSC and LIFS of navel orange were analyzed via partial least squares (PLS) regression. PLS regression model was used to predict SSC in navel orange. The correlation coefficient (Re) and root mean standard error of calibration (RMSEC) for SSC in calibration set were 0.9006 and 0.5355, respectively, Rp and root mean standard error of prediction (RMSEP) for SSC in prediction set were 0.8410 and 0.6870, respectively. It is verified that the combination of LIFS and PLS model can be used to provide a technique of convenient, nondestructive and rapid analysis for prediction of SSC in the wavelength range of 481.4-780.23nm.
机译:高光谱成像是一种非接触的非破坏性技术,其将光谱和成像组合以从样本中提取信息。该技术最近成为一种强大的食物分析技术。在该研究中,研究了激光诱导的荧光光谱(LIF)来预测脐橙可溶性固体含量(SSC)的潜力。通过局部最小二乘(PLS)回归分析SSC和LIFS之间的关系。 PLS回归模型用于预测脐橙的SSC。校准组中SSC的校准(RMSEC)的相关系数(RMSEC)和校准(RMSEC)的校准(RMSEC)分别为0.9006和0.5355,分别在预测集中的SSC预测(RMSEP)的RP和均平均标准误差分别为0.8410和0.6870 。验证了LIFS和PLS模型的组合可用于提供一种方便,无损和快速分析的技术,用于预测481.4-780.23nm的波长范围内的SSC。

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