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Optic fiber sensing technique for evaluating pear fruit maturity using near-infrared reflectance spectroscopy

机译:使用近红外反射光谱评估梨果成熟度的光纤传感技术

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The feasibility of Fourier transform near infrared (FT-NIR) spectroscopic technology for rapid quantifying pear internal quality in different growing stage was investigated. A total of 248 pear samples collected at different harvest time (pre-harvest, mid-harvest and late harvest time) were used to develop the calibration models. The quality indices included soluble solids content (SSC) and titratable acidity (TA). Partial least squares (PLS) regression and principle component regression (PCR) regression were carried out describing relationships between the data sets of laboratory data and the FT-NIR spectra. Besides cross and test set validation, the established models were subjected to a further evaluation step by means of additional pear samples with unknown internal quality. Models based on the different spectral ranges and with several data pre-processing techniques (smoothing, multiplicative signal correction, standard normal variate, etc), were also compared in this research. Performance of different models was assessed in terms of root mean square errors of prediction (RMSEP) and correlation coefficients (r) of validation set of samples. The best predictive models had a RMSEP of 0.320, 0.019 and correlation coefficient (r) equal to 0.93, 0.89 for SSC and TA, respectively. Results indicated that FT-NIR spectroscopy could be an easy to facilitate, reliable, accurate and fast method for non-destructive evaluation of pears maturity.
机译:研究了傅立叶变换近红外线(FT-NIR)光谱技术在不同生长阶段快速定量梨内部质量的可行性。在不同的收获时间(预先收获,中继收获和后期收获时间)共收集的248个梨样品用于开发校准模型。质量指标包括可溶性固体含量(SSC)和可滴定酸度(TA)。进行局部最小二乘(PLS)回归和原理成分回归(PCR)回归描述实验室数据和FT-NIR光谱的数据集之间的关系。除了交叉和测试设置验证之外,通过额外的梨样品具有未知的内部质量的额外梨样品,既定的型号逐步进行。在该研究中还比较了基于不同光谱范围的模型以及具有几种数据预处理技术(平滑,乘以信号校正,标准正常变化等)。在验证集合集的预测(RMSEP)和相关系数(R)的根均方误差方面评估了不同模型的性能。最佳的预测模型的RMSEP为0.320,0.019和相关系数(R)等于SSC和TA的0.93,0.89分别。结果表明,FT-NIR光谱可以易于促进,可靠,准确,快速,用于梨成熟度的非破坏性评价。

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