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First derivative prediction of raw broiler shear force using visible short wave near infrared spectroscopy

机译:可见短波近红外光谱法对生肉鸡剪切力的一阶导数预测

摘要

A non-destructive,fast, reliable and low cost technique which is Near-Infrared Spectroscopy (NIRS) is required to replace conventional destructive texture analyser in shear force measurement. The combination of visible and shortwave near infrared (VIS-SWNIR) spectrometer and principal component regression (PCR) to assess the quality attribute of raw broiler meat texture (shear force value (kg)) was investigated. Wavelength region of visible and shortwave 662-1005 nm was selected for prediction after pre-processing. Absorbance spectra was pre-processed using the optimal Savitzky-Golay smoothing mode with 1st order derivative, 2nd degree polynomial and 31 filter points to remove the baseline shift effect. Potential outliers were identified through externally studentised residual approach. The PCR model were trained with 90 samples in calibration and validated with 44 samples in prediction datasets. From the PCR analysis, correlation coefficient of calibration (RC), the root mean square calibration (RMSEC), correlation coefficient of prediction (RP) and the root mean square prediction (RMSEP) of visible and shortwave (662-1005 nm) with 4 principal components were 0.4645,0.0898, 0.4231 and 0.0945. The predicted results can be improved by applying the 2nd order derivative and the non-linear model.
机译:在剪切力测量中,需要一种非破坏性,快速,可靠且低成本的技术,即近红外光谱(NIRS)来代替传统的破坏性纹理分析仪。研究了可见光和短波近红外(VIS-SWNIR)光谱仪与主成分回归(PCR)的组合,以评估生鸡肉肉质地的质量属性(剪切力值(kg))。预处理后,选择可见光和短波662-1005 nm的波长区域进行预测。使用具有一阶导数,二阶多项式和31个滤波点的最佳Savitzky-Golay平滑模式对吸收光谱进行预处理,以消除基线漂移效应。通过外部学生化的残差方法确定了潜在的异常值。 PCR模型使用90个样本进行了校准,并用预测数据集中的44个样本进行了验证。通过PCR分析,可见光和短波(662-1005 nm)与4的校正相关系数(RC),均方根校正(RMSEC),预测相关系数(RP)和均方根预测(RMSEP)主成分为0.4645,0.0898、0.4231和0.0945。通过应用二阶导数和非线性模型可以改善预测结果。

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  • 作者

    Ghazali R.; Abdul Rahim H.;

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  • 年度 2016
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  • 原文格式 PDF
  • 正文语种 en
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