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In situ quality assessment of intact oil palm fresh fruit bunches using rapid portable non-contact and non-destructive approach

机译:使用快速便携式非接触式和非破坏性方法对完整的油棕新鲜水果束进行原位质量评估

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摘要

The oil palm (Elaeis guineensis Jacq.) fresh fruits bunch (FFB) quality can be determined by its ripeness, oil content (OC) and free fatty acid (FFA) level. The change in fruit's color upon ripening due to biochemical reactions can be observed through VIS/NIR spectroscopy. In this study, portable VIS/NIR spectrometer was employed to rapidly measure quality of oil palm FFB on-site, by means of non-contact and nondestructive approach. A mean-normalized method was used in pre-processing the bunch's spectral reflectance data within 400-1000 nm range using 10 nm intervals. Two statistical analyses are performed to models FFB quality. First, a forward-stepwise method is employed to establish multiple linear regressions (FS-MLR), and second, a combination between principal component analyses with multilayer per-ceptron neural network (PCA-MLP). These statistical analyses are employed for predicting the FFB ripeness, OC and FFA. Performances of best models were demonstrated by coefficient of determination (R~2), standard error of calibration (SEC) and standard error of prediction (SEP), which were respectively 0.9688, 0.1782, 0.4258 for ripeness prediction, 0.984, 0.25085, 0.4366 for OC prediction, and 0.9909, 0.0917, 0.2367 for FFA prediction model. The application of FS-MLR method for modeling the FFB quality delivered better performances, since it introduced more predictor variables.
机译:油棕(Elaeis guineensis Jacq。)新鲜水果束(FFB)的质量取决于其成熟度,油含量(OC)和游离脂肪酸(FFA)的水平。可以通过VIS / NIR光谱观察到由于生化反应而导致的果实颜色在成熟时的变化。在这项研究中,便携式VIS / NIR光谱仪通过非接触式和非破坏性方法被用于现场快速测量油棕FFB的质量。使用均值归一化方法以10 nm间隔对400-1000 nm范围内的束的光谱反射率数据进行预处理。进行了两次统计分析以对FFB质量进行建模。首先,采用逐步方法建立多元线性回归(FS-MLR),其次,将主成分分析与多层每个感知器神经网络(PCA-MLP)相结合。这些统计分析用于预测FFB成熟度,OC和FFA。最佳模型的性能通过测定系数(R〜2),校准标准误差(SEC)和预测标准误差(SEP)进行证明,成熟度预测分别为0.9688、0.1782、0.4258、0.984、0.25085、0.4366。 OC预测,而FFA预测模型为0.9909、0.0917、0.2367。由于FS-MLR方法引入了更多的预测变量,因此在FFB质量建模中的应用提供了更好的性能。

著录项

  • 来源
    《Journal of food engineering》 |2014年第1期|248-259|共12页
  • 作者

    Muhammad Makky; Peeyush Soni;

  • 作者单位

    Agricultural Systems & Engineering, SERD, Asian Institute of Technology, Pathumthani 12120, Thailand,Department of Agricultural Engineering, Andalas University, Padang 25163, West Sumatera, Indonesia;

    Agricultural Systems & Engineering, SERD, Asian Institute of Technology, Pathumthani 12120, Thailand;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Oil palm; FFB; VIS/NIR spectroscopy; Nondestructive; Ripeness; OC; FFA;

    机译:油棕;FFB;VIS / NIR光谱;无损成熟度超频;FFA;

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