Non-Destructive Prediction of Chemical Content in Palm Oil Fruit Using Near-Infrared Spectroscopy and Artificial Neural Network

Nissa Adiarifia, W. Budiastra, S. Mardjan, Article Info
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Abstract

Oil and water content are an important quality criteria of crude palm oil (CPO) resulted from palm oil fruit processing. Those contents are usually determined using chemical method in the laboratory. This method is time consuming, long procedure, and destructive. Some efforts had been carried out to determine oil and water content of palm oil fruit non-destructively using some methods including Near-Infrared Spectroscopy (NIRS), but the results had not been satisfied. This research aims to assess Artificial Neural Network (ANN) and NIRS method to predict oil and water content of palm oil fruit’s non-destructively. The samples were palm oil fruits with ten maturity levels harvested from plantation in Bogor. Sample’s reflectance was measured with spectrometer NIR-Flex 500 at wavelength of 1000-2500 nm. After that, oil and water content were determined using chemical method. Some pre-treatments of NIR spectra namely normalization, savitzky-golay first derivative, their combinations, and standard normal variate were applied. Multivariate analysis such as PLS were carried out and the results of Factor Component  (FC) were input for ANN model. The result showed the best method to predict oil content was combination savitzky-golay first derivative and normalization pre-treatment using PLS-ANN with 20 FC (R2=0.99; SEC=0,58%, RPD = 29.89; CV = 2.47%). For water content, the best prediction was standard normal variate pre-treatment using PLS-ANN with 20 FC (R2=0.99; SEC=1,07%, RPD=20.68; CV=1,73%). The result shows that developed ANN and NIRS can predict oil and water content of palm oil fruit non-destructively.
利用近红外光谱和人工神经网络对棕榈油果实中的化学成分进行非破坏性预测
油分和水分是棕榈油果实加工过程中产生的毛棕榈油(CPO)的重要质量标准。这些含量通常是在实验室用化学方法测定的。这种方法费时、耗时长,而且具有破坏性。有人曾使用近红外光谱法(NIRS)等一些方法来非破坏性地测定棕榈油果实的油分和水分含量,但结果并不令人满意。本研究旨在评估人工神经网络(ANN)和近红外光谱法,以非破坏性方式预测棕榈油果实的油分和水分含量。样本是从茂物种植园收获的十个成熟度的棕榈油果实。样品的反射率用波长为 1000-2500 纳米的 NIR-Flex 500 光谱仪测量。然后用化学方法测定油分和水分含量。对近红外光谱进行了一些预处理,即归一化、Savitzky-Golay 一阶导数、它们的组合和标准正态变量。进行了多变量分析(如 PLS),并将因子分量(FC)结果输入 ANN 模型。结果显示,预测含油量的最佳方法是使用 20 个 FC 的 PLS-ANN 将 savitzky-golay 一阶导数和归一化预处理相结合(R2=0.99;SEC=0.58%;RPD=29.89;CV=2.47%)。对于含水量,使用 20 FC 的 PLS-ANN 进行标准正态变异预处理的预测效果最佳(R2=0.99;SEC=1.07%,RPD=20.68;CV=1.73%)。结果表明,所开发的 ANN 和近红外分析仪可以非破坏性地预测棕榈油果实的含油量和含水量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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