油棕果实成熟度的人工神经网络分类

Tan Hong, Fazida Hanim Hashim, Thinal Raj, A. B. Huddin
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引用次数: 2

摘要

在采收前对油棕的成熟度进行精确、准确的分级,可以提高油棕的提取率和品质。研究了基于拉曼光谱特征的油棕果实成熟度分类的人工神经网络模型。在本研究中,油棕果实来自马来西亚国立大学(UKM)由Khazanah-UKM管理的油棕种植园收获的dura x pisifera (DxP)后代。根据马来西亚棕榈油委员会(MPOB)的标准,共采集了50个未成熟、过熟和成熟的水果样本。每个样品的拉曼光谱均由台式共聚焦拉曼光谱仪采集。使用预处理技术提取每个样本的光谱特征,并将其用作预测因子来训练人工神经网络模型。采用50:50保留法将样本分为训练集和测试集。所建立的模型预测准确率达到95.48%。通过增加训练中使用的样本数量可以提高神经网络的准确性和鲁棒性。
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Classification of Oil Palm Fruit Ripeness Using Artificial Neural Network
Oil extraction rate (OER) and quality of oil palm can be improved by precisely and accurately classifying the ripeness of oil palm before harvesting. This paper focuses on the development of an artificial neural network (ANN) model for classification of oil palm fruit ripeness using Raman spectra features. In this study, the oil palm fruitlets are from the dura x pisifera (DxP) progenies, harvested from the oil palm plantation of National University of Malaysia (UKM) managed by Khazanah-UKM. A total of 50 samples from unripe, over ripe and ripe fruitlets were collected according to the standard of Malaysia Palm Oil Board (MPOB). Raman spectra for each sample are collected from benchtop Confocal Raman spectrometer. The spectral features for each sample are extracted using pre-processing techniques and used as predictors to train the ANN model. Samples are divided into training set and test set using 50:50 holdout method. The developed model achieves 95.48% prediction accuracy. The accuracy and robustness of the neural network can be improved by increasing the number of samples used in the training.
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