A Study on ANN Performance Towards Three Significant Compounds of High Quality Agarwood Oil

N. Z. Mahabob, Aqib Fawwaz Mohd Amidon, N. Ismail, Siti Mariatul Hazwa Mohd Huzir, Z. Mohd Yusoff, M. Taib, Saiful Nizam Tajuddin, Norazah Mohd Ali
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Abstract

This study demonstrated the application and the performance of the artificial neural network (ANN) as classification tool for luxury oil which is agarwood essential oil. For the scope of this research, the compounds of agarwood essential oil were obtained from FRIM and BARCE (UMP). The 103 compounds data is pre-processed through a pre-processing technique known as principal component analysis (PCA) and Pearson’s correlation. It was found that three compounds were significant and they were high quality; β-agarofuran, α-agarofuran, and 10-epi-ϒ-eudesmol. The significant compounds were continued to be fed into ANN as input data meanwhile the output data categorized as low and high quality of the agarwood essential oil. The Scaled Conjugate Gradient (SCG) was employed as the default classifier algorithm during network training. Three layers of ANN architecture were used and 1 to 10 hidden neurons were varied in a hidden layer. The performance of the ANN was measured using the mean squared error (MSE), epochs and their execution time and the confusion matrix. The work was performed using Matlab R2017a. The finding shows that SCG-ANN successfully classified agarwood essential oil with the best performance at 3 hidden neurons. This research is significant for future work, especially on the classification of the agarwood essential oil field.
人工神经网络对优质沉香油三种重要化合物的性能研究
本研究展示了人工神经网络(ANN)作为奢侈油——沉香精油分类工具的应用和性能。在本研究范围内,沉香精油的化合物分别从FRIM和BARCE (UMP)中得到。103种化合物数据通过主成分分析(PCA)和Pearson相关的预处理技术进行预处理。发现3个化合物具有显著性且质量较高;β-琼脂呋喃,α-琼脂呋喃,和10-epi-ϒ-eudesmol。将显著性化合物作为输入数据继续输入神经网络,同时将输出数据分类为沉香精油的低质量和高质量。在网络训练过程中,使用缩放共轭梯度(SCG)作为默认分类器算法。采用三层ANN结构,每层隐藏1 ~ 10个神经元。采用均方误差(MSE)、epoch及其执行时间和混淆矩阵来衡量人工神经网络的性能。该工作使用Matlab R2017a进行。结果表明,SCG-ANN成功分类沉香精油,其中3个隐藏神经元的分类效果最好。本研究对今后的工作,特别是沉香精油的分类研究具有重要意义。
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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