N. Ismail, M. Rahiman, M. Taib, N. A. Ali, M. Jamil, S. N. Tajuddin
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引用次数: 6
摘要
本文介绍了k-最近邻(k-NN)在沉香油质量分级中的应用。从马来西亚森林研究所(Forest Research Institute Malaysia, FRIM)提取了6份沉香精油样品,并用GC-MS对其化学成分进行了分析。接下来是使用所提出的k-NN的分级系统。研究表明沉香精油中含有10种重要的化合物。它们是β-琼脂呋喃、α-琼脂呋喃、10-环氧-□-琼脂酚、□-琼脂酚、长叶酚、氧-琼脂酚、十六烷醇和琼脂酚。这些化合物被用作k-NN算法的输入,用于对它们进行分级。对k-NN的性能进行了测试,k-NN的最高准确率达到83.3%以上,表明k-NN是一种可靠的沉香油质量分级器。
The grading of agarwood oil quality using k-Nearest Neighbor (k-NN)
This paper presents the application of k-Nearest Neighbor (k-NN) in grading the quality agarwood oil. Six agarwood oil samples obtained at Forest Research Institute Malaysia (FRIM) were extracted and their chemical compounds were examined by GC-MS. The work is followed by the grading system using the proposed k-NN. The study shows that there are 10 significant chemical compounds of agarwood oils. They are β-agarofuran, α-agarofuran, 10-epi-□-eudesmol, □-eudesmol, longifolol, oxo-agarospirol, hexadecanol and eudesmol. These compounds are used as inputs to the k-NN algorithm for grading them. The performance of the k-NN is measured and the highest accuracy obtained by k-NN which is above 83.3% shows that k-NN is a reliable classifier in grading the agarwood oil quality.