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Preliminary Study on Classification of Cymbopogon Nardus Essential Oil using Support Vector Machine (SVM)

机译:支持向量机(SVM)对C柏中药精油分类的初步研究

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Essential oils are concentrated oils produced by different parts of plants via distillation. Essential oils need to grade into high and low quality due to high quality essential oil being popular and commonly used in variety industries such as in cosmetics, perfumes and traditional medicines. On the previous researcher, many techniques regarding on method of extraction, chemical compounds of essential oil and the quality of essential oils have been presented. Currently, artificial neural network (ANN) is a popular method but this method has many local minima to be chosen as the best for a task. In the future study, Cymbopogon Nardus oil has been chosen for the proposed model due to its applications in mosquito repellent, medicine, food flavor and so on while SVM technique is chosen as classifier in C.Nardus oil. This paper presents an overview of essential oils and its previous analysis technique. Besides, the review on Support Vector Machine (SVM) is done to prove the technique is suitable for future research studies.
机译:精油是植物的不同部分通过蒸馏生产的浓缩油。由于优质香精油在化妆品,香水和传统药物等多种行业中广为流行和普遍使用,因此香精油需要分为高品质和低品质。在先前的研究人员中,已经提出了许多有关提取方法,精油的化学成分和精油质量的技术。当前,人工神经网络(ANN)是一种流行的方法,但是该方法具有许多局部最小值,可以被选作最佳任务。在未来的研究中,Cymbopogon Nardus油因其在驱蚊剂,药物,食品风味等方面的应用而被选为拟议模型,而SVM技术被用作C.Nardus油的分类器。本文概述了精油及其先前的分析技术。此外,对支持向量机(SVM)进行了审查,以证明该技术适用于未来的研究。

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