首页> 外文会议>IEEE International Colloquium on Signal Processing Its Applications >Evaluation of RBF and MLP in SVM kernel tuned parameters for agarwood oil quality classification
【24h】

Evaluation of RBF and MLP in SVM kernel tuned parameters for agarwood oil quality classification

机译:沉香油品质分类的SVM核调整参数中的RBF和MLP评估

获取原文

摘要

Agarwood oil, famously known as costly oil, extracted from the resinous of fragrant heartwood. The oil is getting high demand in the market especially from China, Vietnam, India, Middle East countries, and Japan because of its unique odour. As one of the researches in grading the quality of agarwood oil, the evaluation of kernel tuned parameter using Radial Basics Function (RBF) and Multilayer Perceptron (MLP) are presented in this paper to classify the quality of agarwood oil by using support vector machine (SVM). The work involved of selected agarwood oil sample from high to low quality. The output was agarwood oil quality either low or high and the input was the abundances (%) of agarwood oil compoundS. The input and output data were pre-processed by following works; data processing (normalisation, randomisation and data splitting into two parts in which training and testing dataset (ratio of 80%:20%) and data analysis using SVM modelling. The training dataset was used to train in developing the SVM model and the testing dataset was used to test/validate the developed SVM model. All the analytical works were performed automatically via MATLAB software version R2013a. The result showed that SVM model with RBF tuning is better than SVM model with MLP tuning and passed all the performance measures; accuracy, precision, confusion matrix, sensitivity and specificity. The finding in this study is significant and benefits further work and application for agarwood oil research area especially its classification.
机译:沉香油,众所周知地是昂贵的油,是从香心材树脂中提取的。由于其独特的气味,市场上对石油的需求特别高,尤其是来自中国,越南,印度,中东国家和日本的石油。作为沉香油品质分级的研究之一,本文提出了使用径向基函数(RBF)和多层感知器(MLP)评估核调参数,以使用支持向量机对沉香油品质进行分类( SVM)。从高质量到低质量选择沉香木油样品的工作。输出是沉香油质量的高低,输入是沉香油化合物S的丰度(%)。输入和输出数据通过以下工作进行了预处理;数据处理(归一化,随机化和数据拆分为两个部分),其中训练和测试数据集(比率为80 \%:20 \%)和使用SVM建模进行数据分析。训练数据集用于训练SVM模型和测试数据集用于测试/验证开发的SVM模型,所有分析工作均通过MATLAB软件版本R2013a自动执行,结果表明,采用RBF调整的SVM模型优于采用MLP调整的SVM模型,并通过了所有性能指标;准确度,精密度,混淆矩阵,敏感性和特异性本研究的发现意义重大,有利于沉香油研究领域的进一步工作和应用,尤其是其分类。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号