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A novel data pre-processing method for odour detection and identification system

机译:一种用于气味检测和识别系统的新型数据预处理方法

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摘要

This paper presents a novel electronic nose (E-nose) data pre-processing method, based on a recently developed non-parametric kernel-based modelling (KBM) approach. The proposed method is tested by an automated odour detection and classification system, named "NOS.E", developed by the NOS.E team in University of Technology Sydney. Experimental results show that when extracting the derivative-related features from signals collected by the NOS.E, the proposed non-parametric KBM odour data preprocessing method achieves more reliable and stable pre-processing results comparing with other preprocessing methods such as wavelet package correlation filter (WPCF), mean filter (MF), polynomial curve fitting (PCF) and locally weighted regression (LWR). Based on these derivative-related features, the NOS.E can achieve a 96.23% accuracy of classification with the popular Support Vector Machine (SVM) classifier. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文提出了一种新颖的电子鼻子(E-鼻子)数据预处理方法,基于最近开发的基于非参数内核的建模(KBM)方法。 所提出的方法是通过自动化气味检测和分类系统进行测试,名为“NOS.E”,由悉尼技术大学的No.e团队开发。 实验结果表明,当从由NoS.E收集的信号提取衍生物相关的特征时,所提出的非参数KBM气味数据预处理方法实现更可靠且稳定的预处理结果与其他预处理方法(例如小波封装相关滤波器)相比较 (WPCF),平均滤波器(MF),多项式曲线拟合(PCF)和局部加权回归(LWR)。 基于这些衍生性相关的特征,NoS.E可以通过流行的支持向量机(SVM)分类器来达到96.23%的分类准确性。 (c)2018年elestvier b.v.保留所有权利。

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