Artificial Odour Classification System

Author:

Mahat Nor Idayu1,Masnan Maz Jamilah2,Shakaff Ali Yeon Md2,Zakaria Ammar2,Kadir Muhd Khairulzaman Abdul3

Affiliation:

1. Universiti Utara Malaysia, Malaysia

2. Universiti Malaysia Perlis, Malaysia

3. Universiti Kuala Lumpur British Malaysian Institute, Malaysia

Abstract

This chapter overviews the issue of multicollinearity in electronic nose (e-nose) classification and investigates some analytical solutions to deal with the problem. Multicollinearity effect may harm classification analysis from producing good parameters estimate during the construction of the classification rule. The common approach to deal with multicollinearity is feature extraction. However, the criterion used in extracting the raw features based on variances may not be appropriate for the ultimate goal of classification accuracy. Alternatively, feature selection method would be advisable as it chooses only valuable features. Two distance-based criteria in determining the right features for classification purposes, Wilk's Lambda and bounded Mahalanobis distance, are applied. Classification with features determined by bounded Mahalanobis distance statistically performs better than Wilk's Lambda. This chapter suggests that classification of e-nose with feature selection is a good choice to limit the cost of experiments and maintain good classification performance.

Publisher

IGI Global

Reference25 articles.

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1. Clustering Algorithms as a Tool for Odour Classifications in Enose Developments;Artificial Intelligence Systems and the Internet of Things in the Digital Era;2021

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