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Enhancing Electronic Nose Performance by Feature Selection Using an Improved Grey Wolf Optimization Based Algorithm

机译:采用改进的灰羽优化算法,通过特征选择提高电子鼻部性能

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摘要

Electronic nose is a kind of widely-used artificial olfactory system for the detection and classification of volatile organic compounds. The high dimensionality of data collected by electronic noses can hinder the process of pattern recognition. Thus, the feature selection is an essential stage in building a robust and accurate model for gas recognition. This paper proposed an improved grey wolf optimizer (GWO) based algorithm for feature selection and applied it on electronic nose data for the first time. Two mechanisms are employed for the proposed algorithm. The first mechanism contains two novel binary transform approaches, which are used for searching feature subset from electronic nose data that maximizing the classification accuracy while minimizing the number of features. The second mechanism is based on the adaptive restart approach, which attempts to further enhance the search capability and stability of the algorithm. The proposed algorithm is compared with five efficient feature selection algorithms on three electronic nose data sets. Three classifiers and multiple assessment indicators are used to evaluate the performance of algorithm. The experimental results show that the proposed algorithm can effectively select the feature subsets that are conducive to gas recognition, which can improve the performance of the electronic nose.
机译:电子鼻是一种广泛使用的人工嗅觉系统,用于检测和分类挥发性有机化合物。电子鼻子收集的数据的高度维度可以阻碍模式识别的过程。因此,特征选择是构建稳健和准确的气体识别模型的基本阶段。本文提出了一种改进的灰狼优化器(GWO)的特征选择算法,首次应用于电子鼻数据。采用两个机制用于所提出的算法。第一机制包含两种新型二进制变换方法,其用于搜索来自电子鼻数据的特征子集,从而最大限度地提高分类精度,同时最小化特征数量。第二机制基于自适应重启方法,该方法试图进一步提高算法的搜索能力和稳定性。将所提出的算法与三个电子鼻数据集上的五个有效的特征选择算法进行了比较。三个分类器和多元评估指标用于评估算法的性能。实验结果表明,该算法可以有效地选择有利于气体识别的特征子集,这可以提高电子鼻的性能。

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