一类学习电子鼻在未知混合气体识别中的应用

Han Fan, Daniel Jonsson, E. Schaffernicht, A. Lilienthal
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引用次数: 0

摘要

使用电子鼻(电子鼻)的气体识别通常依赖于用有限目标分析物的大量数据训练的多类分类器。通常,在包含训练数据中未表示的干扰的混合物存在下,分类性能会下降。这个问题限制了电子鼻在干扰先验未知的现实场景中的适用性。本文探讨了利用单课学习解决这一特殊气体识别问题的可行性。我们为一类支持向量机提出了几种训练策略,以处理由不同浓度水平的目标分析物和干扰物组成的气体混合物。我们的评估表明,如果目标分析物在混合物中占主导地位,则可以准确识别目标分析物的存在。对于干涉-优势混合,需要进行大量的训练,这意味着需要提高单类模型的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Gas Identification in Unknown Mixtures Using an Electronic Nose with One-Class Learning
Gas identification using an electronic nose (e-nose) typically relies on a multi-class classifier trained with extensive data of a limited set of target analytes. Usually, classification performance degrades in the presence of mixtures that include interferents not represented in the training data. This issue limits the applicability of e-noses in real-world scenarios where interferents are a priori unknown. This paper investigates the feasibility of tackling this particular gas identification problem using one-class learning. We propose several training strategies for a one-class support vector machine to deal with gas mixtures composed of a target analyte and an interferent at different concentration levels. Our evaluation indicates that accurate identification of the presence of a target analyte is achievable if it is dominant in a mixture. For interferent-dominant mixtures, extensive training is required, which implies that an improvement in the generalization ability of the one-class model is needed.
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