气敏电子鼻系统机器学习技术评估与性能分析

IF 10.1 2区 工程技术 Q1 ENGINEERING, MECHANICAL
L. Mahmood, Zied Bahroun, M. Ghommem, H. Alshraideh
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引用次数: 1

摘要

结合机器学习和气体传感器阵列(GSAs)的电子鼻被广泛用于各种气体的检测和识别。gsa产生的信号为机器学习算法提供了有关暴露气体的重要信息,使其在智能气体传感领域不可或缺。在这项工作中,我们提出了用于检测气体和估计其浓度的几种机器学习技术的详细评估。本文的建模和预测分析是基于kNN、ANN、决策树、随机森林、支持向量机等基于集成的技术。根据文献报道,预测模型在三种不同的基于MoX气体传感器的实验数据集上实现和测试。评估包括对不同模型性能的描述分析,然后与文献中发现的结果进行详细比较。它强调了在气体传感机器学习中发挥关键作用的因素,并揭示了应用于实验GSA数据集的不同机器学习方法的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ASSESSMENT AND PERFORMANCE ANALYSIS OF MACHINE LEARNING TECHNIQUES FOR GAS SENSING E-NOSE SYSTEMS
E-noses that combine machine learning and gas sensor arrays (GSAs) are widely used for the detection and identification of various gases. GSAs produce signals that provide vital information about the exposed gases for the machine learning algorithms, rendering them indispensable within the smart-gas sensing arena. In this work, we present a detailed assessment of several machine learning techniques employed for the detection of gases and estimation of their concentrations. The modeling and predictive analysis conducted in this paper are based on kNN, ANN, Decision Trees, Random Forests, SVM and other ensembling-based techniques. Predictive models are implemented and tested on three different MoX gas sensor-based experimental datasets as reported in the literature. The assessment includes a delineated analysis of the different models’ performance followed by a detailed comparison against results found in the literature. It highlights factors that play a pivotal role in machine learning for gas sensing and sheds light on the predictive capability of different machine learning approaches applied on experimental GSA datasets.
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来源期刊
CiteScore
14.40
自引率
2.50%
发文量
12
审稿时长
6 weeks
期刊介绍: Facta Universitatis, Series: Mechanical Engineering (FU Mech Eng) is an open-access, peer-reviewed international journal published by the University of Niš in the Republic of Serbia. It publishes high-quality, refereed papers three times a year, encompassing original theoretical and/or practice-oriented research as well as extended versions of previously published conference papers. The journal's scope covers the entire spectrum of Mechanical Engineering. Papers undergo rigorous peer review to ensure originality, relevance, and readability, maintaining high publication standards while offering a timely, comprehensive, and balanced review process.
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