利用机器学习快速识别和定量电子鼻传感器阵列中的挥发性有机化合物

Q4 Engineering
J. Grasso, Jing Zhao, B. Willis
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引用次数: 0

摘要

挥发性有机化合物(VOCs)在环境中无处不在,来源于工业和自然资源。挥发性有机物直接影响室内外空气质量,并在水果成熟和身体代谢等过程中发挥重要作用。VOC监测最近出现了显著的增长,重点是开发低成本、便携式的传感器,能够识别蒸汽和测量浓度。VOC传感仍然具有挑战性,主要是因为这些化合物是非反应性的,以低浓度出现,并且具有相似的化学结构,导致传感器选择性差。因此,单个气体传感器难以在存在干扰的情况下选择性地检测目标挥发性有机物。电子鼻通过使用机器学习从气体传感器阵列进行模式识别来克服这些限制。在这里,用四种类型的功能化金纳米颗粒制造的电子鼻证明了在四个浓度水平下对八种类型的挥发性有机物的快速检测和定量。实现了一个稳健的两步机器学习流水线用于分类,然后进行回归分析用于浓度预测。随机森林和支持向量机分类器在VOC识别方面显示出100%准确率的优异结果,与测量的浓度水平无关。每个随机森林回归分析都显示出高R2和低RMSE,平均值分别为0.999和0.002。这些结果证明了金纳米粒子气体传感器阵列的快速检测和定量能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilizing Machine Learning for Rapid Discrimination and Quantification of Volatile Organic Compounds in an Electronic Nose Sensor Array
Volatile organic compounds (VOCs) are ubiquitous in the surroundings, originating from both industrial and natural sources. VOCs directly impact the quality of both indoor and outdoor air and play a significant role in processes such as fruit ripening and the body’s metabolism. VOC monitoring has seen significant growth recently, with an emphasis on developing low-cost, portable sensors capable of both vapor discrimination and concentration measurements. VOC sensing remains challenging, mainly because these compounds are nonreactive, appear in low concentrations and share similar chemical structures that results in poor sensor selectivity. Therefore, individual gas sensors struggle to selectively detect target VOCs in the presence of interferences. Electronic noses overcome these limitations by employing machine learning for pattern recognition from arrays of gas sensors. Here, an electronic nose fabricated with four types of functionalized gold nanoparticles demonstrates rapid detection and quantification of eight types of VOCs at four concentration levels. A robust two-step machine learning pipeline is implemented for classification followed by regression analysis for concentration prediction. Random Forest and support vector machine classifiers show excellent results of 100% accuracy for VOC discrimination, independent of measured concentration levels. Each Random Forest regression analysis exhibits high R2 and low RMSE with an average of 0.999 and 0.002, respectively. These results demonstrate the ability of gold nanoparticle gas sensor arrays for rapid detection and quantification.
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来源期刊
International Journal of High Speed Electronics and Systems
International Journal of High Speed Electronics and Systems Engineering-Electrical and Electronic Engineering
CiteScore
0.60
自引率
0.00%
发文量
22
期刊介绍: Launched in 1990, the International Journal of High Speed Electronics and Systems (IJHSES) has served graduate students and those in R&D, managerial and marketing positions by giving state-of-the-art data, and the latest research trends. Its main charter is to promote engineering education by advancing interdisciplinary science between electronics and systems and to explore high speed technology in photonics and electronics. IJHSES, a quarterly journal, continues to feature a broad coverage of topics relating to high speed or high performance devices, circuits and systems.
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