I. V. Isaev, K. N. Chernov, A. S. Sagitova, V. V. Krivetskiy, S. A. Dolenko
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引用次数: 0
摘要
本研究解决了城市和工业区空气环境监测问题,其中包括使用金属氧化物(MOX)半导体气体传感器识别气体和挥发性有机化合物。为了提供对某些气体检测的选择性,实验室自制的MOX气体传感器在调制工作温度模式下工作,并结合信号处理和机器学习方法建立响应模型。6种非线性工作温度条件,即所谓的加热动力学,被应用于12个具有不同化学成分的传感层的传感器。九种不同浓度的气体(CO, CH \({}_{4}\), H \({}_{2}\), NH \({}_{3}\), NO, NO \({}_{2}\), H \({}_{2}\) S, SO \({}_{2}\),甲醛)分别作为污染添加剂用于干燥清洁空气。由于描述气体和传感器之间相互作用过程的模型的高度复杂性,基于使用物理实验数据的机器学习方法(逻辑回归、随机森林和梯度增强)被用于处理传感器响应。确定了气体识别的最佳加热动力学和最佳机器学习方法。
Identification of Air Pollutants with Thermally Modulated Metal Oxide Semiconductor Gas Sensors through Machine Learning Based Response Models
This study addresses the problem of environmental monitoring of air in cities and industrial areas, which consists in identification of gases and volatile organic compounds using metal oxide (MOX) semiconductor gas sensors. To provide selectivity in the detection of certain gases, the laboratory-made MOX gas sensors are operated in a modulated working temperature mode in combination with signal processing and machine learning approach to establish the response models. Six types of nonlinear operating temperature conditions—the so-called heating dynamics—were applied to twelve sensors with sensing layers of different chemical composition. Nine gases (CO, CH\({}_{4}\), H\({}_{2}\), NH\({}_{3}\), NO, NO\({}_{2}\), H\({}_{2}\)S, SO\({}_{2}\), formaldehyde) in six different concentrations each were used as polluting admixtures to dry clean air. Due to the high complexity of the model describing the processes of interaction between gases and sensors, machine learning methods (logistic regression, random forest and gradient boosting) based on the use of physical experiment data were used to process the sensor response. Optimal heating dynamics and optimal machine learning methods for gas identification have been determined.
期刊介绍:
Moscow University Physics Bulletin publishes original papers (reviews, articles, and brief communications) in the following fields of experimental and theoretical physics: theoretical and mathematical physics; physics of nuclei and elementary particles; radiophysics, electronics, acoustics; optics and spectroscopy; laser physics; condensed matter physics; chemical physics, physical kinetics, and plasma physics; biophysics and medical physics; astronomy, astrophysics, and cosmology; physics of the Earth’s, atmosphere, and hydrosphere.