基于小波的光声气体传感机器学习算法

Optics Pub Date : 2024-04-03 DOI:10.3390/opt5020015
Artem Kozmin, E. Erushin, Ilya Miroshnichenko, Nadezhda Kostyukova, Andrey Boyko, Alexey A. Redyuk
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引用次数: 0

摘要

智能传感器系统在医疗保健、环境监测、工业自动化和安防等各个领域的重要性与日俱增。光声气体传感器具有灵敏度高、频率选择性强和响应速度快等优点,是一种前景广阔的光学气体传感器。然而,光声气体传感器也有其局限性,如对高功率光源的依赖性、对高质量声信号检测器的要求以及对环境因素的敏感性,这些都会影响其准确性和可靠性。机器学习在分析和解释传感器数据方面具有巨大的潜力,因为它可以识别复杂的模式,并根据现有数据做出准确的预测。我们提出了一种新方法,利用小波分析和具有增强架构的神经网络来提高光声气体传感器的准确性和灵敏度。我们提出的方法在甲烷浓度测量中进行了实验测试,展示了其在显著推进气体检测和分析领域、提供更准确可靠的结果方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wavelet-Based Machine Learning Algorithms for Photoacoustic Gas Sensing
The significance of intelligent sensor systems has grown across diverse sectors, including healthcare, environmental surveillance, industrial automation, and security. Photoacoustic gas sensors are a promising type of optical gas sensor due to their high sensitivity, enhanced frequency selectivity, and fast response time. However, they have limitations such as dependence on a high-power light source, a requirement for a high-quality acoustic signal detector, and sensitivity to environmental factors, affecting their accuracy and reliability. Machine learning has great potential in the analysis and interpretation of sensor data as it can identify complex patterns and make accurate predictions based on the available data. We propose a novel approach that utilizes wavelet analysis and neural networks with enhanced architectures to improve the accuracy and sensitivity of photoacoustic gas sensors. Our proposed approach was experimentally tested for methane concentration measurements, showcasing its potential to significantly advance the field of gas detection and analysis, providing more accurate and reliable results.
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