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Developing Relative Humidity and Temperature Corrections for Low-Cost Sensors Using Machine Learning

机译:使用机器学习开发低成本传感器的相对湿度和温度校正

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摘要

Existing government air quality monitoring networks consist of static measurement stations, which are highly reliable and accurately measure a wide range of air pollutants, but they are very large, expensive and require significant amounts of maintenance. As a promising solution, low-cost sensors are being introduced as complementary, air quality monitoring stations. These sensors are, however, not reliable due to the lower accuracy, short life cycle and corresponding calibration issues. Recent studies have shown that low-cost sensors are affected by relative humidity and temperature. In this paper, we explore methods to additionally improve the calibration algorithms with the aim to increase the measurement accuracy considering the impact of temperature and humidity on the readings, by using machine learning. A detailed comparative analysis of linear regression, artificial neural network and random forest algorithms are presented, analyzing their performance on the measurements of CO, NO2 and PM10 particles, with promising results and an achieved R2 of 0.93–0.97, 0.82–0.94 and 0.73–0.89 dependent on the observed period of the year, respectively, for each pollutant. A comprehensive analysis and recommendations on how low-cost sensors could be used as complementary monitoring stations to the reference ones, to increase spatial and temporal measurement resolution, is provided.
机译:现有的政府空气质量监测网络由静态测量站组成,可高度可靠,准确地测量各种空气污染物,但它们非常大,昂贵,需要大量的维护。作为有希望的解决方案,正在引入低成本传感器作为互补的空气质量监测站。然而,由于较低的精度,寿命周期和相应的校准问题,这些传感器是不可靠的。最近的研究表明,低成本传感器受相对湿度和温度的影响。在本文中,我们探讨了另外改善校准算法的方法,以提高考虑温度和湿度对读数的影响,通过使用机器学习来提高测量精度。提出了线性回归,人工神经网络和随机林算法的详细比较分析,分析了它们对CO,NO2和PM10颗粒测量的性能,具有前景的结果,实现的R2为0.93-0.97,0.82-0.94和0.73- 0.89分别依赖于每年观察到的每年污染物。提供了关于低成本传感器如何用作参考文献的互补监测站的全面分析和建议,以增加空间和时间测量分辨率。

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