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A Gap Analysis of Low-Cost Outdoor Air Quality Sensor In-Field Calibration

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TLDR
This article presents low-cost sensor technologies, and it survey and assess machine learning-based calibration techniques for their calibration, and presents open questions and directions for future research.
Abstract
In recent years, interest in monitoring air quality has been growing. Traditional environmental monitoring stations are very expensive, both to acquire and to maintain, therefore their deployment is generally very sparse. This is a problem when trying to generate air quality maps with a fine spatial resolution. Given the general interest in air quality monitoring, low-cost air quality sensors have become an active area of research and development. Low-cost air quality sensors can be deployed at a finer level of granularity than traditional monitoring stations. Furthermore, they can be portable and mobile. Low-cost air quality sensors, however, present some challenges: they suffer from crosssensitivities between different ambient pollutants; they can be affected by external factors such as traffic, weather changes, and human behavior; and their accuracy degrades over time. Some promising machine learning approaches can help us obtain highly accurate measurements with low-cost air quality sensors. In this article, we present low-cost sensor technologies, and we survey and assess machine learning-based calibration techniques for their calibration. We conclude by presenting open questions and directions for future research.

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Citations
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Applications of low-cost sensing technologies for air quality monitoring and exposure assessment: How far have they gone?

TL;DR: In this article, the authors conducted a comprehensive literature search including both the scientific and grey literature, and concluded that there is no clear answer to the question, due to a lack of: sensor/monitor manufacturers' quantitative specifications of performance, consensus regarding recommended end-use and associated minimal performance targets of these technologies, and the ability of the prospective users to formulate the requirements for their applications, or conditions of the intended use.
Journal ArticleDOI

From air quality sensors to sensor networks: Things we need to learn

TL;DR: In this paper, low-cost air quality sensors (LCAQS) can be deployed in dense monitoring networks to provide timely and comprehensive snapshots of pollutant concentrations and their spatial and temporal variability at various scales with relatively less cost and labor.
References
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Journal ArticleDOI

Spatial variability of air pollution in the vicinity of a permanent monitoring station in central Paris

TL;DR: In this article, a 7-month sampling campaign was carried out on a major road axis (Avenue Leclerc) leading to a very busy intersection (Place Basch) in central Paris, covering the surroundings of a permanent air quality monitoring station.
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Impact Analysis of Temperature and Humidity Conditions on Electrochemical Sensor Response in Ambient Air Quality Monitoring.

TL;DR: One over-arching observation of this study is that the low-cost sensors may promise excellent sensitivity and performance, but it is essential for users to understand and account for several key factors that may strongly affect the nature of sensor data.
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Dynamic neural network architectures for on field stochastic calibration of indicative low cost air quality sensing systems

TL;DR: Results analysis suggests that the improvements are more significant when pollutants concentration changes more rapidly, and the capability of the on-field dynamic multivariate calibration to ameliorate the static calibration approach performance in this real world air quality monitoring scenario is indicated.
Proceedings ArticleDOI

Pushing the spatio-temporal resolution limit of urban air pollution maps

TL;DR: This paper analyzes one of the largest spatially resolved UFP data set publicly available today containing over 25 million measurements and achieves a 26% reduction in the root-mean-square error-a standard metric to evaluate the accuracy of air quality models-of pollution maps with semi-daily temporal resolution.
Journal ArticleDOI

Approach for quantification of metal oxide type semiconductor gas sensors used for ambient air quality monitoring

TL;DR: In this paper, a quantification model rooted in principles of semiconductor science and chemistry, yet informed by and simplified using empirical observations, is presented to predict concentration from resistance while providing a correction for temperature effects, usually the most significant confounder in ambient air quality monitoring with MOx sensors, and drift due to change in the sensor heating element.
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