Mitigating Slow Dynamics of Low-Cost Chemical Sensors for Mobile Air Quality Monitoring Sensor Networks
Adrian Arfire,Ali Marjovi,Alcherio Martinoli +2 more
- 15 Feb 2016
- pp 159-167
21
TL;DR: This paper proposes two methods for reducing the effect of the sensor's slow dynamics by using an open active sampler and estimating the underlying true signal using a sensor model and a deconvolution technique, and considers two performance metrics for evaluation: localization accuracy of specific field features and root mean squared error in field estimation.
read more
Abstract: The last decade has seen a growing interest in air quality monitoring using networks of wireless low-cost sensor platforms. One of the unifying characteristics of chemical sensors typically used in real-world deployments is their slow response time. While the impact of sensor dynamics can largely be neglected when considering static scenarios, in mobile applications chemical sensor measurements should not be considered as point measurements (i.e. instantaneous in space and time). In this paper, we study the impact of sensor dynamics on measurement accuracy and locality through systematic experiments in the controlled environment of a wind tunnel. We then propose two methods for dealing with this problem: (i) reducing the effect of the sensor's slow dynamics by using an open active sampler, and (ii) estimating the underlying true signal using a sensor model and a deconvolution technique. We consider two performance metrics for evaluation: localization accuracy of specific field features and root mean squared error in field estimation. Finally, we show that the deconvolution technique results in consistent performance improvement for all the considered scenarios, and for both metrics, while the active sniffer design considered provides an advantage only for feature localization, particularly for the highest sensor movement speed.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
A Survey on Sensor Calibration in Air Pollution Monitoring Deployments
Balz Maag,Zimu Zhou,Lothar Thiele +2 more
- 06 Jul 2018
TL;DR: The state-of-the-art low-cost air pollution sensors are reviewed, their major error sources are identified, and comprehensively survey calibration models as well as network recalibration strategies suited for different sensor deployments are surveyed.
Low-Cost Air Quality Monitoring Tools: From Research to Practice (A Workshop Summary)
Andrea L. Clements,William G. Griswold,Abhijit Rs,Jill E. Johnston,Megan M. Herting,Jacob Thorson,Ashley Collier-Oxandale,Michael P. Hannigan +7 more
TL;DR: A two-day workshop was held in Los Angeles to gather practitioners who work with low-cost sensors used to make air quality measurements to share knowledge developed from a variety of pilot projects in hopes of advancing the collective knowledge about how best to use low- cost air quality sensors.
Low-cost sensors for the measurement of atmospheric composition: overview of topic and future applications
Alastair C. Lewis,W. Richard Peltier,Erika von Schneidemesser +2 more
- 01 May 2018
TL;DR: The report highlights that low-cost sensors are not currently a direct substitute for reference instruments, especially for mandatory purposes; they are however a complementary source of information on air quality, provided an appropriate sensor is used.
157
Low cost air pollution monitoring systems: A review of protocols and enabling technologies
TL;DR: This paper presents a short but comprehensive review of these air pollution monitoring systems (APMS), their enabling technologies and protocols, and summaries the objectives that need to attain in the future air monitoring systems to make them more accurate and realistic.
146
Assessing a low-cost methane sensor quantification system for use in complex rural and urban environments.
Ashley Collier-Oxandale,Joanna Gordon Casey,Ricardo Piedrahita,John Ortega,H. S. Halliday,Jill E. Johnston,Michael P. Hannigan +6 more
TL;DR: A number of linear calibration models used to convert raw sensor signals into ppm concentration values for methane are assessed, illustrating the accuracy of the Figaro TGS 2600 sensor when methane is quantified from raw signals using the techniques described.
References
The Changing Paradigm of Air Pollution Monitoring
Emily Gibb Snyder,Timothy H. Watkins,Paul A. Solomon,Eben D. Thoma,Ronald Williams,Gayle S.W. Hagler,David Shelow,David A. Hindin,Vasu Kilaru,Peter W. Preuss +9 more
TL;DR: Air pollution monitoring paradigm is rapidly changing due to recent advances in the development of portable, lower-cost air pollution sensors reporting data in near-real time at a high-time resolution, increased computational and visualization capabilities, and wireless communication/infrastructure.
849
national ambient air quality standards (NAAQS)
R. Quentin Grafton,Harry W. Nelson,N. Ross Lambie,Paul R. Wyrwoll +3 more
- 01 Jan 2012
TL;DR: The NSR program was designed to ensure that new facilities would not threaten air quality and still allow for economic growth as discussed by the authors, and the NSR has been in effect since 1980.
480
Deriving high-resolution urban air pollution maps using mobile sensor nodes
David Hasenfratz,Olga Saukh,Christoph Walser,Christoph Hueglin,Martin Fierz,Tabita Arn,Jan Beutel,Lothar Thiele +7 more
TL;DR: This paper analyzes one of the largest spatially resolved UFP data set publicly available today containing over 50 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.
279
AirCloud: a cloud-based air-quality monitoring system for everyone
Yun Cheng,Xiucheng Li,Zhijun Li,Shouxu Jiang,Yilong Li,Ji Jia,Xiaofan Jiang +6 more
- 03 Nov 2014
TL;DR: This work presents the design, implementation, and evaluation of AirCloud -- a novel client-cloud system for pervasive and personal air-quality monitoring at low cost, and shows that AirCloud is able to achieve good accuracies at much lower cost than previous solutions.
278
Creating gas concentration gridmaps with a mobile robot
Achim J. Lilienthal,Tom Duckett +1 more
- 08 Dec 2003
TL;DR: In this article, the authors address the problem of mapping the features of a gas distribution by creating concentration gridmaps from the data collected by a mobile robot equipped with an electronic nose.