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      Development of a general calibration model and long-term performance evaluation of low-cost sensors for air pollutant gas monitoring

      , , , , , , , R. Subramanian
      Atmospheric Measurement Techniques
      Copernicus GmbH

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          Abstract

          <p><strong>Abstract.</strong> Assessing the intracity spatial distribution and temporal variability in air quality can be facilitated by a dense network of monitoring stations. However, the cost of implementing such a network can be prohibitive if traditional high-quality, expensive monitoring systems are used. To this end, the Real-time Affordable Multi-Pollutant (RAMP) monitor has been developed, which can measure up to five gases including the criteria pollutant gases carbon monoxide (CO), nitrogen dioxide (<span class="inline-formula">NO<sub>2</sub></span>), and ozone (<span class="inline-formula">O<sub>3</sub></span>), along with temperature and relative humidity. This study compares various algorithms to calibrate the RAMP measurements including linear and quadratic regression, clustering, neural networks, Gaussian processes, and hybrid random forest–linear regression models. Using data collected by almost 70 RAMP monitors over periods ranging up to 18 months, we recommend the use of limited quadratic regression calibration models for CO, neural network models for NO, and hybrid models for <span class="inline-formula">NO<sub>2</sub></span> and <span class="inline-formula">O<sub>3</sub></span> for any low-cost monitor using electrochemical sensors similar to those of the RAMP. Furthermore, generalized calibration models may be used instead of individual models with only a small reduction in overall performance. Generalized models also transfer better when the RAMP is deployed to other locations. For long-term deployments, it is recommended that model performance be re-evaluated and new models developed periodically, due to the noticeable change in performance over periods of a year or more. This makes generalized calibration models even more useful since only a subset of deployed monitors are needed to build these new models. These results will help guide future efforts in the calibration and use of low-cost sensor systems worldwide.</p>

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          Most cited references19

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          The use of electrochemical sensors for monitoring urban air quality in low-cost, high-density networks

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            Spatial Analysis of Air Pollution and Mortality in Los Angeles

            The assessment of air pollution exposure using only community average concentrations may lead to measurement error that lowers estimates of the health burden attributable to poor air quality. To test this hypothesis, we modeled the association between air pollution and mortality using small-area exposure measures in Los Angeles, California.
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              Field calibration of a cluster of low-cost available sensors for air quality monitoring. Part A: Ozone and nitrogen dioxide

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                Author and article information

                Journal
                Atmospheric Measurement Techniques
                Atmos. Meas. Tech.
                Copernicus GmbH
                1867-8548
                2019
                February 11 2019
                : 12
                : 2
                : 903-920
                Article
                10.5194/amt-12-903-2019
                4e006c99-26e4-4dcb-89e1-cb9ca3f07ba3
                © 2019

                https://creativecommons.org/licenses/by/4.0/

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