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Validation Of A Light-Scattering Pm2.5 Sensor Monitor Based On The Long-Term Gravimetric Measurements In Field Tests

PLOS ONE(2017)

Cited 45|Views12
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Abstract
BackgroundPortable direct-reading instruments by light-scattering method are increasingly used in airborne fine particulate matter (PM2.5) monitoring. However, there are limited calibration studies on such instruments by applying the gravimetric method as reference method in field tests.MethodsAn 8-month sampling was performed and 96 pairs of PM2.5 data by both the gravimetric method and the simultaneous light-scattering real-time monitoring (QT-50) were obtained from July, 2015 to February, 2016 in Shanghai. Temperature and relative humidity (RH) were recorded. Mann-Whitney U nonparametric test and Spearman correlation were used to investigate the differences between the two measurements. Multiple linear regression (MLR) model was applied to set up the calibration model for the light-scattering device.ResultsThe average PM2.5 concentration (median) was 48.1 mu g/m(3) (min-max 10.4-95.8 mu g/m(3)) by the gravimetric method and 58.1 mu g/m(3) (19.2-315.9 mu g/m(3)) by the light-scattering method, respectively. By time trend analyses, they were significantly correlated with each other (Spearman correlation coefficient 0.889, P<0.01). By MLR, the calibration model for the light-scattering instrument was Y(calibrated) = 57.45 + 0.47 x X(the QT - 50 measurements) - 0.53 x RH - 0.41 x Temp with both RH and temperature adjusted. The 10-fold cross-validation R-2 and the root mean squared error of the calibration model were 0.79 and 11.43 mu g/m(3), respectively.ConclusionLight-scattering measurements of PM2.5 by QT-50 instrument overestimated the concentration levels and were affected by temperature and RH. The calibration model for QT-50 instrument was firstly set up against the gravimetric method with temperature and RH adjusted.
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Key words
gravimetric measurements,sensor,light-scattering,long-term
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