mmaqshiny - Explore Air Quality Mobile-Monitoring Data
Mobile-monitoring or sensors on a mobile platform, is an
increasingly popular approach to measure high-resolution
pollution data at the street level. Coupled with location data,
spatial visualization of air-quality parameters helps detect
localized areas of high air pollution, also called hotspots. In
this approach, portable sensors are mounted on a vehicle and
driven on predetermined routes to collect high frequency data
(1 Hz). 'mmaqshiny' is for analysing, visualizing and spatial
mapping of high-resolution air-quality data collected by
specific devices installed on a moving platform. 1 Hz data of
PM2.5 (mass concentrations of particulate matter with size less
than 2.5 microns), Black carbon mass concentrations (BC),
ultra-fine particle number concentrations, carbon dioxide along
with GPS coordinates and relative humidity (RH) data collected
by popular portable instruments (TSI DustTrak-8530, Aethlabs
microAeth-AE51, TSI CPC3007, LICOR Li-830, Garmin GPSMAP 64s,
Omega USB RH probe respectively). It incorporates device
specific cleaning and correction algorithms. RH correction is
applied to DustTrak PM2.5 following the Chakrabarti et al.,
(2004) <doi:10.1016/j.atmosenv.2004.03.007>. Provision is given
to add linear regression coefficients for correcting the PM2.5
data (if required). BC data will be cleaned for the vibration
generated noise, by adopting the statistical procedure as
explained in Apte et al., (2011)
<doi:10.1016/j.atmosenv.2011.05.028>, followed by a loading
correction as suggested by Ban-Weiss et al., (2009)
<doi:10.1021/es8021039>. For the number concentration data,
provision is given for dilution correction factor (if a diluter
is used with CPC3007; default value is 1). The package joins
the raw, cleaned and corrected data from the above said
instruments and outputs as a downloadable csv file.