2019
DOI: 10.5194/nhess-2019-229
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Contribution of personal weather stations to the observation of deep-convection features near the ground

Abstract: The lack of observations near the surface is often cited as a limiting factor in the observation and prediction of deep convection. Recently, networks of personal weather stations (PWSs) measuring pressure, temperature and humidity in nearreal time have been rapidly developing. Even if they suffer from quality issues, their high temporal resolution and their higher spatial density than standard weather station (SWS) networks have aroused interest in using them to observe deep convection.In this study, the PWSs… Show more

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Cited by 9 publications
(9 citation statements)
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References 13 publications
(22 reference statements)
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“…Evidence of a nighttime urban heat island (UHI) effect of up to 5.5°C was shown in London using 287 Netatmo and 7 Met Office stations, utilizing the Met Office data to remove anomalous Netatmo observations (Chapman et al, 2017). Netatmo stations were also used by Mandement and Caumont (2019) to analyse deep convection in France, showing that rapid changes in atmospheric pressure were detected around squall lines. Data from 63 citizen rain gauges around Amsterdam were correlated with rain radar observations (De Vos et al, 2017).…”
Section: Introductionmentioning
confidence: 99%
“…Evidence of a nighttime urban heat island (UHI) effect of up to 5.5°C was shown in London using 287 Netatmo and 7 Met Office stations, utilizing the Met Office data to remove anomalous Netatmo observations (Chapman et al, 2017). Netatmo stations were also used by Mandement and Caumont (2019) to analyse deep convection in France, showing that rapid changes in atmospheric pressure were detected around squall lines. Data from 63 citizen rain gauges around Amsterdam were correlated with rain radar observations (De Vos et al, 2017).…”
Section: Introductionmentioning
confidence: 99%
“…The measured reflectivity can be translated to rainfall amounts. One commonly used relation between reflectivity (Z in mm 6 m −3 ) and rainfall intensity (R in mm h −1 ) is the Marshall-Palmer relation Z = 200R 1.6 (Marshall et al, 1955), but as the actual Z-R-relation is dependent on rainfall type and local climate many other relations have been proposed (e.g. Uijlenhoet, 2001;Raghavan, 2013).…”
Section: Disdrometersmentioning
confidence: 99%
“…Given the Rayleigh scattering assumption, Z can be determined from the sixth-order moment of the DSDs (Bringi & Chandrasekar, 2001): For each time step, simulated Z values in the 100 pixels that correspond with a single 1 km 2 pixel are replaced by their averaged value. Subsequently the rainfall for each 100 m × 100 m grid cell is set to the rainfall intensity computed from this averaged Z using the Z-R relationship for stratiform rainfall by Marshall et al (1955):…”
Section: Radar Derivationmentioning
confidence: 99%
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“…The shown forecast is 7 hours ahead, and by ingesting PWS data the location and intensity of the precipitation event correspond better to radar observations, though especially location is still somewhat inaccurate. Other applications of opportunistic sensing data include the use of pressure data obtained through smartphones to improve location of frontal zones (Mass and Madaus, 2014;Madaus and Mass, 2017;Hintz et al, 2019), or using PWS measurements for the validation of local processes such as deep convection (Mandement and Caumont, 2019). Increasingly, crowdsourced data are finding their way into the established meteorological institutes: the ECMWF acknowledges the value of crowdsourced data, which can "[capture] rapid temporal/spatial variations in weather parameters; enable new quality control methods (e.g.…”
Section: Crowdsourcing: Sensing Opportunitiesmentioning
confidence: 99%