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The WISE Quality Control System for Integrated Meteorological Sensor Data

WISE 복합기상센서 관측 자료 품질관리시스템

  • Chae, Jung-Hoon (Weather Information Service Engine, Center for Atmospheric Science and Earthquake Research) ;
  • Park, Moon-Soo (Weather Information Service Engine, Center for Atmospheric Science and Earthquake Research) ;
  • Choi, Young-Jean (Weather Information Service Engine, Center for Atmospheric Science and Earthquake Research)
  • 채정훈 (기상기술개발원 차세대도시농림융합기상사업단) ;
  • 박문수 (기상기술개발원 차세대도시농림융합기상사업단) ;
  • 최영진 (기상기술개발원 차세대도시농림융합기상사업단)
  • Received : 2014.06.20
  • Accepted : 2014.07.29
  • Published : 2014.09.30

Abstract

A real-time quality control system for meteorological data (air temperature, air pressure, relative humidity, wind speed, wind direction, and precipitation) measured by an integrated meteorological sensor has been developed based on comparison of quality control procedures for meteorological data that were developed by the World Meteorological Organization and the Korea Meteorological Administration (KMA), using time series and statistical analysis of a 12-year meteorological data set observed from 2000 to 2011 at the Incheon site in Korea. The quality control system includes missing value, physical limit, step, internal consistency, persistence, and climate range tests. Flags indicating good, doubtful, erroneous, not checked, or missing values were added to the raw data after the quality control procedure. The climate range test was applied to the monthly data for air temperature and pressure, and its threshold values were modified from ${\pm}2{\sigma}$ and ${\pm}3{\sigma}$ to ${\pm}3{\sigma}$ and ${\pm}6{\sigma}$, respectively, in order to consider extreme phenomena such as heat waves and typhoons. In addition, the threshold values of the step test for air temperature, air pressure, relative humidity, and wind speed were modified to $0.7^{\circ}C$, 0.4 hPa, 5.9%, and $4.6m\;s^{-1}$, respectively, through standard deviation analysis of step difference according to their averaging period. The modified quality control system was applied to the meteorological data observed by the Weather Information Service Engine in March 2014 and exhibited improved performance compared to the KMA procedures.

Keywords

References

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  5. High-resolution urban observation network for user-specific meteorological information service in the Seoul Metropolitan Area, South Korea vol.10, pp.4, 2017, https://doi.org/10.5194/amt-10-1575-2017
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