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http://dx.doi.org/10.7780/kjrs.2006.22.5.373

Fog Sensing over the Korean Peninsula Derived from Satellite Observation of MODIS and GOES-9  

Yoo, Jung-Moon (Department of Science Education, Ewha Womans University)
Jeong, Myeong-Jae (NASA/GSFC)
Yoo, Hye-Lim (Department of Science Education, Ewha Womans University)
Rhee, Ju-Eun (Department of Science Education, Ewha Womans University)
Hur, Young-Min (Department of Science Education, Ewha Womans University)
Ahn, Myoung-Hwan (Remote Sensing Research Laboratory, METRI/KMA)
Publication Information
Korean Journal of Remote Sensing / v.22, no.5, 2006 , pp. 373-377 More about this Journal
Abstract
Seasonal threshold values for fog detection over the ten airport areas in the Korean Peninsula have been derived, using the satellite-observed data of polar-orbit (Aqua/Terra MODIS) and geostationary (GOES-9) during two years. The values are obtained from reflectance at $0.65{\mu}m\;(R_{0.65})$ and the difference in brightness temperature between $3.7{\mu}m\;and\;11{\mu}m\;(T_{3.7-11})$. In order to examine the discrepancy between the threshold values of two kinds of satellites, the following parameters have been analyzed under the condition of daytime/nighttime and fog/clear-sky, utilizing their simultaneous observations over the Seoul Metropolitan Area. The parameters are the brightness temperature at $3.7{\mu}m\;(T_{3.7})$, the temperature at $11{\mu}m\;(T_{11}$, and $T_{3.7-11}$ for day and night. The $R_{0.65}$ data are additionally included in the daytime. The GOES-9 thresholds over the seven airport areas except the Cheongju airport have revealed the accuracy of 50% in the daytime and 70% in the nighttime, based on statistical verification for the independent samples as follows; FAR, POD and CSI. However, the accuracy decreases in the foggy cases with twilight, precipitation, short persistence, or the higher cloud above fog.
Keywords
Fog detection; MODIS; GOES-9; infrared threshold; reflectance;
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