Development of High-Resolution Fog Detection Algorithm for Daytime by Fusing GK2A/AMI and GK2B/GOCI-II Data

被引:3
作者
Yu, Ha-Yeong [1 ]
Suh, Myoung-Seok [1 ]
机构
[1] Kongju Natl Univ, Dept Atmospher Sci, Gongju, South Korea
关键词
Fog; GK2A/AMI; GK2B/GOCI-II; Machine learning; Fusion; High resolution;
D O I
10.7780/kjrs.2023.39.6.3.10
中图分类号
TP7 [遥感技术];
学科分类号
081102 ; 0816 ; 081602 ; 083002 ; 1404 ;
摘要
Satellite-based fog detection algorithms are being developed to detect fog in real-time over a wide area, with a focus on the Korean Peninsula (KorPen). The GEO-KOMPSAT-2A/Advanced Meteorological Imager (GK2A/AMI, GK2A) satellite offers an excellent temporal resolution (10 min) and a spatial resolution (500 m), while GEO-KOMPSAT-2B/Geostationary Ocean Color Imager-II (GK2B/GOCI-II, GK2B) provides an excellent spatial resolution (250 m) but poor temporal resolution (1 h) with only visible channels. To enhance the fog detection level (10 min, 250 m), we developed a fused GK2AB fog detection algorithm (FDA) of GK2A and GK2B. The GK2AB FDA comprises three main steps. First, the Korea Meteorological Satellite Center's GK2A daytime fog detection algorithm is utilized to detect fog, considering various optical and physical characteristics. In the second step, GK2B data is extrapolated to 10-min intervals by matching GK2A pixels based on the closest time and location when GK2B observes the KorPen. For reflectance, GK2B normalized visible (NVIS) is corrected using GK2A NVIS of the same time, considering the difference in wavelength range and observation geometry. GK2B NVIS is extrapolated at 10-min intervals using the 10-min changes in GK2A NVIS. In the final step, the extrapolated GK2B NVIS, solar zenith angle, and outputs of GK2A FDA are utilized as input data for machine learning (decision tree) to develop the GK2AB FDA, which detects fog at a resolution of 250 m and a 10-min interval based on geographical locations. Six and four cases were used for the training and validation of GK2AB FDA, respectively. Quantitative verification of GK2AB FDA utilized ground observation data on visibility, wind speed, and relative humidity. Compared to GK2A FDA, GK2AB FDA exhibited a fourfold increase in spatial resolution, resulting in more detailed discrimination between fog and non-fog pixels. In general, irrespective of the validation method, the probability of detection (POD) and the Hanssen-Kuiper Skill score (KSS) are high or similar, indicating that it better detects previously undetected fog pixels. However, GK2AB FDA, compared to GK2A FDA, tends to over-detect fog with a higher false alarm ratio and bias.
引用
收藏
页码:1779 / 1790
页数:12
相关论文
共 17 条
  • [1] Cermak J., 2006, Doctoral dissertation, DOI [10.17192/z2006.0149, DOI 10.17192/Z2006.0149]
  • [2] Summary of current radiometric calibration coefficients for Landsat MSS, TM, ETM+, and EO-1 ALI sensors
    Chander, Gyanesh
    Markham, Brian L.
    Helder, Dennis L.
    [J]. REMOTE SENSING OF ENVIRONMENT, 2009, 113 (05) : 893 - 903
  • [3] EYRE JR, 1984, METEOROL MAG, V113, P266
  • [4] Fog research:: A review of past achievements and future perspectives
    Gultepe, I.
    Tardif, R.
    Michaelides, S. C.
    Cermak, J.
    Bott, A.
    Bendix, J.
    Mueller, M. D.
    Pagowski, M.
    Hansen, B.
    Ellrod, G.
    Jacobs, W.
    Toth, G.
    Cober, S. G.
    [J]. PURE AND APPLIED GEOPHYSICS, 2007, 164 (6-7) : 1121 - 1159
  • [5] Development of Fog Detection Algorithm Using GK2A/AMI and Ground Data
    Han, Ji-Hye
    Suh, Myoung-Seok
    Yu, Ha-Yeong
    Roh, Na-Young
    [J]. REMOTE SENSING, 2020, 12 (19) : 1 - 24
  • [6] FogNet: A multiscale 3D CNN with double-branch dense block and attention mechanism for fog prediction
    Kamangir, Hamid
    Collins, Waylon
    Tissot, Philippe
    King, Scott A.
    Dinh, Hue Thi Hong
    Durham, Niall
    Rizzo, James
    [J]. MACHINE LEARNING WITH APPLICATIONS, 2021, 5
  • [7] Kang Tae-Ho, 2019, [Journal of Climate Research, 기후연구], V14, P221, DOI 10.14383/cri.2019.14.4.221
  • [8] Geostationary Ocean Color Imager (GOCI) Marine Fog Detection in Combination with Himawari-8 Based on the Decision Tree
    Kim, Donghee
    Park, Myung-Sook
    Park, Young-Je
    Kim, Wonkook
    [J]. REMOTE SENSING, 2020, 12 (01)
  • [9] Korean fog probability retrieval using remote sensing combined with machine-learning
    Lee, Han-Byul
    Heo, Jun-Hyung
    Sohn, Eun-Ha
    [J]. GISCIENCE & REMOTE SENSING, 2021, 58 (08) : 1434 - 1457
  • [10] Study on Classification of Fog Type based on Its Generation Mechanism and Fog Predictability Using Empirical Method
    Lee, Hyun-Dong
    Ahn, Joong-Bae
    [J]. ATMOSPHERE-KOREA, 2013, 23 (01): : 103 - 112