Spremljaj
Dongjin Cho
Naslov
Navedeno
Navedeno
Leto
Comparative assessment of various machine learning‐based bias correction methods for numerical weather prediction model forecasts of extreme air temperatures in urban areas
D Cho, C Yoo, J Im, DH Cha
Earth and Space Science 7 (4), e2019EA000740, 2020
1952020
Improvement of spatial interpolation accuracy of daily maximum air temperature in urban areas using a stacking ensemble technique
D Cho, C Yoo, J Im, Y Lee, J Lee
GIScience & Remote Sensing 57 (5), 633-649, 2020
682020
Improved retrievals of aerosol optical depth and fine mode fraction from GOCI geostationary satellite data using machine learning over East Asia
Y Kang, M Kim, E Kang, D Cho, J Im
ISPRS Journal of Photogrammetry and Remote Sensing 183, 253-268, 2022
642022
Estimation of all-weather 1 km MODIS land surface temperature for humid summer days
C Yoo, J Im, D Cho, N Yokoya, J Xia, B Bechtel
Remote Sensing 12 (9), 1398, 2020
532020
Improving local climate zone classification using incomplete building data and Sentinel 2 images based on convolutional neural networks
C Yoo, Y Lee, D Cho, J Im, D Han
Remote Sensing 12 (21), 3552, 2020
502020
A novel ensemble learning for post-processing of NWP Model's next-day maximum air temperature forecast in summer using deep learning and statistical approaches
D Cho, C Yoo, B Son, J Im, D Yoon, DH Cha
Weather and Climate Extremes 35, 100410, 2022
462022
Spatial downscaling of MODIS land surface temperature: Recent research trends, challenges, and future directions
C Yoo, J Im, S Park, D Cho
Korean Journal of Remote Sensing 36 (4), 609-626, 2020
332020
Downscaling MODIS nighttime land surface temperatures in urban areas using ASTER thermal data through local linear forest
C Yoo, J Im, D Cho, Y Lee, D Bae, P Sismanidis
International Journal of Applied Earth Observation and Geoinformation 110 …, 2022
302022
All-sky 1 km MODIS land surface temperature reconstruction considering cloud effects based on machine learning
D Cho, D Bae, C Yoo, J Im, Y Lee, S Lee
Remote Sensing 14 (8), 1815, 2022
292022
Thermal characteristics of Daegu using land cover data and satellite-derived surface temperature downscaled based on machine learning
C Yoo, J Im, S Park, D Cho
Korean Journal of Remote Sensing 33 (6_2), 1101-1118, 2017
232017
Multi-task learning based tropical cyclone intensity monitoring and forecasting through fusion of geostationary satellite data and numerical forecasting model output
J Lee, C Yoo, J Im, Y Shin, D Cho
Korean Journal of Remote Sensing 36 (5_3), 1037-1051, 2020
132020
A hybrid machine learning approach to investigate the changing urban thermal environment by dynamic land cover transformation: a case study of Suwon, Republic of Korea
S Lee, C Yoo, J Im, D Cho, Y Lee, D Bae
International Journal of Applied Earth Observation and Geoinformation 122 …, 2023
122023
Diurnal urban heat risk assessment using extreme air temperatures and real-time population data in Seoul
C Yoo, J Im, Q Weng, D Cho, E Kang, Y Shin
Iscience 26 (11), 2023
102023
Generation of daily high-resolution sea surface temperature for the seas around the Korean peninsula using multi-satellite data and artificial intelligence
S Jung, M Choo, J Im, D Cho
Korean Journal of Remote Sensing 38 (5_2), 707-723, 2022
62022
Analysis of thermal environment by urban expansion using KOMPSAT and Landsat 8: Sejong City
C Yoo, S Park, Y Kim, D Cho
Korean Journal of Remote Sensing 35 (6_4), 1403-1415, 2019
62019
A new statistical downscaling approach for short‐term forecasting of summer air temperatures through a fusion of deep learning and spatial interpolation
D Cho, J Im, S Jung
Quarterly Journal of the Royal Meteorological Society 150 (760), 1222-1242, 2024
42024
Development of model output statistics based on the least absolute shrinkage and selection operator regression for forecasting next‐day maximum temperature in South Korea
D Yoon, K Kim, DH Cha, MI Lee, J Im, D Cho, KH Min
Quarterly Journal of the Royal Meteorological Society 148 (745), 1929-1944, 2022
42022
Comparative Assessment of Linear Regression and Machine Learning for Analyzing the Spatial Distribution of Ground-level NO2 Concentrations: A Case Study for …
E Kang, C Yoo, Y Shin, D Cho, J Im
Korean Journal of Remote Sensing 37 (6_1), 1739-1756, 2021
42021
Trend analysis of vegetation changes of Korean fir (Abies koreana Wilson) in Hallasan and Jirisan using MODIS imagery
M Choo, C Yoo, J Im, D Cho, Y Kang, H Oh, J Lee
Korean Journal of Remote Sensing 39 (3), 325-338, 2023
32023
Sensitivity analysis for CAS500-4 atmospheric correction using simulated images and suggestion of the use of geostationary satellite-based atmospheric parameters
Y Kang, D Cho, D Han, J Im, J Lim, K Oh, E Kwon
Korean Journal of Remote Sensing 37 (5), 1029-1042, 2021
32021
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