Publications

Check our peer-reviewed journal papers and conference papers.

Assessment of Drought Conditions over Vietnam using Standardized Precipitation Evapotranspiration Index, MERRA-2 re-analysis, and Dynamic Land Cover

Journal of Hydrology: Regional Studies

December 1, 2020

In recent years Vietnam has experienced historical drought events possibly affected by climate change, but the analysis is challenging due to lack of necessary observations for monitoring drought conditions. The goal of this study is to analyze the characteristics of droughts over a 30-year period, using three spatial-resolution MERRA-2 datasets in Vietnam. The Standardized Precipitation Evapotranspiration Index (SPEI) was used as an index for drought based on precipitation and temperature. We also estimated the impacts of drought on agriculture using annual land cover datasets.

Field evaluation of portable soil water content sensors in a sandy loam

Vadose Zone Journal

May 1, 2020

This study compares the accuracy of six types of portable electromagnetic (EM) sensors for measuring soil water content (SWC). The study found that all SWC probes met the target accuracy after onsite correction with an RMSD of less than 0.025 m3 m−3. The study also observed that SWC data obtained from similar electrode lengths and from different manufacturers showed similar distributions over time with the same mean. Furthermore, combining SWC data from two different types of sensors using the maximize R method increased the accuracy of the results. The study found that the Pearson's correlation coefficient (R value) and RMSD values improved when datasets from two different types of sensors were combined, with an average R value improvement from .930 to .945, and the RMSD decreasing from 0.036 to 0.018 m3 m−3. These findings suggest that using multiple manufacturers’ EM-based SWC probes with site-specific correction can improve the accuracy of SWC measurements.

Dust emission modeling using a new high‐resolution dust source function in WRF‐Chem with implications for air quality

Journal of Geophysical Research: Atmospheres

September 1, 2019

This study investigates the impact of air-borne dust on the Middle East and North Africa region, and the effects of dust emissions originating from the Tigris-Euphrates basin on the air quality of the entire Arabian Peninsula. The study uses a newly developed high-resolution (~500 m) source function in Weather Research and Forecasting model coupled with chemistry (WRF-Chem) to simulate dust emission and evaluate results against observations. The study finds that the use of the new source function provides reasonable estimates of dust optical depth and concentrations, and that the atmospheric dust originating from the Tigris-Euphrates basin exceeds the particulate matter 10 air quality standards in several downwind cities. The study suggests that coordinated management of the Tigris-Euphrates basin is necessary to maintain good air quality across the Arabian Peninsula and highlights potential environmental implications related to mobilization of depleted uranium deposited in Kuwait and Southern Iraq during the Gulf War (1991).

Detecting global irrigated areas by using satellite and reanalysis products

Science of the Total Environment

August 1, 2019

This study proposes a method to detect global irrigated areas by combining satellite and reanalysis datasets. The proposed method assumes that irrigation is an unmodeled land surface process, while satellite observations can effectively detect irrigation signals in near real-time. The study uses three irrigation-dependent variables, soil moisture (SM), land surface temperature (LST), and surface albedo (AL), to derive the spatial extents of irrigation by calculating the difference between the remotely sensed and reanalysis datasets. The proposed irrigation map is compared to commonly used global irrigation maps, and the study finds that combining the individual detection maps shows reasonable agreement with the reference irrigated maps, overlapping with approximately 70% of the irrigated areas. The study suggests that the proposed method, alone or in combination with existing irrigation maps, can benefit studies regarding water and energy balance closure in near-real time for large-scale land surface models, minimizing uncertainties in model parameterization. Overall, the study highlights the importance of understanding the reliable extent and distribution of global irrigated areas, given the significant role of irrigation in meeting the world's food demand and modifying water and energy cycles.

Global dynamics of stored precipitation water in the topsoil layer from satellite and reanalysis data

Water Resources Research

February 1, 2019

This study explores the amount of precipitation stored in the topsoil layer (0-10 cm) across different vegetation and aridity indices on a global scale. The study uses data from four satellites and two reanalysis data sets to investigate spatial trends of stored precipitation. The study finds that drier and less vegetated soil retains more precipitation in the top layer of the soil, while wet and forested areas have a lower retention rate due to large runoff fluxes and plants intercepting water. Specifically, the topsoil retains 37% ± 11% of precipitated water three days after a rainfall event where the aridity index was greater than 5, while wet and forested areas retain 21% ± 2%. The study also conducts a sensitivity analysis of different sampling frequency values using modeled data sets to calculate the stored precipitation fraction metric. Overall, the study highlights the importance of understanding the spatial trends of stored precipitation in the topsoil layer for better land-atmosphere interactions.

Use of cyclone global navigation satellite system (CyGNSS) observations for estimation of soil moisture

Geophysical Research Letters

August 1, 2018

Accurate climate forecasting affects our daily lives. Large-scale farmers depend on weather forecasts to decide when to plant their crops. Bad timing can impact the whole years' harvest and thus the farmers' livelihoods. Even more importantly, people who live in floodplains and hurricane zones trust their lives to accurate weather forecasts. For these reasons and more, hydrologists need up-to-date knowledge of Earth's climate systems. And one of the most important sources of data may surprise you. The amount of moisture in just the first 8 mm of topsoil affects all of Earth's climate systems. Currently, National Aeronautics and Space Administration keeps track of soil moisture levels with a satellite called Soil Moisture Active Passive. However, it only provides soil moisture data every 2–3 days. We believe that we can do better, and we believe that we can do it with preexisting satellite systems. In 2017, National Aeronautics and Space Administration (NASA) launched eight microsatellites, called Cyclone Global Navigation Satellite System (CyGNSS), to predict cyclone paths. We have found that while the CyGNSS satellites are predicting cyclone paths, they can simultaneously measure changes in soil moisture around 5 times per day. Augmenting the Soil Moisture Active Passive data with CyGNSS would give us detailed prediction of weather changes in near-real time, protecting livelihoods and lives.

* = mentored by Dr. Kim

Changes in the Speed of the Global Terrestrial Water Cycle Due To Human Interventions

Kim et al.
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Under Preperation

Enhancing Detection of Flood-Inundated Areas using Novel Hybrid PoLSAR- Metaheuristic-Deep Learning Models

Fatima et al.
Remote Sensing of Environment
Under Review

Synergistic impact of simultaneously assimilating radar- and radiometer-based soil moisture retrievals on the performance of numerical weather prediction systems

Kwon et al.
Hydrology and Earth System Sciences
major revision

Simultaneous Estimation of Soil Moisture and Soil Organic Matter from Dielectric Measurements - Part 1: Optimal Estimation Strategy

Park et al.
Agricultural and Forest Meteorology
under review

Simultaneous Estimation of Soil Moisture and Soil Organic Matter from in situ Dielectric - Part 2: Application of Optimal Estimation and Machine Learning Approaches

Park et al.
Agricultural and Forest Meteorology
under review

Evaluating Deep Learning Architectures for Streamflow Flash Drought Prediction Across the Contiguous United States

Bakar et al.
Journal of Hydrology
minor revision

Unsupervised Neural and Statistical Clustering for Scalable Rainfall Estimation in Data-Sparse Regions

Saeedi et al.
Water Resources Research
Minor Revision

Dynamics of groundwater-land surface response times as a dryland flash drought diagnosis

Nguyen et al.
Communications Earth & Environment
Under review

Domain-Robust Flood Mapping with PolSAR-Informed Deep Learning in Data-Denied Regions: Evidence from Arid and Monsoonal Environments

Lee et al.
IEEE Transactions on Geoscience & Remote Sensing
Under Review

L-band-like Soil Moisture and Vegetation Optical Depth Can be Retrieved from C-band Soil Moisture

Lee et al.
IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
to be submitted

Process-Guided Graph Attention Network for Streamflow Predictions in Data-Sparse Regions

Budmala, Kona, Bhowmik, and Kim
Journal of Hydrology
under review

Advancing Flash Drought Prediction from the Land-Atmosphere Perspective: Potential of Remote Sensing Data and Artificial Intelligence Approaches

Kim et al.
TBD
to be submitted

Runoff nonlinearities contribute to increased fall drought susceptibility

Crow, Crompton, Feldman, Anderson, and Kim
Geophysical Research Letters
to be submitted

Beyond satellite-based precipitation data: A novel soil moisture physics framework with Green–Ampt and Bayesian optimization for rainfall estimation

Saeedi, Kim, and Lakshmi
npj Climate and Atmospheric Science
under review

Groundwater flash droughts: global occurrence, terrestrial propagation, and ocean-atmosphere-land drivers

Nguyen and Kim*
One Earth
to be submitted

The First Nationwide Assessment of Water Quality and Its Trends Across South Korea Using Integrated Optical Satellite and Meteorological Observations with a Fine-Tuning Domain Adaptation Approach

Lee and Kim*
TBD
to be submitted

Refining Satellite-Based Soil Moisture Estimations with a Shared Latent Dynamic Feature

Park et al.
GIScience & Remote Sensing
major revision

Seasonal, Pixel-Wise Dynamic SM2RAIN–NWF Parameterization over CONUS via Physics-Informed Deep Learning

M. Saeedi, Z. Zhu, H. Kim, J. Bolten, M. Cosh, V.Lakshmi
International Geoscience and Remote Sensing Symposium
August 1, 2026

Developing the first NASA-Korea Core Validation Site for Microwave Satellite Systems using Very Dense In-situ Soil Moisture Networks

K. Park, J. Jeong, J. Lee, H. Kim
International Geoscience and Remote Sensing Symposium
August 1, 2026

A Joint Retrieval Of Soil Moisture And Vegetation Parameters From Soil Moisture Active Passive

J. Lee, S. Yueh, D. Entekhabi, A. Colliander, J. Im, C. Park, H. Kim
International Geoscience and Remote Sensing Symposium
August 1, 2026

Multi-Sensor Uav Observations For Calibration And Validation Of Super High-Resolution Soil Moisture Data To Support Spaceborne Microwave Soil Moisture Retrievals

J. Jeong, J. Lee, H. Kim
International Geoscience and Remote Sensing Symposium
August 1, 2026

Collaborative Core Validation Site Development For Future Mission Support Within An Integrated NASA-Korea AI Framework For High-Resolution Microwave Remote Sensing

H. Kim
International Geoscience and Remote Sensing Symposium
August 1, 2026

Reconstruction And Prediction Of Missing Radiometric Parameters For Microwave Satellite Systems With Meteorological AI Foundation Models

D. Lee, S. Kim, S. Kim, and H. Kim
International Geoscience and Remote Sensing Symposium
August 1, 2026

An End-to-End Foundation Model for Global Hydrological Estimation Using Multi-Sensor Microwave Observations

S. Kim, S. Kim, and H. Kim
Asia Oceania Geosciences Society
August 1, 2026

Land Data Assimilation of Microwave Satellite-Retrived Surface Soil Moisture Using a Foundation Model

S. Kim, S. Kim, and H. Kim
Asia Oceania Geosciences Society
August 1, 2026

Observing Dynamic Surface Water and Its Influence on Land-Atmosphere Coupling

S. Cho, E. Lee, H. Kim
Asia Oceania Geosciences Society
August 1, 2026

Multi-Sensor Uav Microwave Observations For Satellite Calibration/Validation And Field-Scale Soil Moisture Downscaling For Agricultural Applications

J. Jeong, J. Lee, H. Kim
Asia Oceania Geosciences Society
August 1, 2026

Developing The First NASA-Korea Core Validation Site To Support Current And Future Microwave Satellite Systems For Soil Moisture Retrieval

H. Kim, K. Park, J. Jeong, J. Lee
Asia Oceania Geosciences Society
August 1, 2026

Can flash droughts be revealed through subsurface scattering effects on microwave bistatic radar-based CYGNSS soil moisture retrievals?

H. Nguyen, E. Choi, and H. Kim
Asia Oceania Geosciences Society
August 1, 2026

Microwave-Informed Foundation Modeling for All-Weather Hydrological State Reconstruction

E. Choi, S. Cho and H. Kim
Asia Oceania Geosciences Society
August 1, 2026

Evaluation of Foundation Model-Based Precipitation Using Microwave Satellite Missions

E. Lee, SG. Kim, D. Lee, and H. Kim
Asia Oceania Geosciences Society
August 1, 2026

Toward Differentiable Microwave Observation Operators Using Foundation Models and Deep Neural Networks

D. Lee, E. Lee and H. Kim
Asia Oceania Geosciences Society
August 1, 2026

Physics-Informed Neural Network-based Estimation of Soil Moisture with Tau-Omega Model Parameters from SMAP L-band Brightness Temperatures

J. Lee, J. Im, H. Kim
Asia Oceania Geosciences Society
August 1, 2026

Leveraging Weather Foundation Models for Hydrological Applications: Enhancing Hydrological Prediction through Sophisticated Decoder Design

S. Kim, D. Lee, S. Kim, and H. Kim
European Geosciences Union
May 1, 2026

Fraternal Twin Experiments for Satellite-Constrained Land Data Assimilation Using Deep Learning Surrogate Models

S. Kim and H. Kim
European Geosciences Union
May 1, 2026

Bridging Observational Gaps in Microwave Satellite Signals Using a Meteorological Foundation Models

D. Lee, S. Kim, S. Kim, and H. Kim
European Geosciences Union
May 1, 2026

Weather and Climate Foundation Models Enhance Subseasonal-to-Seasonal (S2S) Precipitation Prediction Using Multi-Source Satellite Observations

E. Lee, S. Kim, D. Lee, V. Budamala, and H. Kim
European Geosciences Union
May 1, 2026

Turning Streams into Rain Gauges: Leveraging Long-Term Streamflow Data to Recover Historical Precipitation

M. Saeedi, H. Kim, J. Bolten, J. Eylander, S. Crisanti, and V. Lakshmi
American Geophysical Union
December 1, 2025

A Novel Hybrid CNN-LSTM Approach to Dynamically Parameterize the Soil Water Balance for Improved and Self-Calibration of Global Rainfall Estimation

M. Saeedi, Z. Zhu, H. Kim, J. Bolten, M. Cosh and V. Lakshmi
American Geophysical Union
December 1, 2025

Understanding drivers and spatial propagation of flash drought in the Contiguous United States using Deep Learning and Explainable AI

S. Bakar, H. Kim, J. Basara, P. Beling, and V. Lakshmi
American Geophysical Union
December 1, 2025

Integrating Temporal and Spatial Strengths: Advancing High-Resolution Global Soil Moisture Gap-Filling through POBI and NSTI Synergy

Z. Zhu, H. Kim, J. Eylander, S. Crisanti, V. Lakshmi
American Geophysical Union
December 1, 2025

Evaluating the Impact of SMAP Soil Moisture Spatial Resolution on Land Assimilation Efficiency and Atmospheric Response

E. Kim, Y. Kwon, S. Jun, K, Seol, I. Kwon, Y. Lee, and H. Kim
American Geophysical Union
December 1, 2025

Assessing Seasonal Soil Moisture–Evapotranspiration Coupling Strength and Its Drought Implications Using Triple Collocation Analysis

E. Choi, S. Kim, Y. Kwon
American Geophysical Union
December 1, 2025

Deep Learning-Based Surrogate Modeling for the Evaluation of Land Data Assimilation Schemes

S. Kim, Y. Kwon, and H. Kim
American Geophysical Union
December 1, 2025

An Analytical Approach for Joint Retrieval of Soil Moisture and Vegetation Parameters from SMAP Observations

J. Lee, J. Im, C. Park, and H. Kim
American Geophysical Union
December 1, 2025

Soil Moisture Estimation Using Surrogate Model and Land Data Assimilation

S. Kim, Y. Kwon, and H. Kim
Asia Oceania Geosciences Society
August 1, 2025

Reconstruct Snowmelt Periods from 1950 to 2100 and Analyze Snowmelt Trends: Using satellite and climate model simulations

N. Kwon, Y. Kown, and H. Kim
Asia Oceania Geosciences Society
August 1, 2025

Predicting root zone soil moisture from satellite-based surface soil moisture with machine learning and deep learning in the United States

K. Park and H. Kim
Asia Oceania Geosciences Society
August 1, 2025

Flood Inundation Prediction and Evaluation in North Korea Using Sentinel-1 Images and Deep Learning Model

J. Kim, S. Lee, and H. Kim
Asia Oceania Geosciences Society
August 1, 2025

Deep Learning-Based Dry-Down Modeling for Soil Moisture Gap-Filling and Land Data Assimilation Applications

D. Nursultanova, H. Kim, S. Kim, and Y. Kwon
Asia Oceania Geosciences Society
August 1, 2025

Groundwater Flash Drought and Its Potential Ocean-Land-Atmosphere Drivers Via Explainable Artificial Intelligence

H. Nguyen and H. Kim
Asia Oceania Geosciences Society
August 1, 2025

Investigation of subsurface scattering signal effects on CYGNSS soil moisture retrieval

H. Nguyen, W. Wagner, and H. Kim
IEEE GNSS+R 2025
June 1, 2025

Investigation of subsurface scattering signal effects on CYGNSS soil moisture retrieval

H. Kim, W. Wagner, N. Nguyen, S. Kim, and Y. Kwon
IEEE GNSS+R 2025
June 1, 2025

Global-scale Satellite-based Agricultural Drought Monitoring from the Land Atmosphere Interaction Perspective

A. Bolatbekkyzy, H. Nguyen and H. Kim
American Geophysical Union
December 1, 2024

Developing the First Long-Term Soil Moisture and Brightness Temperature Measurement Site in South Korea Using L-Band Radiometers and Drones

K. Park, D. Kim, H. Kim
American Geophysical Union
December 1, 2024

Impact of Altered Snow Patterns on Spring Wildfires in Korean Peninsula Using Reanalysis Data in a Warming Climate

N. Kwon, E. Cho, and H. Kim
American Geophysical Union
December 1, 2024

Development of Chlorophyll-ɑ Prediction Model for Inland Reservoirs Using Satellite and Land Surface Model: Applying Deep Learning Approach

S. Lee and H. Kim
American Geophysical Union
December 1, 2024

Enhancing Land Data Assimilation By Considering Spatio-Temporal Error Dynamics of Satellite-based Soil Moisture Data: Integrating TCA and Deep Learning for Accurate Uncertainty Estimation

S. Kim, Y. Kwon, and H. Kim
American Geophysical Union
December 1, 2024

Characteristic Time of Groundwater Recharge as a Climate Indicator for Monitoring Flash Drought

H. Nguyen, A. Bolatbekkyzy and H. Kim
American Geophysical Union
December 1, 2024

Eliminating Calibration Periods in Rainfall Estimation through Soil Moisture Using Growing Neural Gas Clustering

M. Saeedi, S. Kim, H. Kim, and V. Lakshmi
American Geophysical Union
December 1, 2024

Application of Deep Learning Techniques for Streamflow Flash Drought Prediction in the Mississippi River Basin

S. Bakar, H. Kim, and V. Lakshmi
American Geophysical Union
December 1, 2024

Utilizing Large Language Models for Enhanced Soil Moisture Prediction and Gap-Filling in Satellite-Derived Data

Z. Zhu, H. Kim, Z. Zheng, V. Lakshmi
American Geophysical Union
December 1, 2024

Assimilation of Radar Backscatter-based Soil Moisture Data with Time- and Space-varying Observation Error Estimation to Account for Subsurface Scattering

H. Kim, S. Kim, Y. Kwon, W. Wagner
American Geophysical Union
December 1, 2024

Global Scale Mapping of Subsurface Scattering Signals Impacting Scatterometer and SAR Soil Moisture Retrievals

W. Wagner, R. Lindorfer, B. Raml, M. Schobben, H. Kim, and T. Ullmann
American Geophysical Union
December 1, 2024

Simultaneous use of ASCAT and SMAP soil moisture retrievals within an operational land-atmosphere coupled data assimilation system

Y. Kwon, S. Jun, K. Seol, I. Kwon, E. Kim, S. Cho and H. Kim
American Geophysical Union
December 1, 2024

Comparative Analysis of the 2021-2022 Droughts in Kazakhstan, South Korea, and the USA using Remote Sensing and Reanalysis Data

A. Bolatbekkyzy, H. Nguyen and H. Kim
Asia Oceania Geosciences Society
August 1, 2024

Contact me

If you have a keen interest in the intersection of climate change and its impact on hydrological research fields, I encourage you to consider pursuing a Master's, PhD, or postdoctoral position. By delving deeper into this critical area of study, you can play an essential role in addressing the world's most pressing environmental challenges and help safeguard our water resources, ecosystems, and communities. Your dedication and expertise can significantly contribute to the development of sustainable solutions and innovative approaches to hydrological research. Embark on this exciting journey and become part of the passionate community of scientists working towards a more resilient and environmentally responsible future.