Publications

Check our peer-reviewed journal papers and conference papers.

From Theory to Hydrological Practice: Leveraging CYGNSS Data Over Seven Years for Advanced Soil Moisture Monitoring

Remote Sensing of Environment

January 31, 2025

This study explores the potential of the Cyclone Global Navigation Satellite System (CYGNSS) mission for soil moisture (SM) monitoring, highlighting its ability to capture fine-scale SM variability through high revisit frequencies at sub-daily intervals. While CYGNSS was originally designed for tropical cyclone monitoring, its seven-year data record demonstrates significant promise in reliably monitoring diurnal SM dynamics using spaceborne L-band bistatic radar and GNSS-Reflectometry (GNSS-R) technology.

Despite this potential, SM retrieval from CYGNSS remains limited by knowledge gaps and unique challenges tied to its technical design. This study addresses these gaps by analyzing CYGNSS real-world data, synthesizing recent advancements in mitigating external uncertainties, and improving SM inversion techniques. Notably, algorithm-related challenges include accurate partitioning of coherent and incoherent signal components and correcting attenuation effects caused by vegetation and surface roughness. Data-related challenges involve variations in CYGNSS spatial footprint, temporal frequency, signal penetration depth, and incidence angle changes, as well as excessive reliance on reference SM datasets for model calibration, validation, and training. The computational demands of processing CYGNSS’s rapid multi-sampling data further complicate its operational use.

Future research directions identified in this study focus on leveraging machine learning and deep learning approaches to improve CYGNSS SM data quality and quantity. Additionally, assimilating CYGNSS-derived SM data into physical models offers promising opportunities to enhance predictions of hydroclimatic variables and extreme climate events, addressing key challenges in water resource monitoring and climate resilience.

Over 60% precipitation transformed into terrestrial water storage in global river basins from 2002 to 2021

Communications Earth & Environment

January 31, 2025

This paper provides a novel quantitative assessment of the transformation of daily precipitation into terrestrial water storage across 121 global river basins over a two-decade period. The study introduces the average daily fraction of precipitation transformed into terrestrial water storage, leveraging enhanced terrestrial water storage statistical reconstruction and water storage data from the Gravity Recovery and Climate Experiment (GRACE) and its follow-on mission. We reveal that approximately 64% of land precipitation contributes to terrestrial water storage, with notable variations across different climatic and geographical regions. These findings offer critical insights into the interactions between precipitation, land surface processes, and climate change, providing valuable implications for hydrological modeling and future water resource management.

Improving Weather Forecast Skill of the Korean Integrated Model (KIM) by Assimilating SMAP Soil Moisture Anomalies

Quarterly Journal of the Royal Meteorological Society

November 1, 2024

This study examines the impact of assimilating Soil Moisture Active Passive (SMAP) data into the Korean Integrated Model (KIM) to improve global soil moisture estimates and weather forecasts. SMAP soil moisture retrievals are integrated into the Noah land surface model using the ensemble Kalman filter through NASA’s Land Information System. Experiments from March to July 2022 show that assimilating SMAP data, particularly with anomaly-based bias correction, significantly enhances soil moisture estimates and improves weather forecasts, especially in northern Africa and West

A Global Scale Analysis of Subsurface Scattering Signals Impacting ASCAT Soil Moisture Retrievals

IEEE Transactions on Geoscience and Remote Sensing

August 31, 2024

This research discusses the retrieval and validation of soil moisture data from the Advanced Scatterometer (ASCAT), focusing on its applications and challenges. ASCAT data, crucial for various uses like weather prediction and drought monitoring, are compared with similar data from other satellite missions. Validations using multiple datasets highlight dependencies on land cover and vegetation, revealing unexpected quality variations across different environments. A notable issue identified is subsurface scattering, often misattributed to other factors, impacting ASCAT data quality significantly. The study recommends masking affected data using developed indicators and masks to enhance accuracy in practical applications.

Seasonal-scale intercomparison of SMAP and fused SMOS-SMAP soil moisture products

Frontiers in Remote Sensing

August 30, 2024

This study evaluates the performance of two L-band passive microwave satellite sensors, the Soil Moisture and Ocean Salinity (SMOS) and Soil Moisture Active Passive (SMAP), in monitoring surface soil moisture (SM). The newly developed fused SM product (Fused-IB) derived from SMOS and SMAP observations is compared with the enhanced SMAP-L3 (SMAP-E) SM product against in situ SM data from the International Soil Moisture Network (ISMN) over the period 2016-2020. The comparison considers overall and seasonal performance, focusing on different land use and land cover (LULC) types. Results show that Fused-IB generally outperforms SMAP-E, especially in forested areas, due to the robust SMAP-IB algorithm and higher data coverage. Both products demonstrate higher accuracy in summer and autumn, but face increased uncertainties in forests, grasslands, and croplands during spring and winter due to vegetation growth and rainfall. This study highlights the importance of accounting for seasonal and eco-hydrological factors to improve the accuracy of SM retrieval algorithms.

Evaluation of a Combined Drought Indicator against Crop Yield Estimations and Simulations over the Argentine Humid Pampas

Theoretical and Applied Climatology

July 1, 2024

• The study evaluated the Combined Drought Indicator (CDI) in the Argentine Humid Pampas, focusing on its ability to track and characterize drought severity using precipitation deficits, soil moisture, and vegetation health anomalies.

• Strong spatial and temporal correlations were found among these variables, with the highest correlations observed for time lags of 0, 10, and 20 days, effectively capturing major drought events.

• The CDI aligned well with soybean and corn yield estimations and simulations, as well as official agricultural emergency declarations, demonstrating its effectiveness in representing drought impacts on agriculture.

• The study analyzed two significant drought events: the gradual and long-lasting 2008-2009 drought and the rapid-onset 2017-2018 flash drought, both of which severely affected crop yields and were well-represented by the CDI.

• Suggestions for improving the CDI include enhancing the temporal resolution of precipitation data and refining spatial resolution to better detect and monitor drought-affected regions, emphasizing the importance of collaborative efforts for advancing drought early warning systems.

* = mentored by Dr. Kim

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

Hyunglok Kim, Wade T. Crow, and Venkataraman Lakshmi
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Under Preperation

Developing Independent CYGNSS Soil Moisture Retrieval Algorithm with Mitigated Vegetation Effects: Incorporating a Two-Step and Relative SNR Approaches

Ziyue Zhu, Hyunglok Kim*, Venkataraman Lakshmi
Jounal of Remote Sensing
minor revision

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
Under Review

Flood inundation mapping with CYGNSS over CONUS: a two-step machine- learning-based framework

Wang et al.
Journal of Hydrology
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
under review

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

Mohammad et al.
Water Resources Research
Under Review

Impact of Land Use Land Cover Changes on Carbon and Water Cycle Interactions: Using Data Driven Modeling and Satellite Products

M. Umair, S. Khan, H. Kim, M. Azmat, S. Atif
American Geophysical Union, Fall Meeting
December 1, 2021

Impact of Climate Change on Road Networks: Travel Demand, Machine Learning, and Flooding Simulation Models

S. Ryu, H. Kim, E. Cho, R. Zhang
US-KOREA Conference on Science, Technology, and Entrepreneurship
January 1, 2021

Assimilation of SMAP-enhanced and SMAP/Sentinel-1A/B soil moisture data into land surface models

H. Kim, V. Lakshmi, S. Kumar, Y. Kwon
European Geosciences Union, General Assembly Conference
December 1, 2020

Producing Satellite-based Diurnal Time-scale Soil Moisture Retrievals using Existing Microwave Satellites and GNSS-R Data

H. Kim, V. Lakshmi
American Geophysical Union, Fall Meeting
December 1, 2020

Error Characteristic Assessments of Soil Moisture Estimates from Satellites and Land Surface Models: Focusing on Forested and Irrigated Regions

H. Kim, J. Wigneron, S.V. Kumar, J. Dong, W. Wagner, M.H. Cosh, D.D. Bosch, C.H. Collins, P.J. Starks, M.S. Seyfried, V. Lakshmi
American Geophysical Union, Fall Meeting
December 1, 2020

An Integrated Framework to Predict Peak Flood and Map Inundation Areas in the Chesapeake Bay Using Machine Learning Methods with High-Resolution Lidar DEM and Satellite Data

R. Zhang, H. Kim, L. Band, V. Lakshmi
American Geophysical Union, Fall Meeting
December 1, 2020

Detecting Inland Waterbodies Using GNSS-R Data: Intercomparison of Previous Methods and a New Machine Learning Approach

G. Pavur, H. Kim, V. Lakshmi
American Geophysical Union, Fall Meeting
December 1, 2020

Leveraging Soil Moisture for Early Flood Detection

V. Sunkara, C. Doyle, H. Kim, B. Tellman, V. Lakshmi
American Geophysical Union, Fall Meeting
December 1, 2020

Assimilation of GPS soil moisture data from CYGNSS into land surface models

H. Kim, Y. Kwon, S.V. Kumar, V. Lakshmi
American Geophysical Union, Fall Meeting
December 1, 2019

The Impact of Irrigation on the Water Cycle in the Continental United States (CONUS)

H. Kim, V. Lakshmi
American Geophysical Union, Fall Meeting
December 1, 2018

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.