Kexue Han | Groundwater Hydrology | Editorial Board Member

Dr. Kexue Han | Groundwater Hydrology | Editorial Board Member

Research Assistant | Tsinghua University | China

Kexue Han’s research focuses on the migration, transformation, and retardation mechanisms of light non-aqueous phase liquid (LNAPL) pollutants within the vadose and capillary zones. His work investigates how soil moisture, permeability contrasts, and environmental factors influence pollutant seepage, adsorption, and kinetic behavior. By integrating experimental analysis, hydrological modeling, and machine-learning approaches such as random forest algorithms, he advances quantitative prediction of LNAPL concentrations and pollutant transport pathways. His studies contribute to improved understanding of groundwater contamination processes and support more effective management and remediation strategies for hazardous organic pollutants in complex hydrogeological environments.

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Xiaofeng Ding | Water Quality | Best Researcher Award

Mr. Xiaofeng Ding | Water Quality | Best Researcher Award

Graduate Student at Guangdong University of Technology | China

Mr. Xiaofeng Ding is a passionate and emerging researcher in the field of environmental engineering with a specialization in advanced computational approaches to address water quality challenges. His research bridges artificial intelligence with environmental sustainability, demonstrating a clear vision for solving critical ecological issues through innovative and data-driven methodologies.

Professional Profile 

Education Details

He is pursuing his Master’s degree in Environmental Engineering at the School of Ecological Environment and Resources, Guangdong University of Technology. His academic foundation is complemented by strong technical expertise in computational modeling, programming, and data analytics, which he effectively applies to environmental problem-solving.

Professional Experience

Mr. Ding has gained valuable research experience by contributing to projects supported by regional and national science foundations, focusing on water quality modeling and prediction. His work includes the development of deep learning models with practical applications for river basin management and water quality monitoring. He has collaborated with senior researchers and contributed to publications in internationally recognized journals, highlighting his ability to integrate technical proficiency with real-world environmental applications.

Research Interests

His core research interests lie in water quality prediction, environmental engineering, hydrology, and the integration of machine learning and deep learning models into environmental studies. His recent work on hybrid deep learning models has demonstrated improved accuracy in forecasting water quality trends, providing a robust foundation for early-warning systems and sustainable water resource management.

Awards and Honors

Mr. Ding’s contributions to scientific research are reflected in his peer-reviewed publication in a leading international journal, where he presented a novel hybrid time-series prediction model. His involvement in research projects supported by major funding agencies further showcases the recognition of his potential as a promising young researcher in the field of environmental science and artificial intelligence applications.

Publications Top Noted

Time Series Prediction of Water Quality Based on NGO-CNN-GRU Model—A Case Study of Xijiang River, China.

Year: 2025

Conclusion

Mr. Xiaofeng Ding stands out as a highly motivated and innovative young researcher whose work at the intersection of environmental engineering and artificial intelligence contributes significantly to water quality management and sustainability. With his strong research foundation and demonstrated potential, he is a deserving candidate for consideration for the Best Researcher Award.