Jing Xie | Data Analysis Techniques | Best Researcher Award

Dr. Jing Xie | Data Analysis Techniques | Best Researcher Award

Peking University | China

Dr. Jing Xie is a highly accomplished researcher currently working as a Research Assistant Fellow in the Department of Geophysics at Peking University, Beijing, China. With a Ph.D. in Geological Resources and Geological Engineering from Central South University, his expertise lies at the intersection of engineering and environmental geophysical exploration, focusing on self-potential surveys, electrical resistivity tomography, numerical simulation, inversion, and physical simulation experiments. His academic career has been marked by cutting-edge contributions in geophysics, specifically in the study of self-potential data and deep learning algorithms.

👨‍🎓Profile

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📚 Early Academic Pursuits

Dr. Xie embarked on his academic journey by obtaining a Bachelor’s degree in Exploration Technology and Engineering from Chengdu University of Technology (2013-2017). Driven by his passion for geophysics, he pursued a Doctoral degree at Central South University, specializing in Geological Resources and Geological Engineering. This solid educational foundation laid the groundwork for his innovative research in the fields of geophysical exploration and data inversion techniques.

💼 Professional Endeavors

After completing his doctoral studies, Dr. Xie became a Research Assistant Fellow at Peking University in 2023, where he continues to contribute to the field of geophysics. His professional trajectory also includes an enriching experience as a Visiting Student at Boise State University (2019-2021), where he engaged in collaborative research, expanding his knowledge and network in the global geophysical community.

🔬 Contributions and Research Focus

Dr. Xie’s research primarily revolves around self-potential surveys, electrical resistivity tomography, and numerical modeling, with a particular emphasis on inversion techniques and deep learning algorithms. Notably, he has worked on real-time monitoring of phenomena such as metal anodizing corrosion, underground fluid migration, and seepage detection in earth-filled dams. His work contributes to environmental monitoring, engineering geophysics, and natural resource exploration, offering practical solutions to complex challenges.

Dr. Xie’s deep learning algorithm for locating contaminant plumes from self-potential data is one of his significant contributions, showcasing his innovative approach to addressing real-world issues in geophysical exploration.

🌍 Impact and Influence

Dr. Xie’s work has already begun to leave a significant mark on the field of geophysics. His contributions to self-potential measurements, deep learning applications, and real-time monitoring systems have had a lasting impact on environmental and engineering geophysical exploration. His research is actively shaping future practices in mineral exploration, seepage detection, and soil petrophysical property estimation, providing innovative solutions to longstanding challenges in geophysics and engineering.

📈 Academic Cites

Dr. Xie’s work is widely recognized in the geophysics community, with over 20 publications in leading scientific journals such as IEEE Transactions on Geoscience and Remote Sensing, Geophysical Prospecting, and Chinese Journal of Geophysics. His influential publications include works on 3D resistivity modeling, time-lapse inversion techniques, and geobattery systems, among many others. This high citation count reflects the relevance and importance of his research contributions.

🛠️ Research Skills

Dr. Xie possesses a comprehensive skill set, excelling in numerical modeling, data inversion, and simulation experiments. His expertise in self-potential measurements, electrical resistivity tomography, and deep learning techniques has enabled him to develop novel algorithms for data analysis, advancing the state of the art in geophysical exploration. Additionally, he is proficient in 3D modeling, finite-infinite element coupling, and particle filtering, techniques that he applies in both laboratory and field settings.

🎓 Teaching Experience

Though Dr. Xie is primarily focused on research, he also has valuable teaching experience. As a research assistant fellow, he contributes to graduate-level courses in geophysics and geotechnical engineering, helping to shape the next generation of geophysical researchers. His academic expertise also allows him to mentor graduate students and young researchers, guiding them in their own research pursuits.

🌟 Legacy and Future Contributions

Dr. Xie’s future contributions to the field of geophysics are poised to further advance engineering geophysical exploration and environmental monitoring. His ongoing work on self-potential inversion techniques and numerical modeling will likely drive new innovations in natural resource exploration, seepage detection, and environmental risk management. With a strong foundation in both theoretical research and practical applications, Dr. Xie is well-positioned to leave a lasting legacy in the geophysical sciences.

Publications Top Notes

Time-lapse inversion of self-potential data through particle filtering

  • Authors: Cui, Y.-A., Peng, Y., Xie, J.
    Journal: Geophysical Prospecting
    Year: 2025

Three-dimensional analytical solution of self-potential from regularly polarized bodies in a layered seafloor model

  • Authors: Zhang, P., Cui, Y.-A., Xie, J., Liu, J.
    Journal: Geoscientific Model Development
    Year: 2024

Lab-based experiment on real-time monitoring of underground fluid migration by self-potential measurement

  • Authors: Xie, J., Cui, Y., Guo, Y.
    Journal: Acta Geophysica Sinica
    Year: 2024

Compact source inversion of self-potential data generated by geomicrobes

  • Authors: Luo, Y., Cui, Y.-A., Guo, Y., Xie, J., Liu, J.
    Journal: Journal of Applied Geophysics
    Year: 2024

Time-lapse self-potential signals from microbial processes: A laboratory perspective

  • Authors: Guo, Y., Cui, Y.-A., Zhang, C., Cao, C., Liu, J.
    Journal: Journal of Applied Geophysics
    Year: 2024

 

 

Yang Chen | Machine Learning Award | Best Researcher Award

Dr. Yang Chen, Machine Learning Award, Best Researcher Award

PHD at Harbin Engineering University, China

Yang CHEN, Ph.D., is a dedicated researcher specializing in ship and marine structures design and manufacture. Currently pursuing a Ph.D. at Harbin Engineering University, his focus lies in predicting motion responses of marine engineering through deep learning and digital twin technologies. With a Master’s from the same institution and a Bachelor’s from Zhejiang Ocean University, Yang has garnered numerous accolades, including scholarships and awards for his academic excellence. His research contributions span predictive mooring tension models for semi-submersible platforms, showcasing his expertise in offshore intelligent operation and maintenance. Yang’s innovative work holds promise for enhancing safety and efficiency in maritime industries.

Professional Profiles:

Scopus profile

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Education:

Ph.D. Student College of Shipbuilding Engineering, Harbin Engineering University, Harbin, China 09/2021 – Present Major: Ship and Marine Structures Design and Manufacture Research Area: Motion response prediction of marine structures; Deep learning; Marine engineering digital twin; Offshore intelligent operation and maintenance Thesis Title: Research on the motion response and mooring tension prediction method for semi-submersible production platforms M.Sc. Harbin Engineering University, Harbin, China 09/2020 – 06/2021 B.S. Zhejiang Ocean University, Zhoushan, China 09/2016 – 06/2020

Honors and Awards:

The First Prize Scholarship for Harbin Engineering University [2023] The Three-good students for Harbin Engineering University [2023] The Second Prize Scholarship for Harbin Engineering University [2022] The Second Prize Scholarship for Harbin Engineering University [2021] Zhejiang Ocean University Youth May Fourth Medal [2020]

Research Area:

Motion response prediction of marine structures, Offshore intelligent operation and maintenance, Deep learning, Marine engineering digital twin.

Research Works:

Lihao Yuan, Yang Chen, Yingfei Zan, Shenghua Zhong, Meirong Jiang, Yaogang Sun. A novel hybrid approach to mooring tension prediction for semi-submersible offshore platforms. Ocean Engineering, 287, 115776, 2023. Lihao Yuan, Yang Chen, Zhi Li. Real-time prediction of mooring tension for semi-submersible platforms[J]. Applied Ocean Research, 2024, 146: 103967.

Research Focus:

Yang CHEN, Ph.D., specializes in predictive modeling and analysis within the realm of marine engineering. His research focus primarily lies in developing innovative methods for predicting mooring tension in semi-submersible offshore platforms. With a keen interest in utilizing hybrid approaches and real-time data processing, Yang aims to enhance the efficiency and safety of offshore operations. By integrating deep learning techniques and digital twin technologies, he seeks to provide accurate and timely predictions, crucial for optimizing the performance of marine structures. Yang’s contributions represent a significant advancement in the field, promising practical solutions for the challenges faced in offshore engineering and operation management.

Publications (TOP NOTES)

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Emel Koc | Machine Learning Award | Best Researcher Award

Dr. Emel Koc, Machine Learning Award, Best Researcher Award

PHD at Istanbul Okan University, Turkey

Emel Koç is a Computer Engineering Ph.D. candidate at Istanbul Okan University, specializing in image analysis with machine learning and deep learning approaches. With a background in Information Systems and Technologies from Bilkent University, Emel has held various leadership roles at Istanbul Okan University, focusing on sustainability, innovation, and learning application. She has contributed significantly to projects in clinical decision support systems and mobile game-based learning. Emel’s research, particularly in neuroimaging and biomedical image analysis, showcases her expertise in applying advanced computational techniques to solve real-world problems. Passionate about education, she also teaches courses in Artificial Intelligence and Management Information Systems.

Professional Profiles:

Orcid profile

Education:

Ph.D. Istanbul Okan University, Istanbul Institute of Science, Computer Engineering (2013 – 2024) Msc. Istanbul Okan University, Istanbul Institute of Science, Computer Engineering (2011 – 2013) B.S. Bilkent University, Ankara Faculty of Applied Sciences, Information Systems and Technologies (2006 – 2010)

Experience

Sustainability and Innovation Center Assistant Director, Istanbul Okan University, Istanbul (02.08.2023 – Present) Learning Application and Research Center Director, Istanbul Okan University, Istanbul (01.10.2012 – Present) IT Expert, Istanbul Okan University, Istanbul (25.10.2010 – 01.10.2012) Application Development Intern, Acıbadem Hospital, Istanbul (17.08.2009 – 17.02.2010)

Projects

INTOUCH-ICT Project: “ICT Professionals in Touch: New nonroutine skills via mobile game-based learning” (2013 – 2015) Master Thesis: Clinical decision support systems: Methods and applications (2012 – 2013) Multiplatform M-Learning System for More Qualified Courses in the ICT Era (2012)

Teaching

Instructor at Istanbul Okan University covering Artificial Intelligence, Neuroscience and Neuroimaging, and Management Information Systems

Honors & Awards

Received the Blackboard Catalyst Awards – Leading Change in 2021 for contributions to hybrid education transformation.

Research Focus:

Emel Koç’s research primarily focuses on the application of machine learning and data analysis techniques in healthcare and education domains. Her work spans diverse topics such as autism spectrum disorder detection using neural networks, comparative studies on feature selection methods for analyzing medical data, and the implementation of game-based education strategies. Additionally, Emel has contributed to research in clinical decision support systems and the evaluation of classification algorithms for medical diagnoses. Her interdisciplinary approach combines computer science and healthcare management, emphasizing innovation in leveraging technology to improve healthcare outcomes and educational practices.

Publications (TOP NOTES)

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