Prof. Xiaoying Song | Network Analysis Awards | Best Researcher Award

Prof. Xiaoying Song | Network Analysis Awards | Best Researcher Award

Prof. Xiaoying Song, Wuhan University of Science and Technology, China

Xiaoying Song is a prominent Professor and Doctoral Supervisor in the School of Information Science and Engineering at Wuhan University of Science and Technology, China. Selected by the Hubei Chutian Scholar Program, she has made significant contributions to the fields of microelectronics and solid-state electronics. Dr. Song obtained her PhD in Microelectronics and Solid State Electronics from Wuhan University in 2017, following her Bachelor’s degree in Electronic Science and Technology from the same institution. Since joining Wuhan University of Science and Technology, she has advanced through various academic roles, including Lecturer and Associate Professor, before becoming a full Professor in 2024. Dr. Song teaches courses such as Signal and System, Digital Signal Processing, and Machine Learning and Data Mining, sharing her expertise with both undergraduate and graduate students. Her research interests focus on graph signal processing, graph learning, compound QSAR/QSPR model learning, and brain network analysis, positioning her as a key figure in innovative research and education in her field.

Professional Profile:

SCOPUS

Suitability of Xiaoying Song for the Best Researcher Award

Overview: Xiaoying Song is a highly qualified candidate for the Best Researcher Award, currently serving as a Professor and Doctoral Supervisor at the School of Information Science and Engineering at Wuhan University of Science and Technology. Her extensive educational background, impressive work experience, and significant contributions to research make her an exemplary candidate for this recognition.

🎓 Education Experience

  • PhD in Microelectronics and Solid State Electronics
    Wuhan University
    September 2012 – June 2017
  • BS in Electronic Science and Technology
    Wuhan University
    September 2008 – June 2012

💼 Work Experience

  • Professor
    School of Information Science and Engineering, Wuhan University of Science and Technology
    October 2024 – Present
  • Associate Professor
    School of Information Science and Engineering, Wuhan University of Science and Technology
    December 2020 – October 2024
  • Lecturer
    School of Information Science and Engineering, Wuhan University of Science and Technology
    July 2017 – December 2020
  • Postdoctoral Researcher
    School of Information Science and Engineering, Wuhan University of Science and Technology
    July 2017 – July 2019

📚 Courses Taught

  • Signal and System (Undergraduate)
  • Digital Signal Processing (Undergraduate)
  • Machine Learning and Data Mining (Graduate)

🔬 Research Interests

  • Graph Signal Processing
  • Graph Learning
  • Compound QSAR/QSPR Model Learning
  • Brain Network Analysis

🏆 Achievements and Honors

  • Selected by the Hubei Chutian Scholar Program
  • Published numerous research papers in reputable journals
  • Contributed to significant advancements in the fields of graph signal processing and data mining

Publication Top Notes:

Graph signal processing based nonlinear QSAR/QSPR model learning for compounds

Fusion of Individual and Population Graphs in a GNN Brain Disease Network

Classification of Alzheimer’s Disease via Spatial-Temporal Graph Convolutional Networks

Compound Property Learning Based on Molecular Fingerprints and Complex Network Metrics

Subspace learning based classification of ADHD patients

Mr. Seung Heon Lee | Electrical Machine Awards | Best Researcher Award

Mr. Seung Heon Lee | Electrical Machine Awards | Best Researcher Award 

Mr. Seung Heon Lee, Gachon University, South Korea

Seung-Heon Lee is a dedicated electrical engineer currently pursuing a Ph.D. in Next Generation Energy System Convergence at Gachon University in Seongnam, Korea. He earned his Bachelor of Science degree in Electrical Engineering from Gachon University in 2022 and subsequently completed his Master of Science in Next Generation Energy System Convergence in 2024. Seung-Heon’s research interests focus on the design and analysis of motors and generators, exploring their applications in vehicles, home appliances, and industrial electrical machinery. With a strong academic background and a commitment to advancing energy systems, he aims to contribute to innovative solutions in the field of electrical engineering.

Professional Profile:

ORCID

Summary of Suitability for the Best Researcher Award: Seung-Heon Lee

Research Contributions
Seung-Heon Lee is a promising researcher in the field of electrical engineering, specifically focusing on next-generation energy systems. He has made significant contributions through his publications, demonstrating a robust understanding of motor and generator design and analysis. His work includes

🎓 Education:

  • B.S. in Electrical Engineering
    Gachon University, Seongnam, Korea
    Year: 2022
  • M.S. in Next Generation Energy System Convergence
    Gachon University, Seongnam, Korea
    Year: 2024
  • Ph.D. in Next Generation Energy System Convergence (ongoing)
    Gachon University, Seongnam, Korea
    Since 2024

💼 Work Experience:

  • Research Assistant
    Gachon University, Seongnam, Korea
    Role: Involved in research projects related to the design and analysis of motors and generators.
    Duration: 2022 – Present

🏆 Achievements:

  • Contributed to innovative research in energy systems with a focus on practical applications in vehicles, home appliances, and industrial machinery.
  • Published several papers in reputable journals related to electrical engineering and energy systems.

🏅 Awards and Honors:

  • Best Paper Award at the Gachon University Engineering Conference
    Year: 2023
    (For outstanding research in the field of electrical engineering and energy systems)
  • Scholarship Recipient for Academic Excellence
    Gachon University
    Year: 2021

Publication Top Notes

Optimal Rotor Design for Reducing Electromagnetic Vibration in Traction Motors Based on Numerical Analysis

A Novel Sleeve Design to Reduce the Eddy Current Loss of High-Speed Electrical Machines

A study on the shape of polar anisotropic magnetizing yoke to reduce dead zone of ring magnet

Performance comparison analysis and process suggestion through slotless SPMSM during high-speed operation