Ms. Jingjing Fan | Smart Automation Awards | Best Researcher Award

Ms. Jingjing Fan | Smart Automation Awards | Best Researcher Award

Ms. Jingjing Fan, KUNLUN Digital Technology Co., Ltd. China

Jingjing Fan, a Bachelor of Engineering graduate from Hebei University of Technology in 2011, is currently a Product Manager at Kunlun Digital Technology Co., Ltd. Her expertise lies in the fields of Artificial Intelligence (AI) and the Internet of Things (IoT), with a focus on developing and implementing intelligent IoT platforms for the oil and gas industry. She also specializes in edge intelligence and cloud-edge collaborative technologies, driving innovative solutions that enhance connectivity and efficiency in industrial applications.

Professional Profile:

ORCID

Summary of Suitability for Best Researcher Award – Jingjing Fan

Jingjing Fan holds a Bachelor of Engineering from Hebei University of Technology and currently serves as a Product Manager at Kunlun Digital Technology Co., Ltd., affiliated with China National Petroleum Corporation. Her research focuses on high-impact areas in technology, specifically at the intersection of Artificial Intelligence (AI) and the Internet of Things (IoT). Her expertise in integrating AI and IoT in practical applications—such as the Intelligent Internet of Things platform for the oil and gas sector, edge intelligence, and cloud-edge collaborative technology—demonstrates her commitment to advancing technology in complex, real-world environments.

Education

  • Bachelor of Engineering from Hebei University of Technology, 2011.

Work Experience

  • Current Position: Product Manager at Kunlun Digital Technology Co., Ltd.
    • Research Topics:
      • AI and Internet of Things (IoT)
      • Intelligent IoT platform applications in oil and gas
      • Edge intelligence
      • Cloud-edge collaborative technology

Publication top Notes:

AIoT-Based Visual Anomaly Detection in Photovoltaic Sequence Data via Sequence Learning

Prof Dr. Jong-Chen Chen | Intelligent Control Award | Best Researcher Award

Prof Dr. Jong-Chen Chen | Intelligent Control Award | Best Researcher Award

Prof Dr. Jong-Chen Chen, National YunLin University of Science and Technology, Taiwan

Jong-Chen Chen is a Full Professor in the Department of Information Management at the National Yunlin University of Science and Technology, Taiwan, where he has served since 2000. He earned his M.S. in Computer Science and Electrical Engineering from the University of Texas at Arlington in 1986 and his Ph.D. in Computer Science from Wayne State University in 1993. Dr. Chen is renowned for developing a neuromolecular model that abstracts biological structure-function relationships into a system’s structure, allowing for rich intraneuronal dynamics. This model enables the system to self-organize and learn, with applications in robotic maze navigation, image recognition, data differentiation, and more. His research spans areas such as evolvable hardware, brain-like computer simulation, bio-computing, evolutionary computation, and pattern recognition. He has published extensively in journals including Sensors, Applied Science, Biomimetics, Evolutionary Computation, and Neurocomputing.

Professional Profile:

ORCID

Summary of Suitability for Best Researcher Award:

Dr. Jong-Chen Chen demonstrates strong qualifications for the “Best Researcher Award” due to his significant contributions
in various fields of computer science, robotics, and biomedical applications. He has extensive experience, having earned an
M.S. degree in computer science and electrical engineering and a Ph.D. in computer science. His academic journey,
particularly his tenure as a full professor since 2000, reflects a longstanding commitment to research and education.

Education:

  • M.S. in Computer Science and Electrical Engineering (1986)
    • University of Texas at Arlington, USA
  • Ph.D. in Computer Science (1993)
    • Wayne State University, USA

Work Experience:

  • Full Professor (2000 – Present)
    • Department of Information Management, National Yunlin University of Science and Technology, Taiwan
    • Developed a neuromolecular model (1993), abstracting biological structure-function relationships into system structure, specifically focusing on intraneuronal dynamics.

Key Contributions:

  • Applied neuromolecular models in fields like robotic maze navigation, image recognition, and biomimetic robotics.
  • Published research in prestigious journals including Sensors, Applied Science, Biomimetics, Algorithms, Evolutionary Computation, Neuro-computing, and BioSystems.

Research Interests:

  • Evolvable hardware
  • Brain-like computer simulation
  • Ecosystem simulation
  • Bio-computing
  • Artificial life
  • Molecular electronics
  • Evolutionary computation
  • Genetic programming
  • Pattern recognition

Publication top Notes:

Application of Artificial Neuromolecular System in Robotic Arm Control to Assist Progressive Rehabilitation for Upper Extremity Stroke Patients

Applying an Artificial Neuromolecular System to the Application of Robotic Arm Motion Control in Assisting the Rehabilitation of Stroke Patients—An Artificial World Approach

Bridging the Finger-Action Gap between Hand Patients and Healthy People in Daily Life with a Biomimetic System

Using Artificial Neuro-Molecular System in Robotic Arm Motion Control-Taking Simulation of Rehabilitation as an Example

Effectiveness of Companion Robot Care for Dementia: A Systematic Review and Meta-Analysis

Using Homemade Pressure Device to Improve Plantar Pressure-A Case Study on the Patient with Lower Limb Lymphedema