Dr. Naishi Feng | Virtual Reality | Best Researcher Award-3830

Dr. Naishi Feng | Virtual Reality | Best Researcher Award

Dr. Naishi Feng | Virtual Reality – Lecturer at Shenyang University, China

Naishi Feng is a highly accomplished academic with a focus on neuroengineering, mechatronic systems, and intelligent sensor technologies. As a Lecturer at the College of Intelligent Science and Information Engineering, Shenyang University, she has consistently contributed to advancements in understanding motor imagery, brain-machine interfaces, and neurorehabilitation technologies. Her journey from a robust educational background to postdoctoral work at prestigious institutions has enabled her to establish a reputation in the intersection of neuroengineering and intelligent systems. With a commitment to excellence and innovation, Naishi Feng is a recognized leader in her field.

Profile:

Scopus

Education:


Naishi Feng’s academic path reflects a strong foundation in both engineering and neurotechnology. She completed her Ph.D. in Mechatronic Engineering at Northeastern University in 2023, where her research laid the groundwork for her future studies in neuroengineering. During her doctoral studies, she honed her skills in sensor systems and motor intention decoding. In addition to her Ph.D., Naishi earned her Master’s degree in Mechatronic Engineering at Northeastern University in 2018, and her Bachelor’s in Mechanical Design, Manufacturing, and Automation from Shenyang Jianzhu University in 2016. These qualifications are complemented by a visiting scholar position at the Department of Neurorehabilitation Sciences, KU Leuven, Belgium (2021–2022), where she expanded her expertise in neurorehabilitation technologies and motor intention decoding.

Experience:


Naishi Feng has gained invaluable research experience both in academic institutions and through postdoctoral positions. Since 2024, she has been a Postdoctoral Fellow at both Northeastern University and Shenyang University Science and Technology Park. Her previous postdoctoral work at The Chinese University of Hong Kong’s Brain and Mind Institute (2023–2024) was pivotal in advancing her research on neurorehabilitation and brain-computer interfaces. Naishi’s academic career is also enriched by her role as a Lecturer at Shenyang University, where she imparts her knowledge in intelligent systems, artificial intelligence, and neurotechnology, while also leading groundbreaking research in related fields.

Research Interests:


Naishi Feng’s research interests primarily revolve around neuroengineering, focusing on decoding motor intentions, brain-machine interfaces, and sensor technologies. Her expertise includes applying graph convolutional networks for upper-limb motor imagery decoding and investigating the neural basis of motion sickness using EEG signals. She is also passionate about soft sensor array designs for controlling prosthetic devices through sEMG (surface electromyography). Naishi’s work explores how these innovations can be used in neurorehabilitation, robotics, and even virtual reality to improve quality of life for individuals with neurological disorders. Her interdisciplinary research aims to bridge the gap between engineering, neuroscience, and rehabilitation technologies.

Awards:


While Naishi Feng has yet to receive specific major awards, her research has undoubtedly garnered significant recognition in her field. Her groundbreaking work has been cited by numerous articles in high-impact journals, showcasing the influence of her contributions to the field of neuroengineering and mechatronics. Naishi’s continued work in the fields of motor imagery, neurorehabilitation, and sensor systems positions her as a leading researcher in her domain, and her dedication to advancing technology continues to make a significant impact in academia and industry.

Publications:


Naishi Feng has contributed to several high-profile publications that underscore her expertise and pioneering work in neuroengineering and mechatronics. Here are some of her key publications:

  1. Feng, N., Hu, F., Wang, H., & Gouda, M. A. (2020). Decoding of Voluntary and Involuntary Upper-Limb Motor Imagery Based on Graph Fourier Transform and Cross-Frequency Coupling Coefficients, Journal of Neural Engineering, 17(5): 1741-2552 🧠 (Cited by: 100+)
  2. Feng, N., Xin, Y., Gong, J., Wang, H., & Hu, F. (2021). Self-Adaption Soft Sensor Array Design for sEMG Control, IEEE Sensors Journal, 21(6): 8367-8374 🤖 (Cited by: 70+)
  3. Feng, N., Hu, F., Wang, H., & Zhao, Z. (2021). Hybrid Graph Convolutional Networks for Skeleton-Based and EEG-Based Jumping Action Recognition, IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS) 🏅 (Cited by: 50+)
  4. Feng, N., Hu, F., Wang, H., & Zhou, B. (2021). Motor Intention Decoding from the Upper Limb by Graph Convolutional Network Based on Functional Connectivity, International Journal of Neural Systems, 31(12): 2150047 💡 (Cited by: 60+)
  5. Feng, N., Zhou, B., Zhang, Q., Hua, C., & Yuan, Y. (2025). A Comprehensive Exploration of Motion Sickness Process Analysis from EEG Signal and Virtual Reality, Computer Methods and Programs in Biomedicine, 264(2025): 108714 🌐 (Cited by: N/A)

Conclusion:


Naishi Feng is an exceptional researcher with a deep commitment to advancing the fields of neuroengineering and intelligent systems. Her educational background, extensive experience, and research in neurorehabilitation technologies position her as a leader in her field. With numerous high-impact publications and ongoing contributions to cutting-edge technologies, Naishi has made significant strides in understanding motor imagery, brain-machine interfaces, and motion sickness analysis. Her innovative work has the potential to significantly improve the quality of life for individuals with neurological disorders and further advance the integration of neurotechnology and robotics. Naishi Feng is a highly deserving candidate for the “Best Researcher Award” and will undoubtedly continue to push the boundaries of research and technological advancement in her field.

Dr. Tanushree Bhattacharjee | Emerging Technologies | Best Researcher Award

Dr. Tanushree Bhattacharjee | Emerging Technologies | Best Researcher Award

Dr. Tanushree Bhattacharjee, GRIDsentry Private Limited, India

Dr. Tanushree Bhattacharjee is a distinguished cybersecurity expert specializing in substation automation, OT security, and intrusion detection systems (IDS). With a Ph.D. in Electrical Engineering from Jamia Millia Islamia, she has over seven years of experience securing critical infrastructure. As Sr. R&D Manager at GRIDsentry Pvt. Ltd., Bengaluru, she leads cutting-edge research in forensic analysis, deep packet inspection, and AI-powered threat modeling. Dr. Bhattacharjee has played a vital role in national and international cybersecurity testbeds, contributing to the advancement of IEC 61850, power grid security, and microgrid protection. Her expertise in AI/ML-based anomaly detection ensures the resilience of modern power systems. 🔐⚡

🌍 Professional Profile:

Google Scholar

Orcid

Scopus

🏆 Suitability for the Best Researcher Award 

Dr. Tanushree Bhattacharjee is an outstanding candidate for the Best Researcher Award, given her pioneering work in substation automation security and digital transformation. She has made significant contributions to intrusion detection, vulnerability assessment, and OT security in power grids. Her leadership in developing IDS/IPS solutions, coupled with her expertise in AI-powered anomaly detection, positions her as a key innovator in cyber-physical security. With a strong background in threat modeling, forensic analysis, and protocol security, her research directly impacts critical infrastructure protection. Her proven ability to bridge AI with cybersecurity makes her a deserving nominee for this prestigious recognition. 🏆🔍

🎓 Education

Dr. Tanushree Bhattacharjee holds a Ph.D. in Electrical Engineering from Jamia Millia Islamia, New Delhi (2017-2022), where she focused on substation automation and microgrid protection. She completed her Master’s in Power Systems at the Indian Institute of Engineering Science & Technology, Shibpur (2012-2014). Her academic work involved IEC 61850 protocols, cybersecurity in digital substations, and AI-driven security frameworks. Through hands-on research in power system modeling, microgrid security, and forensic analysis, she has contributed to cybersecurity innovations in critical infrastructure. Her education has provided a robust foundation for her advancements in intrusion detection and digital protection strategies. 🎓⚡🔬

💼 Experience 

As Sr. R&D Manager at GRIDsentry Pvt. Ltd., Bengaluru, Dr. Bhattacharjee leads research on intrusion detection systems (IDS), AI-driven threat modeling, and forensic analysis. Previously, as a Product Manager, she specialized in deep packet inspection and anomaly detection. She also worked as a Power System Security Engineer, focusing on IPS/IDS development and OT cybersecurity. Her tenure at Jamia Millia Islamia involved substation automation, protocol security, and microgrid testing. With expertise in vulnerability assessments, access control, and live cybersecurity testing, she has significantly contributed to the security of modern power infrastructures. 🔒💡🚀

🏅 Awards & Honors 

Dr. Bhattacharjee has received multiple accolades for her contributions to power system cybersecurity. She has been recognized for her outstanding research in IDS and AI-driven security mechanisms. Her work on IEC 61850-based intrusion detection won Best Paper Awards at leading cybersecurity conferences. She has been acknowledged by cybersecurity organizations for her role in developing AI-based threat detection tools. Additionally, she has contributed to national security projects, earning commendation from government agencies and industry leaders. Her expertise in forensic analysis, digital substation security, and OT cybersecurity has positioned her as a trailblazer in the field. 🏆🔍⚡

🔬 Research Focus

Dr. Bhattacharjee’s research integrates emerging technologies with cybersecurity, focusing on power system protection, IEC 61850 protocols, and digital substation automation. Her expertise includes intrusion detection, AI-based anomaly detection, and forensic security analysis. She explores cyber-physical system security, ensuring resilience against DDoS, MITM, and replay attacks. Her work in deep learning for security event detection enhances smart grid protection. She also specializes in protocol security, AI-driven attack mitigation, and operational technology (OT) cybersecurity. Through machine learning, threat modeling, and real-time testing, her research aims to fortify modern power infrastructures against evolving cyber threats. 🛰️🔐⚙️

📖 Publication Top Notes

  1. Hardware Development and Interoperability Testing of a Multivendor-IEC-61850-Based Digital Substation
    • Citations: 11
    • Year: 2022
  2. Planning of Renewable DGs for Distribution Network Considering Load Model: A Multi-Objective Approach
    • Citations: 9
    • Year: 2014
  1. Designing a Controller Circuit for Three-Phase Inverter in PV Application
    • Citations: 6
    • Year: 2018
  2. Digital Substations with the IEC 61850 Standard
    • Citations: 3
    • Year: 2021
  3. Power Quality Improvement of Grid Integrated Distributed Energy Resource Inverter
    • Citations: 2
    • Year: 2021

 

Dr. Yeonggwang Kim | 3D Computing | Best Researcher Award

Dr. Yeonggwang Kim | 3D Computing | Best Researcher Award

Dr. Yeonggwang Kim, Korea Electronics Technology Institute, South Korea

Dr. Yeonggwang Kim is a researcher at the Korea Electronics Technology Institute (KETI) in Gwangju, South Korea. With a strong foundation in AI-driven technologies and real-time systems, his work spans areas such as AI vision processing, system optimization, and backend architecture. Dr. Kim is focused on improving the accuracy, efficiency, and scalability of technologies through the integration of cutting-edge AI methods and symbolic execution techniques. He has contributed to various research initiatives aiming to optimize AI systems for real-time performance. With an academic background in ICT convergence and computer engineering, Dr. Kim’s interdisciplinary approach positions him as a prominent figure in the field. His contributions to high-performance real-time systems and scalable communication protocols continue to push the boundaries of AI technology. 🚀

Professional Profile:

Google Scholar

Suitability for Award

Dr. Yeonggwang Kim is an ideal candidate for the Best Researcher Award due to his exceptional contributions to AI-driven technologies and real-time system optimization. His research has resulted in significant advancements in AI vision processing, backend system design, and high-performance real-time communication systems. Dr. Kim’s work on optimizing AI models for edge devices and enhancing system efficiency through symbolic execution techniques demonstrates his deep understanding of complex system architectures. Moreover, his contributions to scalable solutions for high-throughput data applications further solidify his suitability for this award. Dr. Kim’s ability to translate research into impactful real-world applications makes him a strong contender for recognition in the field. 🏅

Education

🎓 Dr. Yeonggwang Kim holds a Master of Science (M.S.) in ICT Convergence System Engineering from Chonnam National University, Gwangju (2022), where his thesis focused on optimizing reinforcement learning algorithms to reduce loss values in power demand forecasting. He earned his Bachelor’s degree in Computer Engineering and Telecommunication Engineering from Yonsei University, Wonju (2018). During his academic journey, Dr. Kim developed a strong interest in AI-driven technologies and system optimization. His education laid the groundwork for his current research, where he applies theoretical knowledge to practical real-world challenges in AI vision processing and real-time communication systems. 📘

Experience

🧑‍💼 Dr. Yeonggwang Kim has been a researcher at the Korea Electronics Technology Institute (KETI) in Gwangju since August 2022. In this role, he focuses on developing scalable and efficient backend architectures for handling high-throughput data applications, especially in the fields of AI vision processing and real-time communication. Prior to this, Dr. Kim pursued his master’s degree at Chonnam National University, where he worked on research in power demand forecasting and optimization algorithms. His experience includes developing solutions for real-time image and video analysis, optimizing system performance, and designing communication protocols for high-speed data transfer. His academic and professional journey has shaped his expertise in integrating AI and system optimization. 🌐

Awards and Honors

🏅 While specific awards and honors have not been detailed, Dr. Yeonggwang Kim’s work has made a significant impact in the fields of AI, real-time systems, and backend optimization. His research has contributed to advancing AI-driven technologies and optimizing the performance of real-time systems, including in fields like LiDAR and 3D content transmission. His ability to tackle complex technical challenges, such as enhancing the reliability of systems through symbolic execution and system optimization, positions him as a strong candidate for recognition in his field. His contributions are evident through the practical implementation of these innovations in high-performance systems. 🏆

Research Focus

🔬 Dr. Kim’s research focuses on the integration of AI-driven techniques and real-time system optimization. His areas of interest include:

  1. AI Vision Processing: Developing robust, real-time image and video analysis systems with high accuracy and low latency for diverse applications.
  2. Backend Optimization: Designing scalable and efficient server architectures for handling data-intensive applications.
  3. Real-Time Communication: Developing systems for transmitting large-scale data, such as LiDAR or 3D content, with minimal delay.
  4. Symbolic Execution: Using symbolic analysis methods to detect system bottlenecks and ensure reliability in complex systems.
  5. System Optimization: Advanced optimization techniques for integrating AI models on edge devices to achieve real-time performance.

These research areas highlight Dr. Kim’s focus on improving the performance and reliability of AI-driven systems, with real-world applications across multiple industries. 🧠

Publication Top Notes:

  • Study on human activity recognition using semi-supervised active transfer learning
    • Year: 2021
    • Citations: 32
  • Improved Q network auto-scaling in microservice architecture
    • Year: 2022
    • Citations: 4
  • Biomedical image processing: Spine tumor detection from MRI image using MATLAB
    • Year: 2020
    • Citations: 4
  • Comparative Study and Performance Analysis of Different Modulation Techniques Relevant to Bangabandhu Satellite Communication System
    • Year: 2020
    • Citations: 2
  • Proposal of a Monitoring System to Determine the Possibility of Contact with Confirmed Infectious Diseases Using K-means Clustering Algorithm and Deep Learning Based Crowd Counting
    • Year: 2020
    • Citations: 2