Longlong Niu | Data Science and Deep Learning | Research Excellence Award

Dr. Longlong Niu | Data Science and Deep Learning | Research Excellence Award

Student at Xiangtan University | China

Dr. Longlong Niu, Ph.D., School of Mathematics and Computational Science, Xiangtan University, specializes in radio wave propagation theory and applications in radar, communication, and navigation, focusing on signal processing, data analysis in wireless systems, and electromagnetic compatibility, has led and contributed to numerous national defense and innovation research projects, and received multiple prestigious national and provincial awards for scientific and technological progress.

Citation Metrics (Scopus)

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Citations
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Documents
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🟦 Citations   🟥 Documents   🟩 h-index


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Featured Publications

Yasaman | Data Science and Deep Learning | Editorial Board Member

Dr. Yasaman | Data Science and Deep Learning | Editorial Board Member

Research Scholarat at Lille Univesity | France

Dr. Yasaman is a computer engineer and independent researcher from Tehran, Iran, whose academic journey spans a B.Sc. in puzzle-game mechatronic design and microcontroller-based control systems, an M.Sc. in multi-core chip testability with on-chip 3D-memory banks, and a Ph.D. focused on deep learning accelerator architectures built on networks-on-chip communication infrastructures; throughout her career she has distinguished herself through top national academic rankings, excellence awards in robotics competitions, and recognition for her highly cited research in medical-AI literature, complemented by the publication of a specialized book chapter on deep learning accelerators; her multidisciplinary expertise extends across robotics, integrated digital circuits, FPGA testability, NoC-based architectures, IoT, machine learning, AI algorithms, and advanced medical applications; her current research concentrates on machine learning and deep learning algorithms for hardware-aware intelligence, voice detection, audio recognition, and sound-based assistive systems to support individuals with neurological disorders such as stroke and dementia, while also exploring neural pattern interpretation for resilient AI-driven architectures; she has contributed as a reviewer for leading scientific journals, served as a guest editor and technical program committee member across notable international conferences, and delivered advanced teaching in digital design, VHDL, and engineering courses at major universities; her professional experience includes managing automation and environmental control systems in industrial composting facilities, engineering roles in EMS and OEM companies, and long-term research appointments at the Islamic Azad University Science and Research Branch; equipped with multilingual proficiency in French, Persian, English, and Arabic, and technical skills spanning VHDL, C-family languages, Python, Java, Matlab, SystemC tools, simulation environments, network simulators, CAD tools, and scientific typographic platforms, she continues to contribute impactful interdisciplinary research shaping advanced intelligent systems for both hardware and healthcare domains.

Profile: Google Scholar

Featured Publications:

Rahmani, A. M., & Hosseini Mirmahaleh, S. Y. (2021). Coronavirus disease (COVID-19) prevention and treatment methods and effective parameters: A systematic literature review. Sustainable Cities and Society, 64, 102568.

Hosseini Mirmahaleh, S. Y., Reshadi, M., Shabani, H., Guo, X., & Bagherzadeh, N. (2019). Flow mapping and data distribution on mesh-based deep learning accelerator. In Proceedings of the 13th IEEE/ACM International Symposium on Networks-on-Chip (NoC).

Hosseini Mirmahaleh, S. Y., & Rahmani, A. M. (2019). DNN pruning and mapping on NoC-based communication infrastructure. Microelectronics Journal, 94, 104655.

Hosseini Mirmahaleh, S. Y., Reshadi, M., & Bagherzadeh, N. (2020). Flow mapping on mesh-based deep learning accelerator. Journal of Parallel and Distributed Computing, 144, 80–97.

Rahmani, A. M., & Hosseini Mirmahaleh, S. Y. (2022). Flexible-clustering based on application priority to improve IoMT efficiency and dependability. Sustainability, 14(17), 10666.

Yuqiang Wu | Deep Learning | Best Researcher Award

Assist. Prof. Dr. Yuqiang Wu | Deep Learning | Best Researcher Award 

Assistant Professor, at Northwestern Polytechnical University, China.

Dr. Yuqiang Wu is an Assistant Professor and Master’s Supervisor at the Software College of Northwestern Polytechnical University, China. He holds a Ph.D. in Engineering and specializes in mechanism-data fusion modeling and AI-driven enablement. Dr. Wu has contributed significantly to the field of artificial intelligence, particularly in developing domain-specific large language models (LLMs) that have been recognized for excellence in national key laboratory reviews. He is actively involved in leading and participating in several high-profile research projects, including the National Key Research and Development Program and the National Natural Science Foundation of China. His work bridges theoretical foundations with practical applications, aiming to advance industrial software systems through AI integration.

Professional Profile

Scopus

ORCID

Education

Dr. Wu completed his Ph.D. in Engineering, though specific details about his alma mater and dissertation are not publicly disclosed. His academic journey has been marked by a strong focus on AI and control systems, laying a solid foundation for his subsequent research endeavors. Throughout his career, Dr. Wu has remained committed to advancing knowledge in his field, contributing to both theoretical research and practical applications in AI-driven systems. His educational background has been instrumental in shaping his approach to complex problem-solving and innovation in industrial software systems.

Experience

Dr. Wu serves as an Assistant Professor and Master’s Supervisor at the Software College of Northwestern Polytechnical University, where he leads research initiatives and mentors graduate students. His professional experience includes serving as the Principal Investigator for two provincial/ministerial-level research projects, demonstrating his leadership in advancing AI and control systems research. Additionally, Dr. Wu has been a core researcher in multiple national-level projects, including the National Key Research and Development Program and the National Natural Science Foundation of China. His extensive experience underscores his commitment to bridging the gap between theoretical research and practical applications in AI-driven systems.

Research Interests

Dr. Wu’s research interests encompass mechanism-data fusion modeling and AI-driven enablement. He focuses on developing domain-specific large language models (LLMs) to enhance industrial software systems. His work aims to integrate AI technologies into the theoretical frameworks and algorithms of industrial software, contributing to the advancement of intelligent systems. Dr. Wu’s research endeavors are aligned with China’s Scientific and Technological Innovation 2030 initiative, specifically the “New Generation Artificial Intelligence” Major Project, reflecting his commitment to advancing AI technologies in industrial applications.

Awards

Dr. Wu has received recognition for his contributions to AI and control systems research. His domain-specific large language models (LLMs) were rated excellent in the review of projects at National Key Laboratories, highlighting the impact and quality of his work. This acknowledgment underscores his role in advancing AI-driven solutions for industrial software systems. While specific awards are not detailed, the recognition of his LLMs reflects the esteem in which his research is held within the academic and industrial communities.

Top Noted Publications

Dr. Wu has authored over 10 papers in internationally renowned SCI-indexed journals. Notable publications include:

  • Sun, W., Su, S.-F., Wu, Y., & Xia, J. (2021). “Novel Adaptive Fuzzy Control for Output Constrained Stochastic Nonstrict Feedback Nonlinear Systems.” IEEE Transactions on Fuzzy Systems, 29(5), 1188–1197. In this paper, the authors propose an adaptive fuzzy control approach for nonlinear systems with output constraints and stochastic disturbances. The method ensures that the system’s output remains within desired bounds despite uncertainties and external disturbances.

  • Zhang, Z., & Wu, Y. (2021). “Adaptive Fuzzy Tracking Control of Autonomous Underwater Vehicles With Output Constraints.” IEEE Transactions on Fuzzy Systems, 29(5), 1311–1319. This study addresses the control of autonomous underwater vehicles (AUVs) under output constraints. The authors develop an adaptive fuzzy tracking control strategy that guarantees the AUV’s trajectory tracking performance while respecting output limitations.

  • Zhang, Z., & Wu, Y. (2012). “Globally Asymptotic Stabilization for Nonlinear Time-Delay Systems with ISS Inverse Dynamics.” International Journal of Automation and Computing, 9(6), 634–640. The paper presents a method for globally stabilizing nonlinear time-delay systems with integral input-to-state stable (ISS) inverse dynamics. The proposed approach ensures that the system’s state converges to the origin asymptotically, even in the presence of time delays.link.springer.com+1ui.adsabs.harvard.edu+1ui.adsabs.harvard.edu

  • Yu, X., Wu, Y., & Xie, X.-J. (2012). “Reduced-Order Observer-Based Output Feedback Regulation for a Class of Nonlinear Systems with iISS Inverse Dynamics.” International Journal of Control, 85(12), 1942–1951. This paper focuses on output feedback regulation for nonlinear systems with integral input-to-state stable (iISS) inverse dynamics. The authors introduce a reduced-order observer to estimate unmeasured states, facilitating effective regulation of the system’s output.

Conclusion

Dr. Yuqiang Wu is a highly promising and suitable candidate for the Best Researcher Award. His record reflects:

  • Strong academic and technical contributions,

  • National-level leadership in AI research,

  • Proven innovation in developing applied AI models.

With growing global engagement and increased focus on translational impact, Dr. Wu has the potential to become a leading figure in AI and intelligent systems research. He is deserving of serious consideration for this award.