Mr. Shen Tingli | Mimo Radar | Best Researcher Award

Mr. Shen Tingli | Mimo Radar | Best Researcher Award

Mr. Shen Tingli | Naval University of Engineering | China

Academic Background

Shen Tingli completed his undergraduate studies in Navigation Engineering at Naval Aviation University, where he built a strong foundation in aerospace and maritime navigation technologies. He pursued advanced studies in Electronic Information at Naval University of Engineering, focusing on cognitive waveform design for MIMO radar systems. His academic work has been widely cited and is accessible through multiple platforms including Scopus, reflecting a growing recognition in radar signal processing research. His publications and conference documents demonstrate both theoretical innovation and practical applications in multi-target detection, and his h-index underscores the influence of his research contributions.

Research Focus

Shen Tingli’s research centers on cognitive waveform design for MIMO radar systems, with an emphasis on adaptive and intelligent signal optimization. He investigates techniques that improve radar detection performance, enhance multi-target resolution, and reduce interference in complex environments. His work integrates machine learning strategies with classical signal processing, advancing both theoretical frameworks and practical radar applications.

Work Experience

Shen Tingli has applied his expertise in electronic information and radar systems across academic and applied research roles. He has contributed to projects involving waveform design optimization and cognitive radar development, collaborating with interdisciplinary teams to enhance detection capabilities. His experience spans algorithm development, simulation studies, and performance evaluation in advanced radar systems, bridging the gap between theoretical research and engineering implementation.

Key Contributions

Shen Tingli is recognized for developing novel approaches to cognitive MIMO radar waveform design. He has contributed algorithms that improve adaptive detection accuracy and efficiency, particularly in multi-target scenarios. His work has facilitated the integration of gradient-based optimization with genetic algorithms, enabling more effective signal design under varying operational constraints. These contributions provide a foundation for future advancements in intelligent radar systems and defense applications.

Awards & Recognition

Shen Tingli has received commendations for his research excellence and innovation in radar signal processing. His contributions to adaptive waveform design have been acknowledged in peer-reviewed journals and by professional research communities, highlighting the impact and originality of his work.

Professional Roles & Memberships

He actively participates in scientific and engineering communities, contributing to the development of radar and electronic information research. His professional roles include collaborative research projects, peer review activities, and membership in relevant technical societies, promoting knowledge exchange and innovation within the field.

Publication Profile

Scopus | ORCID

Featured Publications

Shen, T., Lu, J., Zhang, Y., Wu, P., & Li, K. Waveform Design of a Cognitive MIMO Radar via an Improved Adaptive Gradient Descent Genetic Algorithm. Applied Sciences.

Impact Statement / Vision

Shen Tingli aims to advance the field of cognitive radar by developing intelligent waveform design methods that enhance detection and operational efficiency. His vision is to contribute to next-generation radar technologies that integrate adaptive learning, robust performance, and multi-target precision, driving innovation in both defense systems and civilian radar applications.

Assoc. Prof. Dr. Sha Huan | Radar | Best Researcher Award

Assoc. Prof. Dr. Sha Huan | Radar | Best Researcher Award

Assoc. Prof. Dr. Sha Huan , supervisor , guangzhou university, China.

Dr. Sha Huan is an accomplished Associate Professor at the School of Electronics and Communication Engineering, Guangzhou University. She earned her Ph.D. in Electromagnetic Field and Microwave Technique from Beijing Institute of Technology and has established herself as a leader in radar signal processing and machine learning applications. Prior to joining academia, she served as a Senior Engineer at the Beijing Institute of Radio Measurement. With a profound commitment to innovation, she has authored numerous high-impact publications and holds over 50 patents. Her research excellence and collaborative engagements reflect her dedication to advancing intelligent perception and anti-jamming radar technologies.

Publication Profile

Scopus

ORCID

Google scholar

🎓 Education Background

Sha Huan received her B.Eng. degree in Information Engineering in 2006 and her Ph.D. in Electromagnetic Field and Microwave Technique in 2012 from the prestigious Beijing Institute of Technology, China. Her academic training laid a solid foundation in radar signal processing, high-resolution imaging, and microwave techniques. These academic achievements were instrumental in shaping her expertise in complex signal environments and laid the groundwork for her successful transition from engineering to academic leadership. Her continued involvement in interdisciplinary research showcases her commitment to learning and pushing boundaries within radar technology and intelligent systems.

🏢 Professional Experience

From 2012 to 2017, Dr. Sha Huan served as a Senior Engineer at the Beijing Institute of Radio Measurement, where she gained extensive industry experience in radar system design and interference suppression. She later transitioned into academia and is now an Associate Professor at Guangzhou University. At the university, she leads cutting-edge research in the School of Electronics and Communication Engineering, mentoring students and collaborating with institutions such as Sun Yat-sen University and Foshan University. Her diverse experience bridges both academic and industrial domains, enhancing her credibility in innovation and applied research.

🏆 Awards and Honors

Dr. Sha Huan’s contributions to radar imaging and machine learning have been recognized through numerous published patents and high citation indices. Although specific award titles are not listed, her recognition stems from her outstanding patent portfolio (55 patents), significant publication output (18 journal articles), and impactful collaborations. Her work has earned citations across the global research community, reflecting its relevance and influence. Her recent advancements in intelligent jamming countermeasures position her as a leading figure in radar signal research, potentially qualifying her for prestigious recognitions such as the Best Researcher Award.

🔬 Research Focus

Dr. Sha Huan’s research spans intelligent perception, machine learning, high-resolution radar imaging, and radar anti-jamming processing. She has pioneered the development of a Complex-Valued Encoder-Decoder Network for counteracting interrupted sampling repeater jamming (ISRJ), showcasing innovations in complex signal processing. Her work integrates deep learning architectures with physical signal models to maintain amplitude and phase integrity while enhancing target detection capabilities. Her collaborative efforts and high-quality publications emphasize multi-domain feature extraction and signal fidelity, marking significant advancements in radar intelligence and secure communication systems.

📌 Conclusion

Dr. Sha Huan is a forward-thinking radar scientist who has seamlessly merged academic excellence with real-world impact. Her pioneering contributions to jamming suppression, robust imaging, and intelligent systems have set new benchmarks in electromagnetic research. With a robust background in engineering, a strong academic career, and significant contributions to the scientific community, she is a prime candidate for the Best Researcher Award. Her dedication, innovation, and collaborative spirit highlight her as a role model in advanced radar and communication technologies.

📚 Top Publications with Details

  1. Radar human activity recognition with an attention-based deep learning network
    Published in: Sensors, 2023
    Cited by: 28 articles

  2. A lightweight hybrid vision transformer network for radar-based human activity recognition
    Published in: Scientific Reports, 2023
    Cited by: 25 articles

  3. Bayesian compress sensing based countermeasure scheme against the interrupted sampling repeater jamming
    Published in: Sensors, 2019
    Cited by: 24 articles

  4. Orthogonal chirp division multiplexing waveform for mmWave joint radar and communication
    Published in: IET International Radar Conference, 2020
    Cited by: 12 articles

  5. A compact LTCC Transmit Receive module at Ku-band
    Published in: 2010 IEEE International Conference on Microwave and Millimeter Wave Technology
    Cited by: 10 articles

  6. Random stepped-frequency SAR imagery with full cell Doppler coherent processing
    Published in: IEEE Geoscience and Remote Sensing Letters, 2021
    Cited by: 9 articles

  7. Structure-guaranteed SAR imagery via spatially-variant morphology regularization in ADMM manner
    Published in: IEEE Transactions on Geoscience and Remote Sensing, 2022
    Cited by: 7 articles

  8. Low elevation angle estimation with range super-resolution in wideband radar
    Published in: Sensors, 2020
    Cited by: 7 articles