Jaspreet Kaur | beamforming | Best Researcher Award

Dr. Jaspreet Kaur | beamforming | Best Researcher Award

University of Glasgow | United Kingdom

Author Profile

Google Scholar

👩‍🔬 Summary

Dr. Jaspreet Kaur is a wireless communications specialist with deep expertise in adaptive beamforming, MIMO, and SDR-based solutions, particularly in dynamic environments such as transportation systems and robotic integration. Her work bridges academic research and real-world applications, focusing on intelligent RAN architectures, AI/ML-based localization, and next-generation wireless systems. Known for her leadership in research and technical innovation, she has contributed significantly to developing secure, low-latency, and energy-efficient communication frameworks.

🎓 Education

Dr. Kaur holds a Ph.D. in Electrical and Electronics Engineering from the University of Glasgow, jointly awarded through EIT Digital and Telefonica (2020–2024), where she developed AI-based beamforming and real-time optimization systems for transport networks. She earned her M.Sc. from Ankara Yildirim Beyazit University, Turkey (2017–2019), focusing on microfluidic device design, and holds a B.Tech. in Electronics and Communication Engineering from Shiv Shankar Institute of Engineering and Technology, India (2007–2011).

💼 Professional Experience

Currently, Dr. Kaur is a Postdoctoral Researcher at the University of Glasgow (May 2024–Present), leading the development of an SDR-based 4G LTE testbed integrated with robotic systems using O-RAN interfaces. She also serves as a Technical Advisor and Research Writer for Xecurity Pulse, USA (Apr 2025–Present), contributing to 5G/6G network security, UPF validation, and AI-driven compliance testing. She previously worked at University College London (May–Aug 2024) on the commercialization of O-RAN technologies. Earlier roles include Graduate Teaching Assistant at the University of Glasgow (2021–2024), Tutor in Nanotechnology at AYBU (2018–2019), IELTS Trainer at Webberz Educomp Ltd. (2015–2016), and Research Assistant at CSIR-CEERI (2011–2014), where she developed space-grade microwave devices and MEMS-based sensors.

📚 Academic Citations

Dr. Kaur has published extensively in top-tier IEEE journals and conferences. Her academic work has received 121 citations and earned an H-index of 7, reflecting significant impact in beamforming, wireless localization, and SDR research.

🛠️ Technical Skills

She possesses expertise in MIMO, adaptive beamforming, 5G/6G networks, and O-RAN architecture. Her technical toolkit includes USRP, GNU Radio, Python, MATLAB, C/C++, TensorFlow, and Scikit-learn. She is also skilled in RF design, embedded systems, edge computing, real-time optimization, and digital twin development.

👩‍🏫 Teaching Experience

As a Graduate Teaching Assistant at the University of Glasgow, Dr. Kaur taught and supported over a dozen courses, including Real-Time Computing, Autonomous Vehicle Systems, Microwave Design, and Mathematics. She also supervised multiple undergraduate and postgraduate research projects, focusing on hardware-software integration and control systems. Earlier, she served as a Tutor in Nanotechnology and an IELTS trainer, receiving recognition for teaching excellence.

🔬 Research Interests

Her interests include adaptive and predictive beamforming, SDR-based localization, AI integration in wireless systems, intelligent RANs, and digital twin-based optimization. She is passionate about creating low-latency, resilient, and scalable solutions for next-generation communication networks.

📖Publications

Title: A novel geometry multi-stage depressed collector for the efficiency enhancement of space traveling wave tubes
    • Authors: AM Latha, V Gahlaut, J Kaur, D Bharti, V Srivastava, RK Sharma, …

    • Journal: Journal of Infrared, Millimeter, and Terahertz Waves

    • Year: 2013

Title: Machine learning enabled food contamination detection using RFID and Internet of Things system
    • Authors: A Sharif, QH Abbasi, K Arshad, S Ansari, MZ Ali, J Kaur, HT Abbas, …

    • Journal: Journal of Sensor and Actuator Networks

    • Year: 2021

Title: On‐chip label‐free impedance‐based detection of antibiotic permeation
    • Authors: J Kaur, H Ghorbanpoor, Y Öztürk, Ö Kaygusuz, H Avcı, C Darcan, …

    • Journal: IET Nanobiotechnology

    • Year: 2021

Title: AI-enabled CSI fingerprinting for indoor localisation towards context-aware networking in 6G
    • Authors: J Kaur, M Shawky, MS Mollel, OR Popoola, MA Imran, QH Abbasi, …

    • Journal: 2023 IEEE Wireless Communications and Networking Conference (WCNC)

    • Year: 2023

Title: Contextual beamforming: Exploiting location and AI for enhanced wireless telecommunication performance
    • Authors: J Kaur, S Bhatti, K Tan, OR Popoola, MA Imran, R Ghannam, QH Abbasi, …

    • Journal: APL Machine Learning

    • Year: 2024

Minura Samaranayake | Bioinformatics | Best Researcher Award

Mr. Minura Samaranayake | Bioinformatics | Best Researcher Award

Mr. Zhishui You | Brain-Computer Interface – South Dakota State University | United States

Profile Verified

Orcid

Minura Samaranayake is a versatile engineer and researcher with a strong foundation in software development and satellite image processing. Currently pursuing a Master’s in Electrical Engineering at South Dakota State University, he works as a Graduate Research Assistant at the Image Processing Lab, focusing on hyperspectral and multispectral image analysis. He previously worked at Sysco LABS as a Software Engineer, building scalable cloud-based systems and AI-driven applications. Proficient in Java, Python, MATLAB, and AWS, Minura excels at creating robust pipelines and intelligent systems that bridge scientific research and real-world engineering.

🎓 Education

Minura is currently enrolled in the M.S. Electrical Engineering program at South Dakota State University (2023–2025), studying Machine Learning, Optical Sensors, and Deep Learning. He earned his B.Sc. in Computer Science from the University of Peradeniya, Sri Lanka (2018–2022), where he focused on Software Project Management, Functional Programming, and Image Processing. He received the Prize for Excellence in Computer Science and was listed on the Dean’s List. His education merges theoretical depth with applied skills in software engineering and signal processing.

💼 Experience

Minura has experience in both academia and industry. At SDSU, he developed automated Linux pipelines for radiometric calibration, MTF estimation, and hyperspectral analysis. At Sysco LABS, he built REST APIs and microservices using Java (Spring Boot), integrated Apache Kafka, and automated CI/CD with Docker and GitHub Actions. He also developed an AI-based safety wear detection system with TensorFlow. His contributions span scientific research and enterprise-grade solutions, showcasing his technical versatility and team collaboration skills.

🏅 Awards and Honors

Minura has received recognition for both academic excellence and leadership. He was awarded the Prize for Excellence in Computer Science (2022) and made the Dean’s List. In addition, he was the Rugby Team Captain (2021) at the University of Peradeniya. These honors reflect his multifaceted capabilities, commitment to personal development, and ability to balance academics and extracurriculars.

🔬 Research Focus

Minura’s research centers on satellite sensor calibration, particularly hyperspectral and multispectral imagery. At SDSU, he specializes in Trend-to-Trend cross-calibration, MTF modeling, and spectral band adjustment. He works with EPICS targets to ensure the harmonization of sensors like Landsat and Sentinel. His research supports global monitoring applications in climate, agriculture, and environmental science. His peer-reviewed publication in Remote Sensing underlines his scientific contributions and commitment to data accuracy in Earth observation.

📚 Selected Publication

Refinement of Trend-to-Trend Cross-Calibration Total Uncertainties Utilizing Extended Pseudo Invariant Calibration Sites (EPICS) Global Temporally Stable Target
  • Authors: Minura Samaranayake, Morakot Kaewmanee, Larry Leigh, Juliana Fajardo Rueda

  • Journal: Remote Sensing

  • Year: 2025