Prof . Len Gelman | Artificial Intelligence | Best Researcher Award

Prof . Len Gelman | Artificial Intelligence | Best Researcher Award

Prof. Len Gelman , University of Huddersfield , United Kingdom

Professor Len Gelman ๐Ÿ‡ฌ๐Ÿ‡ง is a globally recognized expert in signal processing and condition monitoring ๐Ÿ”. He currently serves as Chair Professor and Director at the University of Huddersfield ๐Ÿซ. With over two decades of academic leadership, he has significantly contributed to vibro-acoustics and non-destructive testing ๐Ÿ”ง. A Fellow of multiple prestigious organizations ๐ŸŒ, Prof. Gelmanโ€™s international collaborations span across Europe, Asia, and the USA ๐ŸŒ. His innovations have advanced aerospace and medical diagnostics โœˆ๏ธ๐Ÿงฌ. He continues to lead global initiatives and research committees, shaping the future of engineering diagnostics and reliability technologies ๐Ÿ”ฌ๐Ÿ› ๏ธ.

Professional Profile

SCOPUS

Education and Experienceย 

Prof. Len Gelman holds a PhD and Doctor of Science (Habilitation) ๐ŸŽ“, with BSc (Hons) and MSc (Hons) degrees in engineering ๐Ÿ“˜. He is a British citizen ๐Ÿ‡ฌ๐Ÿ‡ง. Since 2017, he has been a Professor and Chair at the University of Huddersfield ๐Ÿ›๏ธ. Prior to that, he served at Cranfield University (2002โ€“2017) as Chair in Vibro-Acoustical Monitoring ๐Ÿ”Š. His distinguished academic journey includes visiting professorships in China ๐Ÿ‡จ๐Ÿ‡ณ, Denmark ๐Ÿ‡ฉ๐Ÿ‡ฐ, Poland ๐Ÿ‡ต๐Ÿ‡ฑ, Spain ๐Ÿ‡ช๐Ÿ‡ธ, Italy ๐Ÿ‡ฎ๐Ÿ‡น, and the USA ๐Ÿ‡บ๐Ÿ‡ธ. Prof. Gelman combines deep technical expertise with global educational outreach ๐ŸŒ๐Ÿ‘จโ€๐Ÿซ.

Professional Developmentย 

Prof. Gelman has held key international leadership roles including Chair of the International Scientific Committee of the Condition Monitoring Society ๐ŸŒ. He is a Fellow of BINDT, IAENG, IDE, and HEA ๐ŸŽ–๏ธ, and an Academician of the Academy of Sciences of Applied Radio Electronics ๐Ÿง . He chairs award and honors committees for top acoustics and vibration institutions ๐Ÿ…. As Visiting Professor at Tsinghua, Jiao Tong, and Aalborg Universities, among others ๐ŸŽ“, he mentors emerging researchers globally ๐ŸŒŽ. Prof. Gelmanโ€™s commitment to professional excellence shapes the advancement of diagnostic technologies and engineering education ๐Ÿ“ˆ๐Ÿ”ง.

Research Focusย 

Prof. Gelmanโ€™s research focuses on signal processing, vibro-acoustics, and condition monitoring of engineering systems ๐Ÿ”๐Ÿ”Š. His work spans non-destructive testing (NDT), fault diagnostics, and performance optimization in sectors such as aerospace, healthcare, and manufacturing โœˆ๏ธ๐Ÿฅ๐Ÿญ. He develops advanced algorithms for fault detection and predictive maintenance using machine learning and big data ๐Ÿง ๐Ÿ“Š. His interdisciplinary approach benefits both industry and academia ๐ŸŒ๐Ÿ”ฌ. Prof. Gelman also pioneers applications in medical diagnostics and intelligent systems for real-time monitoring ๐Ÿงฌโš™๏ธ. His innovations contribute to safer, more efficient engineering systems across global platforms ๐ŸŒ๐Ÿš€.

Awards and Honorsย 

Prof. Gelman has received numerous prestigious awards for innovation and research excellence ๐Ÿ…. These include the Rolls-Royce Innovation Award (2012, 2019) โœˆ๏ธ, William Sweet Smith Prize by IMechE ๐Ÿ› ๏ธ, and COMADIT Prize by BINDT for impactful contributions to condition monitoring ๐Ÿงฒ. He also received Best Paper Awards at CM/MFPT conferences ๐Ÿ“„ and recognition from the USA Navy and Acoustical Society of America ๐Ÿ‡บ๐Ÿ‡ธ๐Ÿ”Š. His European and UK fellowships support cutting-edge human capital projects ๐Ÿง ๐Ÿ‡ช๐Ÿ‡บ. He has chaired international committees in NDT and acoustics, continuing to shape future technologies through global leadership and innovation ๐ŸŒ๐Ÿ‘จโ€๐Ÿ”ฌ.

Publication Top Notes

1. Vibration Analysis of Rotating Porous Functionally Graded Material Beams Using Exact Formulation

  • Citation: Amoozgar, M.R., & Gelman, L.M. (2022). Vibration analysis of rotating porous functionally graded material beams using exact formulation. Journal of Vibration and Control, 28(21โ€“22), 3195โ€“3206. https://doi.org/10.1177/10775463211027883Nottingham Repository+1SAGE Journals+1

  • Summary: This study investigates the free vibration behavior of rotating functionally graded material (FGM) beams with porosity, employing geometrically exact fully intrinsic beam equations. The research considers both even and uneven porosity distributions to simulate manufacturing imperfections. Findings reveal that material gradation and porosity significantly influence natural frequencies and mode shapes, emphasizing the necessity of accounting for these factors in the design and analysis of rotating FGM structures. Huddersfield Research Portal+2SAGE Journals+2Nottingham Repository+2

2. Vibration Health Monitoring of Rolling Bearings Under Variable Speed Conditions by Novel Demodulation Technique

  • Citation: Zhao, D., Gelman, L.M., Chu, F., & Ball, A.D. (2021). Vibration health monitoring of rolling bearings under variable speed conditions by novel demodulation technique. Structural Control and Health Monitoring, 28(2), e2672. https://doi.org/10.1002/stc.2672Wiley Online Library

  • Summary: Addressing the challenges of diagnosing rolling bearing faults under variable speed conditions, this paper introduces an optimization-based demodulation transform method. The technique effectively estimates fault characteristic frequencies with weak amplitudes and adapts to time-varying rotational speeds. Validation through simulations and experimental data demonstrates the method’s superior diagnostic capabilities compared to existing approaches. Huddersfield Research Portal+1Wiley Online Library+1

3. Novel Method for Vibration Sensor-Based Instantaneous Defect Frequency Estimation for Rolling Bearings Under Non-Stationary Conditions

  • Citation: Zhao, D., Gelman, L.M., Chu, F., & Ball, A.D. (2020). Novel method for vibration sensor-based instantaneous defect frequency estimation for rolling bearings under non-stationary conditions. Sensors, 20(18), 5201. https://doi.org/10.3390/s20185201MDPI

  • Summary: This research presents a novel approach for estimating instantaneous defect frequencies in rolling bearings operating under non-stationary conditions. Utilizing vibration sensor data, the method enhances the accuracy of defect frequency estimation, facilitating improved fault diagnosis in dynamic operational environments. MDPI

4. Novel Fault Identification for Electromechanical Systems via Spectral Technique and Electrical Data Processing

  • Citation: Ciszewski, T., Gelman, L.M., & Ball, A.D. (2020). Novel fault identification for electromechanical systems via spectral technique and electrical data processing. Electronics, 9(10), 1560. https://doi.org/10.3390/electronics9101560MDPI

  • Summary: This paper introduces an innovative method for fault identification in electromechanical systems by integrating spectral analysis with electrical data processing. The approach enhances the detection and diagnosis of faults, contributing to the reliability and efficiency of electromechanical system operations. MDPI

5. Novel Prediction of Diagnosis Effectiveness for Adaptation of the Spectral Kurtosis Technology to Varying Operating Conditions

  • Citation: Kolbe, S., Gelman, L.M., & Ball, A.D. (2021). Novel prediction of diagnosis effectiveness for adaptation of the spectral kurtosis technology to varying operating conditions. Sensors, 21(20), 6913. https://doi.org/10.3390/s21206913PMC

  • Summary: This study proposes two novel consistency vectors combined with machine learning algorithms to adapt spectral kurtosis technology for optimal gearbox damage diagnosis under varying operating conditions. The approach enables computationally efficient online condition monitoring by predicting diagnosis effectiveness, thereby improving maintenance strategies.

Conclusion

Professor Len Gelman exemplifies the ideal candidate for the Best Researcher Award due to his groundbreaking contributions to condition monitoring, signal processing, and diagnostic technologies. His work not only advances academic knowledge but also addresses critical industry challenges in aerospace, healthcare, and manufacturing. With a sustained record of high-impact research, international leadership, and technological innovation, he stands out as a world-class researcher whose work continues to benefit both academia and society.

 

Ms Jayasree Varadarajan | Artificial Intelligence | Best Researcher Award

Ms Jayasree Varadarajan | Artificial Intelligence | Best Researcher Award

AI Technical Analyst Lead at Manchester Metropolitan University,United Kingdom

Jayasree Varadarajanโ€™s journey in Artificial Intelligence (AI) is a story of relentless pursuit of knowledge, groundbreaking contributions, and inspiring leadership. From her early academic foundations to becoming a beacon of innovation and expertise in AI, her accomplishments reflect her dedication and profound impact on the field.

Profile

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scopus

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๐ŸŽ“ Early Academic Pursuits

Jayasree’s academic journey began in India, where she earned a Bachelorโ€™s degree in Electronics & Communication Engineering from Periyar Maniammai University in 2012. Demonstrating exceptional aptitude, she pursued a Masterโ€™s in VLSI Design from Kings College of Engineering, graduating in 2014 as an academic topper.

Eager to explore the nexus of satellite technology and AI, she earned an MSc in Satellite Data Science from the University of Leicester, UK, in 2022. Her academic foundation provided her with a deep understanding of complex systems, preparing her to address real-world challenges in AI and beyond.

๐Ÿ’ผ Professional Endeavors

Jayasreeโ€™s professional trajectory showcases her versatility in various roles and industries:

  • AI Technical Analyst Lead (2023 โ€“ Present): At the Center for Digital Innovation, MMU, UK, funded by UKRI-Innovate UK, Jayasree has been instrumental in leading the design and development of AI-driven healthcare and IT solutions. Her work bridges the gap between academic research and practical applications while ensuring ethical AI practices.
  • AI Technical R&D Analyst (2023): In this role at GM AI Foundry, she accelerated SME businesses by integrating AI into their operations, emphasizing ethical standards and innovative problem-solving.
  • Machine Learning Research Assistant (2022): At Space Park Leicester, she contributed to a SPRINT project that utilized aerial LiDAR data and machine learning algorithms to estimate carbon sequestration potential.
  • AI Data Scientist (2016โ€“2021): Jayasree led projects such as the โ€œE-Doctor Alexa System,โ€ which addressed healthcare challenges through predictive modeling. Her work demonstrated a profound ability to develop business solutions using AI and machine learning.

๐Ÿ”ฌ Contributions and Research Focus

Jayasreeโ€™s research has centered on applying AI and ML technologies to solve critical problems in healthcare, environment, and business. Her publications in journals like MDPI and Heliyon delve into the applications of AI for societal benefit.

As a resource person for Faculty Development Programs, Jayasree has conducted numerous webinars and seminars, empowering students and academics with advanced AI tools. She has also shared her expertise on global platforms such as:

  • AI Summit London (2023)
  • AI Summit Singapore (2024)

๐Ÿ† Accolades and Recognition

Jayasree’s exemplary work has earned her several accolades:

  • Finalist in the Promising Professional Category (IIW Awards 2024): This recognition underscores her growing influence and contributions to AI.
  • Academic Excellence: She consistently ranked as a topper during her undergraduate and postgraduate studies.
  • UK Global Talent Visa: Endorsed as an exceptional talent in AI by UKRI, Jayasreeโ€™s recognition in 2024 highlights her leadership in the field.

She has also earned certificates of appreciation from academic institutions for her role as a resource person and technical expert.

๐ŸŒ Impact and Influence

Jayasreeโ€™s expertise in programming (Python, R), cloud technologies (Microsoft Azure), and AI domains like NLP, Generative AI, and Prompt Engineering has influenced diverse industries. Her ability to deliver custom AI tools, mentor professionals, and provide actionable solutions showcases her as a transformative leader in AI.

Her role as a mentor and thought leader inspires a generation of budding AI enthusiasts and professionals. By demystifying AI concepts and advocating for ethical AI use, she fosters responsible innovation and sustainable development.

๐ŸŒŸ Legacy and Future Contributions

Looking ahead, Jayasree aims to:

  • Expand her research on healthcare applications of AI, focusing on predictive analytics and AI-driven health solutions.
  • Continue empowering students and professionals through education and mentorship.
  • Advocate for responsible AI practices on global platforms to ensure its positive impact on society.

Her journey from academic brilliance to professional excellence positions her as a trailblazer in AI. Jayasree Varadarajan’s story is not just about achievements; it is about the meaningful impact of technology when guided by passion, ethics, and a vision for a better future.

Publication Top Notes

Artificial Intelligence

  • Md Abu Sufian, Jayasree Varadarajan (2024). “Enhancing prediction and analysis of UK road traffic accident severity using AI: Integration of machine learning, econometric techniques, and time series forecasting in public health.” Heliyon, 10(7).
  • Md Abu Sufian, W Hamzi, B Hamzi, ASMS Sagar, M Rahman, Jayasree Varadarajan, et al. (2024). “Innovative machine learning strategies for early detection and prevention of pregnancy loss: the Vitamin D connection and gestational health.” Diagnostics, 14(9), 920.
  • Md Abu Sufian, W Hamzi, S Zaman, L Alsadder, B Hamzi, Jayasree Varadarajan, et al. (2024). “Enhancing Clinical Validation for Early Cardiovascular Disease Prediction through Simulation, AI, and Web Technology.” Diagnostics, 14(12), 1308.
  • Md Abu Sufian, Jayasree Varadarajan, M Hanumanthu, L Katneni, A Jamil, V Lal, et al. (2024). “Optimizing E-Sports Revenue: A Novel Data Driven Approach to Predicting Merchandise Sales Through Data Analytics and Machine Learning.” Science and Information Conference, 522-567.
  • Md Abu Sufian, Md Ashraful Islam, Jayasree Varadarajan (2023). “AI Models for Early Detection and Mortality Prediction in Cardiovascular Diseases.” TechRxiv.
  • Jayasree Varadarajan, Md Abu Sufian (2023). “Neuro App: AI-driven 4D brain image processing on standalone platforms.” Journal of Computer Engineering & Information Technology, 12.
  • Jayasree Varadarajan, Jeyaseelan (2014). “Design of Ultrasound Biomicroscopy in Open Platform Using FPGA.” Second International Conference On Science, Engineering and Management, 2.