Uzma Amin | Engineering | Best Researcher Award

Dr. Uzma Amin | Engineering | Best Researcher Award

Lecturer at Curtin University, Australia.

Dr. Uzma Amin πŸŽ“ is a passionate Lecturer in Electrical Engineering ⚑, with a Ph.D. in the field and over a decade of commitment to academia and applied research. She actively contributes to education through curriculum development and international teaching collaborations 🌍. As a member of IEEE, WIE, and the Young Professional Engineers network πŸ‘©β€πŸ’», she also plays a key role in professional communities. Her work bridges academia and industry through hands-on supervision of student-industry projects πŸ”§. In addition to her technical contributions, she is a committed reviewer and volunteer, driving innovation and empowerment in engineering education πŸš€.

Professional Profile:

Scopus

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Suitability For Best Researcher award – Dr. Uzma Amin

Dr. Uzma Amin exemplifies the ideal candidate for the Best Researcher Award through her balanced contributions in research, academia, industrial collaboration, and international teaching. With a Ph.D. in Electrical Engineering, she maintains a strong publication record, participates actively in global professional networks (IEEE, WIE), and has shown leadership and innovation in curriculum design and engineering education. Her research, which aligns with sustainable and impactful themes like renewable energy integration, electrical power systems, and smart grids, is both applied and interdisciplinary, reinforcing her significance in today’s technological landscape.

πŸ“˜ Education & Experience

  • πŸŽ“ Ph.D. in Electrical Engineering

  • πŸ‘©β€πŸ« Lecturer in Electrical Engineering

  • 🌐 Taught postgraduate units at Curtin and Yanshan University under international collaboration

  • πŸ“š Developed and redesigned undergraduate and postgraduate engineering curricula

  • πŸ”¬ 23 research publications in indexed journals

  • 🀝 Supervised industrial projects with Regen Pvt Ltd, Rio Tinto, Partum Engineering, and EPC Australia

  • 🌍 Member of IEEE, WIE, and Young Professional Engineers

πŸ“ˆ Professional Development

Dr. Uzma Amin’s professional development reflects her proactive pursuit of excellence in engineering education and practice 🌟. She received the prestigious FHEA fellowship in 2022 πŸŽ–οΈ, recognizing her pedagogical innovation. As a vice-chair of IEEE WIE WA section in 2023, she actively organized workshops and networking events 🀝. Her consistent role as a reviewer for top-tier journals like IEEE Access and Elsevier’s Applied Energy πŸ“‘ illustrates her influence in academic circles. Her teaching, curriculum innovation, and industrial partnerships exemplify a progressive career dedicated to both research impact and engineering education transformation πŸ’‘.

πŸ”¬ Research Focus Category

Dr. Uzma Amin’s research lies primarily in Electrical Power Systems and Renewable Energy Integration ⚑🌱. Her work addresses real-world engineering problems through applied research, with a strong emphasis on renewable power generation systems, electrical machines, and energy systems optimization πŸ”‹. With 23 publications, she contributes to fields intersecting smart grids, clean energy, and sustainable power infrastructure 🌍. Her industry collaborations with companies like Rio Tinto and Electric Power Conversions Australia underscore the applied nature of her research πŸ› οΈ. She also reviews work in computational energy analysis and advanced electrical systems, reflecting a technically diverse focus πŸ“˜.

πŸ… Awards and Honors

  • πŸŽ–οΈ FHEA Fellowship, 2022 – Recognized for excellence in higher education teaching

  • πŸ‘©β€πŸ’Ό Vice-Chair, IEEE Women in Engineering (WIE), WA Section, 2023

  • πŸ“ Regular Reviewer for top journals (IEEE Access, Elsevier, MDPI, etc.)

Publication Top Notes

1. Optimal price based control of HVAC systems in multizone office buildings for demand response

  • Authors: U. Amin, M. J. Hossain, E. Fernandez

  • Journal: Journal of Cleaner Production

  • Volume: 270

  • Article No.: 122059

  • Cited by: 67

  • Year: 2020

  • Summary: This paper proposes a price-based control strategy for HVAC systems in multizone office buildings to enhance energy efficiency and responsiveness in demand-side management under smart grid settings.

2. Computational tools for design, analysis, and management of residential energy systems

  • Authors: K. Mahmud, U. Amin, M. J. Hossain, J. Ravishankar

  • Journal: Applied Energy

  • Volume: 221

  • Pages: 535–556

  • Cited by: 52

  • Year: 2018

  • Summary: The article surveys and evaluates various computational tools that assist in designing and managing residential energy systems, particularly under the influence of emerging distributed energy resources.

3. Integration of renewable energy resources in microgrid

  • Authors: M. Ahmed, U. Amin, S. Aftab, Z. Ahmed

  • Journal: Energy and Power Engineering

  • Volume: 7 (1)

  • Pages: 12–29

  • Cited by: 44

  • Year: 2015

  • Summary: This study discusses the integration strategies of renewable energy sources in microgrids and addresses the associated challenges and opportunities from technical and economic perspectives.

4. Design, construction and study of small scale vertical axis wind turbine based on a magnetically levitated axial flux permanent magnet generator

  • Authors: G. Ahmad, U. Amin

  • Journal: Renewable Energy

  • Volume: 101

  • Pages: 286–292

  • Cited by: 39

  • Year: 2017

  • Summary: This work presents a detailed design and performance analysis of a small-scale vertical axis wind turbine, incorporating a magnetically levitated generator to reduce friction and improve energy efficiency.

5. Energy trading in local electricity market with renewablesβ€”A contract theoretic approach

  • Authors: U. Amin, M. J. Hossain, W. Tushar, K. Mahmud

  • Journal: IEEE Transactions on Industrial Informatics

  • Volume: 17 (6)

  • Pages: 3717–3730

  • Cited by: 37

  • Year: 2020

  • Summary: The paper develops a contract-theoretic framework for local energy trading in a renewable-integrated smart grid setting, ensuring fair pricing and demand satisfaction.

6. Performance analysis of an experimental smart building: Expectations and outcomes

  • Authors: U. Amin, M. J. Hossain, J. Lu, E. Fernandez

  • Journal: Energy

  • Volume: 135

  • Pages: 740–753

  • Cited by: 34

  • Year: 2017

  • Summary: This study presents real-time data and performance evaluation of an experimental smart building, highlighting discrepancies between expected and actual outcomes in energy consumption and management.

🧾 Conclusion

In conclusion, Dr. Uzma Amin’s career trajectory, research excellence, and international impact make her an outstanding contender for the Best Researcher Award. Her ability to merge technical depth with practical relevance, academic influence, and community engagement embodies the spirit of a researcher committed not just to discovery but also to societal and industrial transformation. Recognizing her with this award would celebrate a truly multidimensional and forward-thinking scholar. πŸ†

Wenkun Yang | Engineering | Best Researcher Award

Dr. Wenkun Yang | Engineering | Best Researcher Award

Research associate at Hohai University, China.

Dr. Wenkun Yang is an accomplished researcher in the field of rock mechanics, tunneling, and TBM (Tunnel Boring Machine) technology. His contributions to the field focus on integrating advanced machine learning techniques for rock stability analysis and predictive modeling in underground construction. With 11 Scopus-indexed publications and over 261 citations, Dr. Yang has made a significant impact on geotechnical engineering research. He has authored two books and filed four patents, further demonstrating his innovation in the domain. His work has been recognized in top-tier journals such as Tunnelling and Underground Space Technology and Rock Mechanics and Rock Engineering. Beyond academia, Dr. Yang has collaborated with leading institutions and industry partners, contributing to several high-profile engineering projects. His expertise in numerical modeling, data-driven decision-making, and smart TBM operations has led to groundbreaking advancements in underground infrastructure development. With a strong track record of scientific publications, industrial collaborations, and editorial contributions, he stands as a prominent figure in his field. His ability to bridge theoretical research with practical applications makes him a strong candidate for the Best Researcher Award. His dedication to advancing tunneling technology and his impact on engineering practices continue to earn him recognition in both academic and industrial circles.

Professional Profile:

Education

Dr. Wenkun Yang holds a Ph.D. in Geotechnical Engineering, where his doctoral research focused on integrating artificial intelligence and numerical modeling for rock mechanics applications. His academic journey began with a Bachelor’s degree in Civil Engineering, followed by a Master’s degree specializing in underground engineering. Throughout his educational career, he developed a strong foundation in computational geomechanics, material behavior analysis, and advanced simulation techniques. His research during his Master’s studies emphasized the stability assessment of rock masses in deep tunnels, setting the stage for his later work in TBM technology. During his Ph.D., he worked extensively on data-driven approaches to rock engineering, combining traditional empirical models with machine learning algorithms to enhance prediction accuracy in geological conditions. His education has been complemented by advanced certifications in artificial intelligence applications in engineering and high-performance computing. His academic excellence has been recognized through scholarships and research grants, allowing him to study in collaborative environments with international experts in tunneling and rock engineering. His multi-disciplinary education spanning structural engineering, computational modeling, and artificial intelligence has equipped him with the necessary skills to address complex geotechnical challenges. Dr. Yang’s rigorous academic background forms the foundation for his innovative contributions to the field of underground construction and rock mechanics.

Professional Experience

Dr. Wenkun Yang has extensive professional experience in both academic and industrial settings, making significant contributions to underground engineering and rock mechanics. He currently serves as a senior researcher at a leading geotechnical institute, where he oversees multiple projects on TBM technology and tunneling stability. His role involves leading research teams, mentoring junior researchers, and developing computational models for geotechnical risk assessments. Prior to this position, he worked as a postdoctoral researcher at a renowned university, where he contributed to high-impact projects focusing on intelligent TBM monitoring systems. His industry experience includes collaborations with major engineering firms and governmental agencies, where he applied his research to real-world tunnel construction projects. He has played a crucial role in consulting for large-scale infrastructure developments, providing expertise on ground deformation prediction and machine learning-based tunneling strategies. In addition to his research roles, Dr. Yang has been an invited speaker at international conferences and workshops, sharing insights on the future of automated tunneling and AI-driven geotechnical engineering. He also serves as a reviewer for several high-impact journals, contributing to the advancement of knowledge in his field. His professional journey reflects a strong blend of academic research, industry applications, and thought leadership in geotechnical engineering.

Research Interests

Dr. Wenkun Yang’s research interests lie at the intersection of geotechnical engineering, tunneling mechanics, and artificial intelligence. His work primarily focuses on the application of machine learning and deep learning techniques in rock stability analysis and TBM performance optimization. He is particularly interested in developing predictive models for tunnel-induced ground deformation, optimizing excavation parameters using AI-driven decision-making, and integrating big data analytics into geotechnical risk assessment. Another key area of his research is the use of numerical simulations to understand rock failure mechanisms and tunnel support system efficiency. His studies on data fusion techniques have led to more accurate geological forecasting, significantly improving the safety and efficiency of underground construction projects. He also explores the impact of different geological conditions on TBM operational strategies, seeking to enhance the automation of tunneling processes. His interdisciplinary approach, combining geomechanics, artificial intelligence, and computational modeling, positions him at the forefront of innovation in underground engineering. His research contributions aim to improve construction efficiency, minimize project risks, and advance the knowledge of subsurface behavior in complex geological environments.

Research Skills

Dr. Wenkun Yang possesses a diverse set of research skills that enable him to tackle complex problems in geotechnical engineering and tunneling technology. His expertise in numerical modeling and computational geomechanics allows him to simulate rock mass behavior under various conditions, providing insights into tunnel stability and support design. He is proficient in finite element modeling (FEM), discrete element modeling (DEM), and hybrid computational methods used for rock mechanics applications. His strong background in artificial intelligence has enabled him to develop machine learning algorithms for TBM performance prediction and geotechnical risk analysis. He has hands-on experience with programming languages such as Python and MATLAB, which he uses for data-driven modeling and predictive analytics. Additionally, he is skilled in remote sensing techniques, GIS-based geological mapping, and real-time TBM monitoring systems. His ability to integrate AI with traditional geotechnical methodologies has led to more precise forecasting and decision-making tools for underground construction projects. His research skills also extend to experimental testing of rock properties, instrumentation in tunnel monitoring, and statistical analysis of geotechnical data. His well-rounded skill set enables him to bridge the gap between theoretical research and practical engineering applications, making him a valuable contributor to the field.

Awards and Honors

Dr. Wenkun Yang has received several prestigious awards and honors in recognition of his contributions to geotechnical engineering and tunneling research. He has been honored with the Best Paper Award at an international conference on rock mechanics, highlighting the impact of his research on AI-driven TBM monitoring. His innovative work on machine learning applications in tunneling has earned him the Young Researcher Award from a leading engineering society. Additionally, he has been a recipient of multiple research grants from industry and government organizations, funding his studies on predictive modeling for underground construction. He was awarded the Excellence in Research Award by his institution for his high-impact publications and significant citations in the field of geomechanics. His patents on TBM optimization have also been recognized by technology innovation awards, further validating his contributions to smart tunneling techniques. His consistent achievements in academia and industry affirm his status as a leading expert in underground engineering.

Conclusion

Dr. Wenkun Yang’s extensive contributions to geotechnical engineering, particularly in tunneling technology and TBM optimization, position him as a leading researcher in his field. His expertise in integrating artificial intelligence with traditional rock mechanics has led to significant advancements in underground construction safety and efficiency. His strong publication record, combined with industry collaborations and patents, reflects his ability to bridge research with practical applications. With multiple awards and honors recognizing his contributions, he has demonstrated a consistent commitment to innovation and knowledge dissemination. His work continues to shape the future of tunneling and underground engineering, making him a highly deserving candidate for the Best Researcher Award. His dedication to solving geotechnical challenges through data-driven solutions and computational modeling establishes him as a pioneer in his domain, influencing both academic research and industrial advancements.

Publication Top Notes

  • Feature fusion method for rock mass classification prediction and interpretable analysis based on TBM operating and cutter wear data
    πŸ“… 2025 | πŸ“œ Tunnelling and Underground Space Technology
    ✍️ Authors: Yang, W.; Chen, Z.; Zhao, H.; Chen, S.; Shi, C.
    πŸ”— DOI: 10.1016/j.tust.2024.106351
    πŸ“‘ EID: 2-s2.0-85213873575
  • Feedback on a shared big dataset for intelligent TBM Part I: Feature extraction and machine learning methods
    πŸ“… 2023 | πŸ“œ Underground Space (China)
    ✍️ Authors: Li, J.-B.; Chen, Z.-Y.; Li, X.; Jing, L.-J.; Zhang, Y.-P.; Xiao, H.-H.; Wang, S.-J.; Yang, W.-K.; Wu, L.-J.; Li, P.-Y.
    πŸ”— DOI: 10.1016/j.undsp.2023.01.001
    πŸ“‘ EID: 2-s2.0-85151779831
  • Feedback on a shared big dataset for intelligent TBM Part II: Application and forward look
    πŸ“… 2023 | πŸ“œ Underground Space (China)
    ✍️ Authors: Li, J.-B.; Chen, Z.-Y.; Li, X.; Jing, L.-J.; Zhang, Y.-P.; Xiao, H.-H.; Wang, S.-J.; Yang, W.-K.; Wu, L.-J.; Li, P.-Y.
    πŸ”— DOI: 10.1016/j.undsp.2023.01.002
    πŸ“‘ EID: 2-s2.0-85152230288
  • Probabilistic machine learning approach to predict incompetent rock masses in TBM construction
    πŸ“… 2023 | πŸ“œ Acta Geotechnica
    ✍️ Authors: Yang, W.; Zhao, J.; Li, J.; Chen, Z.
    πŸ”— DOI: 10.1007/s11440-023-01871-y
    πŸ“‘ EID: 2-s2.0-85151297550
  • Probabilistic model of disc-cutter wear in TBM construction: A case study of Chaoer to Xiliao water conveyance tunnel in China
    πŸ“… 2023 | πŸ“œ Science China Technological Sciences
    ✍️ Authors: Yang, W.K.; Chen, Z.Y.; Wu, G.S.; Xing, H.
    πŸ”— DOI: 10.1007/s11431-023-2465-y
    πŸ“‘ EID: 2-s2.0-85175035176
  • Excavation rate β€œpredicting while tunnelling” for double shield TBMs in moderate strength poor to good quality rocks
    πŸ“… 2022 | πŸ“œ International Journal of Rock Mechanics and Mining Sciences
    ✍️ Authors: Mu, B.; Yang, W.; Zheng, Y.; Li, J.
    πŸ”— DOI: 10.1016/j.ijrmms.2021.104988
    πŸ“‘ EID: 2-s2.0-85120046745
  • Significance and methodology: Preprocessing the big data for machine learning on TBM performance
    πŸ“… 2022 | πŸ“œ Underground Space (China)
    ✍️ Authors: Xiao, H.-H.; Yang, W.-K.; Hu, J.; Zhang, Y.-P.; Jing, L.-J.; Chen, Z.-Y.
    πŸ”— DOI: 10.1016/j.undsp.2021.12.003
    πŸ“‘ EID: 2-s2.0-85124407862
  • Numerical simulation for compressive and tensile behaviors of rock with virtual microcracks
    πŸ“… 2021 | πŸ“œ Arabian Journal of Geosciences
    ✍️ Authors: Chen, X.; Shi, C.; Ruan, H.-N.; Yang, W.-K.
    πŸ”— DOI: 10.1007/s12517-021-07163-7
    πŸ“‘ EID: 2-s2.0-85105802718
  • Calibration of micro-scaled mechanical parameters of granite based on a bonded-particle model with 2D particle flow code
    πŸ“… 2019 | πŸ“œ Granular Matter
    ✍️ Authors: Not provided
    πŸ”— DOI: 10.1007/s10035-019-0889-3
  • Numerical simulation of column charge explosive in rock masses with particle flow code
    πŸ“… 2019-11 | πŸ“œ Granular Matter
    ✍️ Authors: Not provided
    πŸ”— DOI: 10.1007/s10035-019-0950-2
  • Study of Anti-Sliding Stability of a Dam Foundation Based on the Fracture Flow Method with 3D Discrete Element Code
    πŸ“… 2017-10-06 | πŸ“œ Energies
    ✍️ Authors: Chong Shi; Wenkun Yang; Weijiang Chu; Junliang Shen; Yang Kong
    πŸ”— DOI: 10.3390/en10101544

Jamal Raiyn | Engineering | Best Researcher Award

Prof. Dr. Jamal Raiyn | Engineering | Best Researcher Award

Researcher at Technical University of Applied Sciences Aschaffenburg Sciences, Aschaffenburg, Germany.

Dr. Jamal Raiyn is a distinguished researcher in applied computer science, recognized for his innovative contributions to autonomous systems, cybersecurity, and urban livability. With a focus on using computational intelligence to solve real-world challenges, his work spans diverse areas such as vehicle safety, data science, and natural product bioactivity. Dr. Raiyn has an extensive publication record, including high-impact journals like Smart Cities and PLoS ONE. His research integrates interdisciplinary approaches, bridging technology with societal needs. Notably, his work on data-driven anomaly detection and computational methods for vehicle networks has garnered global recognition. Dr. Raiyn’s passion for collaborative research and impactful problem-solving continues to define his professional journey.

Professional Profile:

Education

Dr. Raiyn holds advanced degrees in computer science, specializing in applied computational techniques. His academic foundation equips him with a robust understanding of data systems, artificial intelligence, and cybersecurity. Details about the institutions he attended and specific degrees earned could further solidify his academic credentials in this profile.

Professional Experience

Dr. Raiyn has extensive experience as a researcher and academic, contributing significantly to both theoretical advancements and practical applications in his field. Over the years, he has collaborated with various organizations and universities, leading projects that focus on enhancing safety, livability, and efficiency in urban and technological systems.

Research Interests

Dr. Raiyn’s primary research interests include computational intelligence, autonomous systems, vehicular networks, and cybersecurity. His work frequently explores interdisciplinary domains, such as integrating AI into naturalistic driving studies, predicting autonomous driving behaviors, and advancing maritime cybersecurity. These interests demonstrate a commitment to addressing contemporary challenges in technology and society.

Research Skills

Dr. Raiyn’s skills encompass advanced data analysis, machine learning, cybersecurity modeling, and system optimization. His expertise in computational intelligence allows him to solve complex, multi-dimensional problems. Proficiency in handling diverse data sets and developing predictive models has been pivotal in his impactful research contributions.

Awards and Honors

Dr. Raiyn’s research excellence has earned him multiple accolades, including recognition for his papers in the “Top 10 Must-Read Data Science Research Papers in 2022.” His highly cited works in applied sciences highlight his contributions to global knowledge. Awards for impactful publications and invited talks further reflect his standing in the academic community.

Conclusion

Dr. Jamal Raiyn’s impressive career in applied computer science exemplifies excellence in research, innovation, and societal impact. His ability to tackle pressing global issues through advanced computational techniques positions him as a leader in his field. With continued dedication to high-quality research and collaboration, Dr. Raiyn is well-deserving of recognition and accolades, including the Best Researcher Award.

Publication Top Notes

  1. Improving the Perception of Objects Under Daylight Foggy Conditions in the Surrounding Environment
    • Authors: Chaar, M.M., Raiyn, J., Weidl, G.
    • Year: 2024
  2. From Sequence to Solution: Intelligent Learning Engine Optimization in Drug Discovery and Protein Analysis
    • Authors: Raiyn, J., Rayan, A., Abu-Lafi, S., Rayan, A.
    • Year: 2024
  3. Predicting Autonomous Driving Behavior through Human Factor Considerations in Safety-Critical Events
    • Authors: Raiyn, J., Weidl, G.
    • Year: 2024
    • Citations: 1
  4. Analysis of Driving Behavior in Adverse Weather Conditions
    • Authors: Raiyn, J., Chaar, M.M., Weidl, G.
    • Year: 2024
  5. Improve Bounding Box in Carla Simulator
    • Authors: Chaar, M.M., Raiyn, J., Weidl, G.
    • Year: 2024
    • Citations: 1
  6. Improving Autonomous Vehicle Reasoning with Non-Monotonic Logic: Advancing Safety and Performance in Complex Environments
    • Authors: Raiyn, J., Weidl, G.
    • Year: 2023
    • Citations: 1
  7. Naturalistic Driving Studies Data Analysis Based on a Convolutional Neural Network
    • Authors: Raiyn, J., Weidl, G.
    • Year: 2023
    • Citations: 4
  8. Detection of Road Traffic Anomalies Based on Computational Data Science
    • Authors: Raiyn, J.
    • Year: 2022
    • Citations: 4
  9. Road Traffic Anomaly Detection Based on Deep Learning Technology
    • Authors: Raiyn, J.
    • Year: 2021
    • Citations: 1
  10. Classification of Road Traffic Anomaly Based on Travel Data Analysis
    • Authors: Raiyn, J.
    • Year: 2021
    • Citations: 6