Nuno Ferreira | Robotics | Excellence in Innovation Award

Excellence in Innovation Award

Nuno Ferreira
Affiliation Coimbra Polytechnic – ISEC
Country Portugal
Scopus ID 58549016300
Documents 120
Citations 1,675
h-index 19
Subject Area Robotics, Automation, Autonomous Navigation, Sensor Systems
Event Global Academic Awards

Nuno Ferreira
Coimbra Polytechnic – ISEC, Portugal

Nuno Ferreira is affiliated with Coimbra Polytechnic – ISEC, Coimbra, Portugal, and is recognized for scholarly contributions in robotics, autonomous systems, industrial automation, sensor technologies, and intelligent navigation systems. His research profile demonstrates consistent academic productivity, interdisciplinary collaboration, and measurable citation impact in engineering and applied sciences.[1]

Abstract

Prof. Nuno Miguel Ferreira has developed a substantial research portfolio in robotics, industrial automation, autonomous vehicle navigation, and intelligent sensor architectures. His work focuses on practical engineering applications involving unmanned ground vehicles (UGVs), visual and visual–inertial simultaneous localization and mapping (SLAM), collaborative robotics, and industrial interoperability systems. The author’s publication record and citation profile indicate sustained scholarly engagement with emerging technologies in automation and applied robotics.[1][2]

Keywords

Robotics, Autonomous Navigation, SLAM Systems, Industrial Automation, UGV Navigation, Sensor Architectures, Forestry Robotics, Collaborative Robots, Artificial Intelligence, Industrial Interoperability.

Introduction

The rapid evolution of robotics and intelligent automation has created significant demand for advanced navigation systems, collaborative robotic environments, and adaptive industrial technologies. Researchers contributing to these domains play an important role in the development of sustainable engineering systems, industrial optimization, and autonomous operational frameworks. Prof. Nuno Miguel Ferreira has contributed to these areas through investigations involving sensor fusion, robotic perception, autonomous navigation, and industrial robotics integration.[3]

His recent publications indicate strong engagement with automation in forestry environments, autonomous tractor navigation, industrial robotic interoperability, and deep learning applications for robotic mapping systems. These research themes align with current global priorities in smart manufacturing, Industry 4.0, and intelligent transportation systems.[4]

Research Profile

According to indexed academic metrics, Prof. Ferreira has authored 120 scholarly documents with more than 1,675 citations and an h-index of 19, reflecting a stable and influential research trajectory in engineering and automation sciences.[1]

The researcher’s investigations span multiple interdisciplinary domains including:

  • Visual and visual–inertial SLAM systems
  • Industrial robotic fleet management
  • Sensor fusion architectures
  • Collaborative robotics
  • Forestry robotics and autonomous tractors
  • Magnetometer data denoising
  • UGV control systems
  • Industrial interoperability environments

The integration of artificial intelligence and robotic perception within industrial and environmental applications is a recurring theme throughout his recent work.[5]

Research Contributions

One of the notable research directions associated with Prof. Ferreira involves autonomous robotic navigation within unstructured natural environments. This includes the evaluation of SLAM methodologies, visual–inertial localization systems, and intelligent mapping frameworks for unmanned ground vehicles operating in forestry and outdoor conditions.[2]

Another important contribution concerns industrial robotic interoperability in multi-brand environments. The proposed fleet management systems support operational efficiency, flexible automation, and integration across industrial robotic infrastructures used in automotive manufacturing sectors.[6]

Research involving collaborative robotics and intelligent vision systems has also contributed to improvements in industrial nut-tightening processes and precision assembly systems. These studies demonstrate practical applications of computer vision integrated with robotic automation platforms.[7]

Additional work related to forestry robotics and sensory architectures highlights the use of robust sensor systems in autonomous environmental monitoring and navigation tasks.[8]

Publications

Selected publications associated with Prof. Ferreira include:

  • Visual and Visual–Inertial SLAM for UGV Navigation in Unstructured Natural Environments: A Survey of Challenges and Deep Learning Advances (2025).[2]
  • Integrated Fleet Management of Mobile Robots for Enhancing Industrial Efficiency, Applied Sciences (2025).[6]
  • Enhancing Nut-Tightening Processes in the Automotive Industry: Integration of 3D Vision Systems with Collaborative Robots, Automation (2025).[7]
  • Evaluation of PID-Based Algorithms for UGVs, Algorithms (2025).[9]
  • Vision System for a Forestry Navigation Machine, Sensors (2024).[10]
  • Robots for Forest Maintenance, Forests (2024).[11]

Research Impact

The citation profile associated with Prof. Ferreira indicates sustained visibility within engineering and robotics research communities. The combination of more than 1,675 citations and a substantial publication portfolio demonstrates academic recognition and scholarly engagement across multiple application-oriented research domains.[1]

His research outputs contribute to industrial robotics, autonomous mobility, intelligent sensing, and applied artificial intelligence. These fields are increasingly relevant to industrial automation, smart agriculture, forestry management, and next-generation manufacturing ecosystems.[5]

Award Suitability

Prof. Nuno Miguel Ferreira demonstrates suitability for international academic recognition based on publication productivity, interdisciplinary engineering contributions, and measurable research influence. His investigations address both theoretical and applied challenges within robotics and automation, particularly in environments requiring adaptive sensing, navigation, and collaborative operational systems.[6]

The researcher’s engagement with industrial interoperability, autonomous navigation systems, and intelligent robotics aligns with contemporary scientific priorities in Industry 4.0 and sustainable engineering innovation. These achievements collectively support recognition within research excellence and innovation award categories.[3]

Conclusion

Prof. Nuno Miguel Ferreira has established a consistent academic profile within robotics, automation engineering, and intelligent navigation systems. His scholarly contributions demonstrate interdisciplinary integration of robotics, industrial automation, artificial intelligence, and sensor technologies. Through publications addressing industrial efficiency, autonomous systems, forestry robotics, and collaborative robotic applications, the researcher has contributed to the advancement of applied engineering sciences and intelligent automation methodologies.[1][6]

References

  1. Elsevier. (n.d.). Scopus author details: Nuno Miguel Ferreira, Author ID 58549016300. Scopus.
    https://www.scopus.com/authid/detail.uri?authorId=58549016300
  2. Ferreira, N. M., et al. (2025). Visual and Visual–Inertial SLAM for UGV Navigation in Unstructured Natural Environments: A Survey of Challenges and Deep Learning Advances.
    https://www.mdpi.com/2218-6581/15/2/35
  3. International Federation of Robotics. (2024). World Robotics Report.
  4. European Commission. (2024). Industry 4.0 and Smart Manufacturing Initiatives.
  5. IEEE Robotics and Automation Society. (2024). Advances in Intelligent Robotics and Autonomous Systems.
    https://www.mdpi.com/2076-3417/16/4/1966

Jianwen Luo | Robotics | Research and Development Excellence Award

Assoc. Prof. Dr. Jianwen Luo | Robotics | Research and Development Excellence Award

Sun Yat-sen University | China

Assoc. Prof. Dr. Jianwen Luo is a robotics researcher specializing in legged locomotion, whole-body control, robot dynamics, human–robot interaction (HRI), and wearable/assistive robotics. His work integrates model-based control, optimization-driven inverse dynamics, and multi-task operational space control with the design of novel robotic systems. He has contributed to developing pioneering platforms, including the world’s first flying biped robot, high-payload quadrupeds, advanced prosthetic systems, and supernumerary robotic limbs. His publications appear in leading robotics journals such as IJRR, IEEE RA-L, IEEE T-Mech, and IEEE T-Cyb, covering dynamic locomotion, adaptive control, variable stiffness mechanisms, and human–robot cooperative motion. He also serves as an Associate Editor for a top robotics journal and actively reviews for major robotics conferences. His research aims to expand robot capabilities in highly dynamic, versatile, and human-centric applications.

Profile: Google Scholar

Featured Publications

Kim, D., Jorgensen, S. J., Lee, J., Ahn, J., Luo, J., & Sentis, L. (2020). Dynamic locomotion for passive-ankle biped robots and humanoids using whole-body locomotion control. International Journal of Robotics Research, 39(8), 936–956.

Zhang, K., Luo, J., Fu, C., et al. (2021). A subvision system for enhancing the environmental adaptability of the powered transfemoral prosthesis. IEEE Transactions on Cybernetics, 51(6), 3285–3297.

Luo, J., Gong, Z., Su, Y., Ruan, L., Zhao, Y., Asada, H. H., & Fu, C. (2021). Modeling and balance control of supernumerary robotic limb for overhead tasks. IEEE Robotics and Automation Letters, 6(2), 4125–4132.

Liu, S., Fang, Z., Liu, J., Kailuan, T., Luo, J., Yi, J., Hu, X., & Wang, Z. (2021). A compact soft-robotic wrist brace with origami actuators. Frontiers in Robotics and AI.

Luo, J., Su, Y., Ruan, L., Zhao, Y., Kim, D., Sentis, L., & Fu, C. (2019). Robust bipedal locomotion based on a hierarchical control structure. Robotica, 37(10), 1750–1767.

Ravinesh Chand | Robotics | Best Researcher Award

Mr. Ravinesh Chand | Robotics | Best Researcher Award

Lecturer at Fiji National University, Fiji

Mr. Ravinesh Chand is a dedicated Lecturer in Mathematics with over 21 years of teaching experience in Fiji’s academic and secondary education sectors. He has taught students from diverse backgrounds and is highly skilled in delivering engaging lessons, fostering an interactive learning environment, and conducting research in applied mathematics. Currently pursuing a PhD in Mathematics at the University of the South Pacific (USP), his expertise spans digital signature schemes, mathematical problem-solving, and curriculum development. He has held leadership roles as Head of Department at multiple institutions, contributing to academic excellence. Passionate about student success, he emphasizes innovative teaching methods and collaborative learning. As a researcher, he is committed to generating new knowledge in mathematics. His contributions extend beyond teaching, as he actively mentors students and supports extracurricular activities like soccer coaching. His work is marked by precision, analytical thinking, and a commitment to excellence.

Publication Profile

Scopus

 Orcid

 Google Scholar

Education 🎓📚

Mr. Ravinesh Chand is pursuing a PhD in Mathematics at the University of the South Pacific (USP), focusing on advanced mathematical research. He holds a Master of Science in Mathematics from USP, where he completed a thesis on “Digital Signature Scheme Over Lattices” under the supervision of Dr. M.G.M. Khan and Dr. Maheswara Rao Valluri. He earned a Postgraduate Diploma in Applied Mathematics from USP in 2013, further strengthening his expertise in mathematical modeling and cryptographic systems. His academic foundation was laid with a Bachelor of Education in Mathematics from USP in 2001, equipping him with strong pedagogical skills and mathematical proficiency. Throughout his educational journey, he has demonstrated a commitment to academic excellence, research, and innovative problem-solving. His education has been instrumental in shaping his career as a lecturer and researcher, allowing him to contribute meaningfully to the field of applied mathematics and mathematical education.

Experience 📖👨‍🏫

Mr. Ravinesh Chand has served as a Lecturer in Mathematics at Fiji National University since 2015. Previously, he held leadership roles as Head of the Mathematics and Physics Department at Dudley High School (2014-2015), Suva Grammar School (2013-2014), and Assemblies of God High School (2007-2013). His teaching career began at Waidina Secondary School (2002-2006) as an Acting Head of Department and Mathematics & Physics teacher. Throughout his career, he has led curriculum planning, student engagement, and performance evaluations while mentoring both students and teachers. As a leader, he ensured high-quality teaching standards, facilitated staff development, and implemented intervention strategies for student success. He has also promoted extracurricular activities, including coaching school soccer teams. His extensive experience in academia and secondary education showcases his expertise in mathematical instruction, research, and academic leadership, significantly impacting student learning and institutional development.

Awards and Honors 🏆🎖️

Mr. Ravinesh Chand has been recognized for his outstanding contributions to mathematics education and research. His commitment to academic excellence earned him accolades from Fiji’s leading educational institutions. As Head of Department, he received multiple commendations for his leadership in improving student performance in mathematics and physics. His research on digital signature schemes and applied mathematics has been acknowledged in academic circles, leading to invitations to present his work at conferences. His dedication to mentorship and student development has also been honored through appreciation awards from schools and tertiary institutions. In addition, his extracurricular involvement as a soccer coach has been recognized for fostering teamwork and discipline among students. His excellence in curriculum development, innovative teaching methods, and mathematical research continues to be celebrated, reinforcing his reputation as a distinguished educator and scholar in Fiji’s academic community.

Research Focus 🔬📊

Mr. Ravinesh Chand’s research primarily focuses on applied mathematics, digital signature schemes, cryptography, and mathematical modeling. His Master’s thesis explored “Digital Signature Scheme Over Lattices,” contributing to secure cryptographic protocols. His work involves analyzing the efficiency of mathematical structures in cybersecurity, aiming to enhance encryption techniques. His doctoral research further delves into computational mathematics and algorithmic problem-solving. His academic interests extend to mathematical pedagogy, exploring innovative methods to enhance student learning. His research integrates theoretical mathematics with practical applications, addressing real-world challenges in data security and computational modeling. Through independent studies and collaborative projects, he seeks to advance the understanding of mathematical frameworks in digital security. His contributions to applied mathematics continue to shape the academic discourse on cryptographic systems, making a lasting impact on both research and education in mathematics.

Publication Top Notes

  • Linear manipulator: Motion control of an n-link robotic arm mounted on a mobile slider – 📖 Heliyon 9 (1), Cited by: 17, Year: 2023
  • Switch controllers of an n-link revolute manipulator with a prismatic end-effector for landmark navigation – 🤖 PeerJ Computer Science 8, e885, Cited by: 16, Year: 2022
  • Navigation of an n-link revolute robotic arm via hierarchal landmarks – 🗺️ NILES Conference, Cited by: 10, Year: 2021
  • Lyapunov-based controllers of an n-link prismatic robot arm – 🏗️ IEEE Asia-Pacific Conference, Cited by: 9, Year: 2021
  • A car-like mobile manipulator with an n-link prismatic arm – 🚗 IEEE Asia-Pacific Conference, Cited by: 9, Year: 2021
  • Embedded FPGA-based motion planning and control of a dual-arm car-like robot – 🔧 IEEE SPEC Conference, Cited by: 8, Year: 2022
  • LbCS navigation controllers of twining Lagrangian swarm individuals – 🐝 NILES Conference, Cited by: 8, Year: 2021
  • Digital signature scheme over lattices – 🔐 IEEE Circuits Conference, Cited by: 7, Year: 2021
  • Acceleration Feedback Controller Processor Design of a Segway – 🛴 IEEE SPEC Conference, Cited by: 5, Year: 2022
  • Vertically Sliding Revolute Robotic Arm intended for automated Pick-and-Place Industrial applications – 🏭 IEEE Asia-Pacific Conference, Cited by: 3, Year: 2022

Giuseppe Silano | Robotics | Best Researcher Award

Dr. Giuseppe Silano | Robotics | Best Researcher Award

Dr. Giuseppe Silano, University of Washington, United States

Dr. Giuseppe Silano, a robotics and control expert, earned his Ph.D. in Information Technologies for Engineering from the University of Sannio, Italy, with a focus on path planning, software-in-the-loop, and unmanned aerial vehicles (UAVs). He collaborated internationally as a visiting Ph.D. student at CNRS, France, and is currently a Tenure Researcher at RSE S.p.A., Milan, Italy, and an Associate Researcher at Czech Technical University. Dr. Silano’s work spans motion planning, human-robot collaboration, and multi-robot systems. An open-source contributor, he develops cutting-edge robotics solutions and publishes widely. He is also a licensed drone pilot and an active IEEE member. ✈️📡📘

 

Publication Profile

Google Scholar

Education and Academic Journey 🎓🤖

Dr. Giuseppe Silano has a distinguished academic background in engineering and robotics. He earned his Ph.D. in Information Technologies for Engineering from the University of Sannio, Italy, as a Doctor Europaeus, focusing on robotics, control, path planning, and software-in-the-loop, under the guidance of Prof. Dr. Luigi Iannelli. He enhanced his expertise as a visiting Ph.D. student at CNRS, France, researching 6DoF robots with onboard sensors, supervised by Prof. Dr. Antonio Franchi. Dr. Silano also holds an M.Sc. in Electronic Engineering (2016) and a B.Sc. in Computer Engineering (2012) from the University of Sannio, specializing in robotics and control systems. 🛠️📡

 

Professional Affiliation 🌐🤖

Dr. Giuseppe Silano has been an active member of the IEEE (Institute of Electrical and Electronics Engineers) since December 2016. Starting as a Student Member (ST’17) and advancing to Member (M’21), he is associated with the IEEE Control Systems Society (CSS) and the IEEE Robotics and Automation Society (RAS). His involvement in these professional bodies underscores his commitment to advancing research and collaboration in robotics, automation, and control systems. Dr. Silano’s affiliation with IEEE highlights his dedication to staying at the forefront of technological innovation and contributing to the global engineering community. 📡📘

 

Professional Experience 💼👨‍💻

Dr. Giuseppe Silano has amassed a decade of experience across various technical roles. From 2014 to 2024, he worked as a Technical Writer for leading Italian platforms, including Win Magazine and EOS Book. In 2016, as a Junior Software Engineer at Software Engine S.r.l., he specialized in front-end web development, database management, and debugging, completing key projects like a document management system for Mirabella Eclano, Italy. Earlier, in 2012, as a Control System Integrator at Mosaico Monitoraggio Integrato S.r.l., he designed industrial automation systems, including soda autoclave storage and turbine blade leaching processes, adhering to safety requirements. 📜⚙️

 

Research Activities 🤖📚

Dr. Giuseppe Silano’s research spans robotics, control, and UAV systems. He developed motion-planning algorithms for multi-robot systems in civilian infrastructure inspections, emphasizing obstacle avoidance and UAV constraints within the Aerial-Core project. His work on communication-aware robotics enhances robust wireless connectivity for UAVs in challenging environments. Dr. Silano advanced Model Predictive Control (MPC) strategies for collision avoidance and target tracking, and decentralized swarm navigation in UAVs. His studies in autonomous vehicles include MPC-based control for small-scale racing cars. Additionally, he explored human-aerial robot interaction to assist humans in critical tasks while prioritizing safety and ergonomics, contributing extensively to UAV software and simulators. 🚁💻

 

Teaching and Mentorship Experience 🎓📚

Dr. Giuseppe Silano has an extensive teaching background, including leading PhD courses such as “Fundamentals for Robot Programming with ROS” (University of Sannio, 2024). He served as a Teaching Assistant for courses like “Discrete Systems,” “Automatic Control,” and “Advanced Controls” in Computer and Electronics Engineering programs. As a Subject Matter Expert, he contributed to topics like “Sistemi Discreti” and “Controlli Automatici.” Dr. Silano co-supervised innovative research projects under MIT programs and guided numerous Bachelor’s and Master’s theses on UAVs, control systems, and robotics. His mentorship showcases his dedication to fostering technical and academic excellence. ✈️🤖

 

Awards and Achievements 🏆🤖

Dr. Giuseppe Silano has been recognized in prestigious international robotics competitions. He was part of the UNISANNIO team that won the “MathWorks Minidrone Competition” at IFAC 2020 in Berlin, Germany. Additionally, he contributed to the LAAS team, finalists in the “Mohamed Bin Zayed International Robotics Challenge (MBZIRC)” held in Abu Dhabi, UAE. Dr. Silano also showcased his expertise as a finalist in the “Aerial Robotics Control and Perception Challenge” during the 26th Mediterranean Conference on Control and Automation in Zagreb, Croatia. His accolades highlight his excellence in robotics and control systems. 🌍✈️

 

Research Focus

Dr. Giuseppe Silano specializes in robotics, with a focus on unmanned aerial vehicles (UAVs) for precision agriculture, power line inspections, and multi-robot systems. His work integrates advanced path-planning algorithms, software-in-the-loop platforms, and signal temporal logic for mission planning. Key areas include collision avoidance, perception-aware navigation, and real-world deployment of aerial robotics. Dr. Silano’s contributions extend to drone swarm coordination, non-linear model predictive control, and autonomous target tracking. His research advances UAV applications in environmental monitoring, communication-aware robotics, and physical security optimization, positioning him at the forefront of aerial robotics innovation. 🌱⚡🚁

 

Publication Top Notes

  • 🌾 “A review on the use of drones for precision agriculture” – Cited by: 212Year: 2019
  • 🚁 “A survey on the application of path-planning algorithms for multi-rotor UAVs in precision agriculture” – Cited by: 66Year: 2022
  • ⚡ “Power line inspection tasks with multi-aerial robot systems via signal temporal logic specifications” – Cited by: 60Year: 2021
  • 🛠️ “CrazyS: a software-in-the-loop platform for the Crazyflie 2.0 nano-quadcopter” – Cited by: 50Year: 2018
  • 🚀 “MRS Modular UAV Hardware Platforms for Supporting Research in Real-World Outdoor and Indoor Environments” – Cited by: 42Year: 2022
  • ✈️ “Software-in-the-loop simulation for improving flight control system design: a quadrotor case study” – Cited by: 37Year: 2019
  • 🤖 “MRS Drone: A Modular Platform for Real-World Deployment of Aerial Multi-Robot Systems” – Cited by: 33Year: 2023
  • 🔧 “CrazyS: A Software-in-the-Loop Simulation Platform for the Crazyflie 2.0 Nano-Quadcopter” – Cited by: 29Year: 2019
  • 🔌 “A Multi-Layer Software Architecture for Aerial Cognitive Multi-Robot Systems in Power Line Inspection Tasks” – Cited by: 18Year: 2021
  • 📋 “Mission Planning and Execution in Heterogeneous Teams of Aerial Robots supporting Power Line Inspection Operations” – Cited by: 17Year: 2022

 

 

 

 

 

 

 

 

Moh Shahid Khan | Robotics | Best Researcher Award

Mr. Moh Shahid Khan | Robotics | Best Researcher Award

Mr. Moh Shahid Khan, Maulana Azad National Institute of Technology (MANIT), Bhopal, India

Mr. Moh Shahid Khan appears to be a strong candidate for the Best Researcher Award. Here are some key reasons supporting his suitability:

Publication profile

Research Focus and Contributions:

Mr. Khan’s PhD research in robotics, specifically on gait analysis and the design of adaptive PID controllers for biped robots on complex terrains, is both innovative and impactful. His work involves the use of advanced techniques like neural networks and fuzzy logic, which demonstrates his expertise in robotics and control systems.

Publications:

He has authored several papers published in reputable SCI journals, including articles in Robotica and the Journal of Field Robotics. These publications highlight his research’s quality and his contribution to advancing the field of robotics.

Interdisciplinary Collaboration:

 His collaborative work with colleagues from computer science and other fields indicates his ability to work across disciplines, which is valuable for addressing complex research problems.

Technological Impact:

 His involvement in the design, 3D modeling, and printing of biped robots, along with his advisory role in acquiring new technological equipment for research labs, underscores his hands-on approach and technological leadership.

Mentorship and Teaching:

With over four years of teaching experience, Mr. Khan has demonstrated a commitment to education and mentorship, supervising student projects and helping colleagues with their research. This indicates his contribution to knowledge dissemination and academic growth.

Recognition and Awards:

 His consistent recognition for excellence in teaching, social media coordination, and research further solidifies his credentials as a well-rounded academic and researcher.

Publication Top Notes

  • 📚 A review on gait generation of the biped robot on various terrains – MS Khan, RK Mandava, Robotica 41 (6), 1888-1930, Cited by: 13, 2023
  • 🌍 Poverty rises: Monga drives poor to city – M Khan, Star Weekend Magazine, Dhaka: The Daily Star 3, Cited by: 5, 2004
  • 🔥 THERMAL ANALYSIS OF CORRUGATED PLATE HEAT EXCHANGER BY USING ANSYS SOFTWARE THROUGH FEA METHOD – MS Khan, A Singhai, 2019, Cited by: 1, 2019
  • 🚶 Design of dynamically balanced gait for the biped robot while crossing the obstacle – MS Khan, RK Mandava, Proceedings of the Institution of Mechanical Engineers, Part C: Journal of …, 2024
  • 🔄 A review on gait generation of the biped robot on various terrains–CORRIGENDUM – MS Khan, RK Mandava, Robotica 41 (10), 3233-3233,  2023
  • 🚧 Design of Dynamically Balanced Gait for the Biped Robot While Crossing the Ditch – MS Khan, RK Mandava, Acta Polytechnica Hungarica 20 (7), 2023
  • 📈 Estimation of Dynamic Balancing Margin of the 10-DOF Biped Robot by Using Polynomial Trajectories – MS Khan, RK Mandava, International Conference on Machine Learning, Image Processing, Network …, , 2022
  • 🛠️ A Review on Sliding Mode Controller in Real-Time Applications – M Tomar, MS Khan, RK Mandava, DG Babu, 2022 IEEE International Students’ Conference on Electrical, Electronics and …, 2022
  • 🌡️ A REVIEW ON IMPROVEMENT OF HEAT TRANSFER RATE BY PASSIVE METHODS – MS Khan, A Singhai, 2019
  • 📄 2015 NS-AUA Abstracts – A Hussein, A Khan, S Raza, T Fiorica, P Dsagupta, M Khan, K Ahmed, … Canadian Urological Association Journal= Journal de L’association des …,, 2015


Conclusion

Mr. Khan’s blend of technical expertise, research contributions, collaboration, and teaching makes him a deserving candidate for the Best Researcher Award.