Aymen saad | Energy Technologies | Best Researcher Award

Mr. Aymen saad | Energy Technologies | Best Researcher Award

Lecturer | University of Technology Malaysia | Iraq

Mr. Aymen Saad is a dedicated academic and researcher in the field of computer and microelectronic systems engineering. He has established himself as an experienced lecturer at Al-Furat Al-Awsat Technical University, Kufa Management Technical College, where he has been contributing to education and research for many years. His work bridges theory and practice, with a strong interest in artificial intelligence and advanced computing systems. Alongside his teaching responsibilities, he has developed a reputation for impactful research, particularly in deep learning, machine learning, and biomedical image analysis, while maintaining a strong presence in international research communities.

Publication Profile

Scopus

ORCID

Google Scholar

Education Background

Mr. Aymen Saad began his academic journey by earning a bachelor’s degree in computer science from the Islamic University of Iraq. He later advanced his knowledge through a master’s degree in computer and microelectronics systems engineering at University of Technology Malaysia. Building on this foundation, he is currently pursuing his doctoral studies at the same institution, focusing on advanced applications of artificial intelligence and deep learning in computer vision and signal processing. His academic progression reflects a clear commitment to developing both technical expertise and research excellence in applied computer science and engineering fields.

Professional Experience

Mr. Aymen saad has served as a lecturer at Al-Furat Al-Awsat Technical University in Iraq, teaching within the Department of Information Technology Management. His professional career extends beyond teaching, as he actively engages in academic research and publications in reputed international outlets. With significant contributions in artificial intelligence applications, he has collaborated with researchers worldwide, presenting in conferences and publishing in peer-reviewed journals. He has also developed practical frameworks for disease detection, image enhancement, and pattern recognition, demonstrating the applied relevance of his work in solving modern engineering and healthcare challenges.

Awards and Honors

Throughout his academic journey, Mr. Aymen Saad has been recognized for his research contributions and teaching excellence. His growing h-index reflects the impact of his work in artificial intelligence and computer vision. His involvement in international conferences has earned him scholarly visibility and recognition, while his consistent publishing record in leading indexed journals highlights his dedication to advancing research in his field. Additionally, his professional profiles across platforms such as Google Scholar, ResearchGate, and Scopus emphasize his active participation and acknowledgment within the global academic community.

Research Focus

Mr. Aymen saad ’s research focuses on artificial intelligence, deep learning, and computer vision with applications across healthcare, security, and engineering systems. His studies span image and video processing, pattern recognition, optical character recognition, and medical image classification. He has contributed significantly to the development of robust models for cancer detection, COVID diagnostics, and brain tumor classification, as well as innovations in license plate recognition and fire detection. His current and future work aims to explore hybrid intelligent systems, bio-inspired algorithms, and advanced deep learning frameworks for solving real-world problems with greater efficiency and accuracy.

Publication Top Notes

Classification COVID-19 Based on Enhancement X-Ray Images and Low Complexity Model
Published Year: 2021
Citation: 56

Classification of Bird Sound Using High-and Low-Complexity Convolutional Neural Networks
Published Year: 2022
Citation: 42

An Optimized Deep Learning Approach for Robust Image Quality Classification
Published Year: 2023
Citation: 38

A Novel Deep Learning Approach for Brain Tumors Classification Using MRI Images
Published Year: 2023
Citation: 35

Automatic Vehicle License Plate Recognition Using Lightweight Deep Learning Approach
Published Year: 2023
Citation: 29

Conclusion

Mr. Aymen Saad is a skilled computer and microelectronic systems engineer, academic, and researcher with a strong background in artificial intelligence. His education, professional teaching experience, and extensive research portfolio reflect his dedication to both learning and sharing knowledge. With numerous publications, conference presentations, and ongoing projects, he continues to advance innovative solutions in medical diagnostics, intelligent systems, and computational modeling. His future research aspirations highlight his determination to contribute further to global knowledge in AI, ensuring that his work remains impactful in both academic and practical domains.

Mojtaba Sedaghat | Energy Engineering | Young Scientist Award

Mr. Mojtaba Sedaghat | Energy Engineering | Young Scientist Award

University of Guelph, Canada

🎓 Mojtaba Sedaghat is a dedicated researcher and academic with expertise in energy systems engineering and thermal sciences. A graduate of Shahid Beheshti University (SBU) and Iran University of Science and Technology (IUST), he has contributed significantly to energy conversion, renewable energy systems, and fluid dynamics. His innovative research includes improving heat transfer in enclosures and investigating the impact of phase change materials and solar panels on energy efficiency. Alongside academic excellence, Mojtaba has an impressive portfolio of patents, publications, and awards. Currently, he serves as a lecturer at Shomal University Amol (SUA) and continues advancing energy sustainability through research and teaching.

Publication Profile

Google Scholar

Education

🎓 Master of Energy Systems Engineering (2018-2021). Shahid Beheshti University, Tehran, Iran. Thesis: Feasibility of increasing heat transfer in underfloor heating using heaters and rotation. GPA: 17.89/20 (Ranked 2nd). Bachelor of Mechanical Engineering (2014-2018). Iran University of Science and Technology, Tehran, Iran. Thesis: Investigating microfluidic parameters for particle separation using dielectrophoresis

Experience

🛠️ Mojtaba has a blend of academic and industrial experience. As a research assistant at SBU, he worked on multiphase flow and heat transfer projects, including the design and manufacturing of UVC disinfection robots. He also taught courses such as Thermodynamics and Heat Transfer as a teaching assistant. In the industrial realm, he has consulted on energy research projects and contributed to innovative solutions for renewable energy and heat transfer technologies. Currently, he lectures at Shomal University Amol, sharing his knowledge and fostering the next generation of engineers.

Research Interests

🔬 Mojtaba’s research interests span energy conversion, renewable energy systems, and energy policy. He specializes in numerical and experimental studies of thermal-fluid systems, focusing on hydrogen production, energy storage, and PCM-based systems. His expertise includes CFD, AI-based energy simulations, and 4E analyses (Energy, Exergy, Economic, Environmental) for system optimization.

Awards

🏆 Mojtaba’s accolades include a national patent for innovative heat transfer mechanisms, ranking 2nd in Energy Systems Engineering at SBU, and receiving scholarships for his undergraduate and graduate programs. His team’s UVC disinfection robot earned bronze at the IFIA Contest in Turkey and was recognized as a top project in the 13th Movement student competition.

Publications

The Use of Phase Change Materials and PV Solar Panels in Higher Education Buildings Towards Energy Savings and Decarbonization: A Case Study
Published in: Buildings, Jun 2024
Cited by: Google Scholar

Effects of Covid-19 Disease on Electricity Consumption of Various Sectors in Iran
Published in: Case Studies in Chemical and Environmental Engineering, Dec 2023
Cited by: Google Scholar

Analysis of the Effect of Hot Rotation Cylinders on the Enhancement of Heat Transfer in Underfloor Heating Enclosures
Published in: International Journal of Thermal Sciences, Jun 2023
Cited by: Google Scholar

An Experimental/Numerical Investigation and Technical Analysis of Improving the Thermal Performance of an Enclosure by Employing Rotating Cylinders
Published in: International Communications in Heat and Mass Transfer, Nov 2022
Cited by: Google Scholar