Farzad Pashmforoush | composite materials | Best Researcher Award

Farzad Pashmforoush | composite materials | Best Researcher Award

Assoc. Prof. Dr. Farzad Pashmforoush , Best Researcher Award , Iran.

Dr. Farzad Pashmforoush 🎓 is an Associate Professor at the University of Maragheh, specializing in Mechanical Engineering. With a Ph.D. from Amirkabir University of Technology (2015), his expertise spans composite materials, finite element analysis, artificial intelligence, and non-destructive testing. His research contributions, recognized with 411 citations and an h-index of 9 📊, focus on damage identification, numerical modeling, and advanced manufacturing techniques. Dr. Pashmforoush has authored numerous high-impact publications 📑 and continues to push the boundaries of mechanical engineering and material sciences with innovative methodologies. 🚀

Publication Profile

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Education & Experience

📌 Bachelor’s (2005-2009): Mechanical Engineering, University of Tabriz (Ranked 1st, 18.86 GPA)
📌 Master’s (2009-2011): Mechanical Engineering, Amirkabir University of Technology (Ranked 1st, 18.52 GPA)
📌 Ph.D. (2011-2015): Mechanical Engineering, Amirkabir University of Technology (19.26 GPA)
📌 Current Position: Associate Professor, University of Maragheh 🏫

Suitabilty Summary

Dr. Farzad Pashmforoush, an Associate Professor at the University of Maragheh, has made outstanding contributions to the field of mechanical engineering, composite materials, and non-destructive testing (NDT). His pioneering research in damage characterization, artificial intelligence applications in material analysis, and advanced manufacturing techniques has significantly impacted the scientific community, making him a strong candidate for the Best Researcher Award.

Professional Development

Dr. Pashmforoush is actively engaged in cutting-edge research and academic mentoring 🎯. He has pioneered advancements in composite material behavior, AI-driven structural analysis, and non-destructive evaluation 🛠️. His research integrates numerical simulations, experimental techniques, and machine learning algorithms 🤖 to enhance manufacturing and material testing. With extensive experience in FEM modeling and fracture mechanics, he collaborates with global researchers to develop robust, high-performance materials 🌍. His contributions significantly impact aerospace, automotive, and civil engineering applications, making him a distinguished figure in mechanical and materials engineering🔬✨

Research Focus

Dr. Pashmforoush’s research spans multiple domains of mechanical and material sciences 🏗️. His work on composite materials explores damage identification and characterization using advanced acoustic emission techniques 🎧. He employs finite element modeling (FEM) for fracture mechanics simulations 🖥️ and integrates artificial intelligence and deep learning 🤖 for autonomous damage recognition in composite structures. His studies also delve into non-destructive testing (NDT), optical glass finishing, and nanocomposite material analysis 🧪. His research aims to enhance the durability, performance, and sustainability of advanced engineering materials 🚀, bridging the gap between experimental mechanics and AI-driven simulations.

Awards & Honors

🏆 1st Rank in B.Sc. & M.Sc. Mechanical Engineering
🏆 Outstanding Researcher Award in Composite Materials & FEM
🏆 Best Ph.D. Dissertation Award on Magnetic Abrasive Finishing 🏅
🏆 Numerous High-Impact Publications with 400+ Citations 📊
🏆 Recognized Reviewer for Leading Scientific Journals ✍️

Publications Top Notes

📌 Autonomous damage recognition in visual inspection of laminated composite structures using deep learning – S Fotouhi, F Pashmforoush, M Bodaghi, M Fotouhi | Composite Structures (2021) | 📖 Cited by: 87

📌 Characterization of composite materials damage under quasi-static three-point bending test using wavelet and fuzzy C-means clustering – M Fotouhi, H Heidary, M Ahmadi, F Pashmforoush | Journal of Composite Materials (2012) | 📖 Cited by: 86

📌 Damage classification of sandwich composites using acoustic emission technique and k-means genetic algorithm – F Pashmforoush, R Khamedi, M Fotouhi, M Hajikhani, M Ahmadi | Journal of Nondestructive Evaluation (2014) | 📖 Cited by: 83

📌 Acoustic emission-based damage classification of glass/polyester composites using harmony search k-means algorithm – F Pashmforoush, M Fotouhi, M Ahmadi | Journal of Reinforced Plastics and Composites (2012) | 📖 Cited by: 72

📌 Damage characterization of glass/epoxy composite under three-point bending test using acoustic emission technique – F Pashmforoush, M Fotouhi, M Ahmadi | Journal of Materials Engineering and Performance (2012) | 📖 Cited by: 66