Mehrdad Esmaeilipour | AI-based Smart Devices | Sustainable Solutions Award

Mr. Mehrdad Esmaeilipour | AI-based Smart Devices | Sustainable Solutions Award

Engineer | Arya Plasma Gostar Pars | Iran

Mr. Mehrdad Esmaeilipour is an accomplished Electronics Engineer specializing in green technology, cold plasma systems, and sustainable electronic solutions. With extensive experience in air purification, wastewater treatment, and smart health devices, he has contributed significantly to advancing environmental sustainability and innovative assistive technologies. He is recognized for combining technical expertise, entrepreneurship, and academic scholarship, making impactful contributions to both industry and research.

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Education

Mr. Esmaeilipour holds a Bachelor’s Degree in Electronics Engineering Technology from Islamic Azad University. He also completed an Associate Degree in Electronics from the same institution, following his early academic foundation in electronics at the technical high school level. His formal education provided a strong background in circuit design, power systems, and digital control methods, which later shaped his industrial and research achievements

Experience

Mr. Esmaeilipour currently serves as Senior Electronics Engineer at Arya Plasma Gostar Pars Company (Plasma Systems), where he leads projects in designing and implementing advanced plasma-based purification systems for water and air. He has been instrumental in developing patented wastewater treatment solutions and integrated intelligent systems applied in various industrial sectors.

In addition, he is the Founder and CEO of Parsa Pardazesh Bushehr Sanat (PPBS Co.), a company providing electronics and IT solutions while offering employment opportunities to young engineers and students. He has also contributed as a volunteer mentor at Islamic Azad University, guiding a robotics team in developing prototypes and advanced control systems.

Research Interests

His primary research interests include cold plasma applications in wastewater treatment, electronic system optimization, renewable energy technologies, robotics, and artificial intelligence integration in electronics. He has explored innovations in smart wearable devices for digital health, photovoltaic systems, and advanced controller designs. His work bridges practical industrial applications with academic research, ensuring both sustainability and technological advancement.

Honors

Mr. Esmaeilipour has been honored with multiple international research and innovation awards, including recognition for his contributions to technological devices, wearable sensing systems, and environmental sustainability. He has received distinctions such as the Global Leaders Award, Best Innovator Award, Tech Excellence Award, International Material Scientist Award, and Global Recognition Award™. His achievements have been covered in media interviews, highlighting him as both an inventor and entrepreneur.

Top Noted Publications

Design, Construction and Performance Comparison of Fuzzy Logic Controller and PID Controller for Two-Wheel Balance Robot (Smart Sensors)
Index: Scopus Indexed
Year: 2025

Global Innovation Technologist Awards – Excellence in Innovation Award (Biotechnology)
Index: International Award Recognition
Year: 2025

Global Leaders Awards – Enterprise Edition
Index: International Award Recognition
Year: 2025

Best Wearable Sensing Technology Award
Index: International Award Recognition
Year: 2025

Engineering Industry Impact Award
Index: International Award Recognition
Year: 2025

Conclusion

Mr. Mehrdad Esmaeilipour’s career reflects a unique balance of industry innovation, academic research, and social responsibility. His leadership in developing cold plasma systems, renewable energy strategies, and assistive smart devices underscores his impact on both sustainability and digital health. With a portfolio of patents, publications, and international recognitions, he continues to advance the field of electronics engineering. His future research potential, combined with his entrepreneurial vision and mentorship efforts, position him as a highly influential figure in engineering innovation and academic contributions.

Mr Chirag Patel | Engineering | Best Researcher Award |

Mr. Chirag Patel | Engineering | Best Researcher Award

NVH specialist , at CEAT limited,India

Mr. Chirag Patel, born on December 20, 1983, in Vadodara, Gujarat, India, is a seasoned expert in Computer-Aided Engineering (CAE) and Noise, Vibration, and Harshness (NVH), with over 15 years of experience in the automotive and tyre industry. He is currently serving as a Specialist (Senior Manager) at CEAT Ltd., where he leads a team focused on advanced tyre simulation technologies. Chirag is passionate about developing innovative methodologies that merge simulation tools with practical applications, especially in the field of vehicle acoustics, ride performance, and multibody dynamics.

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Education

Chirag Patel holds a Master’s degree in Engineering and began his career in academia as an Assistant Professor at Charotar University of Science and Technology. His strong academic foundation in mechanical engineering and early exposure to teaching has enriched his analytical thinking and shaped his journey in simulation and applied research.

Experience

Mr. Patel brings rich experience from globally recognized organizations such as CEAT Ltd., Apollo Tyres, Tata AutoComp Systems (at FIAT Chrysler), HCL Technologies (at John Deere), and Ingersoll Rand. At CEAT, he is responsible for simulation methodology development, NVH analysis, acoustic modeling, tyre model validation, and automation in simulation workflows. His earlier roles include conducting full-vehicle dynamic analysis, NVH studies, acoustic testing, and simulation process optimization. His career began as a Project Engineer at Ingersoll Rand and later transitioned into academia before moving into core automotive simulation roles.

Research interest

His primary research interest lies in tyre dynamics, NVH behavior, acoustic simulation, and ride handling through tools such as ABAQUS, ADAMS, HyperMesh, Wave6, and MATLAB. Chirag has led pioneering projects on tyre cavity noise, foam tyre development for low in-cabin noise, rolling simulations, and modal-frequency-based analysis for structure-borne sound. His research also involves tyre modeling for MBD simulations, using models like PAC2002, MF-Swift, and F-Tire, validated through vehicle handling simulations.

Awards

Chirag has achieved significant milestones, including leading multiple tyre simulation methodologies and applying for a patent for a foam-based tyre concept aimed at reducing in-cabin noise. He has also contributed to university-industry collaboration projects and has been instrumental in establishing simulation processes and tools used in commercial vehicle and two-wheeler tyre development. These efforts have garnered internal recognitions and strengthened his reputation as a technical leader.

Publications

Title: A waveguide finite element model with geometric nonlinearity and orthotropy to analyse broadband vibrations in a reinforced radial tyre
Authors: M. Londhe, R. Oorath, C.B. Patel (Chirag Bharatbhai Patel), N. Tiwari
Journal: Wave Motion
Indexing: Indexed in Scopus and Web of Science
Citations: 0 (as of now)
Year of Publication: 2025

Conclusion

With a solid foundation in engineering, years of hands-on experience, and a drive for innovation, Mr. Chirag Patel stands out as a leading professional in the CAE/NVH domain. His work at the intersection of engineering design, acoustic simulation, and performance optimization showcases his commitment to excellence and industry advancement. A valuable asset to any research or development initiative, Chirag Patel is a strong candidate for recognition such as the Best Researcher Award 2024.

Prof. Dr. Harpreet Kaur | Image processing | Best Researcher Award |

Prof. Dr. Harpreet Kaur | Image processing | Best Researcher Award | 

Professor , at lovely Professional University, India.

Prof. (Dr.) Harpreet Kaur is a distinguished academician and researcher in Computer Science & Engineering, specializing in Digital Image Processing and Image Retrieval. She is currently a Professor at Lovely Professional University, Phagwara, Punjab, with over two decades of experience in teaching, research, and academic leadership. Her expertise spans various domains of emerging technologies, and she has significantly contributed to academia through research, mentorship, and administrative roles.

Professional Profile

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Education 🎓

Prof. Kaur holds a Bachelor of Technology (B.Tech) in Computer Science & Engineering, followed by a Master of Technology (M.Tech) in Information Technology. She further pursued her Doctor of Philosophy (Ph.D.) in Computer Science & Engineering, solidifying her expertise in advanced computing and digital technologies. Her strong academic background has enabled her to lead research initiatives and mentor scholars in her domain.

Professional Experience 💼

With an illustrious career spanning over 20 years, she has held various leadership roles, including Head of Department (CSE), Deputy Dean Academics, and Convener of multiple national and international conferences. She has contributed to the academic ecosystem through faculty development programs, workshops, and research conferences, fostering knowledge-sharing and skill development in the field of engineering and technology.

Research Interests 🌍

Her research primarily revolves around Digital Image Processing, Image Retrieval, Artificial Intelligence, and Emerging Technologies. With a passion for innovation, she has actively contributed to cutting-edge research by publishing over 70+ papers in international conferences and journals, along with 25 national-level research publications. Her expertise extends beyond theoretical research, as she has successfully published more than 15 patents, showcasing her commitment to applied research and technological advancements.

Awards & Honors 🏆

Prof. Kaur’s contributions have been widely recognized through multiple prestigious awards, including the Best Paper Presentation Award (Dubai, 2019), Quality Education Leadership Award (2020), International Teaching Excellence Award (2021), International Distinguished Teacher Award (2023), and the International Research Excellence Award (2024-25). These accolades highlight her excellence in both research and academia.

Top Noted Publications 📚

Synthesis and characterization of ZIF-8 nanoparticles for controlled release of 6-mercaptopurine drug – H. Kaur, G.C. Mohanta, V. Gupta, D. Kukkar, S. Tyagi – 363 citationsJournal of Drug Delivery Science and Technology2017

Electrochemical synthesized copper oxide nanoparticles for enhanced photocatalytic and antimicrobial activity – R. Katwal, H. Kaur, G. Sharma, M. Naushad, D. Pathania – 356 citationsJournal of Industrial and Engineering Chemistry2015

Image fusion techniques: a survey – H. Kaur, D. Koundal, V. Kadyan – 319 citationsArchives of Computational Methods in Engineering2021

Computer-aided designing of immunosuppressive peptides based on IL-10 inducing potential – G. Nagpal, S.S. Usmani, S.K. Dhanda, H. Kaur, S. Singh, M. Sharma – 275 citationsScientific Reports2017

Posttraumatic stress disorder in maltreated youth: A review of contemporary research and thought – C.A. Kearney, A. Wechsler, H. Kaur, A. Lemos-Miller – 267 citationsClinical Child and Family Psychology Review2010

Conclusion

Prof. (Dr.) Harpreet Kaur has strong credentials for the Best Researcher Award, particularly due to her extensive research output, innovation through patents, academic leadership, and multiple recognitions. Strengthening international collaborations, securing research grants, and publishing in high-impact factor journals can further enhance her candidacy for elite research awards.

Assoc. Prof. Dr Mohsen Edalat | Machine Learning | Best Researcher Award |

Assoc. Prof. Dr. Mohsen Edalat | Machine Learning | Best Researcher Award | 

Associate Professor, at School of Agriculture, Shiraz University, Iran.

Assoc. Prof. Dr. Mohsen Edalat is a highly motivated agronomist, researcher, and academic leader with over 20 years of experience in crop production, farm management, and sustainable agriculture. He has a strong background in agronomy, crop breeding, greenhouse management, and precision agriculture. As an Associate Professor and Senior Farm Manager, he has successfully integrated scientific research with practical applications, optimizing crop yields, genetic selection, and agricultural sustainability. His innovative work in medicinal plant domestication and startup entrepreneurship has contributed significantly to agronomic advancements.

Professional Profile

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Education 🎓

Ph.D. in Agronomy (2007-2010) – Shiraz University, Iran

M.Sc. in Agronomy (2002-2005) – Shiraz University, Iran

B.Sc. in Agronomy (1993-1997) – Shiraz University, Iran

Professional Experience 💼

Associate Professor, Crop Production & Breeding Dept., Shiraz University (2017–Present)

Senior Farm Manager, Research & Commercial Production (1999–2023) – Managed a 500 ha farm

Dean, School of Agriculture, Shiraz University (2018–2020)

Vice Dean for Financial & Administrative Affairs, Shiraz University (2014–2018)

Assistant Professor, Crop Production & Breeding Dept. (2011–2017)

Lecturer, Shiraz University (1999–2011)

Research Interests 🌍

Dr. Edalat’s research primarily focuses on crop growth modeling, plant breeding, precision agriculture, and sustainable farming practices. He has expertise in mathematical modeling of plant growth, experimental designs, weed science, and data-driven agronomy. His work has also extended to machine learning applications in agriculture, with studies on species distribution modeling, seed viability, and climate-adaptive cropping systems.

Awards & Honors 🏆

Exemplar Faculty Member, Shiraz University (2018) – Voted by students and faculty

Founder of MAYSA PARS GREENTECH (2022) – A startup focused on medicinal herb breeding and production

Developed a New Domestication Procedure (2020) – Successfully domesticated Zataria multiflora (endangered medicinal plant)

Record Agricultural Yields (2020 & 2021) – Achieved 122 tons/ha silage corn and 7,600 kg/ha winter wheat

Scholarship Recipient – Iranian Ministry of Science for Visiting Research at Melbourne University (2010)

Top 5% Student Ranking – B.Sc., M.Sc., and Ph.D.

Top Noted Publications 📚

Assessing and Mapping Multi-Hazard Risk Susceptibility Using a Machine Learning Technique
Authors: H.R. Pourghasemi, N. Kariminejad, M. Amiri, M. Edalat, M. Zarafshar, et al.
Journal: Scientific Reports
Citations: 212
Year: 2020

Is Multi-Hazard Mapping Effective in Assessing Natural Hazards and Integrated Watershed Management?
Authors: H.R. Pourghasemi, A. Gayen, M. Edalat, M. Zarafshar, J.P. Tiefenbacher
Journal: Geoscience Frontiers
Citations: 115
Year: 2020

The Impact of Nitrogen and Organic Matter on Winter Canola Seed Yield and Yield Components
Authors: S.A. Kazemeini, H. Hamzehzarghani, M. Edalat
Journal: Australian Journal of Crop Science
Citations: 76
Year: 2010

Interaction Effects of Deficit Irrigation and Row Spacing on Sunflower (Helianthus annuus L.) Growth, Seed Yield, and Oil Yield
Authors: S.A. Kazemeini, M. Edalat, A. Shekoofa
Journal: African Journal of Agricultural Research
Citations: 69
Year: 2009

Corn Nitrogen Management Using NDVI and SPAD Sensor-Based Data Under Conventional vs. Reduced Tillage Systems
Authors: M. Edalat, R. Naderi, T.P. Egan
Journal: Journal of Plant Nutrition
Citations: 60
Year: 2019

Conclusion

Dr. Mohsen Edalat is a strong candidate for a Best Researcher Award, given his leadership, practical achievements in agriculture, research contributions, and teaching excellence. Strengthening his publication record, international collaborations, and patents would further enhance his competitiveness.

Assoc. Prof. Dr Linchang Zhao | Computer Science | Best Researcher Award |

Assoc. Prof. Dr Linchang Zhao | Computer Science | Best Researcher Award

Guiyang University, at School of Computer Science, China.

Assoc. Prof. Dr. Linchang Zhao is an accomplished academic and researcher at Guiyang University in China, specializing in machine learning, deep learning, few-shot learning, and optimization algorithms. He holds a Ph.D. in Computer Science from Chongqing University, with additional degrees in Mathematics and Statistics, and Computer Science. Dr. Zhao’s research focuses on data mining, imbalanced learning, and software defect prediction, where he has made significant contributions through innovative techniques like cost-sensitive meta-learning classifiers and deep neural networks. His work has been widely published in prominent journals such as IEEE Access and Neurocomputing, and he holds patents related to small sample data learning and imbalanced data prediction. With experience as a graduate tutor and mentor, Dr. Zhao continues to shape the next generation of researchers while actively contributing to high-impact projects funded by the National Natural Science Foundation of China.

Professional Profile

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Education 🎓

Dr. Linchang Zhao completed his Ph.D. in Computer Science from Chongqing University (2017–2021), where he focused on advancements in deep learning and machine learning. He also holds a Master of Engineering in Mathematics and Statistics from Qiannan Normal College for Nationalities (2015–2017) and a Bachelor of Science in Computer Science from Northeast Petroleum University (2009–2013).

Experience 💼

Dr. Zhao currently serves as an Associate Professor and graduate tutor at Guiyang University, where he mentors students and leads research initiatives. His academic career is highlighted by his active participation in several high-impact projects, including those funded by the National Natural Science Foundation of China. His work on machine learning, especially in software defect prediction and optimization, has garnered attention in both academic and industrial circles.

Research Interest 🔬

Dr. Zhao’s research primarily revolves around machine learning, few-shot learning, deep learning, optimization algorithms, and meta-learning. He is particularly interested in data mining, imbalanced learning, and software defect prediction, using cutting-edge techniques such as cost-sensitive meta-learning classifiers and deep neural networks. His work aims to address challenges in real-world applications, particularly in small datasets and imbalanced data contexts.

Award 🏅

Throughout his career, Dr. Zhao has made substantial contributions to his field, earning recognition for his innovative research. He has been awarded various honors for his work on software defect prediction and cost-sensitive machine learning methods. His contributions to machine learning in the context of small sample data and imbalanced datasets have been highly praised.

Top Noted Publication 📑

Design and Implementation of GPU Pass-Through System Based on OpenStack Computation

Authors: Linchang Zhao, Yu Jin, Guoqing Hu, Wenxi Zhou, Hao Wei, Ruiping Li, Xu Zhu, Yongchi Xu, Jiulin Jin, Qianbo Li

Journal: Computation

DOI: 10.3390/computation13020038

Year of Publication: 2025

 

RFAConv-CBM-ViT: Enhanced Vision Transformer for Metal Surface Defect Detection

Authors: Hao Wei, Linchang Zhao, Ruiping Li, Mu Zhang

Journal: The Journal of Supercomputing

DOI: 10.1007/s11227-024-06662-0

Year of Publication: 2025

 

Siamese Dense Neural Network for Software Defect Prediction With Small Data

Authors: Linchang Zhao, Zhaowei Shang, Ling Zhao, Anyong Qin, Yuan Yan Tang

Journal: IEEE Access

DOI: 10.1109/ACCESS.2018.2889061

Year of Publication: 2019

 

A Cost-Sensitive Meta-Learning Classifier: SPFCNN-Miner

Authors: Linchang Zhao

Journal: Future Generation Computer Systems

DOI: 10.1016/j.future.2019.05.080

Year of Publication: 2019

 

Software Defect Prediction via Cost-Sensitive Siamese Parallel Fully-Connected Neural Networks

Authors: Linchang Zhao, Zhaowei Shang, Ling Zhao, Taiping Zhang, Yuan Yan Tang

Journal: Neurocomputing

DOI: 10.1016/j.neucom.2019.03.076

Year of Publication: 2019

Conclusion

Linchang Zhao’s combination of advanced research, practical innovations, and contributions to education makes him a strong candidate for the Best Researcher Award. His ability to address real-world problems through machine learning and his efforts to foster academic growth through mentorship positions him as a leader in his field. To further solidify his position as a top researcher, increased interdisciplinary collaborations and global visibility would be beneficial.