Mahvelatishamsabadi Morteza | Machines | Best Researcher Award

Mr. Mahvelatishamsabadi Morteza | Machines | Best Researcher Award

University of Ulsan | South Korea

Mahvelatishamsabadi Morteza was born and raised in Mashhad, often known as Iran’s cultural capital. He completed his bachelor’s degree in pure mathematics and later pursued a master’s degree in the same field, with a focus on functional analysis. His academic journey developed in him a strong foundation in abstract thinking and problem-solving. Alongside his studies, he discovered a passion for teaching geometry, which gradually evolved into a decade-long career in education. Teaching mathematics in several well-known private high schools, he focused on creating a student-centered classroom environment where problem-solving, creativity, and collaboration were encouraged. To refine his teaching approach, he attended educational and psychological training, enabling him to establish effective and friendly connections with students. His academic interests later expanded beyond mathematics, leading him to pursue industrial engineering in South Korea under the guidance of Professor Sudong Lee. His research primarily focuses on artificial intelligence, including deep learning, machine learning, image processing, and weld defect detection. His master’s thesis centers on automated weld defect detection in radiographic images using advanced techniques such as normalizing flows. Fluent in Persian and English, and skilled in Python programming, he combines mathematical rigor with modern computational methods. Outside academics, he enjoys sports, particularly soccer, along with reading, cooking, and music, which fuel his motivation and resilience.

Profile: Orcid 

Featured Publications 

"Automated Weld Defect Detection in Radiographic Images Using Normalizing Flows"

Dr. Wenli yang – Computer Science and Artifical intelligence – Best Researcher Award 

Dr. Wenli yang - Computer Science and Artifical intelligence - Best Researcher Award 

University of Tasmania  - Australia

Author Profile 

GOOGLE SCHOLAR

🎓 Early academic pursuits

Dr. Wenli yang’s academic journey is rooted in strong interdisciplinary training, having earned dual phds that laid the foundation for her career in artificial intelligence. her early focus on knowledge representation and algorithmic modeling sparked her interest in scalable systems. through rigorous academic training and research exposure, she developed a deep understanding of power electronics, data engineering, and image analysis. this multidisciplinary education shaped her distinctive approach to solving real-world ai challenges using technically grounded methodologies.

👩‍🏫 Professional endeavors

Currently a lecturer at the school of ict, university of tasmania, dr. yang has quickly become a recognized figure in the artificial intelligence research community. she has actively led and contributed to over 10+ research projects and 8+ consultancy/industry projects, showcasing her technical capabilities across domains. her dedication extends beyond academia, with involvement in field-based data collection initiatives and industry-driven sustainability projects. her expertise also spans power electronics, where her data-driven methodologies enhance system efficiency and smart energy solutions.

🧠 Contributions and research focus

Dr. Yang’s research areas include knowledge representation, ai-powered image analysis, explainable ai, and generative ai. she is passionate about building interpretable and robust ai Computer Science and Artifical intelligence models that perform reliably under real-world conditions. having authored 29 peer-reviewed publications, with 20 as first author, she has made consistent contributions to high-impact q1 journals. her recent studies integrate power electronics with intelligent systems, creating scalable algorithms for energy-efficient computing, smart imaging, and automation across scientific domains.

🌐 Impact and influence

Wenli yang’s work has impacted both academic and applied sectors. her h-index of 9 (scopus) and h-index of 12 (google scholar), with over 647 citations, highlight her growing influence in the ai research community. her collaborative initiatives with australia seafood industries (asi), imas, csiro, and sense-t reflect her commitment to applying ai for public good. through ai- Computer Science and Artifical intelligencedriven oyster genotyping and sustainable fisheries management, she has contributed to ecological and operational advancements across australia’s marine industries.

🔮 Legacy and future contributions

Dr. Wenli yang’s vision is to create scalable, transparent, and adaptable ai systems that serve real-world applications. she continues to expand her research in explainable ai and data Computer Science and Artifical intelligence engineering, with future goals focused on integrating power electronics into intelligent systems for sustainable smart environments. her legacy lies in bridging theoretical research with field impact, inspiring future generations to pursue responsible and innovative ai solutions across multidisciplinary domains.

Notable Publications 

  • Title: A survey on blockchain-based internet service architecture: requirements, challenges, trends, and future
    Author(s): W. Yang, E. Aghasian, S. Garg, D. Herbert, L. Disiuta, B. Kang
    Journal: IEEE Access

  • Title: Survey on explainable AI: From approaches, limitations and applications aspects
    Author(s): W. Yang, Y. Wei, H. Wei, Y. Chen, G. Huang, X. Li, R. Li, N. Yao, X. Wang, X. Gu, ...
    Journal: Human-Centric Intelligent Systems

  • Title: Blockchain: Trends and future
    Author(s): W. Yang, S. Garg, A. Raza, D. Herbert, B. Kang
    Journal: Knowledge Management and Acquisition for Intelligent Systems: 15th Pacific …

  • Title: Design of intelligent transportation system supported by new generation wireless communication technology
    Author(s): W. Yang, X. Wang, X. Song, Y. Yang, S. Patnaik
    Journal: International Journal of Ambient Computing and Intelligence (IJACI)

  • Title: A decision model for blockchain applicability into knowledge-based conversation system
    Author(s): W. Yang, S. Garg, Z. Huang, B. Kang
    Journal: Knowledge-Based Systems

Dr. Jongchan Baek – Robotics – Best Researcher Award

Dr. Jongchan Baek - Robotics - Best Researcher Award

Electronics and Telecommunications Research Institute (ETRI) - South Korea

Professional Profile

SCOPUS  

Early Academic Pursuits

Dr. Jongchan Baek's academic journey commenced at Sungkyunkwan University, where he pursued a Bachelor of Science in Mathematics, graduating with an outstanding GPA of 4.14 out of 4.5. This early academic foundation laid the groundwork for his subsequent pursuit of knowledge in the field of Convergence IT Engineering at Pohang University of Science and Technology (POSTECH), where he earned his Ph.D. His doctoral thesis, supervised by Professor Soohee Han, focused on "Performance-Preserving Sequential Multitask Reinforcement Learning and Its Application to Control Systems," showcasing his early interest in reinforcement learning and control applications.

Professional Endeavors

Dr. Baek's professional journey as an AI researcher at the Electronics and Telecommunications Research Institute (ETRI) in South Korea has been characterized by a profound commitment to advancing the fields of reinforcement learning, embedded applications, robotic control, Robotics and anomaly detection. His involvement in diverse projects, such as the development of advanced air-mobility platforms, DNA+Drone platforms, and drone control technologies, underscores his expertise in applying AI techniques to real-world applications.

Contributions and Research Focus

Throughout his career, Dr. Baek has made significant contributions to the field of AI and robotics through his research endeavors. His publications in reputable journals and conferences demonstrate his expertise in areas such as reinforcement learning for control systems, bridging the simulation-to-real gap, electrochemical-mechanical modeling, and continual learning methods. His research focus on reinforcement learning control algorithms, Robotics particularly in the context of embedded applications and robotic control, has contributed to advancements in autonomous systems and anomaly detection techniques.

Accolades and Recognition

Dr. Baek's outstanding contributions to the field have been recognized through numerous awards and honors. Notable accolades include the 2nd Prize in the NeurIPS 2022 Real Robot Challenge, Best Paper Awards at prestigious conferences like KIEE and ICROS, and recognition for his contributions to various research projects funded by government agencies and industry partners. These accolades underscore his exceptional research acumen and the impact of his work within the scientific community.

Impact and Influence

Dr. Baek's research has had a profound impact on both academia and industry, driving advancements in autonomous systems, robotic control, and anomaly detection technologies. His innovative approaches to reinforcement learning control and embedded applications have contributed to the development of more efficient and adaptive systems capable of Robotics addressing real-world challenges. His collaborations with industry partners and involvement in major projects reflect the practical significance of his research in shaping the future of AI-enabled technologies.

Legacy and Future Contributions

As Dr. Baek continues to pursue his research endeavors, his legacy as an AI researcher committed to advancing the frontiers of knowledge in reinforcement learning, embedded applications, and robotic control is assured. His future contributions are poised to further propel the field forward, with a focus on developing more robust and scalable AI solutions for complex real-world applications. Dr. Baek's dedication to excellence and his passion for pushing the boundaries of AI technology ensure that his impact will be felt for years to come.

NOTABLE PUBLICATIONS

Reinforcement learning to achieve real-time control of triple inverted pendulum   2024(3)

Belief Projection-Based Reinforcement Learning for Environments with Delayed Feedback  2023(1)

Efficient Multitask Reinforcement Learning Without Performance Loss   2023(2)

An Adaptive Model Uncertainty Estimator Using Delayed State-Based Model-Free Control   2022(12)

Hindsight Intermediate Targets for Mapless Navigation With Deep Reinforcement Learning  2022(4)