Zhangcun Yan | automatic vehicle system | Best Researcher Award

Dr. Zhangcun Yan | automatic vehicle system | Best Researcher Award

Research fellow,Tongji University, China

Zhangcun Yan is a Research Assistant at Tongji University, specializing in intelligent transportation systems. He earned his Ph.D. in Transportation from Tongji University (2024), an M.Sc. in Transportation Engineering from Southwest Jiaotong University (2018), and a B.Sc. in Transportation from Ningbo University of Technology (2015). As a visiting scholar at the University of Montreal (2023–2024), he expanded his expertise in AI-driven traffic safety solutions. His research focuses on applying computer vision and artificial intelligence to enhance urban mobility, traffic safety, and autonomous systems. Zhangcun has developed novel trajectory reconstruction methods, real-time road friction detection models, and risk assessment frameworks for mixed-traffic environments. His work has been published in top-tier journals such as Expert Systems with Applications and Traffic Injury Prevention. With a citation index of 44, he continues to push the boundaries of intelligent transportation, making significant contributions to reducing accidents and improving urban traffic management.

Profile.

orcid

šŸŽ“ EducationĀ 

Throughout his academic journey, Zhangcun has been dedicated to integrating artificial intelligence with transportation engineering to enhance road safety and efficiency. His doctoral research led to the development of an innovative NONM trajectory reconstruction method, significantly improving vehicle movement analysis in complex traffic environments. His studies also focused on real-time detection of road surface friction coefficients, a crucial factor in preventing weather-related traffic accidents. Zhangcun’s multidisciplinary education bridges the gap between traditional traffic engineering and cutting-edge AI applications.

šŸ’¼ Experience

Zhangcun Yan has extensive experience in transportation research, focusing on AI applications in intelligent mobility and road safety. At Tongji University, he spearheaded multiple projects, including real-time road friction detection and automated trajectory reconstruction for urban intersections. During his tenure as a visiting scholar in Canada, he collaborated with global experts to enhance traffic risk modeling. His expertise in integrating deep learning with computer vision has led to groundbreaking solutions for vehicle tracking and collision prediction. Zhangcun’s experience spans interdisciplinary research, algorithm development, and data-driven transportation analytics, contributing to next-generation urban mobility solutions.

šŸ† Awards and Honors

Zhangcun Yan has received multiple accolades for his pioneering work in AI-driven transportation research. His paper on NONM trajectory reconstruction was recognized as the Best Research Paper at an international conference, reflecting his innovative approach to solving urban mobility challenges. He was also honored for his contributions to intelligent transportation solutions at Tongji University. His ability to bridge AI with real-world traffic safety applications has earned him recognition as one of China’s top emerging transportation researchers. These awards highlight his dedication to making roads safer and more efficient through AI-powered solutions.

šŸ”¬ Research FocusĀ 

šŸš— Trajectory Reconstruction & Analysis – Developed a high-precision NONM method to enhance vehicle trajectory accuracy using social force models and particle filtering.

Ā Road Surface Friction Detection – Created a real-time RSFC detection system using CNN-based vision models, improving road safety in adverse weather.

āš ļø Driving Risk Assessment – Designed an AI-based risk prediction framework for mixed-traffic environments, aiding in proactive accident prevention.

šŸ“¹ Computer Vision for Traffic Monitoring – Implemented YOLOv7 and DeepSort algorithms for automated vehicle tracking and intersection analysis.

His interdisciplinary work integrates AI, deep learning, and transportation engineering, leading to more efficient urban traffic management and reduced road accidents. Zhangcun’s research continues to drive innovations in autonomous driving, intelligent traffic systems, and urban mobility safety.

Publications

šŸŽļø “Trajectory Reconstruction Using NONM and Social Force Models” – Expert Systems with Applications

🚦 “AI-Driven Road Surface Friction Estimation in Adverse Weather” – Alexandria Engineering Journal

🚘 “Collision Risk Prediction at Urban Intersections” – Traffic Injury Prevention

🚲 “Analyzing Mixed-Traffic Interactions Using Deep Learning” – Journal of Transportation Engineering

Conclusion

Zhangcun Yan is a strong contender for the Best Researcher Award in mechanics and transportation engineering. His work in computer vision, AI-driven risk modeling, and autonomous safety systems makes a significant contribution to the field. However, improving industry collaborations, patent filings, and professional memberships would further establish his standing as a leading researcher in intelligent transportation systems. If he continues expanding his research outreach and practical applications, he will be an even more influential figure in the domain.

 

 

Sabum Jung | Smart factory | Best Researcher Award

Mr. Sabum Jung | Smart factory | Best Researcher Award

Research engineer, Lg energy solution,South Korea

Sabum Jung is a seasoned Data Scientist and Machine Learning Engineer with over 23 years of expertise in predictive modeling, deep learning, and AI-driven optimization. His career spans LG Energy Solution, SK Holdings, and LG Production Engineering Research Institute, where he pioneered AI applications in high-tech manufacturing, including semiconductor, battery, and display industries. A former Military Intelligence Analyst for the U.S. Army, he has authored research papers and books on AI, machine learning, and Industry 4.0. Fluent in English, Korean, and Japanese, he continues to drive AI innovations in industrial applications.

Profile

šŸŽ“ Education

Sabum Jung holds a B.A. (3.9/4.5) and an M.S. (4.2/4.5) in Industrial Engineering from Sung Kyun Kwan University, South Korea. His academic journey focused on advanced analytics, AI-driven optimization, and industrial process improvements. His research contributions in artificial intelligence, reliability engineering, and digital transformation have shaped his expertise in machine learning, deep learning, and predictive modeling, positioning him as a leader in AI applications for manufacturing and industrial systems.

šŸ’¼ Experience

Currently a Data Scientist at LG Energy Solution, Sabum Jung leads AI-driven innovations in virtual metrology, predictive maintenance, and defect analysis. Previously at SK Holdings, he optimized renewable energy predictions, semiconductor material discovery, and AI-powered industrial operations. His 20-year tenure at LG Production Engineering Research Institute saw groundbreaking work in machine learning for smart appliances, battery systems, and industrial automation. His early career as a Military Intelligence Analyst in the U.S. Army honed his analytical prowess, setting the foundation for his AI-driven problem-solving approach.

šŸ† Awards & Honors

Sabum Jung has been recognized for his contributions to AI, machine learning, and industrial automation. His accolades include leadership in AI-driven manufacturing optimization, predictive maintenance, and reinforcement learning applications. He has received industry recognition for his research and innovation in deep learning, active learning, and process optimization in high-tech sectors, further cementing his influence in AI-driven industrial advancements.

šŸ”¬ Research Focus:

Sabum Jung specializes in AI applications for high-tech manufacturing, focusing on predictive maintenance, virtual metrology, and defect detection. His research spans deep learning, reinforcement learning, and AI-driven industrial process optimization. Notable contributions include renewable energy prediction, semiconductor material discovery, and advanced statistical modeling. His expertise in machine learning has been instrumental in developing AI solutions for smart manufacturing, Industry 4.0, and digital transformation.

Publications

Recent progress of LG PDP: High efficiency & productivity technologies Citations1

Conclusion

Sabum Jung is a strong candidate for the Best Researcher Award, given his vast industry experience, research excellence, and technological contributions to AI and machine learning in manufacturing. Enhancing academic collaborations and increasing research dissemination could further elevate his impact and recognition.

Zhangbao Xu | nonlinear control | Best Researcher Award

Assoc. Prof. Dr. Zhangbao Xu | nonlinear control | Best Researcher Award

Associate Professor at Fuyang Normal University, China

Zhangbao Xu is an Associate Professor at Fuyang Normal University, China, specializing in high-accuracy servo control, adaptive control, and intelligent mechatronic systems. He earned his Ph.D. in Mechanical Engineering from Nanjing University of Science and Technology in 2017 and has over 20 publications in prestigious journals like IEEE Transactions on Industrial Electronics and IEEE/ASME Transactions on Mechatronics. He has served as a guest editor for Electronics and Actuators. His research integrates robust and intelligent control strategies for mechatronic applications.

Publication Profile

scopus

Education šŸŽ“

Ph.D. in Mechanical Engineering (2017) – Nanjing University of Science and Technology, China B.S. in Mechanical Engineering and Automation (2012) – Huaqiao University, Xiamen, China

Experience šŸ’¼

Associate Professor (2023–Present) – School of Computer and Information Engineering, Fuyang Normal University, China Postdoctoral Researcher (2021–2023) – Nanjing University of Aeronautics and Astronautics, China Lecturer (2017–2023) – School of Mechanical Engineering, Anhui University of Technology, China

Awards and Honors šŸ†

Guest Editor – Electronics, Actuators Published in Top Journals – IEEE Transactions on Industrial Electronics, IEEE Transactions on Automation Science and Engineering Recognition for Research Contributions – High-impact publications in mechatronics, control systems, and intelligent automation

Research Focus šŸ”¬

Zhangbao Xu’s research centers on high-accuracy servo control, adaptive control, robust control, and intelligent control for mechatronic systems, emphasizing real-time applications, precision engineering, and industrial automation. šŸš€

Publications šŸ“–

šŸ”¹ Total Publications: 7+ in top-tier journals šŸ“š
šŸ”¹ Total Citations: 54+ (as per listed articles) šŸ“ˆ
šŸ”¹ Key Focus Areas: Adaptive control, prescribed performance control, robust servo systems āš™ļø

šŸ“Œ Notable Papers & Impact

āœ… Barrier Lyapunov Function-Based Adaptive Output Feedback Prescribed Performance Controller for Hydraulic Systems (2023) – 38 citations
āœ… Observer-Based Prescribed Performance Adaptive Neural Output Feedback Control (2023) – 15 citations
āœ… Adaptive Prescribed Performance Output Feedback Control for Full-State-Constrained DC Motors (2024) – 1 citation
āœ… RISE-Based Asymptotic Adaptive Prescribed Performance Control for DC Motors (2025) – Newly published

His research spans industrial automation, nonlinear system control, and mechatronics, with strong contributions in IEEE Transactions and European Journal of Control. šŸš€

Conclusion šŸŽÆ

Zhangbao Xu is a highly promising candidate for the Best Researcher Award due to his exceptional research in control systems, strong academic foundation, and significant contributions through publications and editorial roles. To strengthen his candidacy further, expanding his international network, increasing research citations, and fostering industry ties would further elevate his influence and recognition.

Atsushi Kakogawa | Robotics and Mechatronics | Best Researcher Award

Assoc. Prof. Dr Atsushi Kakogawa |Ā  Robotics and Mechatronics | Best Researcher Award

Associate Professor at Ritsumeikan University, Japan

🌟 Atsushi Kakogawa, Ph.D., is an Associate Professor in Robotics at Ritsumeikan University, Japan. A pioneer in robotics, he excels in mobile robot design, mechanical systems, and embedded systems. Proficient in programming languages like C++, Python, and more, Dr. Kakogawa has a prolific career marked by teaching, research, and leadership in international robotics conferences.

Profile

scholar

EducationšŸŽ“Ā 

Doctor of Engineering, Ritsumeikan University, Japan, 2015. Ā Master of Engineering, Ritsumeikan University, Japan, 2012. Ā Bachelor of Engineering, Department of Robotics, Ritsumeikan University, Japan, 2010.

ExperiencešŸ’¼

Associate Professor, Ritsumeikan University (2023–Present). Ā Lecturer and Visiting Assistant Professor at University of Waterloo (2017).Ā Assistant Professor, Ritsumeikan University (2015–2019).

Awards and HonorsšŸ†

KAKENHI Grants from Japan Society for the Promotion of Science. Shiga Prefecture Technology Promotion Subsidy (2022). Organizer and Editor roles in top IEEE conferences, including IROS and ICRA.

Research FocusšŸ¤–

Robotics: Mobile robot design and mechanical system applications. Ā Embedded systems and advanced Internet communication technologies. Ā Multidisciplinary programming in C++, Python, and SQL for robotics innovation.

PublicationĀ  Top Notes

Design of a Multilink-Articulated Wheeled Pipeline Inspection Robot Using Only Passive Elastic Joints

Journal: Advanced Robotics, 2018

Citations: 73

Highlights: Introduces a pipeline robot leveraging passive elastic joints for adaptability in complex pipeline systems.

Mobility of an In-Pipe Robot with Screw Drive Mechanism Inside Curved Pipes

Conference: IEEE International Conference on Robotics and Biomimetics, 2010

Citations: 72

Highlights: Explores screw drive mechanisms for pipeline robots navigating curved environments.

Stiffness Design of Springs for a Screw Drive In-Pipe Robot to Pass Through Curved and Vertical Pipes

Journal: Advanced Robotics, 2012

Citations: 55

Highlights: Focuses on optimizing spring stiffness to enhance robot mobility in diverse pipe geometries.

Designing Arm Length of a Screw Drive In-Pipe Robot for Climbing Vertically Positioned Bent Pipes

Journal: Robotica, 2016

Citations: 50

Highlights: Discusses arm length designs crucial for overcoming vertical bends in pipelines.

An In-Pipe Robot with Underactuated Parallelogram Crawler Modules

Conference: IEEE International Conference on Robotics and Automation, 2014

Citations: 48

Highlights: Presents a robot with a novel crawler module enhancing adaptability and efficiency.

Design of a Multilink-Articulated Wheeled Inspection Robot for Winding Pipelines: AIRo-II

Conference: IEEE/RSJ Intelligent Robots and Systems, 2016

Citations: 46

Highlights: Develops AIRo-II, a wheeled robot optimized for winding and complex pipelines.

Pathway Selection Mechanism of a Screw Drive In-Pipe Robot in T-Branches

Conference: IEEE International Conference on Automation Science and Engineering, 2012

Citations: 42

Highlights: Proposes mechanisms for robots to autonomously navigate pipeline branches.

Development of a Screw Drive In-Pipe Robot for Passing Through Bent and Branch Pipes

Conference: IEEE ISR, 2013

Citations: 41

Highlights: Focuses on screw drive robots overcoming pipeline bends and branches.

Underactuated Modular Finger with Pull-In Mechanism for a Robotic Gripper

Conference: IEEE Robotics and Biomimetics, 2016

Citations: 40

Highlights: Introduces a robotic gripper using an underactuated mechanism for enhanced grasping.

Stiffness Design of a Resonance-Based Planar Snake Robot with Parallel Elastic Actuators

Journal: IEEE Robotics and Automation Letters, 2018

Citations: 39

Highlights: Examines stiffness optimization for snake robots in planar environments.

Conclusion

Dr. Atsushi Kakogawa is a highly accomplished researcher whose contributions to robotics and mechatronics make him a strong contender for the Best Researcher Award. His academic rigor, leadership in the robotics community, and innovation in mobile and embedded systems distinguish him as a trailblazer in his field. By addressing areas such as industrial collaboration and broader global recognition, he could solidify his position as a preeminent figure in robotics research.

Atsushi Kakogawa | Robotics and Mechatronics | Best Researcher Award Ritsumeikan University

Assoc. Prof. Dr Atsushi Kakogawa |Ā  Robotics and Mechatronics | Best Researcher Award

Associate Professor at Ritsumeikan University, Japan

🌟 Atsushi Kakogawa, Ph.D., is an Associate Professor in Robotics at Ritsumeikan University, Japan. A pioneer in robotics, he excels in mobile robot design, mechanical systems, and embedded systems. Proficient in programming languages like C++, Python, and more, Dr. Kakogawa has a prolific career marked by teaching, research, and leadership in international robotics conferences.

Profile

scholar

EducationšŸŽ“Ā 

Doctor of Engineering, Ritsumeikan University, Japan, 2015. Ā Master of Engineering, Ritsumeikan University, Japan, 2012. Ā Bachelor of Engineering, Department of Robotics, Ritsumeikan University, Japan, 2010.

ExperiencešŸ’¼

Associate Professor, Ritsumeikan University (2023–Present). Ā Lecturer and Visiting Assistant Professor at University of Waterloo (2017).Ā Assistant Professor, Ritsumeikan University (2015–2019).

Awards and HonorsšŸ†

KAKENHI Grants from Japan Society for the Promotion of Science. Shiga Prefecture Technology Promotion Subsidy (2022). Organizer and Editor roles in top IEEE conferences, including IROS and ICRA.

Research FocusšŸ¤–

Robotics: Mobile robot design and mechanical system applications. Ā Embedded systems and advanced Internet communication technologies. Ā Multidisciplinary programming in C++, Python, and SQL for robotics innovation.

PublicationĀ  Top Notes

Design of a Multilink-Articulated Wheeled Pipeline Inspection Robot Using Only Passive Elastic Joints

Journal: Advanced Robotics, 2018

Citations: 73

Highlights: Introduces a pipeline robot leveraging passive elastic joints for adaptability in complex pipeline systems.

Mobility of an In-Pipe Robot with Screw Drive Mechanism Inside Curved Pipes

Conference: IEEE International Conference on Robotics and Biomimetics, 2010

Citations: 72

Highlights: Explores screw drive mechanisms for pipeline robots navigating curved environments.

Stiffness Design of Springs for a Screw Drive In-Pipe Robot to Pass Through Curved and Vertical Pipes

Journal: Advanced Robotics, 2012

Citations: 55

Highlights: Focuses on optimizing spring stiffness to enhance robot mobility in diverse pipe geometries.

Designing Arm Length of a Screw Drive In-Pipe Robot for Climbing Vertically Positioned Bent Pipes

Journal: Robotica, 2016

Citations: 50

Highlights: Discusses arm length designs crucial for overcoming vertical bends in pipelines.

An In-Pipe Robot with Underactuated Parallelogram Crawler Modules

Conference: IEEE International Conference on Robotics and Automation, 2014

Citations: 48

Highlights: Presents a robot with a novel crawler module enhancing adaptability and efficiency.

Design of a Multilink-Articulated Wheeled Inspection Robot for Winding Pipelines: AIRo-II

Conference: IEEE/RSJ Intelligent Robots and Systems, 2016

Citations: 46

Highlights: Develops AIRo-II, a wheeled robot optimized for winding and complex pipelines.

Pathway Selection Mechanism of a Screw Drive In-Pipe Robot in T-Branches

Conference: IEEE International Conference on Automation Science and Engineering, 2012

Citations: 42

Highlights: Proposes mechanisms for robots to autonomously navigate pipeline branches.

Development of a Screw Drive In-Pipe Robot for Passing Through Bent and Branch Pipes

Conference: IEEE ISR, 2013

Citations: 41

Highlights: Focuses on screw drive robots overcoming pipeline bends and branches.

Underactuated Modular Finger with Pull-In Mechanism for a Robotic Gripper

Conference: IEEE Robotics and Biomimetics, 2016

Citations: 40

Highlights: Introduces a robotic gripper using an underactuated mechanism for enhanced grasping.

Stiffness Design of a Resonance-Based Planar Snake Robot with Parallel Elastic Actuators

Journal: IEEE Robotics and Automation Letters, 2018

Citations: 39

Highlights: Examines stiffness optimization for snake robots in planar environments.

Conclusion

Dr. Atsushi Kakogawa is a highly accomplished researcher whose contributions to robotics and mechatronics make him a strong contender for the Best Researcher Award. His academic rigor, leadership in the robotics community, and innovation in mobile and embedded systems distinguish him as a trailblazer in his field. By addressing areas such as industrial collaboration and broader global recognition, he could solidify his position as a preeminent figure in robotics research.

Xiaolin Yang | CImage analysis | Best Researcher Award

Dr. Xiaolin Yang | Image analysis | Best Researcher Award

Dr at China university of mining and technology, China

Xiaolin Yang is a skilled Business Analyst and Postdoctoral Researcher at Henan Investment Group. With a solid background in mineral process engineering, his expertise spans industry research, project management, and production optimization. Xiaolin holds a Bachelor’s and a Ph.D. in Mineral Process Engineering from the China University of Mining and Technology, specializing in mineral processing, machine learning, and image analysis. His dedication to academic excellence and practical application makes him a valuable asset in the mineral industry.

Publication Profile

scopus

EducationšŸŽ“Ā 

.Bachelor of Mineral Process Engineering | China University of Mining and Technology, 2015–2019 | Focus: Mineral separation methods and equipment. Doctor of Mineral Process Engineering | China University of Mining and Technology, 2019–2024 | Research areas: Mineral processing, machine learning, image analysis. Xiaolin’s academic journey emphasized innovation in mineral separation, blending engineering with data science to improve mineral processing efficiency and accuracy.

ExperiencešŸ’¼Ā 

Postdoctoral Researcher | Henan Investment Group, 2024–Present | Xiaolin’s role involves comprehensive industry research, preparing assessment reports, and offering investment insights and recommendations. His project management tasks focus on feasibility assessments and evaluating the effectiveness of production processes, aiming to optimize industrial production and implement innovative solutions in mineral processing.

Awards and HonorsšŸ†Ā 

Published Author | Xiaolin has authored notable academic articles, such as in Journal of Materials Research and Technology (2021), Energy (2022), and Expert Systems with Applications (2024). His work, recognized for its significance in mineral processing and machine learning, highlights his expertise in utilizing advanced algorithms for practical industry challenges.

Research FocusšŸ”

Research Interests | Xiaolin’s research delves into mineral processing, machine learning applications, and image analysis. His studies, including deep learning for ash determination in coal flotation, explore novel algorithms to enhance mineral processing accuracy, bridging engineering and artificial intelligence for industrial optimization.

PublicationĀ  Top Notes

Multi-scale neural network for accurate determination of ash content in coal flotation concentrate

Authors: Yang, X., Zhang, K., ThƩ, J., Tan, Z., Yu, H.

Journal: Expert Systems with Applications, 2025, 262, 125614

Description: This paper presents a multi-scale neural network model that accurately determines ash content in coal flotation concentrate using froth images, leveraging deep learning to enhance mineral processing efficiency.

STATNet: One-stage coal-gangue detector for real industrial applications

Authors: Zhang, K., Wang, T., Yang, X., Tan, Z., Yu, H.

Journal: Energy and AI, 2024, 17, 100388

Description: The STATNet model is introduced as a coal-gangue detection system using a one-stage deep learning algorithm, tailored for industrial application with a focus on real-time processing.

COFNet: Predicting surface area of covalent-organic frameworks

Authors: Wang, T., Yang, X., Zhang, K., Tan, Z., Yu, H.

Journal: Chemical Physics Letters, 2024, 847, 141383

Description: COFNet utilizes deep learning to predict the specific surface area of covalent-organic frameworks, combining structural image analysis with statistical features for accurate predictions.

Enhancing coal-gangue detection with GAN-based data augmentation

Authors: Zhang, K., Yang, X., Xu, L., Tan, Z., Yu, H.

Journal: Energy, 2024, 287, 129654

Description: This study employs GAN-based data augmentation and a dual attention mechanism to improve coal-gangue object detection, aiming to refine accuracy in complex industrial environments.

Multi-step carbon price forecasting using hybrid deep learning models

Authors: Zhang, K., Yang, X., Wang, T., Tan, Z., Yu, H.

Journal: Journal of Cleaner Production, 2023, 405, 136959

Description: A hybrid deep learning model for multi-step forecasting of carbon prices is proposed, integrating multivariate decomposition to enhance predictive reliability.

PM2.5 and PM10 concentration forecasting with spatial–temporal attention networks

Authors: Zhang, K., Yang, X., Cao, H., Tan, Z., Yu, H.

Journal: Environment International, 2023, 171, 107691

Description: This article introduces a spatial–temporal attention mechanism for PM2.5 and PM10 forecasting, using convolutional neural networks with residual learning to tackle air quality predictions.

Ash determination of coal flotation concentrate using hybrid deep learning model

Authors: Yang, X., Zhang, K., Ni, C., Tan, Z., Yu, H.

Journal: Energy, 2022, 260, 125027

Description: This work features a hybrid model that utilizes deep learning and attention mechanisms to determine ash content in coal flotation, contributing to process optimization.

Influence of cation valency on flotation of chalcopyrite and pyrite

Authors: Yang, X., Bu, X., Xie, G., Chehreh Chelgani, S.

Journal: Journal of Materials Research and Technology, 2021, 11, pp. 1112–1122

Description: This comparative study explores how different cation valencies affect chalcopyrite and pyrite flotation, contributing to better separation techniques in mineral processing.

Conclusion

Xiaolin Yang is a compelling candidate for the Best Researcher Award. His strengths in applying AI and image analysis to mineral processing reflect a unique skill set that is highly relevant for advancing research and industry practices. With further interdisciplinary work and expanded research visibility, Xiaolin is well-positioned to make impactful contributions and earn recognition in his field.

Zhiyi Liu | Embodied Intelligence | Best Researcher Award

Dr. Zhiyi Liu | Embodied Intelligence | Best Researcher Award

Chief Scientist at Eastmoney AI Research Institute, China

The individual is a distinguished AI scientist with a vast background in multimodal AI, data integration, and financial technology. šŸ“Š They have contributed significantly to AI applications across various industries, including search engines, digital healthcare, and financial markets. 🌐 Holding senior positions at prominent companies such as Baidu, SenseTime, and East Money Group, they have driven innovation in AI algorithms and system architecture. šŸ’» Their leadership in AI governance and multimodal model development has solidified their role as a key player in the AI landscape. šŸ¤– Additionally, their collaboration with academic and industry leaders, including Professor Andrew Ng, has furthered the integration of cutting-edge AI into real-world applications.

Publication Profile

scholar

Education šŸŽ“

They are pursuing an IMBA at the University of Hong Kong Business School (2024-2026).Ā  They completed their Doctorate in Intelligent Manufacturing at ISTEC Paris (2021-2024).Ā  Their undergraduate education is in Computer Science and Technology from Beijing University of Posts and Telecommunications (2007-2011).Ā  Throughout their academic career, they have focused on merging technical expertise with strategic innovation, especially in fields related to AI, intelligent manufacturing, and business. Their education has laid a solid foundation for their work, combining both advanced technical skills and a keen understanding of the business implications of AI technologies.

Experience šŸ”§

Currently, they are the Principal Scientist & Executive Dean at East Money Group, leading intelligent financial risk assessment models.Ā  Prior to this, they co-founded and served as an AI scientist at SenseTime (2019-2022), where they led multimodal data fusion projects.Ā  At Baidu (2011-2018), they spearheaded the integration of AI into search technologies and collaborated with top AI experts, including Andrew Ng. šŸ¤ They have also contributed to the development of multimodal AI models at the Chinese Academy of Sciences (2018-2019). Their diverse experience encompasses AI applications in finance, healthcare, and autonomous systems.

Awards and Honors šŸ†Ā 

At the international level, they are a member of the technical committee for the IEEE CCAI 2024 conference and a technical expert for the IEC/SMB/SEG12 Bio-digital Convergence System Evaluation Team.Ā  Nationally, they are a member of the AI Ethics Working Committee of the Chinese Association for Artificial Intelligence and an expert on Chinese AI standards. šŸ‡ØšŸ‡³ They are a distinguished fellow at Shanghai Jiaotong University’s AI and Marketing Research Center and serve as the Executive Director of the Research Center for Computational Law and AI Ethics. šŸ… Their accolades reflect their contributions to AI ethics, governance, and research.

Research FocusĀ  šŸ”¬

Their research centers on multimodal AI, integrating data streams from text, images, speech, and video to enhance AI’s cognitive abilities. 🧠 They have made significant advancements in natural language processing (NLP), computer vision, and deep learning. Ā Their work also addresses AI governance, ensuring transparency, fairness, and compliance in AI systems. Ā They focus on practical applications in digital healthcare, where multimodal data fusion has improved diagnostic accuracy and patient care. Ā Additionally, they have applied AI innovations to financial markets, optimizing decision-making through advanced algorithms and risk assessment models.

Conclusion

This candidate demonstrates exceptional qualifications for the Best Researcher Award, thanks to their pioneering work in embodied intelligence, multimodal AI models, and cross-sector applications. Their leadership in AI innovation, coupled with their significant academic influence and contributions to AI ethics, makes them a standout nominee. By leveraging further commercial application and broadening international collaborations, they can continue to push the boundaries of AI research, solidifying their position as a leading researcher in the global AI community.

PublicationĀ  Top Notes

Development Paradigm of Artificial Intelligence in China from the Perspective of Digital Economics šŸ“Š: Z Liu, Y Zheng explore the AI development in China’s digital economy. (Journal of Chinese Economic and Business Studies, 2022)

Evolving Financial Markets: The Impact and Efficiency of AI-Driven Trading Strategies šŸ’¹: Z Liu, K Zhang, D Miao discuss the role of AI in enhancing trading efficiency. (International Conference on Intelligence Science, 2024)

Research on Intelligent Computing and Trustworthy Machine Learning in Financial Complex Systems šŸ¤–: Z Liu, K Zhang, Y Zheng, S Xu, J Qu investigate AI applications in financial systems. (2024 International Conference on Data-Driven Optimization)

Application Methods of Large Language Model Interpretability in FinTech Scenarios šŸ’¼: Z Liu, K Zhang, Y Zheng, Z Sun study LLM interpretability in financial technology. (2024 International Conference on Computer Communication and Artificial Intelligence)

Application of Visualization Methods in Neural Network Training Processes šŸ‘ļø: Z Liu, K Zhang, Y Zheng, L Zheng examine neural network training visualization techniques. (2024 International Symposium on AI)

A New Era of Financial Services: How AI Enhances Investment Efficiency šŸ’¼šŸ“ˆ: Z Liu, K Zhang, H Zhang explore AI’s role in improving investment practices. (International Studies of Economics, 2024)

Prof Philip F. Yuan | Robotic Fabrication | Best Researcher Award

Prof Philip F. Yuan | Robotic Fabrication | Best Researcher Award

Prof Philip F. Yuan , CAUP, Tongji University, China

Prof Philip F. Yuan is academic and researcher in the field of renewable energy, holds a PhD in Bio systems Engineering from Kangwon National University, South Korea. His academic journey has been marked by a profound dedication to advancing solar energy technologies, specifically in solar thermal harvesting and its integration into agricultural and architectural applications.

 

Professional Profiles:

Scopus

Yuan, Philip F.

Info:

Tongji University, Shanghai, China
56057067100

šŸ“–Ā Publications Top Note :

Agent-Based Principal Strips Modeling for Freeform Surfaces in Architecture
Chai, H., Orozco, L., Kannenberg, F., Menges, A., Yuan, P.F.
Nexus Network Journal, 2024, 26(2), pp. 369–396
Explores innovative modeling techniques in architecture utilizing agent-based methods.

Bioinspired Sensors and Applications in Intelligent Robots: A Review
Zhou, Y., Yan, Z., Yang, Y., Yuan, P.F., He, B.
Robotic Intelligence and Automation, 2024, 44(2), pp. 215–228
A comprehensive review of bioinspired sensor technologies and their applications in robotics.

FloatArch: A Cable-Supported, Unreinforced, and Re-Assemblable 3D-Printed Concrete Structure Designed Using Multi-Material Topology Optimization
Li, Y., Wu, H., Xie, X., Yuan, P.F., Xie, Y.M.
Additive Manufacturing, 2024, 81, 104012
Presents a pioneering design in 3D-printed concrete structures optimized for reusability and sustainability.

Structural Performance-Based 3D Concrete Printing for an Efficient Concrete Beam
Wu, H., Li, Y., Xie, X., Gao, X., Yuan, P.F.
Sustainable Development Goals Series, 2024, Part F2790, pp. 343–354
Discusses advancements in 3D printing for creating efficient concrete beams.

Research on 3D Printing Craft for Flexible Mass Customization: The Case of Chengdu Agricultural Expo Center
Gao, T., Gu, S., Zhang, L., Yuan, P.F.
Sustainable Development Goals Series, 2024, Part F2790, pp. 465–480
Examines flexible customization in 3D printing through a case study of an agricultural expo center.

Preface
Yan, C., Chai, H., Sun, T., Yuan, P.F.
Computational Design and Robotic Fabrication, 2024, Part F2072
Introduction to the latest volume focusing on computational design and robotic fabrication.

The Use of Normative Energy Calculation for Natural Ventilation Performance-Driven Urban Block Morphology Generation
Li, W., Xu, X., Makvandi, M., Sun, Z., Yuan, P.F.
Computational Design and Robotic Fabrication, 2024, Part F2072, pp. 315–328
Investigates energy-efficient urban design through computational methods.

A Parametric Approach Towards Carbon Net Zero in Agricultural Planning
Yueyang, W., Yuan, P.F.
Computational Design and Robotic Fabrication, 2024, Part F2072, pp. 305–314
Focuses on achieving carbon neutrality in agricultural planning using parametric design techniques.

ISOMORPHISM: Stylized Translations of 2D Prototype in Additive Clay Printing
Gong, L., Yuan, P.F.
Computational Design and Robotic Fabrication, 2024, Part F2072, pp. 515–525
Explores the translation of 2D designs into 3D printed clay structures.

Practical Application of Multi-Material Topology Optimization to Performance-Based Architectural Design of an Iconic Building
Li, Y., Ding, J., Zhang, Z., Yuan, P.F., Xie, Y.M.
Composite Structures, 2023, 325, 117603
Applies multi-material optimization in creating high-performance architectural designs.

Dr. Masih Paknejad | precision machining Award | Best Researcher Award

Dr. Masih Paknejad | precision machining Award | Best Researcher Award

Dr. Masih Paknejad, KSF (Kompetenzzentrum für Spanende Fertigung), Germany

Dr. Masih Paknejad is academic and researcher in the field of renewable energy, holds a PhD in Bio systems Engineering from Kangwon National University, South Korea. His academic journey has been marked by a profound dedication to advancing solar energy technologies, specifically in solar thermal harvesting and its integration into agricultural and architectural applications.

Professional Profiles:

Orcid

Google scholar

Work Experience šŸ› ļø

Institute of Advanced Machining (KSF), GermanyTeam Leader, Postdoctoral Research Fellow2023 – PresentMachine Tools Committee ISO/ISIRI TC 39, IranSenior Member, Chief and Technical Editor of Machine Tools Standards2022 – PresentTurbine Engineering and Manufacturing Co. (TUGA), IranExpert Engineer (R&D Department)2019 – 2021Persian Ultrasonic Co., IranCEO, Design and Manufacture of High Power Ultrasonic Transducer2019 – PresentHitec-Machinery Trading Co., IranTechnical Advisor, Supervisor of Test and Calibration of Machine Tools2017 – 2019Semnan University, IranLecturer2018 – 2019Courses: Materials Science and Engineering, Metrology Lab., Machine Tools Workshop, Engineering Drawing, Hydraulics and Hydraulics Lab, Welding WorkshopAmirkabir University of Technology, IranStrength of Material Lab Expert, Metrology Lab Expert, Teacher Assistant2012 – 2018Courses: Nontraditional Manufacturing Processes, Machine Element DesignIslamic Azad University (Saveh Branch), IranLecturer2011 – 2012Courses: Metrology, Production Methods, Nontraditional Manufacturing Processes

Education šŸŽ“

Furtwangen University – KSF Institute
Feb 2022 – Sep 2023Postdoc FellowTitle: Ultras-Short Pulse Laser-Assisted Micro-Grinding of Silicon CeramicsAmirkabir University of TechnologySep 2011 – Nov 2017
Ph.D.Dissertation: Theoretical-Experimental Model of Heat Generation in Ultrasonic Assisted Dry Creep Feed Grinding ProcessFurtwangen University – KSF Institute
Jun 2014– Jan 2015Sabbatical ResearcherAmirkabir University of TechnologySep 2008 – Jul 2011M.Sc.Thesis: Theoretical and Experimental Analysis of Ultrasonic Assisted Indentation Forming of TubeIsfahan University of TechnologySep 2004– Sep 2008B.Sc.Thesis: Design of Centrifugal Chip Lubricant Separator DeviceAwards & Honors šŸ†Scholarship Award granted by the Ministry of Science Research and Technology of IranAward of the Alborz Regional Innovation and Flourishing Festival, National Elites FoundationPatent for “Design and Manufacture of Ultrasonic Assisted Indentation Forming Device”Award of Elite Entrance, National Organization for Educational Testing (NOET)Ranked 3rd among 39 Undergraduate Students, Mechanical Engineering Department, Isfahan University of TechnologyComputer Skills šŸ’»Mechanical Eng. Software: ABAQUS, ANSYS, CATIA, MasterCAM, MSC Visual

Nastran, Automation StudioProgramming Language: MATLABSoftware Packages: Microsoft Office, Windows

Awards & Honors šŸ†

Scholarship Award granted by the Ministry of Science Research and Technology of IranAward of the Alborz Regional Innovation and Flourishing Festival, National Elites FoundationPatent for “Design and Manufacture of Ultrasonic Assisted Indentation Forming Device”Award of Elite Entrance, National Organization for Educational Testing (NOET)Ranked 3rd among 39 Undergraduate Students, Mechanical Engineering Department, Isfahan University of Technology

Computer Skills šŸ’»

Mechanical Eng. Software: ABAQUS, ANSYS, CATIA, MasterCAM, MSC Visual Nastran, Automation StudioProgramming Language: MATLABSoftware Packages: Microsoft Office, Windows

šŸ“ŠĀ Citation Metrics (Google Scholar):

Citations by: All – 87, Since 2019 – 70
h-index: All – 3, Since 2018 – 3
i10 index: All – 3, Since 2018 –3

 

šŸ“– PublicationsĀ  Top Note :

Investigation of laser-assisted cylindrical grinding of silicon nitride ceramics with controlled damage zone

Journal: Optics & Laser Technology

Date: July 2024

DOI: 10.1016/j.optlastec.2024.110616

Contributors: Esmaeil Ghadiri Zahrani; Masih Paknejad; Ali Zahedi; Bahman Azarhoushang

Laser-assisted surface grinding of innovative superhard SiC-bonded diamond (DSiC) materials

Journal: Ceramics International

Date: February 2024

DOI: 10.1016/j.ceramint.2024.02.323

Contributors: Masih Paknejad; Bahman Azarhoushang; Ali Zahedi; Mehdi Khakrangin; Robert Bƶsinger; Faramarz Hojati

Investigation of material removal mechanisms of laser-structured Si3N4 via single diamond grit scratching

Journal: The International Journal of Advanced Manufacturing Technology

Date: March 2023

DOI: 10.1007/s00170-022-10793-0

Contributors: Masih Paknejad; Bahman Azarhoushang; Ali Zahedi; Mehdi Khakrangin; Mohammad Ali Kadivar

Investigation of material removal mechanisms of laser-structured Si3N4 via single diamond grit scratching

Date: September 2, 2022

DOI: 10.21203/rs.3.rs-1974605/v1

Contributors: Masih Paknejad; Bahman Azarhoushang; Ali Zahedi; Mehdi Khakrangin; Mohammad Ali Kadivar

Ductile-brittle transition mechanisms in micro-grinding of silicon nitride

Journal: Ceramics International

Date: August 2022

DOI: 10.1016/j.ceramint.2022.08.088

Contributors: Masih Paknejad

Numerical Simulation of Ultrasonic Assisted Indentation Tube Forming

Journal: ADMT Journal

Date: September 2020

DOI: 10.30495/admt.2020.1869462.1124

Contributors: Masih Paknejad

Effects of high power ultrasonic vibration on temperature distribution of workpiece in dry creep feed up grinding

Journal: Ultrasonics Sonochemistry

Date: November 2017

DOI: 10.1016/j.ultsonch.2017.04.029

Contributors: Masih Paknejad

Theoretical and experimental analyses of ultrasonic-assisted indentation forming of tube

Journal: Proceedings of the Institution of Mechanical Engineers, Part B: Journal of Engineering Manufacture

Date: March 2014

DOI: 10.1177/0954405413501502

Contributors: Masih Paknejad

 

 

 

Assist Prof Dr. Onur Denizhan | Robotics | Best Researcher Award

Assist Prof Dr. Onur Denizhan | Robotics | Best Researcher Award

Assist Prof Dr. Onur Denizhan, Universidad ECCI, Colombia

Assist Prof Dr. Onur Denizhan is academic and researcher in the field of renewable energy, holds a PhD in Bio systems Engineering from Kangwon National University, South Korea. His academic journey has been marked by a profound dedication to advancing solar energy technologies, specifically in solar thermal harvesting and its integration into agricultural and architectural applications.

 

Professional Profiles:

ORCID

Google scholar

šŸ” Research Interests:

Kinematics analysis and synthesis of mechanisms, mechanism design, design optimization, origami-based mechanism design, automotive systems, robotics, haptics, bio-inspired compliant mechanisms, control, mechatronics, applications of artificial intelligence in engineering design.

šŸ‘Øā€šŸ« Employment:

Feb. 2024 – Present: Assistant Professor, Department of Mechanical Engineering, Batman University, Batman, TRDec. 2021 – Jan. 2024: Lecturer, Department of Electronics and Automation, Batman University, Batman, TR

šŸŽ“ Education:

Aug 2017 – Aug 2021: Ph.D. in Mechanical Engineering & Mechanics, Lehigh University, Bethlehem, PA, USSep 2015 – Aug 2017: Ph.D. Student in Mechanical Engineering, Columbia University (Transferred to Lehigh)Jan 2014 – Aug 2015: M.Sc. in Mechanical Engineering & Mechanics, Lehigh University, Bethlehem, PA, USSep 2007 – Jun 2011: B.Sc. in Mechanical Engineering, Inonu University, Malatya, TRSep 2023 – Present: B.A. in Economics, Anadolu University, Eskisehir, TR

šŸ† Awards and Honors:

2020: Rossin College Graduate Leadership and Service Award, Lehigh University2019 – 2021: Teacher Assistant of the Year Honorable Mentions, Lehigh University2020: Graduate Student Senate Champion, Lehigh University2019 – 2021: Lehigh University Department of Mechanical Engineering and Mechanics Tuition Award

šŸŽ“ Scholarships and Grants:

2020: Graduate Student Senate Travel Grant, Lehigh University (ASME IDETC/CIE 2020)2020: Graduate Student Senate Travel Grant, Lehigh University (ASME IMECE 2020)Jan 2012 – Aug 2020: Study Abroad Full Scholarship (for M.Sc. and Ph.D.), Turkish Ministry of EducationJuly 2011: M.Sc. and Ph.D. Full Scholarship (Declined for studying abroad), Turkish Council of Higher EducationJun 2011: Finalist Design Team Award, Systemair-HSK AS Company Project CompetitionšŸŽ™ļø Invited Talks:Jan. 2024: Batman University Sustainability Talk Series: “Making AI Work for Us”Dec. 2022: Batman University: “Scholarship Opportunities Abroad”May 2020: Lehigh University Rossin Connection Podcast, Episode 6: “The Journey of Onur Denizhan”

šŸ”¬ Research Experience:

Aug 2017 – Aug 2021: Research Assistant, Lehigh University (Mechanism design and optimization projects)Aug 2015 – Aug 2017: Research Assistant, Columbia University (Design and experiment of Spine Brace Project)Jan 2014 – Aug 2015: Research Assistant, Lehigh University (Optimum design of linkage mechanisms project)Nov 2010 – Jun 2011: Undergraduate Research Assistant, Inonu University (Design and implementation of energy-efficient central air conditioning systems)

šŸ‘Øā€šŸ« Teaching Experience:

Spring ā€˜22 – Present: Instructor, Batman University (Various courses including Computer Supported Design, Artificial Neural Networks, Robot Analysis)Fall ’18 – Spring ’21: Department Graduate Assistant, Lehigh University (Courses including Graphics for Engineering Design, Mechanical Engineering Laboratory, Thermodynamics, Computer-Aided Design)Fall ā€˜16: Grader and Course Assistant, Columbia University (Graduate courses homework and exams grader)

šŸ“ŠĀ Citation Metrics (Google Scholar):

Citations by: All – 18, Since 2018 – 18
h-index: All – 3, Since 2018 – 3
i10 index: All – 0, Since 2018 –0