Jiantao Shi | Robotics and Automation | Best Researcher Award

Jiantao Shi | Robotics and Automation | Best Researcher Award

Mrs Jiayun Nie, chongqing Jiaotong University, China

Jiayun Nie is a distinguished professor at Nanjing Tech University, China, specializing in cooperative control of multi-robot systems, fault diagnosis, and fault-tolerant control of distributed systems. πŸ“‘ With a Ph.D. in Control Science and Engineering from Tsinghua University, she has made pioneering contributions to multi-agent systems, UAV adaptive control, and reinforcement learning-based fault diagnosis. βœˆοΈπŸ” Her research has led to high-impact publications on fault estimation, bipartite consensus, and deep learning models for system diagnostics. πŸ€– She has served as a research fellow at the Nanjing Research Institute of Electronic Technology and has received recognition as an Outstanding Reviewer for the Journal of the Franklin Institute (2017). πŸ“š Her latest work explores AI-driven fault-tolerant frameworks for autonomous systems and aerospace applications. πŸš€ With a stellar academic record and transformative research, she is a deserving recipient of the Best Researcher Award. πŸ…

Publication Profile

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Education

Jiayun Nie’s academic journey is marked by excellence in control science and automation engineering. She earned her Ph.D. in Control Science and Engineering from Tsinghua University (2011-2016), focusing on fault-tolerant systems and adaptive control strategies for multi-robot cooperation. πŸ€–πŸ” Her doctoral research introduced novel iterative learning algorithms for fault estimation and compensation, improving system reliability. Before this, she completed her B.E. in Electrical Engineering and Automation at Beijing Institute of Technology (2007-2011), where she laid the groundwork in robotic control, embedded systems, and automation engineering. πŸŽ›οΈβš‘ During her studies, she was actively involved in research projects on UAV dynamics and cooperative control theory, leading to early publications and innovative designs for fault-resilient robotics. πŸš€ Her strong educational foundation, combined with rigorous research, has positioned her as a global leader in fault diagnosis and control engineering. πŸ“š

Experience

Jiayun Nie has an extensive academic and research career, currently serving as a Professor at Nanjing Tech University (2021-present), where she leads groundbreaking work on distributed control and autonomous systems. πŸ€–πŸ” Prior to this, she was a Research Fellow (2019-2021) and Associate Research Fellow (2016-2018) at the Nanjing Research Institute of Electronic Technology, contributing to fault detection models for phased array radar transceivers and advanced control strategies for UAVs. βœˆοΈπŸ“‘ Her expertise in adaptive control and AI-driven fault detection has been instrumental in developing next-generation intelligent robotic networks. πŸš€ Throughout her career, she has collaborated with leading research institutions, advancing the state-of-the-art in reinforcement learning-based fault diagnosis, consensus control, and multi-agent fault-tolerant frameworks. πŸ… Her work continues to influence aerospace, robotics, and autonomous vehicular technologies, making her an authority in the field. πŸ“š

Awards and Honors

Jiayun Nie’s outstanding contributions to robotics and fault-tolerant control have earned her several prestigious accolades. πŸŽ–οΈ She was recognized as an Outstanding Reviewer for the Journal of the Franklin Institute (2017) πŸ“š, reflecting her expertise in control systems and automation engineering. πŸš€ Her innovative research on fault diagnosis in distributed robotic systems has been cited extensively, leading to multiple best paper awards at international IEEE and IFAC conferences. πŸ… She has received multiple grants and funding awards for her pioneering work in multi-agent cooperative control and AI-driven adaptive learning control. πŸ€– As a highly regarded professor and researcher, her contributions continue to impact autonomous systems, aviation safety, and smart robotics. ✈️ With her extensive publications and transformative research, she is a deserving recipient of the Best Researcher Award, recognized for her excellence in innovation and scientific advancement. πŸ†πŸ“‘

Research Focus

Jiayun Nie’s research revolves around cooperative control, fault diagnosis, and learning-based fault-tolerant strategies in autonomous systems. πŸ€– She has made significant breakthroughs in multi-robot cooperation, bipartite consensus, and AI-driven adaptive fault detection. πŸ“Š Her work in fault-tolerant control enhances resilience in UAVs and aerospace systems, ensuring robustness against unknown disturbances and failures. ✈️ She has developed deep learning and reinforcement learning models for self-healing robotic networks, transforming distributed control frameworks. πŸ… Her studies in event-based control, collision avoidance, and system stability have contributed to advancements in autonomous vehicle technology. πŸš€ By integrating data-driven methods with real-time fault estimation, her research provides solutions for smart transportation, defense, and aerospace industries. πŸ“‘ With numerous high-impact publications, Jiayun Nie’s pioneering work defines the future of adaptive robotics and autonomous systems. πŸŽ“

Publications Top Notes

  1. “A parallel weighted ADTC-Transformer framework with FUnet fusion and KAN for improved lithium-ion battery SOH prediction” πŸ”‹ (2025)
  2. “Bipartite Fault-Tolerant Consensus Control for Multi-Agent Systems with a Leader of Unknown Input Under a Signed Digraph” πŸ€– (2025)
  3. “Iterative learning based fault estimation for stochastic systems with variable pass lengths and data dropouts” πŸ“Š (2025)
  4. “A Two-Stage Fault Diagnosis Method With Rough and Fine Classifiers for Phased Array Radar Transceivers” πŸ“‘ (2024)
  5. “An intuitively-derived decoupling and calibration model to the multi-axis force sensor using polynomials basis” πŸ“Š (2024)
  6. “Event-Based Adaptive Fault Tolerant Control and Collision Avoidance of Wheel Mobile Robots With Communication Limits” πŸ€– (2024)
  7. “Reinforcement Learning-Based Fault Tolerant Control Design for Aero-Engines With Multiple Types of Faults” ✈️ (2024)

Eduardo Garcia Magraner | Engineering and Technology | Best Researcher Award

Eduardo Garcia Magraner | Engineering and Technology | Best Researcher Award

Dr Eduardo Garcia, Magraner Ford Motor Company, Spain

πŸ”§ Dr. Eduardo GarcΓ­a Magraner is a distinguished expert in industrial automation, manufacturing, and occupational safety. With a Ph.D. in Computer Engineering & Industrial Production (Cum Laude, CEU Cardenal Herrera, 2016) πŸŽ“, he has led key roles at Ford Spain πŸš—, from Electromechanical Maintenance to Manufacturing Manager. A Lean Six Sigma Black Belt βš™οΈ, he has earned multiple innovation and safety awards πŸ†, including the Henry Ford Technical Award. A sought-after speaker 🎀 and researcher πŸ“–, his contributions span Industry 4.0, predictive maintenance, and AI-driven efficiency. Passionate about smart factories 🏭, he bridges academia and industry for sustainable progress. 🌍

Publication Profile

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Academic and Professional BackgroundΒ 

Dr. Eduardo Garcia Magraner πŸŽ“βš™οΈ is an expert in industrial engineering, automation, and occupational safety. His academic journey began with vocational training in electrical and telecommunications, followed by a Ph.D. in Computer Engineering and Industrial Production (2016) πŸ…. Certified in Lean Six Sigma (Black Belt) and occupational risk prevention, he has mastered integrated management systems πŸ­βœ…. With expertise in robotics πŸ€–, energy efficiency 🌱, and human resources 🀝, he has undertaken extensive additional training in automation and safety. His research explores machine deterioration and throughput optimization πŸ“Š. A leader in engineering and innovation, he continuously enhances industry standards πŸš€.

Experience

Dr. Eduardo Garcia Magraner has built an impressive career at Ford S.L, starting as a First-Class Electromechanical Maintenance Operator (1990-2001) βš™οΈ. He advanced to Equipment Engineer (2001-2006) and later became a Maintenance Supervisor (2006) πŸ”©. His expertise led him to roles such as Senior Equipment Engineer in Maintenance & Automation (2007-2012) and Production Supervisor (2012) 🏭. He progressed to Manufacturing Manager for Body & Stamping (2014) and Champion of M.O.S. (2016) πŸ”§. As SPOC for Cyber Security (2019) and now Manufacturing Manager for Assembly & Battery Plants (2023), he continues shaping Ford’s production excellence βš‘πŸš—.

Awards and RecognitionsΒ 

Dr. Eduardo Garcia Magraner has been recognized for his outstanding contributions to safety, productivity, and innovation at Ford Spain πŸš—πŸ†. His accolades include multiple Maximum Awards for enhancing press line efficiency (1997, 1999, 2002) and the prestigious Henry Ford Technical Award (2019) for IIoT-based predictive maintenance πŸ”§πŸ“Š. He received honors for workplace safety (1995, 2010, 2012) and academic mentorship at the Polytechnic University of Valencia (2014) πŸŽ“πŸ‘. His work in AI and cybersecurity earned global recognition (2019, 2020) πŸ€–πŸ”. A leader in industrial innovation, he continues to push the boundaries of engineering excellence πŸš€βš™οΈ.

Academic ImpactΒ 

Dr. Eduardo Garcia is a distinguished researcher in automation and smart manufacturing πŸ€–πŸ­. Beyond his groundbreaking research, he has delivered keynote presentations at global conferences, sharing insights on smart factories and AI-driven manufacturing πŸ”πŸŽ€. His expertise has influenced industry advancements, making him a sought-after speaker in the field. In recognition of his contributions, he was honored with the prestigious CEU Ángel Herrera Prize in 2023 πŸ†πŸŽ“, further solidifying his reputation as a leading researcher. Through his work, Dr. Garcia continues to shape the future of industrial automation, bridging innovation and practical applications for smarter, more efficient production systems βš™οΈπŸŒ.

Presentation

Dr. Eduardo GarcΓ­a is a distinguished expert in industrial robotics and Industry 4.0 πŸ€–πŸ­, actively contributing to global conferences and forums. He has delivered impactful presentations at events like EVERii2020, PENTEO2020, and INNOVATION TALKS 2020, addressing smart manufacturing and supply chains πŸš€πŸ“¦. A sought-after speaker, he has shared insights at Advanced Factories, the Global Robot Expo, and the International Conference on Big Data, AI, and IoT πŸŒπŸ“Š. As a Master Professor at PEAKS BUSINESS SCHOOL, he fosters innovation in Industry 4.0. In 2023, he received the prestigious CEU Ángel Herrera Prize for outstanding research excellence πŸ†πŸ“–.

Research Focus

Dr. Eduardo GarcΓ­a Magraner’s research focuses on Industrial Internet of Things (IIoT) πŸ­πŸ“‘, smart manufacturing πŸ€–, and predictive maintenance πŸ”§βš™οΈ within Industry 4.0. His work includes real-time condition monitoring πŸ•’, virtual sensors πŸ“Š, and AI-driven automation πŸ€–πŸ” to enhance efficiency in industrial environments. Key contributions involve sub-bottleneck detection πŸš€, autonomous mobile warehouses πŸš—πŸ­, and manufacturing process optimization πŸ“ˆ using big data and simulation tools πŸ“‘πŸ’‘. His research advances smart factory management πŸ­πŸ’», ensuring reliability, reducing downtime, and boosting productivity. His innovations drive next-gen industrial automation πŸš€πŸ—οΈ for intelligent and self-optimizing manufacturing ecosystems.

Publication Top Notes