Peng Bo | Robotics | Excellence in Scientific Innovation Award

Dr. Peng Bo | Robotics | Excellence in Scientific Innovation Award

Tsinghua University | China

Dr. Peng Bo is a researcher specializing in control systems, networked autonomous vehicles, and advanced filtering techniques, with a focus on H∞ filtering and event-based control methods for complex networked systems. His work integrates rigorous mathematical modeling, augmented Lyapunov functional approaches, and innovative algorithm design to enhance stability, performance, and reliability in mass-switching autonomous multi-vehicle systems. With a strong foundation in system dynamics and networked control, he has contributed to several high-impact publications, demonstrating a practical yet theoretically robust research approach. His research has influenced both academic developments and real-world applications in intelligent transportation and autonomous systems, reflecting measurable impact through citations and collaborative contributions in his field. Dr. Peng Bo continues to advance methodologies for robust control and optimization in interconnected, dynamic environments.

Citation Metrics (Scopus)

20

15

10

5

0

Citations
10

Documents
5

h-index
2

🟦 Citations   🟥 Documents   🟩 h-index


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Featured Publications

Chien-I Chang | Robotics | Research Excellence Award

Mr. Chien-I Chang | Robotics | Research Excellence Award

National Chiayi University | Taiwan

Mr. Chien-I Chang is a robotics researcher whose work integrates intelligent systems, autonomous control, and applied computer science to advance next-generation robotic technologies. His research centers on designing adaptive robotic platforms capable of operating in dynamic, unstructured, or human-interactive environments, with a strong emphasis on sensor fusion, machine perception, and real-time decision-making. He has extensive experience developing autonomous navigation algorithms, robotic manipulation systems, and embedded architectures optimized for efficiency, stability, and scalability. His work bridges theoretical modeling with practical engineering, resulting in robotics solutions that are deployable across industrial, educational, and service-oriented settings. Through continuous exploration of mechatronic integration, computer vision, and learning-based control, he aims to enhance robot autonomy and expand practical use cases in daily life. His professional experience includes leading innovative robotics projects, mentoring teams in advanced robotic development, and transforming research outcomes into functional systems with societal impact. He is particularly interested in scalable and modular robotic designs that lower entry barriers for automation and support real-world problem solving. His research philosophy focuses on combining rigorous scientific inquiry with hands-on experimentation to accelerate the evolution of intelligent robotics. Through his academic pursuits and ongoing contributions to the robotics industry, he remains committed to advancing the performance, reliability, and accessibility of robotic technologies while fostering innovation that benefits education, industry, and broader communities.

Profile: Scopus

Featured Publication

Chang, C.-I., (2025). A low-cost autonomous outdoor robot with stabilized controller and deep-learning integrated GPS navigator under end-to-end implementation. Journal of the Chinese Institute of Engineers / Transactions of the Chinese Institute of Engineers, Series A. Advance online publication.

Huaiqu Feng | Robot | Best Researcher Award

Dr. Huaiqu Feng | Robot | Best Researcher Award

Zhejiang University | China

Huaiqu Feng is an accomplished researcher and engineer from China with a strong academic background in agricultural mechanization engineering and automation. He completed his undergraduate studies in Automation at Hubei Normal University, where he built a solid foundation in control theory, intelligent systems, signal processing, and electronics. He then pursued a master’s degree in Agricultural Mechanization Engineering at Northeast Agricultural University, focusing on areas such as image processing, deep learning, computer vision, and advanced agricultural mechanics. His research interests center on the integration of intelligent control systems and machine vision technologies to improve agricultural equipment and automation. He has contributed to several scientific papers submitted to international SCI-indexed journals, addressing topics such as deep learning-based corn kernel selection and targeted pesticide spraying platforms. His research output includes 20 documents with 431 citations by 376 documents, reflecting his growing impact in the scientific community. His innovative work is also demonstrated through multiple patents for agricultural machinery and software copyrights related to neural network-based prediction and measurement systems. He has received various scholarships and awards for academic excellence and innovation, including recognition in national competitions such as the “Blue Bridge Cup” and the “Huawei Cup.” Beyond his technical achievements, he has demonstrated leadership through active involvement in student organizations, academic committees, and innovation programs, leading teams in robotics and intelligent control system design. His multidisciplinary expertise bridges automation, machine learning, and agricultural engineering, contributing to the advancement of smart farming technologies.

Profile: Scopus

Featured Publications

Feng, Huaiqu (2025). TD-CFD-DPM coupled method for multi-objective optimization of collision pollination parameters in hybrid rice seed production. Smart Agricultural Technology.

Feng, Huaiqu (2025). nUGV-1UAV robot swarms: Low-altitude remote sensing-based decentralized planning framework in-field environments. ISPRS Journal of Photogrammetry and Remote Sensing.

Lacrimioara Grama | Social Robotics | Best Researcher Award

Assoc. Prof. Dr. Lacrimioara Grama | Social Robotics | Best Researcher Award

Technical University of Cluj-Napoca, Romania

Lăcrimioara-Romana Grama is an Associate Professor at the Technical University of Cluj-Napoca, Faculty of Electronics, Telecommunications and Information Technology, within the Basis of Electronics Department. She holds a PhD in Electronic Engineering and Telecommunications, with expertise in digital signal processing, data modeling, and electronic systems.

Profile:

Educational Background:

She holds a PhD in Electronic Engineering and Telecommunications, awarded Magna Cum Laude. Additionally, she completed an MSc in Design Techniques for Complex Electronic Circuits and an Engineer Diploma in Communications. She has also obtained certifications in pedagogy and academic leadership from institutions such as Harvard Graduate School of Education, Babson College, and University POLITEHNICA of Bucharest.

Leadership and Administrative Roles:

Grama currently serves as Vice-Dean and President of the Faculty Scholarship Committee. She has coordinated master-level admissions, represented her faculty in various university-wide and European initiatives (including EUt+ and RO European Universities), and contributed to numerous accreditation processes for academic programs.

Scientific and Academic Contributions:

She has actively participated in organizing international conferences such as RTSP, SpeD, and SPAMEC, often as a technical chair. Her roles also include session chair and technical program committee member for major conferences like IEEE ICIIP, EUSIPCO, and VisionNet.

Community and Institutional Engagement:

Beyond teaching and research, she has shown a strong commitment to community-building within the academic ecosystem through student mentorship, promotion of study programs, coordination of Erasmus students, and sustained involvement in faculty governance.

Google Scholar Citation Metrics:

  • Total citations: 452

  • Citations since 2020: 251

  • h-index: 11

  • h-index since 2020: 9

  • i10-index: 15

  • i10-index since 2020: 8

Publication Top Notes:

Audio signal classification using linear predictive coding and random forests
2017
34

On the optimization of SVM kernel parameters for improving audio classification accuracy
2017
31

Supercapacitor modelling using experimental measurements
2009
25

Adding audio capabilities to TIAGo service robot
2018
23

A novel wearable foot and ankle monitoring system for the assessment of gait biomechanics
2020
22

Extending assisted audio capabilities of TIAGo service robot
2019
18