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Thai-Viet Dang
PeerJ Author & Reviewer
35 Points

Contributions by role

Reviewer 35

Contributions by subject area

Artificial Intelligence
Autonomous Systems
Robotics

Thai-Viet Dang

PeerJ Author & Reviewer

Summary

Thai-Viet Dang holds a PhD of Electrical Engineering, College of Electrical Engineering and Computer Science, NCU, Taiwan (2012). He also received his Engineer of Automation (2001) and Master of Automatic Control (2007), HUST. He is currently a senior lecturer in Mechatronics Dept., SME, HUST. He achieved the title of Associate Professor of Mechatronic (2023). His research is such as : Autonomous Mobile Robot, Computer Vision,Controller based Observer Design and STEM/STEAM education.
WoS ResearcherID: HSF-9487-2023
Scopus Author ID: 58094007100
ORCID number: 0000-0002-1496-2492

Artificial Intelligence Autonomous Systems Robotics

Work details

Assoc. Prof. Dr

Hanoi University of Science and Technology
Mechatronics
Assoc. Prof. Dr Thai-Viet Dang received the B.E. degree in Automation (2001), M.E. degree in Automatic Control (2007) in Hanoi University of Science and Technology (HUST), Vietnam; and Ph.D degree in Electrical Engineering (2012), College of Electrical Engineering and Computer Science, National Central University, Taiwan. He is currently an Associate Professor at HUST, Vietnam. He is also a member of the Council of Asian Science Editor (CASE). He is also currently a reputable reviewer for over 20 WoS journals with Q1 and Q2 rankings in the research field. His current research interest includes Computer Vision, Autonomous Mobile Robot, IoT systems, Controller-based Observer design and STEM/STEAM education.

Websites

  • Google Scholar

PeerJ Contributions

  • Reviewed 1

Signed reviews submitted for articles published in PeerJ Note that some articles may not have the review itself made public unless authors have made them open as well.

November 19, 2024
Drivable path detection for a mobile robot with differential drive using a deep Learning based segmentation method for indoor navigation
Oğuz Mısır
https://doi.org/10.7717/peerj-cs.2514