IEEE CSS Distinguished Lecture: Learning Control and Its Application in Rehabilitation Robotics

#WIE #control #learning #rehabilitation-robotics
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Rehabilitation robotics leverages the principle of "practice makes perfect" by using repetitive task-based exercises to facilitate motor re-learning and functional recovery, particularly in poststroke rehabilitation. Rooted in neurocognitive rehabilitation theories, robot-assisted therapies provide tailored, intensive training routines that meet individual patient needs. Learning control (LC) strategies, originally developed in 1978 to achieve high tracking performance in industrial applications, offer a compelling framework for controller designs in this field. Unlike traditional control methods, LC algorithms improve performance over time by utilizing information from previous iterations. This talk highlights recent advances in LC designs and illustrates how various LC algorithms effectively address the unique challenges posed by rehabilitation robotics. Additionally, it explores future opportunities for integrating learning control into rehabilitation systems and outlines key research questions for advancing control theory in this critical area.



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  • Level 2, Building 193 (EEE)
  • The University of Melbourne
  • Parkville, Victoria
  • Australia 3010

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  • Dr Ye Pu and Prof Girish Nair

  • Co-sponsored by Dept. Electrical & Electronic Engineering, The University of Melbourne


  Speakers

Prof Ying Tan from the University of Melbourne

Topic:

Learning Control and Its Application in Rehabilitation Robotics

Rehabilitation robotics leverages the principle of "practice makes perfect" by using repetitive task-based exercises to facilitate motor re-learning and functional recovery, particularly in poststroke rehabilitation. Rooted in neurocognitive rehabilitation theories, robot-assisted therapies provide tailored, intensive training routines that meet individual patient needs. Learning control (LC) strategies, originally developed in 1978 to achieve high tracking performance in industrial applications, offer a compelling framework for controller designs in this field. Unlike traditional control methods, LC algorithms improve performance over time by utilizing information from previous iterations. This talk highlights recent advances in LC designs and illustrates how various LC algorithms effectively address the unique challenges posed by rehabilitation robotics. Additionally, it explores future opportunities for integrating learning control into rehabilitation systems and outlines key research questions for advancing control theory in this critical area.

Biography:

Dr. Ying Tan is a Professor of Mechanical Engineering at The University of Melbourne, Australia. She earned her bachelor's degree from Tianjin University, China, in 1995, and her PhD from the National University of Singapore in 2002. Following a postdoctoral fellowship at McMaster University, she joined The University of Melbourne in 2004. Dr. Tan has received numerous prestigious recognitions, including an Australian Postdoctoral Fellowship (2006–2008) and an ARC Future Fellowship (2009–2013). She currently serves on the ARC College of Experts (2024–2026) and holds several distinguished titles, including Fellow of IEEE (FIEEE), Fellow of Engineers Australia (FIEAust), and Fellow of the Asia-Pacific Artificial Intelligence Association. She is also a member of the IEEE Fellow Committee (2024–2025) and was recently elected Fellow of the Australian Academy of Technology and Engineering (ATSE, 2025), an honor recognizing her outstanding contributions to engineering and applied science in Australia. Her research spans intelligent systems, nonlinear systems, data-driven optimization, rehabilitation robotics, human motor learning, wearable sensors, and model-guided machine learning.

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