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Event

Adaptive Internal Models in Systems Neuroscience

Friday, November 18, 2022 10:30to11:30
ZOOM, CA

Speaker: – Professor, Department of Electrical and Computer Engineering, University of Toronto, Canada
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Mireille E. Broucke

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Abstract: We explore the potential of using the internal model principle of control theory to explain the cerebellum, a major component of the brain. The cerebellum is involved in motor control, motor learning, posture and balance, gait control, eye movement, language regulation, emotion regulation, etc. It has been described as regulating and coordinating all movements of precision. Neuroscientists hypothesize that the cerebellum contains forward or inverse models of the systems it regulates. Unfortunately, conclusive experimental proof that this hypothesis is correct has not been forthcoming, despite a 30 year effort. In this talk we describe an alternative approach to modeling the cerebellum, based on a hypothesis that its primary function is disturbance rejection. The key method in control theory that allow us to model the cerebellum is adaptive internal models. Evidence of the efficacy of our approach is given in terms of the slow eye movement systems and visuomotor adaptation. We conclude the talk with implications for control theory.


Biography: Mireille Broucke obtained the BS degree in Electrical Engineering from the University of Texas at Austin in 1984 and the MSEE and PhD degrees from the University of California, Berkeley in 1987 and 2000, respectively. She was a postdoc in Mechanical Engineering at University of California, Berkeley during 2000-2001. She has six years of industry experience in control design for the automotive and aerospace industries. During 1993-1996 she was a program manager and researcher at Partners for Advanced Transportation and Highways (PATH) at University of California, Berkeley. Since 2001 she has been at the University of Toronto where she is a professor in Electrical and Computer Engineering. Her current research interests are in the area of control theory applied to neuroscience.

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