Adaptation and learning in control of voluntary movement by the central nervous system
- 1 January 1988
- journal article
- Published by Taylor & Francis in Advanced Robotics
- Vol. 3 (3) , 229-249
- https://doi.org/10.1163/156855389x00127
Abstract
In order to control voluntary movements, the central nervous system must solve the following three computational problems at different levels: (1) the determination of a desired trajectory in visual coordinates; (2) the transformation of its coordinates into body coordinates; and (3) the generation of motor command. Concerning these problems, relevant experimental observations obtained in the field of neuroscience are briefly reviewed. On the basis of physiological information and previous models, we propose computational theories and a neural network model which account for these three problems. (1) A minimum torque-change model which predicts a wide range of trajectories in human multi-joint arm movements is proposed as a computational model for trajectory formation. (2) An iterative learning scheme is presented as an algorithm which solves the coordinate transformation and the control problem simultaneously. This algorithm can be regarded as a Newton-like method in function spaces. (3) A neural network model for generation of motor command is proposed. This model contains internal neural models of the motor system and its inverse system. The inverse-dynamics model is acquired by heterosynaptic plasticity using a feedback motor command (torque) as an error signal. The hierarchical arrangement of these neural networks and their global control are discussed. Their applications to robotics are also discussed.Keywords
This publication has 35 references indexed in Scilit:
- A theory of cerebellar functionPublished by Elsevier ,2002
- Neural dynamics of planned arm movements: Emergent invariants and speed-accuracy properties during trajectory formation.Psychological Review, 1988
- Learning representations by back-propagating errorsNature, 1986
- Synaptic currents at interpositorubral and corticorubral excitatory synapses measured by a new iterative single-electrode voltage-clamp methodNeuroscience Research, 1986
- Computational vision and regularization theoryNature, 1985
- HUMAN ARM TRAJECTORY FORMATIONBrain, 1982
- Computers, brains and the control of movementTrends in Neurosciences, 1982
- Single electrode voltage clamp by iterationJournal of Neuroscience Methods, 1981
- The Application of Model-Referenced Adaptive Control to Robotic ManipulatorsJournal of Dynamic Systems, Measurement, and Control, 1979
- Some Averaging and Stability Results for Random Differential EquationsSIAM Journal on Applied Mathematics, 1979