Computational reproductions of external force field adaption without assuming desired trajectories.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

Optimal feedback control is an established framework that is used to characterize human movement. However, it is not fully understood how the brain computes optimal gains through interactions with the environment. In the past study, we proposed a model of motor learning that identifies a set of feedback and feedforward controllers and a state predictor of the arm musculoskeletal system to control free reaching movements. In this study, we applied the model to force field adaptation tasks where normal reaching movements are disturbed by an external force imposed on the hand. Without a priori knowledge about the arm and environment, the model was able to adapt to the force field by generating counteracting forces to overcome it in a manner similar to what is reported in the behavioral literature. The kinematics of the movements generated by our model share characteristic features of human movements observed before and after force field adaptation. In addition, we demonstrate that the structure and learning algorithm introduced in our model induced a shift in the end-point's equilibrium position and a static force modulation, accompanied by a fast and a slow learning process. Importantly, our model does not require desired trajectories, yields movements without specifying movement duration, and predicts force generation patterns by exploring the environment. Our model demonstrates a possible mechanism through which the central nervous system may control and adapt a point-to-point reaching movement without specifying a desired trajectory by continuously updating the body's musculoskeletal model.

Authors

  • Hiroyuki Kambara
    Tokyo Institute of Technology, Tokyo, Japan.
  • Atsushi Takagi
  • Haruka Shimizu
    Tokyo Institute of Technology, 4259 Nagatsuda, Midori-ku, Yokohama, Kanagawa, 2268503, Japan.
  • Toshihiro Kawase
    Tokyo Institute of Technology, 4259 Nagatsuda, Midori-ku, Yokohama, Kanagawa, 2268503, Japan.
  • Natsue Yoshimura
    Tokyo Institute of Technology, Tokyo, Japan.
  • Nicolas Schweighofer
    University of Southern California, 1540 Alcazar St., CHP 155, Los Angeles, CA, 90089-9006, USA.
  • Yasuharu Koike
    Tokyo Institute of Technology, Tokyo, Japan.