Literature DB >> 33501299

Morphological Computation Increases From Lower- to Higher-Level of Biological Motor Control Hierarchy.

Daniel F B Haeufle1, Katrin Stollenmaier1, Isabelle Heinrich1, Syn Schmitt2, Keyan Ghazi-Zahedi3.   

Abstract

Voluntary movements, like point-to-point or oscillatory human arm movements, are generated by the interaction of several structures. High-level neuronal circuits in the brain are responsible for planning and initiating a movement. Spinal circuits incorporate proprioceptive feedback to compensate for deviations from the desired movement. Muscle biochemistry and contraction dynamics generate movement driving forces and provide an immediate physical response to external forces, like a low-level decentralized controller. A simple central neuronal command like "initiate a movement" then recruits all these biological structures and processes leading to complex behavior, e.g., generate a stable oscillatory movement in resonance with an external spring-mass system. It has been discussed that the spinal feedback circuits, the biochemical processes, and the biomechanical muscle dynamics contribute to the movement generation, and, thus, take over some parts of the movement generation and stabilization which would otherwise have to be performed by the high-level controller. This contribution is termed morphological computation and can be quantified with information entropy-based approaches. However, it is unknown whether morphological computation actually differs between these different hierarchical levels of the control system. To investigate this, we simulated point-to-point and oscillatory human arm movements with a neuro-musculoskeletal model. We then quantify morphological computation on the different hierarchy levels. The results show that morphological computation is highest for the most central (highest) level of the modeled control hierarchy, where the movement initiation and timing are encoded. Furthermore, they show that the lowest neuronal control layer, the muscle stimulation input, exploits the morphological computation of the biochemical and biophysical muscle characteristics to generate smooth dynamic movements. This study provides evidence that the system's design in the mechanical as well as in the neurological structure can take over important contributions to control, which would otherwise need to be performed by the higher control levels.
Copyright © 2020 Haeufle, Stollenmaier, Heinrich, Schmitt and Ghazi-Zahedi.

Entities:  

Keywords:  arm; control hierarchy; morphological computation; motor control; muscles; preflexes

Year:  2020        PMID: 33501299      PMCID: PMC7805613          DOI: 10.3389/frobt.2020.511265

Source DB:  PubMed          Journal:  Front Robot AI        ISSN: 2296-9144


  41 in total

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Journal:  Comput Methods Biomech Biomed Engin       Date:  2012-01-06       Impact factor: 1.763

9.  Energy management that generates terrain following versus apex-preserving hopping in man and machine.

Authors:  Karl Theodor Kalveram; Daniel F B Haeufle; André Seyfarth; Sten Grimmer
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10.  Optimality Principles in Human Point-to-Manifold Reaching Accounting for Muscle Dynamics.

Authors:  Isabell Wochner; Danny Driess; Heiko Zimmermann; Daniel F B Haeufle; Marc Toussaint; Syn Schmitt
Journal:  Front Comput Neurosci       Date:  2020-05-15       Impact factor: 2.380

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