Evaluating Morphological Computation in Muscle and DC-motor Driven Models of Human Hopping
December 01, 2015 Β· Declared Dead Β· π Frontiers in Robotics and AI
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Authors
Keyan Ghazi-Zahedi, Daniel F. B. Haeufle, Guido Montufar, Syn Schmitt, Nihat Ay
arXiv ID
1512.00250
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.IT,
cs.RO
Citations
32
Venue
Frontiers in Robotics and AI
Last Checked
4 months ago
Abstract
In the context of embodied artificial intelligence, morphological computation refers to processes which are conducted by the body (and environment) that otherwise would have to be performed by the brain. Exploiting environmental and morphological properties is an important feature of embodied systems. The main reason is that it allows to significantly reduce the controller complexity. An important aspect of morphological computation is that it cannot be assigned to an embodied system per se, but that it is, as we show, behavior- and state-dependent. In this work, we evaluate two different measures of morphological computation that can be applied in robotic systems and in computer simulations of biological movement. As an example, these measures were evaluated on muscle and DC-motor driven hopping models. We show that a state-dependent analysis of the hopping behaviors provides additional insights that cannot be gained from the averaged measures alone. This work includes algorithms and computer code for the measures.
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