Stochastic Optimal Control Methods for Investigating the Power of Morphological Computation
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in: Artificial Life, Jahrgang 19.2013, Nr. 1, 01.2013, S. 115–131.
Publikationen: Beitrag in Fachzeitschrift › Artikel › Forschung › (peer-reviewed)
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TY - JOUR
T1 - Stochastic Optimal Control Methods for Investigating the Power of Morphological Computation
AU - Rückert, Elmar A.
AU - Neumann, Gerhard
PY - 2013/1
Y1 - 2013/1
N2 - One key idea behind morphological computation is that many difficulties of a control problem can be absorbed by the morphology of a robot. The performance of the controlled system naturally depends on the control architecture and on the morphology of the robot. Because of this strong coupling, most of the impressive applications in morphological computation typically apply minimalistic control architectures. Ideally, adapting the morphology of the plant and optimizing the control law interact so that finally, optimal physical properties of the system and optimal control laws emerge. As a first step toward this vision, we apply optimal control methods for investigating the power of morphological computation. We use a probabilistic optimal control method to acquire control laws, given the current morphology. We show that by changing the morphology of our robot, control problems can be simplified, resulting in optimal controllers with reduced complexity and higher performance. This concept is evaluated on a compliant four-link model of a humanoid robot, which has to keep balance in the presence of external pushes.
AB - One key idea behind morphological computation is that many difficulties of a control problem can be absorbed by the morphology of a robot. The performance of the controlled system naturally depends on the control architecture and on the morphology of the robot. Because of this strong coupling, most of the impressive applications in morphological computation typically apply minimalistic control architectures. Ideally, adapting the morphology of the plant and optimizing the control law interact so that finally, optimal physical properties of the system and optimal control laws emerge. As a first step toward this vision, we apply optimal control methods for investigating the power of morphological computation. We use a probabilistic optimal control method to acquire control laws, given the current morphology. We show that by changing the morphology of our robot, control problems can be simplified, resulting in optimal controllers with reduced complexity and higher performance. This concept is evaluated on a compliant four-link model of a humanoid robot, which has to keep balance in the presence of external pushes.
UR - https://cps.unileoben.ac.at/wp/ArtificialLife2012Rueckert.pdf
U2 - 10.1162/artl_a_00085
DO - 10.1162/artl_a_00085
M3 - Article
VL - 19.2013
SP - 115
EP - 131
JO - Artificial Life
JF - Artificial Life
SN - 1530-9185
IS - 1
ER -