Authors
Sylvain Koos, Jean-Baptiste Mouret, Stéphane Doncieux
Publication date
2010/7/7
Conference
Proceedings of the 12th annual conference on Genetic and evolutionary computation
Pages
119-126
Publisher
ACM
Description
The reality gap, that often makes controllers evolved in simulation inefficient once transferred onto the real system, remains a critical issue in Evolutionary Robotics (ER); it prevents ER application to real-world problems. We hypothesize that this gap mainly stems from a conflict between the efficiency of the solutions in simulation and their transferability from simulation to reality: best solutions in simulation often rely on bad simulated phenomena (e.g. the most dynamic ones). This hypothesis leads to a multi-objective formulation of ER in which two main objectives are optimized via a Pareto-based Multi-Objective Evolutionary Algorithm: (1) the fitness and (2) the transferability. To evaluate this second objective, a simulation-to-reality disparity value is approximated for each controller. The proposed method is applied to the evolution of walking controllers for a real 8-DOF quadrupedal robot. It successfully finds efficient …
Total citations
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Scholar articles
S Koos, JB Mouret, S Doncieux - Proceedings of the 12th annual conference on Genetic …, 2010