4.7 Article

Environmental Adaptation of Robot Morphology and Control Through Real-World Evolution

Journal

EVOLUTIONARY COMPUTATION
Volume 29, Issue 4, Pages 441-461

Publisher

MIT PRESS
DOI: 10.1162/evco_a_00291

Keywords

Evolutionary robotics; legged locomotion; evolutionary computation

Funding

  1. Research Council of Norway [240862]
  2. Research Council of Norway under Centres of Excellence scheme [262762]

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Evolutionary robotics is applied to optimize the control and body of a robot for adaptation to various physical environments, with a focus on real-world evaluations. The study shows that morphology and control parameters significantly vary between different environments, and the approach demonstrates the ability to transfer to unseen terrains. The research highlights the importance of complex interactions among control, body, and environment in enabling robots to efficiently operate in diverse conditions.
Robots operating in the real world will experience a range of different environments and tasks. It is essential for the robot to have the ability to adapt to its surroundings to work efficiently in changing conditions. Evolutionary robotics aims to solve this by optimizing both the control and body (morphology) of a robot, allowing adaptation to internal, as well as external factors. Most work in this field has been done in physics simulators, which are relatively simple and not able to replicate the richness of interactions found in the real world. Solutions that rely on the complex interplay among control, body, and environment are therefore rarely found. In this article, we rely solely on real-world evaluations and apply evolutionary search to yield combinations of morphology and control for our mechanically self-reconfiguring quadruped robot. We evolve solutions on two distinct physical surfaces and analyze the results in terms of both control and morphology. We then transition to two previously unseen surfaces to demonstrate the generality of our method. We find that the evolutionary search finds high-performing and diverse morphology-controller configurations by adapting both control and body to the different properties of the physical environments. We additionally find that morphology and control vary with statistical significance between the environments. Moreover, we observe that our method allows for morphology and control parameters to transfer to previously unseen terrains, demonstrating the generality of our approach.

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