TL;DR
This paper investigates how evolving environments using POET can enhance the diversity and robustness of co-optimised robot morphologies and controllers, reducing premature convergence compared to handcrafted curricula.
Contribution
It demonstrates that open-ended environment evolution with POET increases morphological diversity and exploration in robot co-optimisation tasks.
Findings
POET-generated environments promote greater morphological diversity.
Agents in POET environments achieve higher robustness.
Open-ended environments reduce premature convergence.
Abstract
Designing robots by hand can be costly and time consuming, especially if the robots have to be created with novel materials, or be robust to internal or external changes. In order to create robots automatically, without the need for human intervention, it is necessary to optimise both the behaviour and the body design of the robot. However, when co-optimising the morphology and controller of a locomoting agent the morphology tends to converge prematurely, reaching a local optimum. Approaches such as explicit protection of morphological innovation have been used to reduce this problem, but it might also be possible to increase exploration of morphologies using a more indirect approach. We explore how changing the environment, where the agent locomotes, affects the convergence of morphologies. The agents' morphologies and controllers are co-optimised, while the environments the agents…
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