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A hox gene inspired generative approach to evolving robot morphology

Eivind Samuelsen, Kyrre Glette, Jim Tørresen

Year
2013
Citations
12

Abstract

This paper proposes an approach to representing robot morphology and control, using a two-level description linked to two different physical axes of development. The bioinspired encoding produces robots with animal-like bilateral limbed morphology with co-evolved control parameters using a central pattern generator-based modular artificial neural network. Experiments are performed on optimizing a simple simulated locomotion problem, using multi-objective evolution with two secondary objectives. The results show that the representation is capable of producing a variety of viable designs even with a relatively restricted set of parameters and a very simple control system. Furthermore, the utility of a cumulative encoding over a non-cumulative approach is demonstrated. We also show that the representation is viable for real-life reproduction by automatically generating CAD files, 3D printing the limbs, and attaching off-the-shelf servomotors.

Keywords

Encoding (memory)Computer scienceModular designRobotRepresentation (politics)Set (abstract data type)Artificial intelligenceCentral pattern generatorEvolutionary roboticsServomotor

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