Evolving neural controllers for collective robotic inspection

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Abstract

In this paper, an automatic synthesis methodology based on evolutionary computation is applied to evolve neural controllers for a homogeneous team of miniature autonomous mobile robots. Both feed-forward and recurrent neural networks can be evolved with fixed or variable network topologies. The efficacy of the evolutionary methodology is demonstrated in the framework of a realistic case study on collective robotic inspection of regular structures, where the robots are only equipped with limited local on-board sensing and actuating capabilities. The neural controller solutions generated during evolutions are evaluated in a sensorbased embodied simulation environment with realistic noise. It is shown that the evolutionary algorithms are able to successfully synthesize a variety of novel neural controllers that could achieve performances comparable to a carefully hand-tuned, rule-based controller in terms of both average performance and robustness to noise. © 2006 Springer.

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Zhang, Y., Antonsson, E. K., & Martinoli, A. (2006). Evolving neural controllers for collective robotic inspection. Advances in Soft Computing, 34, 717–729. https://doi.org/10.1007/3-540-31662-0_55

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