Artificial Life 14: Proceedings of the Fourteenth International Conference on the Synthesis and Simulation of Living Systems 2014
DOI: 10.7551/978-0-262-32621-6-ch071
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Evolving Spiking Networks for Turbulence-Tolerant Quadrotor Control

Abstract: We investigate the automatic development of robust quadrotor neurocontrollers based on spiking neural networks. A self-adaptive evolutionary algorithm is used to generate highutility topology/weight combinations in the networks, and a simple synaptic plasticity mechanism provides some degree of in-trial adaptation. Incremental evolution gradually increases the severity of environmental conditions that the agent can successfully handle. Results compare the spiking networks to tuned Proportional/Integral/Derivat… Show more

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Cited by 15 publications
(8 citation statements)
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“…Implementations of spiking flight neurocontrollers include [27], where the authors propose a SNN for robust control of a simulated quadrotor in challenging wind conditions. They achieve a better performance in waypoint holding experiments compared with a hand-tuned PID and a multilayer perceptron network.…”
Section: A Micro-airship Designmentioning
confidence: 99%
“…Implementations of spiking flight neurocontrollers include [27], where the authors propose a SNN for robust control of a simulated quadrotor in challenging wind conditions. They achieve a better performance in waypoint holding experiments compared with a hand-tuned PID and a multilayer perceptron network.…”
Section: A Micro-airship Designmentioning
confidence: 99%
“…They were able to evolve good SNN controllers in a small number of generations in a wall-following scenario. Howard and Elfes ( 2014 ) presented a quadrotor neurocontroller that performed a hovering task in challenging wind conditions. With a feed-forward network taking the differences between current position and target position as input and pitch, roll and thrust as output, weights and topology were evolved to minimize the spatial error.…”
Section: Learning and Robotics Applicationsmentioning
confidence: 99%
“…Due to the potentially destructive nature of stochastically optimising controllers for ying robots, simulation is popular [4,6,19,27,28]. Simulation also allows evaluation to occur faster than realtime, however the faster the simulation is, the more abstracted the underlying model of reality tends to be.…”
Section: Er With Flying Robotsmentioning
confidence: 99%
“…Simulation (e.g. [19]) is a popular choice as it is parallelisable, and, depending on model complexity, may run many times faster than real-time. Simulation su ers from the 'reality gap' [22], whereby the necessarily-abstracted physical laws present in the simulation inaccurately represent real-world conditions, resulting in performance degredation when the former is transferred to the la er.…”
Section: Introductionmentioning
confidence: 99%