2017
DOI: 10.1016/j.neunet.2016.10.005
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A limit-cycle self-organizing map architecture for stable arm control

Abstract: Inspired by the oscillatory nature of cerebral cortex activity, we recently proposed and studied self-organizing maps (SOMs) based on limit cycle neural activity in an attempt to improve the information efficiency and robustness of conventional single-node, single-pattern representations. Here we explore for the first time the use of limit cycle SOMs to build a neural architecture that controls a robotic arm by solving inverse kinematics in reach-and-hold tasks. This multi-map architecture integrates open-loop… Show more

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Cited by 3 publications
(1 citation statement)
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References 44 publications
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“…SOM has some promising merits, for example, clustering high dimensional data, preserving the topological properties, and visualizing cluster structures in an easily understandable manner. SOM has been widely applied as a standard analytical tool in a wide range of applications, including fault diagnosis, crop evapotranspiration, clinical voice analysis, satellite images analysis, landslide susceptibility, motorcycle hazard detection and so forth [1,18,23].…”
Section: Methodology and Framework Of Researchmentioning
confidence: 99%
“…SOM has some promising merits, for example, clustering high dimensional data, preserving the topological properties, and visualizing cluster structures in an easily understandable manner. SOM has been widely applied as a standard analytical tool in a wide range of applications, including fault diagnosis, crop evapotranspiration, clinical voice analysis, satellite images analysis, landslide susceptibility, motorcycle hazard detection and so forth [1,18,23].…”
Section: Methodology and Framework Of Researchmentioning
confidence: 99%