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Amoeba-based Chaotic Neurocomputing: Combinatorial Optimization by Coupled Biological Oscillators
被引:0
|作者:
Masashi Aono
Yoshito Hirata
Masahiko Hara
Kazuyuki Aihara
机构:
[1] Advanced Science Institute,Institute of Industrial Science
[2] RIKEN,Institute of Industrial Science, ERATO Aihara Complexity Modelling Project, JST
[3] The University of Tokyo,undefined
[4] The University of Tokyo,undefined
来源:
关键词:
Multilevel Self-Organization;
Coupled Oscillators;
Chaotic Neural Network;
Chaotic Itinerancy;
Self-Disciplined Computing;
D O I:
暂无
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学科分类号:
摘要:
We demonstrate a neurocomputing system incorporating an amoeboid unicellular organism, the true slime mold Physarum, known to exhibit rich spatiotemporal oscillatory behavior and sophisticated computational capabilities. Introducing optical feedback applied according to a recurrent neural network model, we induce that the amoeba’s photosensitive branches grow or degenerate in a network-patterned chamber in search of an optimal solution to the traveling salesman problem (TSP), where the solution corresponds to the amoeba’s stably relaxed configuration (shape), in which its body area is maximized while the risk of being illuminated is minimized.Our system is capable of reaching the optimal solution of the four-city TSP with a high probability. Moreover, our system can find more than one solution, because the amoeba can coordinate its branches’ oscillatory movements to perform transitional behavior among multiple stable configurations by spontaneously switching between the stabilizing and destabilizing modes. We show that the optimization capability is attributable to the amoeba’s fluctuating oscillatory movements. Applying several surrogate data analyses, we present results suggesting that the amoeba can be characterized as a set of coupled chaotic oscillators.
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页码:129 / 157
页数:28
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