Minimum-risk path finding by an adaptive amoebal network.
about
An active poroelastic model for mechanochemical patterns in protoplasmic droplets of Physarum polycephalumDeep evolutionary origins of neurobiology: Turning the essence of 'neural' upside-down.Current-reinforced random walks for constructing transport networksRandom network peristalsis in Physarum polycephalum organizes fluid flows across an individual.PhysarumSpreader: A New Bio-Inspired Methodology for Identifying Influential Spreaders in Complex NetworksThe role of noise in self-organized decision making by the true slime mold Physarum polycephalum.Slime mold uses an externalized spatial "memory" to navigate in complex environments.Collective behaviour and swarm intelligence in slime moulds.The foundations of plant intelligence.Slime mould processors, logic gates and sensors.Physarum machines imitating a Roman road network: the 3D approachFlow-induced channel formation in the cytoplasm of motile cells.Current reinforcement model reproduces center-in-center vein trajectory of Physarum polycephalum.Spontaneous mode switching in coupled oscillators competing for constant amounts of resources.Pruning to Increase Taylor Dispersion in Physarum polycephalum Networks.An improved Physarum polycephalum algorithm for the shortest path problem.MyxomycetesSelf-Oscillating Gels as Biomimetic Soft MaterialsAn intelligent physarum solver for supply chain network design under profit maximization and oligopolistic competitionPhysarum polycephalum assignment: a new attempt for fuzzy user equilibriumPhysarum solver: a bio-inspired method for sustainable supply chain network design problemA Physarum-inspired approach to supply chain network designAn anticipation mechanism for the shortest path problem based onPhysarum polycephalumA Biologically Inspired Optimization Algorithm for Solving Fuzzy Shortest Path Problems with Mixed Fuzzy Arc Lengths
P2860
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P2860
Minimum-risk path finding by an adaptive amoebal network.
description
2007 nî lūn-bûn
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2007年の論文
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2007年学术文章
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2007年学术文章
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2007年学术文章
@zh-cn
2007年学术文章
@zh-hans
2007年学术文章
@zh-my
2007年学术文章
@zh-sg
2007年學術文章
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2007年學術文章
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name
Minimum-risk path finding by an adaptive amoebal network.
@en
Minimum-risk path finding by an adaptive amoebal network.
@nl
type
label
Minimum-risk path finding by an adaptive amoebal network.
@en
Minimum-risk path finding by an adaptive amoebal network.
@nl
prefLabel
Minimum-risk path finding by an adaptive amoebal network.
@en
Minimum-risk path finding by an adaptive amoebal network.
@nl
P2093
P2860
P1476
Minimum-risk path finding by an adaptive amoebal network.
@en
P2093
Atsushi Tero
Makoto Iima
Ryo Kobayashi
Tetsu Saigusa
Tetsuo Ueda
Yasumasa Nishiura
P2860
P304
P356
10.1103/PHYSREVLETT.99.068104
P407
P577
2007-08-10T00:00:00Z