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Get Free AccessWe investigate the cascading failure on weighted complex networks by adopting a local weighted flow redistribution rule, where the weight of an edge is (k(i)k(j))theta with k(i) and k(j) being the degrees of the nodes connected by the edge. Assume that a failed edge leads only to a redistribution of the flow passing through it to its neighboring edges. We found that the weighted complex network reaches the strongest robustness level when the weight parameter theta=1, where the robustness is quantified by a transition from normal state to collapse. We determined that this is a universal phenomenon for all typical network models, such as small-world and scale-free networks. We then confirm by theoretical predictions this universal robustness characteristic observed in simulations. We furthermore explore the statistical characteristics of the avalanche size of a network, thus obtaining a power-law avalanche size distribution together with a tunable exponent by varying theta. Our findings have great generality for characterizing cascading-failure-induced disasters in nature.
Wen-Xu Wang, Guanrong Chen (2008). Universal robustness characteristic of weighted networks against cascading failure. Physical Review E, 77(2), DOI: 10.1103/physreve.77.026101.
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Type
Article
Year
2008
Authors
2
Datasets
0
Total Files
0
Language
English
Journal
Physical Review E
DOI
10.1103/physreve.77.026101
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