Key Factors Influencing Network Resilience in Dynamical Networks

Authors

  • Xian Yan

DOI:

https://doi.org/10.54097/fcis.v3i3.8577

Keywords:

Network Resilience, Dynamic Network, Spontaneous Recovery

Abstract

There has been much recent research focusing on the resilience of networks, providing theoretical insights into the effective response of real-world systems systems to disasters. However, few studies have analyzed the factors that affect the resilience of networks. And the network operation process varies greatly so that the dynamic behavior of the network is a factor that has to be considered. To bridge these gaps, we analyze the factors affecting dynamic network resilience in terms of network dynamics. There are two main influencing factors: differentiation of failure probability, differentiation of impact. We build a generic resilience model for the network and validate these influencing factors by simulating them in different networks. By summarizing these factors, we point out constructive strategies. These strategies can help dynamic networks enhance network resilience, which is an important criterion for reducing network failures in real-world systems.

Downloads

Download data is not yet available.

References

C. M. Schneider, A. E. A. Moreira, J. E. S. Andrade, S. Havlin, H. J. Herrmann. Mitigation of malicious attacks on networks. Proceedings of the National Academy of Sciences. 2011, 108(10): 3838-3841.

S. Pilosof, M. A. Porter, M. Pascual, S. K E Fi. The multilayer nature of ecological networks. Nature Ecology & Evolution. 2017, 1(4): 1-9.

R. Cohen, K. Erez, D. Ben-Avraham, S. Havlin. Breakdown of the internet under intentional attack. Physical Review Letters. 2001, 86(16): 3682.

Y. L. C. G. Chong Peng. Evaluation and optimization strategy of city network structural resilience in the middle reaches of Yangtze River. GEOGRAPHICAL RESEARCH. 2018, 37(6): 1193.

J. Gao, X. Liu, D. Li, S. Havlin. Recent progress on the resilience of complex networks. Energies. 2015, 8(10): 12187-12210.

T. Verma, F. Russmann, N. A. Ara U Jo, J. Nagler, H. J. Herrmann. Emergence of core--peripheries in networks. Nature communications. 2016, 7(1): 1-7.

M. Granovetter. Threshold models of collective behavior. American journal of sociology. 1978, 83(6): 1420-1443.

T. Ezaki, R. Nishi, K. Nishinari. Taming macroscopic jamming in transportation networks. Journal of Statistical Mechanics: Theory and Experiment. 2015, 2015(6): P6013.

T. D. Hernandez, T. Schallert. Seizures and recovery from experimental brain damage. Experimental Neurology. 1988, 102 (3): 318-324.

A. Majdandzic, B. Podobnik, S. V. Buldyrev, D. Y. Kenett, S. Havlin, H. E. Stanley. Spontaneous recovery in dynamical networks. Nature Physics. 2014, 10(1): 34-38.

B. Podobnik, A. Majdandzic, C. Curme, Z. Qiao, W. Zhou, H. E. Stanley, et al. Network risk and forecasting power in phase-flipping dynamical networks. Physical Review E. 2014, 89(4): 42807.

Downloads

Published

17-05-2023

Issue

Section

Articles

How to Cite

Yan, X. (2023). Key Factors Influencing Network Resilience in Dynamical Networks. Frontiers in Computing and Intelligent Systems, 3(3), 99-101. https://doi.org/10.54097/fcis.v3i3.8577