4.7 Article

Probabilistic Shared Risk Link Groups Modeling Correlated Resource Failures Caused by Disasters

Journal

IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS
Volume 39, Issue 9, Pages 2672-2687

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSAC.2021.3064652

Keywords

Computational modeling; Stochastic processes; Hazards; Standards; Probabilistic logic; Correlation; Data structures; Disaster resilience; network failure modeling; probabilistic shared risk link groups; PSRLG enumeration; seismic hazard; Voronoi diagram

Funding

  1. COST Action [CA15127]
  2. Hungarian Scientific Research Fund [OTKA K115288, FK17 123957, KH18 129589, K18 128062, K20 134604, K17 124171]
  3. TKP2020, Institutional Excellence Program of the National Research Development and Innovation Office in the field of Artificial Intelligence
  4. Federmann Cyber Security Research Center at the Hebrew University
  5. Israel National Cyber Directorate in the Prime Minister's Office
  6. MTA Bolyai Janos Research Grant
  7. Bolyai+ Research Grant [UNKP-20-4]
  8. NKFIH/OTKA [K115288]
  9. Hungarian Ministry of Innovation
  10. National Research, Development and Innovation Office

Ask authors/readers for more resources

The paper introduces a stochastic model for estimating hazards to an optical backbone network and understanding the complex correlation between possible link failures. It also presents standard data structures and a pre-computation process for efficient computation of cumulative failure probabilities of network elements.
To evaluate the expected availability of a backbone network service, the administrator should consider all possible failure scenarios under the specific service availability model stipulated in the corresponding service-level agreement. Given the increase in natural disasters and malicious attacks with geographically extensive impact, considering only independent single component failures is often insufficient. This paper builds a stochastic model of geographically correlated link failures caused by disasters to estimate the hazards an optical backbone network may be prone to and to understand the complex correlation between possible link failures. We first consider link failures only and later extend our model also to capture node failures. With such a model, one can quickly extract essential information such as the probability of an arbitrary set of network resources to fail simultaneously, the probability of two nodes to be disconnected, the probability of a path to survive a disaster. Furthermore, we introduce standard data structures and a unified terminology on Probabilistic Shared Risk Link Groups (PSRLGs), along with a pre-computation process, which represents the failure probability of a set of resources succinctly. In particular, we generate a quasilinear-sized data structure in polynomial time, which allows the efficient computation of the cumulative failure probability of any set of network elements. Our evaluation is based on carefully pre-processed seismic hazard data matched to real-world optical backbone network topologies.

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