Marshall-Olkin Copula下的静态网络可靠性估计

Static Network Reliability Estimation under the Marshall-Olkin Copula

ACM Transactions on Modeling and Computer Simulation · 2016
被引 18
ABS 3

中文导读

研究在Marshall-Olkin Copula相依失效模型下,用改进的排列蒙特卡洛、芜菁法和广义分裂法精确估计极小的网络不可靠性,比较了不同方法在大网络下的表现。

Abstract

In a static network reliability model, one typically assumes that the failures of the components of the network are independent. This simplifying assumption makes it possible to estimate the network reliability efficiently via specialized Monte Carlo algorithms. Hence, a natural question to consider is whether this independence assumption can be relaxed while still attaining an elegant and tractable model that permits an efficient Monte Carlo algorithm for unreliability estimation. In this article, we provide one possible answer by considering a static network reliability model with dependent link failures, based on a Marshall-Olkin copula, which models the dependence via shocks that take down subsets of components at exponential times, and propose a collection of adapted versions of permutation Monte Carlo (PMC, a conditional Monte Carlo method), its refinement called the turnip method , and generalized splitting (GS) methods to estimate very small unreliabilities accurately under this model. The PMC and turnip estimators have bounded relative error when the network topology is fixed while the link failure probabilities converge to 0, whereas GS does not have this property. But when the size of the network (or the number of shocks) increases, PMC and turnip eventually fail, whereas GS works nicely (empirically) for very large networks, with over 5,000 shocks in our examples.

网络可靠性蒙特卡洛方法相依失效Copula模型运筹学