Diameter constrained reliability: Complexity, distinguished topologies and asymptotic behavior

Let G=V,E be a simple graph with |V|=n vertices and |E|=m edges, a subset Ki¾?V of terminals, a vector p=p1,',pm∈[0,1]m and a positive integer d, called the diameter. We assume vertices are perfect but edges fail stochastically and independently, with probabilities qe=1-pe. The diameter constrained reliability DCR is the probability that the terminals of the resulting subgraph remain connected by paths composed of d or fewer edges. This number is denoted by RK,Gdp. The general DCR computation problem belongs to the class of NP-hard problems. The contributions of this article are threefold. First, the computational complexity of DCR-subproblems is discussed in terms of the number of terminal vertices k=|K| and the diameter d. Either when d=1 or when d=2 and k is fixed, the DCR problem belongs to the class P of polynomial-time solvable problems. The DCR problem becomes NP-hard when ki¾?2 is a fixed input parameter and di¾?3. The cases where k=n or k is a free input parameter and di¾?2 is fixed have not been studied in the prior literature. Here, the NP-hardness of both cases is established. Second, we categorize certain classes of graphs that allow the DCR computation to be performed in polynomial time. We include graphs with bounded corank, graphs with bounded genus, planar graphs, and in particular, Monma graphs, which are relevant in robust network design. Third, we introduce the problem of analyzing the asymptotic properties of the DCR measure in networks that grow infinitely following given probabilistic rules. We introduce basic results for Gilbert's random graph model. © 2015 Wiley Periodicals, Inc. NETWORKS, Vol. 664, 296-305 2015

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