2003
DOI: 10.1016/s1388-3437(03)80183-x
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Experience in measuring internet backbone traffic variability: Models metrics, measurements and meaning

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Cited by 99 publications
(129 citation statements)
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“…The two largest annotated networks in this database are beyond the computational capabilities of our mixed-integer optimization formulation. To generate a synthetic traffic matrix from the graphs provided by Rocketfuel, we use a gravity model [22] in a manner similar to Applegate and Cohen [13] where the inferred link weights are used to calculate approximate bandwidths of each link at a node. These bandwidths are used in the gravity model to derive the proportion of traffic for which each node (PoP) is responsible and therefore how much traffic it sends to all the other nodes.…”
Section: Test Network and Traffic Matricesmentioning
confidence: 99%
“…The two largest annotated networks in this database are beyond the computational capabilities of our mixed-integer optimization formulation. To generate a synthetic traffic matrix from the graphs provided by Rocketfuel, we use a gravity model [22] in a manner similar to Applegate and Cohen [13] where the inferred link weights are used to calculate approximate bandwidths of each link at a node. These bandwidths are used in the gravity model to derive the proportion of traffic for which each node (PoP) is responsible and therefore how much traffic it sends to all the other nodes.…”
Section: Test Network and Traffic Matricesmentioning
confidence: 99%
“…For GÉANT, its traffic matrices were collected on May 5th, 2005 for every 15 minutes; we obtained both the topology and traffic matrices from the authors of [11]. For Sprint and AT&T, we randomly generate a traffic matrix using the gravity model [12], and scaled the traffic to obtain 40 different traffic matrices. Simulation runs were carried out on a Linux PC with 3.07GHz CPU and 8GB RAM.…”
Section: A Experiments Setupmentioning
confidence: 99%
“…For Abilene, we select a subclass of the online available matrices [16], which are measured on March 1st, 2004. The traffic matrix for Cernet2 is generated by the gravity model [15] based on aggregated link load collected from January 10th to 16th, 2010. We generate a sparse traffic matrix for Random through gravity model to achieve a light traffic load scheme.…”
Section: Methodsmentioning
confidence: 99%