Network tomography is the study of a network's internal characteristics using information derived from end point data. The word tomography is used to link the field, in concept, to other processes that infer the internal characteristics of an object from external observation, as is done in MRI or PET scanning (even though the term tomography strictly refers to imaging by slicing). The field is a recent development in electrical engineering and computer science, dating from 1996.[1] Network tomography seeks to map the path data takes through the Internet by examining information from “edge nodes,” the computers in which the data are originated and from which they are requested.

The field is useful for engineers attempting to develop more efficient computer networks. Data derived from network tomography studies can be used to increase quality of service by limiting link packet loss and increasing routing optimization.

Recent developments edit

There have been many published papers and tools in the area of network tomography, which aim to monitor the health of various links in a network in real-time. These can be classified into loss and delay tomography.[2][3]

Loss tomography edit

Loss tomography aims to find “lossy” links in a network by sending active “probes” from various vantage points in the network or the Internet.[4][5]

Delay tomography edit

The area of delay tomography has also attracted attention in the recent past. It aims to find link delays using end-to-end probes sent from vantage points. This can potentially help isolate links with large queueing delays caused by congestion.[6]

More applications edit

Network tomography may be able to infer network topology using end-to-end probes. Topology discovery is a tradeoff between accuracy vs. overhead. With network tomography, the emphasis is to achieve as accurate a picture of the network with minimal overhead. In comparison, other network topology discovery techniques using SNMP or route analytics aim for greater accuracy with less emphasis on overhead reduction.

Network tomography may find links which are shared by multiple paths (and can thus become potential bottlenecks in the future).[7]

Network Tomography may improve the control of a smart grid[8]

See also edit

References edit

  1. ^ Vardi, Y. (1996). "Network Tomography: estimating source-destination traffic intensities from link data". Journal of the American Statistical Association. 91 (433): 365–377. doi:10.2307/2291416. JSTOR 2291416.
  2. ^ Castro, R.; Coates, Mark; Liang, Gang; Nowak, Robert; Yu, Bin (2004). "Network Tomography: Recent Developments". Statistical Science. 19 (3): 499–517. CiteSeerX 10.1.1.64.8631. doi:10.1214/088342304000000422. S2CID 12191072.
  3. ^ Coates, M.; Hero Iii, A.O.; Nowak, R.; Yu, Bin (2002). "Internet tomography" (PDF). IEEE Signal Processing Magazine. 19 (3): 47–65. Bibcode:2002ISPM...19...47C. doi:10.1109/79.998081. S2CID 61796409. Archived from the original (PDF) on 2019-12-29.
  4. ^ Coates, M. (2000). "Network loss inference using unicast end-to-end measurement". Proc. ITC Seminar on IP Traffic, Measurement, and Modeling. 28.
  5. ^ Duffield, N. (2001). "Inferring link loss using striped unicast probes". IEEE Infocom. 2: 915–923.
  6. ^ Tsang, Y.; Coates, M.; Nowak, R.D. (2003). "Network Delay Tomography". IEEE Trans. Signal Process. 51 (8): 2125–2136. Bibcode:2003ITSP...51.2125T. CiteSeerX 10.1.1.72.2541. doi:10.1109/TSP.2003.814520.
  7. ^ Rubenstein, D.; Kurose, J.; Towsley, D. (2002). "Detecting shared congestion of flows via end-to-end measurement" (PDF). IEEE/ACM Transactions on Networking. 10 (3): 381–395. doi:10.1109/TNET.2002.1012369. S2CID 6954725.
  8. ^ Keshav, S.; Rosenberg, C. (2010). "How internet concepts and technologies can help green and smarten the electrical grid". Proceedings of the first ACM SIGCOMM workshop on Green networking. pp. 35–40. doi:10.1145/1851290.1851298. ISBN 9781450301961. S2CID 11881490.{{cite book}}: CS1 maint: date and year (link)