DocumentCode :
46409
Title :
Localized Dimension Growth: A Convolutional Random Network Coding Approach to Managing Memory and Decoding Delay
Author :
Wangmei Guo ; Xiaomeng Shi ; Ning Cai ; Medard, Muriel
Author_Institution :
State Key Lab. of ISN, Xidian Univ., Xi´an, China
Volume :
61
Issue :
9
fYear :
2013
fDate :
Sep-13
Firstpage :
3894
Lastpage :
3905
Abstract :
We consider an Adaptive Random Convolutional Network Coding (ARCNC) algorithm to address the issue of field size in random network coding for multicast, and study its memory and decoding delay performances through both analysis and numerical simulations. ARCNC operates as a convolutional code, with the coefficients of local encoding kernels chosen randomly over a small finite field. The cardinality of local encoding kernels increases with time until the global encoding kernel matrices at the related sink nodes have full rank. ARCNC adapts to unknown network topologies without prior knowledge, by locally incrementing the dimensionality of the convolutional code. Because convolutional codes of different constraint lengths can coexist in different portions of the network, reductions in decoding delay and memory overheads can be achieved. We show that this method performs no worse than block linear network codes in terms of decodability, and can provide significant gains in terms of average decoding delay or memory in combination, shuttle and random geometric networks.
Keywords :
convolutional codes; decoding; delays; numerical analysis; random codes; adaptive random convolutional network coding; cardinality; convolutional codes; convolutional random network coding approach; decodability; decoding delay; decoding delay performances; global encoding kernel matrices; local encoding kernels; localized dimension growth; memory delay; memory overheads; multicast; network topologies; numerical simulations; random geometric networks; related sink nodes; Computer numerical control; Convolutional codes; Decoding; Delays; Encoding; Kernel; Network topology; Convolutional network codes; adaptive random convolutional network code; combination networks; random graphs; random linear network codes;
fLanguage :
English
Journal_Title :
Communications, IEEE Transactions on
Publisher :
ieee
ISSN :
0090-6778
Type :
jour
DOI :
10.1109/TCOMM.2013.071013.120857
Filename :
6560488
Link To Document :
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