Scalable TCP: Better Throughput in TCP Congestion Control Algorithms on MANETs
Journal Title: International Journal of Advanced Computer Science & Applications - Year 2011, Vol 0, Issue 0
Abstract
In the modern mobile communication world the congestion control algorithms role is vital to data transmission between mobile devices. It provides better and reliable communication capabilities in all kinds of networking environment. The wireless networking technology and the new kind of requirements in communication systems needs some extensions to the original design of TCP for on coming technology development. This work aims to analyze some TCP congestion control algorithms and their performance on Mobile Ad-hoc Networks (MANET). More specifically, we describe performance behavior of BIC, Vegas and Scalable TCP congestion control algorithms. The evaluation is simulated through Network Simulator (NS2) and the performance of these algorithms is analyzed in the term of efficient data transmission in wireless and mobile environment.
Authors and Affiliations
M. Jehan , Dr. G. Radhamani
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