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Abstract
In this paper, realizing the distributed structure
of computer networks, the random behaviors
in such networks, and the time limitations for control algorithms, the concepts
of reinforcement learning and multi-agent systems are invoked for traffic
shaping and buffer allocation between various ports of a router. In fact, a new
traffic shaper based on token bucket has been developed. In this traffic
shaper, instead of a static token production rate, a dynamic and intelligent
rate based on the network condition is specified. This results in a reasonable
utilization of bandwidth while preventing traffic overload in other part of the
network. Besides, based on the stated techniques a new method for dynamic
buffer allocation in the ports of a router is developed. This leads to a
reduction in the total number of packet dropping in the whole network.
Simulation results show the effectiveness of the proposed techniques.