Title :
Reinforcement learning-based neural network congestion controller for ATM networks
Author :
Tarraf, Ahmed A. ; Habib, Ibrahim W. ; Saadawi, Tarek N.
Author_Institution :
Dept. of Electr. Eng., City Coll. of New York, NY, USA
Abstract :
This paper presents a new approach to the problem of congestion control arising at the user-to-network interface (UNI) of the ATM-based broadband integrated services digital networks (BISDN). Our approach employs an adaptive rate-based feedback control algorithm using reinforcement learning neural networks (NNs). The reinforcement learning NN controller provides an adaptive optimal control solution. This is achieved via the formulation of a performance measure function (cost function) that is used to, adaptively, tune the weights of the NN. The cost function is defined in terms of two main objectives: (1) to minimize the cell loss rate (CLR), i.e., control congestion and (2) to preserve the quality of the voice/video traffic via maintaining the original coding rate of the multimedia sources. The results show that the NN control system is adaptive in the sense that it is applicable to any type of multimedia traffic. Also, the control signal is optimal in the sense that it maximizes the performance of the system which is defined in terms of its performance measure function. Hence, our novel approach is very effective in controlling congestion of the multimedia traffic in ATM networks
Keywords :
B-ISDN; adaptive control; asynchronous transfer mode; learning (artificial intelligence); multimedia communication; network interfaces; neural nets; switching networks; telecommunication computing; telecommunication congestion control; telecommunication traffic; user interfaces; ATM networks; BISDN; adaptive control system; adaptive optimal control; adaptive rate-based feedback control algorithm; broadband integrated services digital networks; cell loss rate; coding rate; congestion control; cost function; multimedia sources; multimedia traffic; neural network congestion controller; performance measure function; reinforcement learning; reinforcement learning neural networks; system performance; user network interface; voice/video traffic; Adaptive control; B-ISDN; Communication system traffic control; Control systems; Cost function; Feedback control; Learning; Neural networks; Optimal control; Programmable control;
Conference_Titel :
Military Communications Conference, 1995. MILCOM '95, Conference Record, IEEE
Conference_Location :
San Diego, CA
Print_ISBN :
0-7803-2489-7
DOI :
10.1109/MILCOM.1995.483550