Title :
Cognitive Engine Design for Link Adaptation: An Application to Multi-Antenna Systems
Author :
Volos, Haris I. ; Buehrer, R. Michael
Author_Institution :
Wireless at Virginia Tech, Blacksburg, VA, USA
fDate :
9/1/2010 12:00:00 AM
Abstract :
In this paper, we present a Cognitive Engine (CE) design for link adaptation and apply it to a system which can adapt its use of multiple antennas in addition to modulation and coding. Our design moves forward the state of the art in several ways while having a simple structure. Specifically, the CE only needs to observe the number of successes and failures associated with each set of channel conditions and communication method. From these two numbers, the CE can derive all of its functionality. First, it can estimate confidence intervals of the packet success rate (PSR) using the Beta distribution. A low computational approximation to the CDF of the Beta distribution is also presented. Second, the designed CE balances the tradeoff between learning and short-term performance (exploration {vs.} exploitation) by applying the Gittins index. Third, the CE learns the radio abilities independently of the operation objectives. Thus, if an objective changes, information regarding the radio´s abilities is not lost. Finally, prior knowledge such as capacity, BER curves, and basic communication principles are used to both initialize the CE´s knowledge and maximize the learning rate across different channel conditions. The proposed CE is demonstrated to have the ability to learn in a dynamic scenario and quickly approach maximal performance.
Keywords :
antenna arrays; cognitive radio; encoding; modulation; telecommunication channels; Gittins index; beta distribution; channel conditions; coding; cognitive engine design; link adaptation; modulation; multi-antenna systems; multiple antennas; packet success rate; Adaptive arrays; Artificial intelligence; Bit error rate; Chromium; Cognitive radio; Distributed computing; Engines; Humans; Modulation coding; Performance analysis; Bayes´ Rule; Cognitive Engine; Gittins index; beta distribution; cognitive radio; learning; link adaptation; optimization;
Journal_Title :
Wireless Communications, IEEE Transactions on
DOI :
10.1109/TWC.2010.070910.091651