Title :
Bio-Inspired Decentralized Radio Access Based on Swarming Mechanisms Over Adaptive Networks
Author :
Di Lorenzo, Paolo ; Barbarossa, S. ; Sayed, Ali H.
Author_Institution :
Dept. of Inf., Electron., & Telecommun. (DIET), Sapienza Univ. of Rome, Rome, Italy
Abstract :
The goal of this paper is to study the learning abilities of adaptive networks in the context of cognitive radio networks and to investigate how well they assist in allocating power and communications resources in the frequency domain. The allocation mechanism is based on a social foraging swarm model that lets every node allocate its resources (power/bits) in the frequency regions where the interference is at a minimum while avoiding collisions with other nodes. We employ adaptive diffusion techniques to estimate the interference profile in a cooperative manner and to guide the motion of the swarm individuals in the resource domain. A mean square performance analysis of the proposed strategy is provided and confirmed by simulation results. The proposed approach endows the cognitive network with powerful learning and adaptation capabilities, allowing fast reaction to dynamic changes in the spectrum. Numerical examples show how cooperative spectrum sensing remarkably improves the performance of the resource allocation technique based on swarming.
Keywords :
cellular radio; cognitive radio; cooperative communication; mean square error methods; radio access networks; radio spectrum management; radiofrequency interference; resource allocation; adaptation capabilities; adaptive diffusion techniques; adaptive networks; bioinspired decentralized radio access; cognitive radio networks; collision avoidance; communication resource allocation mechanism; cooperative spectrum sensing; femtocell networks; frequency regions; interference profile estimation; learning abilities; mean square performance analysis; power resource allocation mechanism; social foraging swarm model; swarming mechanisms; Diffusion adaptation; distributed resource allocation; distributed spectrum estimation; self-organization; swarming;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2013.2258342