Nash Bargaining Based Bandwidth Allocation In Cognitive Radio For Delay Critical Applications
Journal: ICTACT Journal on Communication Technology (IJCT) (Vol.6, No. 4)Publication Date: 2016-12-01
Authors : Kalyani Kulkarni; Bharat S. Chaudhari;
Page : 1167-1172
Keywords : Resource Allocation; Cognitive Networks; Game Theory; Utility Function; Video;
Abstract
In order to effectively regulate the existing resources, dynamic spectrum access in cognitive radio needs to adopt the effective resource allocation strategies. Multimedia applications require large bandwidth and have to meet the delay constraints while maintaining the data quality. Game theory is emerging as an effective analytical tool for the analysis of available resources and its allocation. This paper addresses resource allocation schemes employing bargaining game model for Multi-carrier CDMA based Cognitive Radio. Resource allocation scheme is designed for transmission of video over cognitive radio networks and aim to perform bandwidth allocation for different cognitive users. Utility function based on bargaining model is proposed. Primary user utility function includes the pricing factor and an upbeat factor that can be adjusted by observing the delay constraints of the video. Allocated bandwidth to the secondary user can be adjusted by changing the upbeat factor. Throughput in the proposed scheme is increased by 2% as compared to other reported pricing based resource allocation schemes. The edge PSNR of reconstructed video obtained as 32.6dB resulting to optimum decoding of the video at the receiver. The study also shows upbeat factor can be used to enhanced capacity of the network.
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