Transmission rate prediction for Cognitive Radio using Adaptive Neural Fuzzy Inference System

@article{Hiremath2010TransmissionRP,
  title={Transmission rate prediction for Cognitive Radio using Adaptive Neural Fuzzy Inference System},
  author={Shrishail M. Hiremath and Sarat Kumar Patra},
  journal={2010 5th International Conference on Industrial and Information Systems},
  year={2010},
  pages={92-97}
}
Advances in applications demanding high data rate wireless applications and existing wireless system upgrading has lead to scarcity in spectrum. Unlicensed new technologies like Digital video broadcast (DVB), Digital audio broadcast (DAB), internet, WiMAX etc. launched recently are reaching thousands of customers at rapid speed. Most of the primary spectrum is assigned, so it is becoming very difficult to find spectrum for either new services or expanding existing infrastructure. Present… CONTINUE READING

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