Cognitive radio networks present challenges at many levels of design including configuration, control, and crosslayer optimization. In this paper, we focus primarily on dataflow representations to enable flexibility and reconfigurability in many of the baseband algorithms. Dataflow modeling will be important to provide a layer of abstraction and will be applied to generate flexible baseband representations for cognitive radio testbeds, including the Rice WARP platform. As RF frequency agility and reconfiguration for carrier aggregation are important goals for 4G LTE Advanced systems, we also focus on dataflow analysis for digital pre-distortion algorithms. A new design method called parameterized multidimensional design hierarchy mapping(PM...
Cognitive radios offer a broad range of opportunities for improving the use and utilization of radio...
Abstract Deep learning models usually assume that training dataset and target data have the same di...
The static conventional network architecture is ill-suited to the growing management complexity and ...
Abstract—Cognitive radio networks present challenges at many levels of design including configuratio...
Abstract Cognitive radio networks present challenges at many levels of design, including configurati...
From the issue entitled "Special Issue on Embedded Signal Processing Circuits and Systems for Cognit...
Radio equipments' design is getting more and more complex. The reason is that a radio equipment is n...
Abstract — In wireless communication systems, advances in computer architecture and processor techno...
Dynamic Spectrum Access (DSA) and routing in Cognitive Radio Networks (CRNs) present challenging ope...
The cognitive radio (CR) paradigm for designing next‐generation wireless communications systems is b...
International audienceFourth-generation communications systems call for a high amount of computation...
The wireless domain is ever expanding with new technologies and protocols emerging for all possible ...
Abstract-- Cognitive Radio (CR) is a innovative technology that aims for significant improvements in...
Abstract—Future wireless systems are evolving towards a broadband and open architecture for efficien...
Cognitive radios offer a broad range of opportunities for improving the use and utilization of radio...
Abstract Deep learning models usually assume that training dataset and target data have the same di...
The static conventional network architecture is ill-suited to the growing management complexity and ...
Abstract—Cognitive radio networks present challenges at many levels of design including configuratio...
Abstract Cognitive radio networks present challenges at many levels of design, including configurati...
From the issue entitled "Special Issue on Embedded Signal Processing Circuits and Systems for Cognit...
Radio equipments' design is getting more and more complex. The reason is that a radio equipment is n...
Abstract — In wireless communication systems, advances in computer architecture and processor techno...
Dynamic Spectrum Access (DSA) and routing in Cognitive Radio Networks (CRNs) present challenging ope...
The cognitive radio (CR) paradigm for designing next‐generation wireless communications systems is b...
International audienceFourth-generation communications systems call for a high amount of computation...
The wireless domain is ever expanding with new technologies and protocols emerging for all possible ...
Abstract-- Cognitive Radio (CR) is a innovative technology that aims for significant improvements in...
Abstract—Future wireless systems are evolving towards a broadband and open architecture for efficien...
Cognitive radios offer a broad range of opportunities for improving the use and utilization of radio...
Abstract Deep learning models usually assume that training dataset and target data have the same di...
The static conventional network architecture is ill-suited to the growing management complexity and ...