Decision making policy for RF energy harvesting enabled cognitive radios in decentralized wireless networks
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Honggang Zhang | Jacques Palicot | Christophe Moy | Sumit Jagdish Darak | Honggang Zhang | J. Palicot | S. Darak | C. Moy
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