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http://dx.doi.org/10.4218/etrij.2018-0446

Adaptive algorithm for optimal real-time pricing in cognitive radio enabled smart grid network  

Das, Deepa (Department of Electrical Engineering, Government College of Engineering)
Rout, Deepak Kumar (School of Electronics Engineering, KIIT University)
Publication Information
ETRI Journal / v.42, no.4, 2020 , pp. 585-595 More about this Journal
Abstract
Integration of multiple communication technologies in a smart grid (SG) enables employing cognitive radio (CR) technology for improving reliability and security with low latency by adaptively and effectively allocating spectral resources. The versatile features of the CR enable the smart meter to select either the unlicensed or the licensed band for transmitting data to the utility company, thus reducing communication outage. Demand response management is regarded as the control unit of the SG that balances the load by regulating the real-time price that benefits both the utility company and consumers. In this study, joint allocation of the transmission power to the smart meter and consumer's demand is formulated as a two stage multi-armed bandit game in which the players select their optimal strategies noncooperatively without having any prior information about the media. Furthermore, based on historical rewards of the player, a real-time pricing adaptation method is proposed. The latter is validated through numerical results.
Keywords
cognitive radio; demand response management; real-time pricing; smart grid; two-stage multi-armed bandit game;
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