Abstract
This paper studies the auction-driven dynamic spectrum access in cognitive radio networks with heterogeneous secondary users, who have different risk attitudes. First, a game theoretic framework is established for auction-driven dynamic spectrum access in cognitive radio networks. The utility functions and bidding strategies of heterogeneous secondary users are defined, and the parameterized auction mechanisms of primary user are also introduced. Then, we formulate the auction-driven dynamic spectrum access problem as a finite discrete game with a mixed- or pure-strategy Nash equilibrium solution. We study the existence and uniqueness properties of the pure-strategy Nash equilibrium in the defined game. Next, we propose a distributed learning automata algorithm (DLA) to attain the Nash equilibrium of the defined game with limited feedback. The adaptive mechanism design is realized in the updating procedure of our DLA algorithm. We further prove that our DLA algorithm converges to a Nash equilibrium of the defined game. Finally, simulation results show that our DLA algorithm is efficient and outperforms the dynamic spectrum access schemes with fixed auction mechanism.
Highlights
Cognitive radio aims to improve the utilization of radio electromagnetic spectrum, which is scarce but often underutilized [1]
Secondary users usually have different risk attitudes in the auction, e.g., some secondary users are with high channel gain or urgent message and may tend to be risk-seeking, some secondary users are with non-urgent messages or low channel gain and
For the cognitive radio networks with heterogeneous secondary users, it is of profound importance to study the auction-driven dynamic spectrum access with adaptive auction mechanism design
Summary
Cognitive radio aims to improve the utilization of radio electromagnetic spectrum, which is scarce but often underutilized [1]. For the cognitive radio networks with heterogeneous (multi-type) secondary users, it is of profound importance to study the auction-driven dynamic spectrum access with adaptive auction mechanism design. Whereas in [4] evolutionary game theory is applied to study the auction mechanism design, in our proposed scheme, distributed learning automata are applied to auction mechanism design in cognitive radio networks and the dynamic spectrum access is realized jointly for secondary users. The aim of this paper is to address the following questions: how the auctioneer should design the auction mechanism adaptively to maximize the utility and how the secondary users should choose their best bidding strategies with limited or local information For this purpose, we formulate the auction-driven spectrum access problem as a discrete game and define appropriate utility functions for both the secondary users and the primary user.
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More From: EURASIP Journal on Wireless Communications and Networking
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