Abstract
This paper examines the optimal spectrum competing strategy for a virtual network operator in cognitive cellular networks with energy-harvesting base stations. In the scenario for this study, multiple cognitive virtual network operators (CVNOs) obtain spectrum resources from a mobile network operator via spectrum sensing and leasing in order to provide data services to their subscribers. Compared to traditional spectrum leasing via long-term contract, spectrum acquired by sensing is usually cheaper but is unreliable due to the stochastic activities of the licensed users. The CVNOs need to determine the optimal sensing and leasing amount to satisfy the needs of subscribers while guaranteeing a low leasing cost. We aim to find an efficient spectrum sensing and leasing scheme for a CVNO in order to maximize its utility in the long run. The problem is first formulated as the framework of a sequential decision process considering the dynamics of users’ activities, spectrum prices, and harvested energy. We then develop a deep reinforcement learning algorithm that uses deep neural networks as function approximators so the CVNO can learn the optimal decision policy by interacting with the environment. We analyze the performance of our proposed scheme through extensive simulations. The experiment results show that the proposed mechanism can significantly improve the CVNO’s long-term benefit compared to other learning and non-learning methods.
Highlights
Spectrum resources are becoming more and more scarce due to the tremendous growth in mobile subscribers and wireless communication services
DYNAMIC SPECTRUM COMPETITION WITH deep reinforcement learning (DRL) we present a learning-based method for spectrum sensing and leasing by a cognitive virtual network operators (CVNOs) in cognitive virtualized networks, upon which the CVNO can adapt to the variations in the environment during a decision-making process
The CVNOs compete for limited spectrum resources by announcing the values of the spectrum sizes they are going to lease from the MNO
Summary
Spectrum resources are becoming more and more scarce due to the tremendous growth in mobile subscribers and wireless communication services. Our study considers a cognitive virtual network operator (CVNO) that can access licensed spectrum via both spectrum sensing and spectrum leasing. We investigate the problem of competitive spectrum leasing in a cognitive virtualized network that is powered by renewable energy. This network consists of one MNO, a set of CVNOs and their subscribed users. We propose a deep reinforcement learning (DRL)-based method for efficient spectrum competition under the uncertainties of harvested energy, spectrum prices, and users’ activities in cognitive virtualized networks. We introduce WNV into small-cell, cognitive radio networks, and propose a novel spectrum-leasing scheme for a CVNO considering the dynamics of the network environment, such as users’ activities, spectrum prices, and harvested energy. We call the CVNOs’ subscribers the SUs, when no ambiguity arises
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