Title :
Joint Energy and Spectrum Cooperation for Cellular Communication Systems
Author :
Yinghao Guo ; Jie Xu ; Lingjie Duan ; Rui Zhang
Author_Institution :
Dept. of Electr. & Comput. Eng., Nat. Univ. of Singapore, Singapore, Singapore
Abstract :
Powered by renewable energy sources, cellular communication systems usually have different wireless traffic loads and available resources over time. To match their traffics, it is beneficial for two neighboring systems to cooperate in resource sharing when one is excessive in one resource (e.g., spectrum), while the other is sufficient in another (e.g., energy). In this paper, we propose a joint energy and spectrum cooperation scheme between different cellular systems to reduce their operational costs. When the two systems are fully cooperative in nature (e.g., belonging to the same entity), we formulate the cooperation problem as a convex optimization problem to minimize their weighted sum cost and obtain the optimal solution in closed form. We also study another partially cooperative scenario where the two systems have their own interests. We show that the two systems seek for partial cooperation as long as they find inter-system complementarity between the energy and spectrum resources. Under the partial cooperation conditions, we propose a distributed algorithm for the two systems to gradually and simultaneously reduce their costs from the non-cooperative benchmark to the Pareto optimum. This distributed algorithm also has proportional fair cost reduction by reducing each system´s cost proportionally over iterations. Finally, we provide numerical results to validate the convergence of the distributed algorithm to the Pareto optimality and compare the centralized and distributed cost reduction approaches for fully and partially cooperative scenarios.
Keywords :
Pareto optimisation; cellular radio; convex programming; cooperative communication; cost reduction; distributed algorithms; minimisation; numerical analysis; radio spectrum management; telecommunication traffic; Pareto optimum; cellular communication system; centralized cost reduction approach; convex optimization problem; distributed algorithm; distributed cost reduction approach; energy cooperation scheme; intersystem complementarity; iteration method; noncooperative benchmark; proportional fair cost reduction; renewable energy source; resource sharing; spectrum cooperation scheme; weighted sum cost minimization; wireless traffic load; Bandwidth; Distributed algorithms; Downlink; Joints; Quality of service; Renewable energy sources; Wireless communication; Energy harvesting; convex optimization; distributed algorithm; energy and spectrum cooperation;
Journal_Title :
Communications, IEEE Transactions on
DOI :
10.1109/TCOMM.2014.2353632