Title :
Improving spectrum efficiency in fractional allocation of radio resources to self-organized femtocells using Learning Automata
Author :
Esfahani, Maryam Nasr ; Ghahfarokhi, Behrouz Shahgholi
Author_Institution :
Dept. of Inf. Technol. Eng., Univ. of Isfahan, Isfahan, Iran
Abstract :
Improving cell coverage and network capacity are main issues in LTE networks. By the emergence of heterogeneous cellular networks with different cell size, femtocells have been regarded as a low cost solution to improve poor indoor coverage for home users. However, as Femto Access Points (FAPs) are installed by users, self-organized techniques are needed for allocation of radio resources to femtocells. On the other hand, Fractional Frequency reuse (FFR) has been considered to improve spectral efficiency and quality of edge users in heterogeneous networks (HetNets). In conventional FFR methods, the macrocell area is partitioned into some regions and certain fractions of radio resources are considered for macrocell/femtocell users in each region. Therefore, radio resources are allocated to femtocell/macrocell users based on their region of presence without addressing the density of users in that region and consequently the interference level. In this paper, a new self-organized fractional resource allocation method is proposed for femtocells. The proposed method is based on Learning Automata where FAPs learn to choose the best fraction based on the feedback of femtocell users. Simulation results confirm that the proposed radio resource allocation method improves spectral efficiency and decreases the outage probability compared to conventional Strict FFR method.
Keywords :
Long Term Evolution; femtocellular radio; indoor radio; learning automata; probability; radiofrequency interference; resource allocation; telecommunication network reliability; FAP method; HetNets; LTE networks; edge users quality; femto access points; fractional Allocation; fractional frequency reuse; heterogeneous cellular networks; indoor coverage; interference level; learning automata; network capacity; radio resources allocation method; self-organized femtocells techniques; spectrum efficiency improvement; strict FFR method; Equations; Femtocells; Interference; Learning automata; Macrocell networks; Resource management; Vectors; FFR; heterogeneous networks; learning automata; resource allocation; self-organized femtocell;
Conference_Titel :
Telecommunications (IST), 2014 7th International Symposium on
Conference_Location :
Tehran
Print_ISBN :
978-1-4799-5358-5
DOI :
10.1109/ISTEL.2014.7000863