DocumentCode :
615913
Title :
Spectral- and energy-efficient antenna tilting in a HetNet using reinforcement learning
Author :
Weisi Guo ; Siyi Wang ; Yue Wu ; Rigelsford, Jonathan ; Xiaoli Chu ; O´Farrell, Timothy
Author_Institution :
Univ. of Warwick, Coventry, UK
fYear :
2013
fDate :
7-10 April 2013
Firstpage :
767
Lastpage :
772
Abstract :
In cellular networks, balancing the throughput among users is important to achieve a uniform Quality-of-Service (QoS). This can be accomplished using a variety of cross-layer techniques. In this paper, the authors investigate how the down-tilt of base-station (BS) antennas can be adjusted to maximize the user throughput fairness in a heterogeneous network, considering the impact of both a dynamic user distribution and capacity saturation of different transmission techniques. Finding the optimal down-tilt in a multi-cell interference-limited network is a complex problem, where stochastic channel effects and irregular antenna patterns has yielded no explicit solutions and is computationally expensive. The investigation first demonstrates that a fixed tilt strategy yields good performances for homogeneous networks, but the introduction of HetNet elements adds a high level of sensitivity to the tilt dependent performance. This means that a HetNet must have network-wide knowledge of where BSs, access-points and users are. The paper also demonstrates that transmission techniques that can achieve a higher level of capacity saturation increases the optimal down-tilt angle. A distributed reinforcement learning algorithm is proposed, where BSs do not need knowledge of location data. The algorithm can achieve convergence to a near-optimal solution rapidly (6-15 iterations) and improve the throughput fairness by 45-56% and the energy efficiency by 21-47%, as compared to fixed strategies. Furthermore, the paper shows that a tradeoff between the optimal solution convergence rate and asymptotic performance exists for the self-learning algorithm.
Keywords :
cellular radio; learning (artificial intelligence); mobile antennas; quality of service; radiofrequency interference; telecommunication computing; BS antennas; HetNet; QoS; access-points; base-station antennas; capacity saturation; cellular networks; cross-layer techniques; dynamic user distribution; efficiency 21 percent to 47 percent; energy-efficient antenna tilting; fixed tilt strategy; heterogeneous network; homogeneous networks; irregular antenna patterns; multicell interference-limited network; network-wide knowledge; optimal down-tilt angle; optimal solution convergence rate; reinforcement learning algorithm; self-learning algorithm; spectral-efficient antenna tilting; stochastic channel effects; tilt dependent performance; transmission techniques; uniform quality-of-service; user throughput fairness; Convergence; Heuristic algorithms; Interference; Learning (artificial intelligence); Throughput; Transmitting antennas;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Wireless Communications and Networking Conference (WCNC), 2013 IEEE
Conference_Location :
Shanghai
ISSN :
1525-3511
Print_ISBN :
978-1-4673-5938-2
Electronic_ISBN :
1525-3511
Type :
conf
DOI :
10.1109/WCNC.2013.6554660
Filename :
6554660
Link To Document :
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