Title
Distributed heuristic adaptive power control algorithms in femto cellular networks for improved performance
Abstract
AbstractAbstractAdaptiveness of femto base station's (FBS's) transmission power (TP) is crucial in determining Quality of Service and ecofriendliness of a network. Joint power optimization and admission control problems have been reformulated to identify the TP of v already deployed FBSs, and the problem is shown to be computationally hard. Accordingly, an adaptive distributed heuristic called power search algorithm (PSA) is proposed. A learning algorithm analytically identifies the received signal strength‐based coverage of each FBS in all directions during planning. A 3‐dimensional reference matrix, ie, REF, for each FBS, is thereby formulated and stored in the corresponding FBSs. Power search algorithm handles call admission/termination at run time. For call admission, PSA identifies the serving FBS and the required minimum TP. A suitable data structure is also maintained by PSA for efficient call handling. A new call is dropped if its admission degrades the Quality of Service of existing end‐users. For call termination, change in TP is triggered if the highest power level of the FBS was being exercised to serve this particular user. The worst‐case run‐time complexity of PSA turns out to be O(log2N), where N is the number of TP levels of a particular FBS. Comparing with existing heuristics, improved performance of PSA includes highest throughput and signal‐to‐interference‐plus‐noise ratio while minimizing starvation and cumulative TP with lower complexity even for high end‐user density. Exhaustive simulation reveals that the probability of an end‐user having signal‐to‐interference‐plus‐noise ratio above 0 dB is 0.83 even in the worst case scenario. Accordingly, the proposed PSA is claimed to be superior. View Figure In this paper, the problem of setting the transmission power of v already deployed femto base stations (FBSs) is proved to be NP‐complete. Next, a set of distributed heuristic adaptive power search algorithm has been proposed, which identifies the near‐optimal transmission power of a set of already deployed FBSs with run‐time time complexity of O(log2N). The proposed PSA outperforms existing literature when parameters like SINR, throughput, active FBS count, cumulative transmission power, and run‐time time complexity are taken into consideration.
Year
DOI
Venue
2018
10.1002/ett.3280
Periodicals
Field
DocType
Volume
Femto-,Heuristic,Computer science,Power control algorithm,Cellular network,Distributed computing
Journal
29
Issue
ISSN
Citations 
5
2161-3915
0
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Anindita Kundu1214.42
Subhashis Majumder26117.99
Iti Saha Misra37519.05
Salil Kumar Sanyal4558.60