DocumentCode
717632
Title
Critical Analysis of Learning Algorithms in Random Neural Network Based Cognitive Engine for LTE Systems
Author
Adeel, Ahsan ; Larijani, Hadi ; Javed, Abbas ; Ahmadinia, Ali
Author_Institution
Sch. of Eng. & Built Environ., Glasgow Caledonian Univ., Glasgow, UK
fYear
2015
fDate
11-14 May 2015
Firstpage
1
Lastpage
5
Abstract
In this paper, we critically analyze the performance of an intelligent Long-Term Evolution-Uplink (LTE-UL) system having a cognitive engine (CE) embedded in e-NodeB. Performance characterization, optimal radio parameters prediction, and inter-cell-interference coordination (ICIC) are studied. The embedded CE allocates the optimal radio parameters to serving users and suggests the acceptable transmit power to users served by adjacent cells for ICIC. The desired cognition has been achieved with a novel random neural network (RNN) based CE architecture. To achieve the best learning performance, we critically analyzed three learning algorithms, gradient descent (GD), adaptive inertia weight particle swarm optimization (AIW-PSO) and differential evolution (DE). The analysis showed that AIW-PSO was 10.57% better than GD and 8.012% better than DE in terms of learning accuracy (based on MSE), but with considerable compromise on computational time as compared to GD. Moreover, in terms of convergence time (to achieve the MSE less than 1.04E-03), AIW-PSO took 60% less iterations than GD and 50% less than DE.
Keywords
Long Term Evolution; adjacent channel interference; cognitive radio; learning (artificial intelligence); neural nets; particle swarm optimisation; telecommunication computing; AIW-PSO; CE architecture; ICIC; LTE-UL system; adaptive inertia weight particle swarm optimization; adjacent cell; cognitive engine; differential evolution; e-NodeB; intercell interference coordination; learning algorithms; long term evolution-uplink; optimal radio parameter; optimal radio parameter prediction; random neural network; Artificial intelligence; Cognitive radio; Decision making; Mathematical model; Neural networks; Neurons; Training;
fLanguage
English
Publisher
ieee
Conference_Titel
Vehicular Technology Conference (VTC Spring), 2015 IEEE 81st
Conference_Location
Glasgow
Type
conf
DOI
10.1109/VTCSpring.2015.7145764
Filename
7145764
Link To Document