Optimizing radio frequency identification network planning through ring probabilistic logic neurons

Radio frequency identification is a developing technology that has recently been adopted in industrial applications for identification and tracking operations. The radio frequency identification network planning problem deals with many criteria like number and positions of the deployed antennas in t...

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Main Authors: Aydin Azizi, Ali Vatankhah Barenji, Majid Hashmipour
Format: Article
Language:English
Published: SAGE Publishing 2016-08-01
Series:Advances in Mechanical Engineering
Online Access:https://doi.org/10.1177/1687814016663476
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spelling doaj-d0b60092a484426ba4d7dc7dc0dd6c402020-11-25T02:50:02ZengSAGE PublishingAdvances in Mechanical Engineering1687-81402016-08-01810.1177/168781401666347610.1177_1687814016663476Optimizing radio frequency identification network planning through ring probabilistic logic neuronsAydin Azizi0Ali Vatankhah Barenji1Majid Hashmipour2Department of Engineering, German University of Technology in Oman, Muscat, OmanDepartment of Mechanical Engineering, Eastern Mediterranean University, Famagusta, TurkeyDepartment of Mechanical Engineering, Eastern Mediterranean University, Famagusta, TurkeyRadio frequency identification is a developing technology that has recently been adopted in industrial applications for identification and tracking operations. The radio frequency identification network planning problem deals with many criteria like number and positions of the deployed antennas in the networks, transmitted power of antennas, and coverage of network. All these criteria must satisfy a set of objectives, such as load balance, economic efficiency, and interference, in order to obtain accurate and reliable network planning. Achieving the best solution for radio frequency identification network planning has been an area of great interest for many scientists. This article introduces the Ring Probabilistic Logic Neuron as a time-efficient and accurate algorithm to deal with the radio frequency identification network planning problem. To achieve the best results, redundant antenna elimination algorithm is used in addition to the proposed optimization techniques. The aim of proposed algorithm is to solve the radio frequency identification network planning problem and to design a cost-effective radio frequency identification network by minimizing the number of embedded radio frequency identification antennas in the network, minimizing collision of antennas, and maximizing coverage area of the objects. The proposed solution is compared with the evolutionary algorithms, namely genetic algorithm and particle swarm optimization. The simulation results show that the Ring Probabilistic Logic Neuron algorithm obtains a far more superior solution for radio frequency identification network planning problem when compared to genetic algorithm and particle swarm optimization.https://doi.org/10.1177/1687814016663476
collection DOAJ
language English
format Article
sources DOAJ
author Aydin Azizi
Ali Vatankhah Barenji
Majid Hashmipour
spellingShingle Aydin Azizi
Ali Vatankhah Barenji
Majid Hashmipour
Optimizing radio frequency identification network planning through ring probabilistic logic neurons
Advances in Mechanical Engineering
author_facet Aydin Azizi
Ali Vatankhah Barenji
Majid Hashmipour
author_sort Aydin Azizi
title Optimizing radio frequency identification network planning through ring probabilistic logic neurons
title_short Optimizing radio frequency identification network planning through ring probabilistic logic neurons
title_full Optimizing radio frequency identification network planning through ring probabilistic logic neurons
title_fullStr Optimizing radio frequency identification network planning through ring probabilistic logic neurons
title_full_unstemmed Optimizing radio frequency identification network planning through ring probabilistic logic neurons
title_sort optimizing radio frequency identification network planning through ring probabilistic logic neurons
publisher SAGE Publishing
series Advances in Mechanical Engineering
issn 1687-8140
publishDate 2016-08-01
description Radio frequency identification is a developing technology that has recently been adopted in industrial applications for identification and tracking operations. The radio frequency identification network planning problem deals with many criteria like number and positions of the deployed antennas in the networks, transmitted power of antennas, and coverage of network. All these criteria must satisfy a set of objectives, such as load balance, economic efficiency, and interference, in order to obtain accurate and reliable network planning. Achieving the best solution for radio frequency identification network planning has been an area of great interest for many scientists. This article introduces the Ring Probabilistic Logic Neuron as a time-efficient and accurate algorithm to deal with the radio frequency identification network planning problem. To achieve the best results, redundant antenna elimination algorithm is used in addition to the proposed optimization techniques. The aim of proposed algorithm is to solve the radio frequency identification network planning problem and to design a cost-effective radio frequency identification network by minimizing the number of embedded radio frequency identification antennas in the network, minimizing collision of antennas, and maximizing coverage area of the objects. The proposed solution is compared with the evolutionary algorithms, namely genetic algorithm and particle swarm optimization. The simulation results show that the Ring Probabilistic Logic Neuron algorithm obtains a far more superior solution for radio frequency identification network planning problem when compared to genetic algorithm and particle swarm optimization.
url https://doi.org/10.1177/1687814016663476
work_keys_str_mv AT aydinazizi optimizingradiofrequencyidentificationnetworkplanningthroughringprobabilisticlogicneurons
AT alivatankhahbarenji optimizingradiofrequencyidentificationnetworkplanningthroughringprobabilisticlogicneurons
AT majidhashmipour optimizingradiofrequencyidentificationnetworkplanningthroughringprobabilisticlogicneurons
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