K-Medoids Clustering Based Next Location Prediction in Wireless Local Area Network



Título del documento: K-Medoids Clustering Based Next Location Prediction in Wireless Local Area Network
Revista: Computación y sistemas
Base de datos:
Número de sistema: 000560483
ISSN: 1405-5546
Autors: 1
1
1
1
Institucions: 1Tripura University, Department of Computer Science and Engineering, Tripura. India
Any:
Període: Abr-Jun
Volum: 24
Número: 2
Paginació: 835-844
País: México
Idioma: Inglés
Resumen en inglés User mobility prediction in wireless network is being investigated from various angles to improve performance of the network. Access to user’s movement information such as time, direction, speed, etc. provides an opportunity for wireless networks to manage effectively resources to satisfy user needs. A next location prediction technique is required for transferring the existing connections of user to the next Access Point (AP) beforehand to ensure better Quality of Service (QoS) of the network. There are several techniques for next location prediction of mobile users in Wireless Local Area Network (WLAN), which include Indoor Next Location Prediction with Wi-Fi model, Extended Mobility Markov Chain Model, Hidden Markov Model and Mixed Membership Stochastic Blockmodel. In the Indoor Next Location Prediction with Wi-Fi model, the area of prediction is fixed and small which makes this approach inefficient when the number of locations traversed by the mobile user is large. The paper addresses the issue of predicting the next location of mobile users in a WLAN when the area of prediction is vast. In this paper, an intelligent clustering technique i.e., the K-Medoids clustering algorithm has been implemented on the indoor next location prediction, which is based on a Markov-chain model, for predicting the next location of a user when the number of locations traversed by the user is vast. The accuracy of prediction of mobile user’s next location by the proposed K-Medoids clustering based next location prediction technique ranges from 67% to 97%.
Keyword: Wireless local area network,
Next location prediction,
Markov chain,
Quality of Service,
K-medoids clustering
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