An adaptive and efficient dimension reduction model for multivariate wireless sensor networks applications
Wireless sensor networks (WSNs) applications are growing rapidly in various fields such as environmental monitoring, health care management, and industry control. However, WSN's are characterized by constrained resources especially; energy which shortens their lifespan. One of the most importan...
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my.utm.495412018-10-14T08:22:10Z http://eprints.utm.my/id/eprint/49541/ An adaptive and efficient dimension reduction model for multivariate wireless sensor networks applications A.Rassam, Murad Zainal, Anazida Maarof, Mohd. Aizaini QA76 Computer software Wireless sensor networks (WSNs) applications are growing rapidly in various fields such as environmental monitoring, health care management, and industry control. However, WSN's are characterized by constrained resources especially; energy which shortens their lifespan. One of the most important factors that cause a rapid drain of energy is radio communication of multivariate data between nodes and base station. Besides, the dynamic changes of environmental variables pose a need for an adaptive solution that cope with these changes over the time. In this paper, a new adaptive and efficient dimension reduction model (APCADR) is proposed for hierarchical sensor networks based on the candid covariance-free incremental PCA (CCIPCA). The performance of the model is evaluated using three real sensor networks datasets collected at Intel Berkeley Research Lab (IBRL), Great St. Bernard (GSB) area, and Lausanne Urban Canopy Experiments (LUCE). Experimental results show 33.33% and 50% reduction of multivariate data in dynamic and static environments, respectively. Results also show that 97-99% of original data is successfully approximated at cluster heads in both environment types. A comparison with the multivariate linear regression model (MLR) and simple linear regression model (SLR) shows the advantage of the proposed model in terms of efficiency, approximation accuracy, and adaptability with dynamic environmental changes Elsevier Ltd. 2013 Article PeerReviewed A.Rassam, Murad and Zainal, Anazida and Maarof, Mohd. Aizaini (2013) An adaptive and efficient dimension reduction model for multivariate wireless sensor networks applications. Applied Soft Computing, 13 (4). pp. 1978-1996. ISSN 1568-4946 http://dx.doi.org/10.1016/j.asoc.2012.11.041 DOI: 10.1016/j.asoc.2012.11.041 |
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QA76 Computer software A.Rassam, Murad Zainal, Anazida Maarof, Mohd. Aizaini An adaptive and efficient dimension reduction model for multivariate wireless sensor networks applications |
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Wireless sensor networks (WSNs) applications are growing rapidly in various fields such as environmental monitoring, health care management, and industry control. However, WSN's are characterized by constrained resources especially; energy which shortens their lifespan. One of the most important factors that cause a rapid drain of energy is radio communication of multivariate data between nodes and base station. Besides, the dynamic changes of environmental variables pose a need for an adaptive solution that cope with these changes over the time. In this paper, a new adaptive and efficient dimension reduction model (APCADR) is proposed for hierarchical sensor networks based on the candid covariance-free incremental PCA (CCIPCA). The performance of the model is evaluated using three real sensor networks datasets collected at Intel Berkeley Research Lab (IBRL), Great St. Bernard (GSB) area, and Lausanne Urban Canopy Experiments (LUCE). Experimental results show 33.33% and 50% reduction of multivariate data in dynamic and static environments, respectively. Results also show that 97-99% of original data is successfully approximated at cluster heads in both environment types. A comparison with the multivariate linear regression model (MLR) and simple linear regression model (SLR) shows the advantage of the proposed model in terms of efficiency, approximation accuracy, and adaptability with dynamic environmental changes |
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Article |
author |
A.Rassam, Murad Zainal, Anazida Maarof, Mohd. Aizaini |
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A.Rassam, Murad Zainal, Anazida Maarof, Mohd. Aizaini |
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A.Rassam, Murad |
title |
An adaptive and efficient dimension reduction model for multivariate wireless sensor networks applications |
title_short |
An adaptive and efficient dimension reduction model for multivariate wireless sensor networks applications |
title_full |
An adaptive and efficient dimension reduction model for multivariate wireless sensor networks applications |
title_fullStr |
An adaptive and efficient dimension reduction model for multivariate wireless sensor networks applications |
title_full_unstemmed |
An adaptive and efficient dimension reduction model for multivariate wireless sensor networks applications |
title_sort |
adaptive and efficient dimension reduction model for multivariate wireless sensor networks applications |
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Elsevier Ltd. |
publishDate |
2013 |
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http://eprints.utm.my/id/eprint/49541/ http://dx.doi.org/10.1016/j.asoc.2012.11.041 |
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