Data recoverability and estimation for perception layer in semantic web of things.

Internet of Things (IoT) is the growing invention in the current development of different domains like industries, e-health, and education, etc. Semantic web of things (SWoT) is an extension of IoT that enhance the communication by behaving intelligently. SWoT comprises 7 layered architecture. The p...

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Main Authors: Rabia Afzaal, Muhammad Shoaib
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0245847
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author Rabia Afzaal
Muhammad Shoaib
author_facet Rabia Afzaal
Muhammad Shoaib
author_sort Rabia Afzaal
collection DOAJ
description Internet of Things (IoT) is the growing invention in the current development of different domains like industries, e-health, and education, etc. Semantic web of things (SWoT) is an extension of IoT that enhance the communication by behaving intelligently. SWoT comprises 7 layered architecture. The perception layer is an important layer for collecting data from devices and to communicate with its associated layer. The data loss at the perception layer is very common due to inadequate resources, unpredictable link, noise, collision, and unexpected damage. To address this problem, we propose a method based on Compressive Sensing which recovers and estimates sensory data from a low-rank structure. The contribution of this paper is three folds. Firstly, we determine the problem of data acquisition and data loss at semantic sensory nodes in SWoT. Secondly, we introduce a compressive sensing based framework for SWoT that recovers the data accurately using low-rank features. Thirdly, the data estimation method is utilized to reduce the volume of the data. Proposed Compressive Sensing based Data Recoverability and Estimation (CS-RE) method is evaluated and compared with the existing reconstruction methods. The simulation results on real sensory datasets depict that the proposed method significantly outperforms existing methods in terms of error ratio and data recoverability accuracy.
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spelling doaj.art-943d50e1796a41189b8608abb472eaf62022-12-21T23:30:00ZengPublic Library of Science (PLoS)PLoS ONE1932-62032021-01-01162e024584710.1371/journal.pone.0245847Data recoverability and estimation for perception layer in semantic web of things.Rabia AfzaalMuhammad ShoaibInternet of Things (IoT) is the growing invention in the current development of different domains like industries, e-health, and education, etc. Semantic web of things (SWoT) is an extension of IoT that enhance the communication by behaving intelligently. SWoT comprises 7 layered architecture. The perception layer is an important layer for collecting data from devices and to communicate with its associated layer. The data loss at the perception layer is very common due to inadequate resources, unpredictable link, noise, collision, and unexpected damage. To address this problem, we propose a method based on Compressive Sensing which recovers and estimates sensory data from a low-rank structure. The contribution of this paper is three folds. Firstly, we determine the problem of data acquisition and data loss at semantic sensory nodes in SWoT. Secondly, we introduce a compressive sensing based framework for SWoT that recovers the data accurately using low-rank features. Thirdly, the data estimation method is utilized to reduce the volume of the data. Proposed Compressive Sensing based Data Recoverability and Estimation (CS-RE) method is evaluated and compared with the existing reconstruction methods. The simulation results on real sensory datasets depict that the proposed method significantly outperforms existing methods in terms of error ratio and data recoverability accuracy.https://doi.org/10.1371/journal.pone.0245847
spellingShingle Rabia Afzaal
Muhammad Shoaib
Data recoverability and estimation for perception layer in semantic web of things.
PLoS ONE
title Data recoverability and estimation for perception layer in semantic web of things.
title_full Data recoverability and estimation for perception layer in semantic web of things.
title_fullStr Data recoverability and estimation for perception layer in semantic web of things.
title_full_unstemmed Data recoverability and estimation for perception layer in semantic web of things.
title_short Data recoverability and estimation for perception layer in semantic web of things.
title_sort data recoverability and estimation for perception layer in semantic web of things
url https://doi.org/10.1371/journal.pone.0245847
work_keys_str_mv AT rabiaafzaal datarecoverabilityandestimationforperceptionlayerinsemanticwebofthings
AT muhammadshoaib datarecoverabilityandestimationforperceptionlayerinsemanticwebofthings