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Integrating Statistical Machine Learning in a Semantic Sensor Web for Proactive Monitoring and Control

Proactive monitoring and control of our natural and built environments is important in various application scenarios. Semantic Sensor Web technologies have been well researched and used for environmental monitoring applications to expose sensor data for analysis in order to provide responsive action...

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Autores principales: Adeleke, Jude Adekunle, Moodley, Deshendran, Rens, Gavin, Adewumi, Aderemi Oluyinka
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5422168/
https://www.ncbi.nlm.nih.gov/pubmed/28397776
http://dx.doi.org/10.3390/s17040807
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author Adeleke, Jude Adekunle
Moodley, Deshendran
Rens, Gavin
Adewumi, Aderemi Oluyinka
author_facet Adeleke, Jude Adekunle
Moodley, Deshendran
Rens, Gavin
Adewumi, Aderemi Oluyinka
author_sort Adeleke, Jude Adekunle
collection PubMed
description Proactive monitoring and control of our natural and built environments is important in various application scenarios. Semantic Sensor Web technologies have been well researched and used for environmental monitoring applications to expose sensor data for analysis in order to provide responsive actions in situations of interest. While these applications provide quick response to situations, to minimize their unwanted effects, research efforts are still necessary to provide techniques that can anticipate the future to support proactive control, such that unwanted situations can be averted altogether. This study integrates a statistical machine learning based predictive model in a Semantic Sensor Web using stream reasoning. The approach is evaluated in an indoor air quality monitoring case study. A sliding window approach that employs the Multilayer Perceptron model to predict short term PM [Formula: see text] pollution situations is integrated into the proactive monitoring and control framework. Results show that the proposed approach can effectively predict short term PM [Formula: see text] pollution situations: precision of up to 0.86 and sensitivity of up to 0.85 is achieved over half hour prediction horizons, making it possible for the system to warn occupants or even to autonomously avert the predicted pollution situations within the context of Semantic Sensor Web.
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spelling pubmed-54221682017-05-12 Integrating Statistical Machine Learning in a Semantic Sensor Web for Proactive Monitoring and Control Adeleke, Jude Adekunle Moodley, Deshendran Rens, Gavin Adewumi, Aderemi Oluyinka Sensors (Basel) Article Proactive monitoring and control of our natural and built environments is important in various application scenarios. Semantic Sensor Web technologies have been well researched and used for environmental monitoring applications to expose sensor data for analysis in order to provide responsive actions in situations of interest. While these applications provide quick response to situations, to minimize their unwanted effects, research efforts are still necessary to provide techniques that can anticipate the future to support proactive control, such that unwanted situations can be averted altogether. This study integrates a statistical machine learning based predictive model in a Semantic Sensor Web using stream reasoning. The approach is evaluated in an indoor air quality monitoring case study. A sliding window approach that employs the Multilayer Perceptron model to predict short term PM [Formula: see text] pollution situations is integrated into the proactive monitoring and control framework. Results show that the proposed approach can effectively predict short term PM [Formula: see text] pollution situations: precision of up to 0.86 and sensitivity of up to 0.85 is achieved over half hour prediction horizons, making it possible for the system to warn occupants or even to autonomously avert the predicted pollution situations within the context of Semantic Sensor Web. MDPI 2017-04-09 /pmc/articles/PMC5422168/ /pubmed/28397776 http://dx.doi.org/10.3390/s17040807 Text en © 2017 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Adeleke, Jude Adekunle
Moodley, Deshendran
Rens, Gavin
Adewumi, Aderemi Oluyinka
Integrating Statistical Machine Learning in a Semantic Sensor Web for Proactive Monitoring and Control
title Integrating Statistical Machine Learning in a Semantic Sensor Web for Proactive Monitoring and Control
title_full Integrating Statistical Machine Learning in a Semantic Sensor Web for Proactive Monitoring and Control
title_fullStr Integrating Statistical Machine Learning in a Semantic Sensor Web for Proactive Monitoring and Control
title_full_unstemmed Integrating Statistical Machine Learning in a Semantic Sensor Web for Proactive Monitoring and Control
title_short Integrating Statistical Machine Learning in a Semantic Sensor Web for Proactive Monitoring and Control
title_sort integrating statistical machine learning in a semantic sensor web for proactive monitoring and control
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5422168/
https://www.ncbi.nlm.nih.gov/pubmed/28397776
http://dx.doi.org/10.3390/s17040807
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