DocumentCode :
79722
Title :
Performance Evaluation of South Esk Hydrological Sensor Web: Unsupervised Machine Learning and Semantic Linked Data Approach
Author :
Dutta, Ritaban ; Morshed, A.
Author_Institution :
Intell. Sensing & Syst. Lab., Hobart, TAS, Australia
Volume :
13
Issue :
10
fYear :
2013
fDate :
Oct. 2013
Firstpage :
3806
Lastpage :
3815
Abstract :
Technological progress has lead the sensor network domain to an era where environmental and agricultural domain applications are completely dependent on hydrological sensor networks. Data from the sensor networks are being used for knowledge management and critical decision support system. The quality of data can, however, vary widely. Existing automated quality assurance approach based on simple threshold rulebase could potentially miss serious errors requiring robust and complex domain knowledge to identify. This paper proposes a linked data concept, unsupervised pattern recognition, and semantic ontologies based dynamic framework to assess the reliability of hydrological sensor network and evaluate the performance of the sensor network. Newly designed framework is used successfully to evaluate the South Esk hydrological sensor web in Tasmania, indicating that domain ontology based linked data approach could be a very useful methodology for quality assurance of the complex data.
Keywords :
agriculture; decision support systems; distributed sensors; environmental factors; environmental science computing; geophysics computing; hydrological techniques; knowledge engineering; learning (artificial intelligence); ontologies (artificial intelligence); pattern recognition; semantic Web; South Esk hydrological sensor web; Tasmania; agricultural domain applications; automated quality assurance approach; critical decision support system; data quality; dynamic framework; environmental domain applications; hydrological sensor network reliability; hydrological sensor networks; knowledge management; linked data concept; performance evaluation; semantic linked data approach; semantic ontologies; sensor network data; sensor network domain; threshold rulebase; unsupervised machine learning; unsupervised pattern recognition; Linked data; linked open data cloud; ontology; performance map; principal component analysis; resource description framework; sensor network; unsupervised clustering;
fLanguage :
English
Journal_Title :
Sensors Journal, IEEE
Publisher :
ieee
ISSN :
1530-437X
Type :
jour
DOI :
10.1109/JSEN.2013.2264666
Filename :
6521335
Link To Document :
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