SlideShare ist ein Scribd-Unternehmen logo
1 von 17
48th ACM Southeast Conference. ACMSE 2010.  Oxford, Mississippi.  April 15-17, 2010. Provenance Aware Linked Sensor Data HarshalPatni, Satya S. Sahoo, Cory Henson, Amit P. Sheth Ohio Center of Excellence in Knowledge enabled Computing (Kno.e.sis)  Wright State University, Dayton, OH SPOT2010 – 2nd Workshop on Trust and Privacy on the Social and Semantic Web
OUTLINE ,[object Object]
 Provenance
 Sensor Provenance Management System (Sensor PMS)
 Workflow Implementation
 Future Work
 Conclusion3
Motivating Scenario Spatial information Sensors in USA Find all the sensors which have observations related to a blizzard occurring in Nevada on 24th August 2005 at 11 AM  Thematic information Temporal information 4
PROVENANCE Spatial information Find all the sensors which have observations related to a blizzard occurring in Nevada on 24th August 2005 at 11 AM  Thematic information Temporal information PROVENANCE informationof the observation is required for SENSOR DISCOVERY PROVENANCE : History or Lineage of data entity 5
Sensor PMS Data capture phase Store the Provenance Aware Sensor Data Annotating data with Sensor Provenance Ontology 6
Provenance Capture Provenance Aware Linked Sensor Data Weather Sensors Sensor Dataset GPS Sensors Satellite Sensors Camera Sensors 7
Provenance Representation Provenance Aware Linked Sensor Data  Annotate data using concepts in Provenance Sensor Ontology Sensor Dataset Sensor Provenance Ontology 8
Provenance Representation  Sensor Ontology 9
Provenance Representation 10
ProvenanceStorage GeoNames Dataset: Geographic dataset contaning    	information about countries and 8 million place names locatedNear Provenance Aware Linked Sensor Data Sensor Dataset Publicly Accessible Provenance Aware Sensor is adding provenance to Linked Sensor Data (on LoD). 11
Workflow Implementation Sensor Provenance Ontology MesoWest is a Project at University of Utah, Department of Meteorology  that collects observations for ~20,000 sensors in United States Open Geo-Spatial Consortium standard (O&M) for encoding sensor descriptions and observations 12

Weitere ähnliche Inhalte

Was ist angesagt?

Was ist angesagt? (18)

How to use NCI's national repository of big spatial data collections
How to use NCI's national repository of big spatial data collectionsHow to use NCI's national repository of big spatial data collections
How to use NCI's national repository of big spatial data collections
 
Eco-informatics: Data services for bringing together and publishing the full ...
Eco-informatics: Data services for bringing together and publishing the full ...Eco-informatics: Data services for bringing together and publishing the full ...
Eco-informatics: Data services for bringing together and publishing the full ...
 
Sextant: Browsing and Mapping the Ocean of Linked Geospatial Data
Sextant: Browsing and Mapping the Ocean of Linked Geospatial DataSextant: Browsing and Mapping the Ocean of Linked Geospatial Data
Sextant: Browsing and Mapping the Ocean of Linked Geospatial Data
 
NOAA's Climate Data Record (CDR) Program
NOAA's Climate Data Record (CDR) ProgramNOAA's Climate Data Record (CDR) Program
NOAA's Climate Data Record (CDR) Program
 
Dataset Independent Subsetting
Dataset Independent SubsettingDataset Independent Subsetting
Dataset Independent Subsetting
 
Drones and A.I in Earth Science
Drones and A.I in Earth ScienceDrones and A.I in Earth Science
Drones and A.I in Earth Science
 
La résolution de problèmes à l'aide de graphes
La résolution de problèmes à l'aide de graphesLa résolution de problèmes à l'aide de graphes
La résolution de problèmes à l'aide de graphes
 
AusPlots field data collection with AusScribe
AusPlots field data collection with AusScribeAusPlots field data collection with AusScribe
AusPlots field data collection with AusScribe
 
Optical fiber communication network
Optical fiber communication networkOptical fiber communication network
Optical fiber communication network
 
HST3 MAST Portal Poster
HST3 MAST Portal PosterHST3 MAST Portal Poster
HST3 MAST Portal Poster
 
Andy Hardy-Enfermedades transmitidas por vectores
Andy Hardy-Enfermedades transmitidas por vectoresAndy Hardy-Enfermedades transmitidas por vectores
Andy Hardy-Enfermedades transmitidas por vectores
 
Artificial Intelligence and Big Data Technologies for Copernicus Data: the Ex...
Artificial Intelligence and Big Data Technologies for Copernicus Data: the Ex...Artificial Intelligence and Big Data Technologies for Copernicus Data: the Ex...
Artificial Intelligence and Big Data Technologies for Copernicus Data: the Ex...
 
Big data
Big dataBig data
Big data
 
NJ Wildlife Habitat Finder
NJ Wildlife Habitat FinderNJ Wildlife Habitat Finder
NJ Wildlife Habitat Finder
 
ExtremeEarth Data Science Pipeline for Linked Earth Observation Data
ExtremeEarth Data Science Pipeline for Linked Earth Observation DataExtremeEarth Data Science Pipeline for Linked Earth Observation Data
ExtremeEarth Data Science Pipeline for Linked Earth Observation Data
 
EOSC for Physics & Astronomy: Radio Astronomy Competence Centre
EOSC for Physics & Astronomy: Radio Astronomy Competence CentreEOSC for Physics & Astronomy: Radio Astronomy Competence Centre
EOSC for Physics & Astronomy: Radio Astronomy Competence Centre
 
Data Science in the Rough
Data Science in the RoughData Science in the Rough
Data Science in the Rough
 
Terra Populus Overview Poster
Terra Populus Overview PosterTerra Populus Overview Poster
Terra Populus Overview Poster
 

Andere mochten auch

Powerpoint fiesta 6 horas dj suze @ sala versus (22 10-2011)
Powerpoint fiesta 6 horas dj suze @ sala versus (22 10-2011)Powerpoint fiesta 6 horas dj suze @ sala versus (22 10-2011)
Powerpoint fiesta 6 horas dj suze @ sala versus (22 10-2011)
RAZORDJ
 
Hag.Prez Elec Ec
Hag.Prez Elec EcHag.Prez Elec Ec
Hag.Prez Elec Ec
guest15f33e
 
Plagiarism Guidelines Students
Plagiarism Guidelines StudentsPlagiarism Guidelines Students
Plagiarism Guidelines Students
Tedine Soule
 
Unit 5b Mortgage features
Unit 5b Mortgage featuresUnit 5b Mortgage features
Unit 5b Mortgage features
Andrew Hingston
 
Digital Writing
Digital WritingDigital Writing
Digital Writing
Durke1dd
 

Andere mochten auch (20)

Volwassenheid
Volwassenheid Volwassenheid
Volwassenheid
 
The Buddha
The  BuddhaThe  Buddha
The Buddha
 
Article types review
Article types reviewArticle types review
Article types review
 
Powerpoint fiesta 6 horas dj suze @ sala versus (22 10-2011)
Powerpoint fiesta 6 horas dj suze @ sala versus (22 10-2011)Powerpoint fiesta 6 horas dj suze @ sala versus (22 10-2011)
Powerpoint fiesta 6 horas dj suze @ sala versus (22 10-2011)
 
Meditation
MeditationMeditation
Meditation
 
Nhs Points
Nhs PointsNhs Points
Nhs Points
 
Петр Тищенко - Проблемы подготовски кадров для реализации транснациональных п...
Петр Тищенко - Проблемы подготовски кадров для реализации транснациональных п...Петр Тищенко - Проблемы подготовски кадров для реализации транснациональных п...
Петр Тищенко - Проблемы подготовски кадров для реализации транснациональных п...
 
Multi-Lingual Multi-Site SEO Tips
Multi-Lingual Multi-Site SEO TipsMulti-Lingual Multi-Site SEO Tips
Multi-Lingual Multi-Site SEO Tips
 
Hag.Prez Elec Ec
Hag.Prez Elec EcHag.Prez Elec Ec
Hag.Prez Elec Ec
 
Grace Church Media Coverage
Grace Church Media CoverageGrace Church Media Coverage
Grace Church Media Coverage
 
Plagiarism Guidelines Students
Plagiarism Guidelines StudentsPlagiarism Guidelines Students
Plagiarism Guidelines Students
 
Революция без крови
 Революция без крови Революция без крови
Революция без крови
 
天伦杯
天伦杯天伦杯
天伦杯
 
Fon241 dc fall12
Fon241 dc fall12Fon241 dc fall12
Fon241 dc fall12
 
Sasha Interview
Sasha InterviewSasha Interview
Sasha Interview
 
Nirrimi
NirrimiNirrimi
Nirrimi
 
Unit 5b Mortgage features
Unit 5b Mortgage featuresUnit 5b Mortgage features
Unit 5b Mortgage features
 
Cloud Computing for Business - The Road to IT-as-a-Service
Cloud Computing for Business - The Road to IT-as-a-ServiceCloud Computing for Business - The Road to IT-as-a-Service
Cloud Computing for Business - The Road to IT-as-a-Service
 
Digital Writing
Digital WritingDigital Writing
Digital Writing
 
Future of Food | Biocity Studio
Future of Food | Biocity StudioFuture of Food | Biocity Studio
Future of Food | Biocity Studio
 

Ähnlich wie Provenance Aware Linked Sensor Data

Ingredients for Semantic Sensor Networks
Ingredients for Semantic Sensor NetworksIngredients for Semantic Sensor Networks
Ingredients for Semantic Sensor Networks
Oscar Corcho
 
A Semantics-based Approach to Machine Perception
A Semantics-based Approach to Machine PerceptionA Semantics-based Approach to Machine Perception
A Semantics-based Approach to Machine Perception
Cory Andrew Henson
 

Ähnlich wie Provenance Aware Linked Sensor Data (20)

Real Time Semantic Analysis of Streaming Sensor Data
Real Time Semantic Analysis of Streaming Sensor DataReal Time Semantic Analysis of Streaming Sensor Data
Real Time Semantic Analysis of Streaming Sensor Data
 
Ingredients for Semantic Sensor Networks
Ingredients for Semantic Sensor NetworksIngredients for Semantic Sensor Networks
Ingredients for Semantic Sensor Networks
 
Semantic Sensor Networks and Linked Stream Data
Semantic Sensor Networks and Linked Stream DataSemantic Sensor Networks and Linked Stream Data
Semantic Sensor Networks and Linked Stream Data
 
A Semantics-based Approach to Machine Perception
A Semantics-based Approach to Machine PerceptionA Semantics-based Approach to Machine Perception
A Semantics-based Approach to Machine Perception
 
A Semantics-based Approach to Machine Perception
A Semantics-based Approach to Machine PerceptionA Semantics-based Approach to Machine Perception
A Semantics-based Approach to Machine Perception
 
Linked sensor data
Linked sensor dataLinked sensor data
Linked sensor data
 
Active Perception over Machine and Citizen Sensing
Active Perception over Machine and Citizen SensingActive Perception over Machine and Citizen Sensing
Active Perception over Machine and Citizen Sensing
 
Examples of Applied Semantic Technologies: Application of Semantic Sensor Net...
Examples of Applied Semantic Technologies: Application of Semantic Sensor Net...Examples of Applied Semantic Technologies: Application of Semantic Sensor Net...
Examples of Applied Semantic Technologies: Application of Semantic Sensor Net...
 
Active Perception over Machine and Citizen Sensing
Active Perception  over Machine and Citizen SensingActive Perception  over Machine and Citizen Sensing
Active Perception over Machine and Citizen Sensing
 
SECURE: Semantics Empowered resCUe enviRonmEnt
SECURE: Semantics Empowered resCUe enviRonmEntSECURE: Semantics Empowered resCUe enviRonmEnt
SECURE: Semantics Empowered resCUe enviRonmEnt
 
Apollo Towards Factfinding In Participatory Sensing
Apollo  Towards Factfinding In Participatory SensingApollo  Towards Factfinding In Participatory Sensing
Apollo Towards Factfinding In Participatory Sensing
 
Semantic Sensor Web
Semantic Sensor WebSemantic Sensor Web
Semantic Sensor Web
 
Data science Innovations January 2018
Data science Innovations January 2018Data science Innovations January 2018
Data science Innovations January 2018
 
A Biological Internet?: Eywa
A Biological Internet?: EywaA Biological Internet?: Eywa
A Biological Internet?: Eywa
 
Weather Station Data Publication at Irstea: an implementation Report.
Weather Station Data Publication at Irstea: an implementation Report.  Weather Station Data Publication at Irstea: an implementation Report.
Weather Station Data Publication at Irstea: an implementation Report.
 
Inauguration Function - Ohio Center of Excellence in Knowledge-Enabled Comput...
Inauguration Function - Ohio Center of Excellence in Knowledge-Enabled Comput...Inauguration Function - Ohio Center of Excellence in Knowledge-Enabled Comput...
Inauguration Function - Ohio Center of Excellence in Knowledge-Enabled Comput...
 
Semantically-Enabling the Web of Things: The W3C Semantic Sensor Network Onto...
Semantically-Enabling the Web of Things: The W3C Semantic Sensor Network Onto...Semantically-Enabling the Web of Things: The W3C Semantic Sensor Network Onto...
Semantically-Enabling the Web of Things: The W3C Semantic Sensor Network Onto...
 
Infrastructures Supporting Inter-disciplinary Research - Exemplars from the UK

Infrastructures Supporting Inter-disciplinary Research - Exemplars from the UK
Infrastructures Supporting Inter-disciplinary Research - Exemplars from the UK

Infrastructures Supporting Inter-disciplinary Research - Exemplars from the UK

 
Session III Census and registers - M. Scannapieco,The Italian Integrated Syst...
Session III Census and registers - M. Scannapieco,The Italian Integrated Syst...Session III Census and registers - M. Scannapieco,The Italian Integrated Syst...
Session III Census and registers - M. Scannapieco,The Italian Integrated Syst...
 
201109021 mcguinness ska_meeting
201109021 mcguinness ska_meeting201109021 mcguinness ska_meeting
201109021 mcguinness ska_meeting
 

Provenance Aware Linked Sensor Data

  • 1.
  • 2. 48th ACM Southeast Conference. ACMSE 2010. Oxford, Mississippi. April 15-17, 2010. Provenance Aware Linked Sensor Data HarshalPatni, Satya S. Sahoo, Cory Henson, Amit P. Sheth Ohio Center of Excellence in Knowledge enabled Computing (Kno.e.sis) Wright State University, Dayton, OH SPOT2010 – 2nd Workshop on Trust and Privacy on the Social and Semantic Web
  • 3.
  • 5. Sensor Provenance Management System (Sensor PMS)
  • 9. Motivating Scenario Spatial information Sensors in USA Find all the sensors which have observations related to a blizzard occurring in Nevada on 24th August 2005 at 11 AM Thematic information Temporal information 4
  • 10. PROVENANCE Spatial information Find all the sensors which have observations related to a blizzard occurring in Nevada on 24th August 2005 at 11 AM Thematic information Temporal information PROVENANCE informationof the observation is required for SENSOR DISCOVERY PROVENANCE : History or Lineage of data entity 5
  • 11. Sensor PMS Data capture phase Store the Provenance Aware Sensor Data Annotating data with Sensor Provenance Ontology 6
  • 12. Provenance Capture Provenance Aware Linked Sensor Data Weather Sensors Sensor Dataset GPS Sensors Satellite Sensors Camera Sensors 7
  • 13. Provenance Representation Provenance Aware Linked Sensor Data Annotate data using concepts in Provenance Sensor Ontology Sensor Dataset Sensor Provenance Ontology 8
  • 14. Provenance Representation Sensor Ontology 9
  • 16. ProvenanceStorage GeoNames Dataset: Geographic dataset contaning information about countries and 8 million place names locatedNear Provenance Aware Linked Sensor Data Sensor Dataset Publicly Accessible Provenance Aware Sensor is adding provenance to Linked Sensor Data (on LoD). 11
  • 17. Workflow Implementation Sensor Provenance Ontology MesoWest is a Project at University of Utah, Department of Meteorology that collects observations for ~20,000 sensors in United States Open Geo-Spatial Consortium standard (O&M) for encoding sensor descriptions and observations 12
  • 18.
  • 19. Currently contains 1.7 billion triples of sensor observational dataVirtuoso RDF Store 13
  • 20. Future Work Implementing the motivating scenario Implement provenance query operators Create a plug-in implementation that can add provenance information to any processing of sensor dataset automatically 14
  • 21. Conclusion Developed an ontology-driven provenance management infrastructure for Sensor data called Sensor PMS Developed a domain specific provenance ontology by extending the provenir ontology Extension of standard ontology helps sharing and integration of provenance information across different domains 15
  • 22.
  • 23. Dayton Area Graduate Studies Institute (DAGSI)
  • 24. AFRL/DAGSI Research Topic SN08-8: "Architectures for Secure Semantic Sensor Networks for Multi-Layered Sensing."16

Hinweis der Redaktion

  1. The main goal of this work is to model provenance within the sensors domain by extending the provenir upper ontology with the sensors ontology
  2. Provenance Capture – Data Generation PhaseProvenance Representation – data generated is annotated using the concepts in the Sensor Provenance OntologyProvenance Storage – the data annotated with provenance information is stored in the Virtuoso RDF store
  3. Once we have all this data openly accessible on the Linked Open Data Cloud it is possible to for anyone in the world to search for sensors using the provenance information as shown in the motivating scenario
  4. The main goal of this work is to model provenance within the sensors domain by extending the provenir upper ontology with the sensors ontology
  5. Change this page look to make it more descriptive