SlideShare une entreprise Scribd logo
1  sur  25
Télécharger pour lire hors ligne
Overview of the W3C
Semantic Sensor Network
Ontology
Raúl García-Castro
Ontology Engineering Group.
Universidad Politécnica de Madrid, Spain
rgarcia@fi.upm.es
Overview of the SSN ontology© Raúl García Castro
Index
•  W3C Semantic Sensor Network XG
•  Semantic Sensor Network ontology
•  Use case: coastal flood emergency planning
(FP7 SSG4Env project)
•  Conclusions
2
Overview of the SSN ontology© Raúl García Castro
W3C Semantic Sensor Network (SSN) XG
•  Goal: To begin the formal process of producing ontologies
that define the capabilities of sensors and sensor networks
•  Duration: March 2009 – June 2011
-  Continuity: W3C Semantic Sensor Networks CG (Since Feb. 2012)
•  24 Participants from 14 institutions:
-  CSIRO, Wrigth State University, University of Surrey, Universidad Politécnica de
Madrid, Monterey Bay Aquarium Research Institute, Fraunhofer Gesellschaft,
Pennsylvania State University, The Open University, University of Southampton,
Open Geospatial Consortium, DERI at the National University of Ireland,
Ericsson, Boeing, Fundación CTIC
•  Outcomes:
-  Final report
•  http://www.w3.org/2005/Incubator/ssn/XGR-ssn/
-  Semantic Sensor Network (SSN) ontology
•  http://purl.oclc.org/NET/ssnx/ssn
3
Overview of the SSN ontology© Raúl García Castro
W3C SSN XG motivation
•  Sensor data are not just data:
-  Event-based nature of sensors and sensor networks
-  Temporal and spatial relationships
-  Physical constraints (e.g., limited power availability, limited
memory, variable data quality, loose connectivity)
•  Reflect the Open Geospatial Consortium standards:
-  Sensor Model Language (SensorML)
-  Observations and Measurements (O&M)
4
Overview of the SSN ontology© Raúl García Castro
Motivating use cases
5
http://www.w3.org/2005/Incubator/ssn/XGR-ssn/
Overview of the SSN ontology© Raúl García Castro
Index
•  W3C Semantic Sensor Network XG
•  Semantic Sensor Network ontology
•  Use case: coastal flood emergency planning
(FP7 SSG4Env project)
•  Conclusions
6
Overview of the SSN ontology© Raúl García Castro
Ontology module
Class
Individual
Subclass-of property
Type property
Object or datatype property
Equivalent to a restriction in an object property
Subclass of a restriction in an object property
Legend
Module
Class
= objectProperty only | some
objectProperty only | some
property
Class
Class
Class
Individual
7
Overview of the SSN ontology© Raúl García Castro
SSO Pattern
Device
Deployment
PlatformSite
System
Process
ConstraintBlockMeasuringCapability
OperatingRestriction
Data
Overview of the SSN ontology modules
8
http://www.w3.org/2005/Incubator/ssn/XGR-ssn/
Overview of the SSN ontology© Raúl García Castro
SSO Pattern
Device
Deployment
PlatformSite
System
System
onPlatform only
hasSubsystem only, some
SurvivalRange
hasSurvivalRange only
OperatingRange
hasOperatingRange only
hasDeployment only
DeploymentRelatedProcess
Deployment
deploymentProcesPart only
deployedSystem only
Platform
deployedOnPlatform only
attachedSystem only
Device
Sensor
SensingDevice
Sensing
implements some
observes only
hasMeasurementCapability only
inDeployment only
Stimulus
detects only
isProxyFor only
ObservationValue
SensorOutput
hasValue some
isProducedBy some
Process
Process
hasInput only
hasOutput only, some
Input
Output
Observation
observedBy only
featureOfInterest only
observationResult only
Property
observedProperty only
hasProperty only, some
isPropertyOf some
sensingMethodUsed only
includesEvent some
FeatureOfInterest
ConstraintBlock
Condition
inCondition only
MeasuringCapability
MeasurementCapability
forProperty only
OperatingRestriction
inCondition only
Data
Overview of the SSN ontologies
9
http://www.w3.org/2005/Incubator/ssn/XGR-ssn/
Overview of the SSN ontology© Raúl García Castro
CommunicationMeasuringCapability
MeasurementCapability MeasurementProperty
hasMeasurementProperty only
Accuracy
DetectionLimit Drift
Frequency
MeasurementRange
PrecisionResolution
ResponseTime
Selectivity
Sensitivity
Latency
SSO Pattern
EnergyRestrictionOperatingRestriction
OperatingRange OperatingProperty
hasOperatingProperty only
EnvironmentalOperatingProperty MaintenanceSchedule
SurvivalRange SurvivalProperty
hasSurvivalProperty only
EnvironmentalSurvivalProperty SystemLifetime BatteryLifetime
OperatingPowerRange
Property
Sensor and environmental properties
10
http://www.w3.org/2005/Incubator/ssn/XGR-ssn/
Overview of the SSN ontology© Raúl García Castro
Data
Device
Deployment PlatformSiteSystem
SystemDeploymentRelated
Process
Deployment
Platform
Device
Sensor
SensingDevice
Sensing
SensorInput
ObservationValue
SensorOutput
Process
Process
SSO Pattern
Observation
Property
FeatureOfInterest
DOLCE UltraLite
Situation Method Region
Object
Event
QualityEvent
InformationObject PhysicalObject
Process
DesignedArtifact or
Alignment to DOLCE UltraLite
11
http://www.w3.org/2005/Incubator/ssn/XGR-ssn/
Overview of the SSN ontology© Raúl García Castro
Index
•  W3C Semantic Sensor Network XG
•  Semantic Sensor Network ontology
•  Use case: coastal flood emergency
planning (FP7 SSG4Env project)
•  Conclusions
12
Overview of the SSN ontology© Raúl García Castro
Ontologies overview
SWEET
Service
Coastal
Defences
Ordnance
Survey
Additional
Regions
Role
DOLCE
UltraLite
Schema
FOAF
Upper
External
Infrastructure
Flood domain
13
SSN SSN
Extension
13
Overview of the SSN ontology© Raúl García Castro
SSNExtension ontology
dul:Collection
DUL
ObservationCollection
hasMember
dul:Entity
ssn:Observation
dul:Situation
SSN
directlyPrecedes
directlyFollows
hasMember only
PropertySummary
hasPropertySummary
ssn:Property
forMeasuredProperty
ssn:ObservationValue
hasQuantityValue
xsd:float
hasQuantityUnitOfMeasure
dul:UnitOfMeasure
hasMeasuredValue
(Mean, Median, Mode)
ssn:Sensor
observes only
hasMeasurementCapability only
ssn:MeasurementCapability
forProperty only
SSN
ssn:MeasurementProperty
hasMeasurementProperty only
ssn:Frequencyssn:MeasurementRange
(Min, Max)
hasMeasurementPropertyValue
DUL
hasObservation
(Min, Max, First, Last)
hasObservationPeriod
dul:TimeInterval
xsd:datetime
hasIntervalDate
coversTemporalInterval
(Start, End)
includesCollection
14
Overview of the SSN ontology© Raúl García Castro
Sensor
observes
hasMeasurementCapability
ObservationValue
Property
MeasurementCapability
forProperty
Sensor Capabilities example
MeasurementProperty
hasMeasurementProperty
MeasurementRange
hasQuantityValue
hasQuantityUnitOfMeasure
hasMeasurementPropertyMinValue
hasMeasurementPropertyMaxValue
Sensor001 cd:WaveHeight
WaveHeightMeasurementCapability
WaveHeightMeasurementRange_1
WaveHeightValue_1 3.6
hasQuantityValue
WaveHeightValue_2
meter
1.2
hasQuantityUnitOfMeasure
dul:UnitOfMeasure
“Sensor001 can measure wave heights with a minimum value of 1.2 and a maximum one of 3.6”
15
Overview of the SSN ontology© Raúl García Castro
Infrastructure. Service ontology
coversRegion
hasTemporalExtent
hasSpatialExtent
hasDataset
hasInterface
hasServiceType
containsOperation hasParameter
includesProperty
includesFeature
hasEndpointReference
16
hasSchema
hasStyleURL
WebService
StatefulWebService
xsd:string
sw:Dataset
sw:Region sw:SpatialExtent
sw:TemporalExtent
ssn:Property
ssn:FeatureOfInterest
sm:Schema
xsd:anyURI
Interface Operation Parameter
DataAccessInterface …ServiceType
OGCS.T.InfrastructureS.T. GeoJSONS.T.XMLS.T. RSSXMLS.T.
Schema
SSN
SWEETXSD
ISO 19119
RDFS.T.
16
Overview of the SSN ontology© Raúl García Castro
Infrastructure. Schema Metadata ontology
hasExtent
hasPrimaryKey
hasAttribute
or
hasSQLType
hasTimestampAttribute
17
equivalentToProperty
Extent
Relation Stream
Schema
DatabaseSchema DataStreamSchema
PrimaryKey
Attribute
TimestampAttribute
ssn:Property
SQLType
SSN
17
Overview of the SSN ontology© Raúl García Castro
Domain. Coastal Defences ontology
locatedInRegionssn:hasProperty
18
ssn:Property ssn:FeatureOfInterest sw:Region
AssetProperty OceanRegionProperty
Asset os:TopographicObject
OceanRegion…
…
TideHeight WaveHeight
SSN SWEET
OS
ssn:hasProperty only
AnyOceanRegion
ssn:hasProperty
ssn:hasProperty
sw:Unit
dul:UnitOfMeasure
DUL
degree hectopascal
18
Overview of the SSN ontology© Raúl García Castro
Domain. Features and properties
•  Physical atmosphere
•  Air temperature
•  Air pressure
•  Wind speed
•  Wind gust speed
•  Wind direction
•  Visibility
•  Ocean region
•  Sea temperature
•  Wave height
•  Maximum wave height
•  Predicted wave height
•  Wave periodicity
•  Vertical heave
•  Tide height
•  Predicted tide height
•  Asset
•  Height
•  Condition
•  Class
•  Width
•  Inspection date
•  Maintainer
•  Location
•  Mastermap Id
•  Flood plain
•  Water depth
•  Flood zone
•  Flood zone type
•  Flood defence policy
•  Strategic defence option
•  Vessel
•  Location
•  Name
•  Bearing
•  Type
•  Size
•  Callsign
•  Speed
•  ETA
•  Destination
•  Draught
•  Road problem
•  Location
•  Road identifier
•  Description
•  Event time
19 19
Overview of the SSN ontology© Raúl García Castro
Domain. Additional Regions ontology
20
sw:Region
gz:NamedPlace
Coastal Defence Partnership •  Coastal Defence Partnership
•  Coastal Defence Partnership (Modelled area)
Solent •  Solent
•  Solent (Modelled area)
•  Solent (AIS live)
South East England •  South East England
•  South East England (BRANCH)
•  South East England (CCO)
•  South East England (Highways Agency)
South West England •  South West England (Highways Agency)
Southern Coastal England •  Southern Coastal England (CCO)
Poole Bay •  Poole Bay (Wavenet)
Competent Harbour Authorities •  Southampton Competent Harbour Authority
•  Portsmouth Competent Harbour Authority
Statutory Harbour Authorities •  Southampton Statutory Harbour Authority
•  Portsmouth Statutory Harbour Authority
•  Cowes Statutory Harbour Authority
20
Overview of the SSN ontology© Raúl García Castro
Domain. Role ontology
hasRegionOfResponsibility
hasResponsibility
undertakesTask
foaf:member
21
assumesRole
hasPosition
occupies
hasSubOrganization
ssn:hasProperty
hasRelatedProperty
hasRelatedFeature
isFulfilledBy
definesisAssignedTo
appliesTo
ssn:Property
ssn:FeatureOfInterest
Position
Role Task
Responsibility
Duty
foaf:Person
foaf:Organization
sw:Region
SSN
SWEET
FOAF
isOperatedWithin
assignsTask
21
Overview of the SSN ontology© Raúl García Castro
Index
•  W3C Semantic Sensor Network XG
•  Semantic Sensor Network ontology
•  Use case: coastal flood emergency planning
(FP7 SSG4Env project)
•  Conclusions
22
Overview of the SSN ontology© Raúl García Castro
Conclusions
The SSN ontology:
•  Is compatible with the OGC standards
•  Is aligned with an upper ontology
-  Dolce Ultra Light (DUL)
•  Only includes core concepts; needs to be extended:
-  time, location, units of measurement, domain specific
(feature/property/sensor) hierarchies, etc.
•  Does not need to be wholly reused
-  Only observations
-  Only sensors
-  ...
23
Overview of the SSN ontology© Raúl García Castro
References
•  COMPTON, M., BARNAGHI, P., BERMUDEZ, L., GARCÍA-CASTRO, R.,
CORCHO, O., COX, S., GRAYBEAL, J., HAUSWIRTH, M., HENSON, C.,
HERZOG, A., HUANG, V., JANOWICZ, K., KELSEY, W., PHUOC, D.,
LEFORT, L., LEGGIERI, M., NEUHAUS, H., NIKOLOV, A., PAGE, K.,
PASSANT, A., SHETH, A., TAYLOR, K. The SSN Ontology of the W3C
Semantic Sensor Network Incubator Group. Web Semantics: Science,
Services and Agents on the World Wide Web, North America, 17, oct. 2012.
•  GARCÍA-CASTRO, R., CORCHO, O., & HILL, C. (2012). A Core
Ontological Model for Semantic Sensor Web Infrastructures. International
Journal on Semantic Web and Information Systems (IJSWIS), 8(1), 22-42.
24
Thank you for your
attention!

Contenu connexe

Tendances

Big data at experimental facilities
Big data at experimental facilitiesBig data at experimental facilities
Big data at experimental facilitiesIan Foster
 
Accelerating Discovery via Science Services
Accelerating Discovery via Science ServicesAccelerating Discovery via Science Services
Accelerating Discovery via Science ServicesIan Foster
 
Discovery Engines for Big Data: Accelerating Discovery in Basic Energy Sciences
Discovery Engines for Big Data: Accelerating Discovery in Basic Energy SciencesDiscovery Engines for Big Data: Accelerating Discovery in Basic Energy Sciences
Discovery Engines for Big Data: Accelerating Discovery in Basic Energy SciencesIan Foster
 
How HPC and large-scale data analytics are transforming experimental science
How HPC and large-scale data analytics are transforming experimental scienceHow HPC and large-scale data analytics are transforming experimental science
How HPC and large-scale data analytics are transforming experimental scienceinside-BigData.com
 
Materials Data Facility: Streamlined and automated data sharing, discovery, ...
Materials Data Facility: Streamlined and automated data sharing,  discovery, ...Materials Data Facility: Streamlined and automated data sharing,  discovery, ...
Materials Data Facility: Streamlined and automated data sharing, discovery, ...Ian Foster
 
Overview of DuraMat software tool development
Overview of DuraMat software tool developmentOverview of DuraMat software tool development
Overview of DuraMat software tool developmentAnubhav Jain
 
The Pacific Research Platform
 Two Years In
The Pacific Research Platform
 Two Years InThe Pacific Research Platform
 Two Years In
The Pacific Research Platform
 Two Years InLarry Smarr
 
Creating a Big Data Machine Learning Platform in California
Creating a Big Data Machine Learning Platform in CaliforniaCreating a Big Data Machine Learning Platform in California
Creating a Big Data Machine Learning Platform in CaliforniaLarry Smarr
 
The Schema Editor of OpenIoT for Semantic Sensor Networks
The Schema Editor of OpenIoT for Semantic Sensor NetworksThe Schema Editor of OpenIoT for Semantic Sensor Networks
The Schema Editor of OpenIoT for Semantic Sensor NetworksJean-Paul Calbimonte
 
INC 2004: An Efficient Mechanism for Adaptive Resource Discovery in Grids
INC 2004: An Efficient Mechanism for Adaptive Resource Discovery in GridsINC 2004: An Efficient Mechanism for Adaptive Resource Discovery in Grids
INC 2004: An Efficient Mechanism for Adaptive Resource Discovery in GridsJames Salter
 
Sgg crest-presentation-final
Sgg crest-presentation-finalSgg crest-presentation-final
Sgg crest-presentation-finalmarpierc
 
Atomate: a tool for rapid high-throughput computing and materials discovery
Atomate: a tool for rapid high-throughput computing and materials discoveryAtomate: a tool for rapid high-throughput computing and materials discovery
Atomate: a tool for rapid high-throughput computing and materials discoveryAnubhav Jain
 
Using the Open Science Data Cloud for Data Science Research
Using the Open Science Data Cloud for Data Science ResearchUsing the Open Science Data Cloud for Data Science Research
Using the Open Science Data Cloud for Data Science ResearchRobert Grossman
 
Overview of DuraMat software tool development (poster version)
Overview of DuraMat software tool development(poster version)Overview of DuraMat software tool development(poster version)
Overview of DuraMat software tool development (poster version)Anubhav Jain
 
Automated Machine Learning Applied to Diverse Materials Design Problems
Automated Machine Learning Applied to Diverse Materials Design ProblemsAutomated Machine Learning Applied to Diverse Materials Design Problems
Automated Machine Learning Applied to Diverse Materials Design ProblemsAnubhav Jain
 
Positioning University of California Information Technology for the Future: S...
Positioning University of California Information Technology for the Future: S...Positioning University of California Information Technology for the Future: S...
Positioning University of California Information Technology for the Future: S...Larry Smarr
 
NASA Advanced Computing Environment for Science & Engineering
NASA Advanced Computing Environment for Science & EngineeringNASA Advanced Computing Environment for Science & Engineering
NASA Advanced Computing Environment for Science & Engineeringinside-BigData.com
 

Tendances (20)

Big data at experimental facilities
Big data at experimental facilitiesBig data at experimental facilities
Big data at experimental facilities
 
Accelerating Discovery via Science Services
Accelerating Discovery via Science ServicesAccelerating Discovery via Science Services
Accelerating Discovery via Science Services
 
Discovery Engines for Big Data: Accelerating Discovery in Basic Energy Sciences
Discovery Engines for Big Data: Accelerating Discovery in Basic Energy SciencesDiscovery Engines for Big Data: Accelerating Discovery in Basic Energy Sciences
Discovery Engines for Big Data: Accelerating Discovery in Basic Energy Sciences
 
How HPC and large-scale data analytics are transforming experimental science
How HPC and large-scale data analytics are transforming experimental scienceHow HPC and large-scale data analytics are transforming experimental science
How HPC and large-scale data analytics are transforming experimental science
 
Materials Data Facility: Streamlined and automated data sharing, discovery, ...
Materials Data Facility: Streamlined and automated data sharing,  discovery, ...Materials Data Facility: Streamlined and automated data sharing,  discovery, ...
Materials Data Facility: Streamlined and automated data sharing, discovery, ...
 
Overview of DuraMat software tool development
Overview of DuraMat software tool developmentOverview of DuraMat software tool development
Overview of DuraMat software tool development
 
The Pacific Research Platform
 Two Years In
The Pacific Research Platform
 Two Years InThe Pacific Research Platform
 Two Years In
The Pacific Research Platform
 Two Years In
 
STDCS
STDCSSTDCS
STDCS
 
Creating a Big Data Machine Learning Platform in California
Creating a Big Data Machine Learning Platform in CaliforniaCreating a Big Data Machine Learning Platform in California
Creating a Big Data Machine Learning Platform in California
 
The Schema Editor of OpenIoT for Semantic Sensor Networks
The Schema Editor of OpenIoT for Semantic Sensor NetworksThe Schema Editor of OpenIoT for Semantic Sensor Networks
The Schema Editor of OpenIoT for Semantic Sensor Networks
 
INC 2004: An Efficient Mechanism for Adaptive Resource Discovery in Grids
INC 2004: An Efficient Mechanism for Adaptive Resource Discovery in GridsINC 2004: An Efficient Mechanism for Adaptive Resource Discovery in Grids
INC 2004: An Efficient Mechanism for Adaptive Resource Discovery in Grids
 
Sgg crest-presentation-final
Sgg crest-presentation-finalSgg crest-presentation-final
Sgg crest-presentation-final
 
Atomate: a tool for rapid high-throughput computing and materials discovery
Atomate: a tool for rapid high-throughput computing and materials discoveryAtomate: a tool for rapid high-throughput computing and materials discovery
Atomate: a tool for rapid high-throughput computing and materials discovery
 
CINET: A CyberInfrastructure for Network Science
CINET: A CyberInfrastructure for Network ScienceCINET: A CyberInfrastructure for Network Science
CINET: A CyberInfrastructure for Network Science
 
Using the Open Science Data Cloud for Data Science Research
Using the Open Science Data Cloud for Data Science ResearchUsing the Open Science Data Cloud for Data Science Research
Using the Open Science Data Cloud for Data Science Research
 
CINET: A Cyber-Infrastructure for Network Science Overview
CINET: A Cyber-Infrastructure for Network Science OverviewCINET: A Cyber-Infrastructure for Network Science Overview
CINET: A Cyber-Infrastructure for Network Science Overview
 
Overview of DuraMat software tool development (poster version)
Overview of DuraMat software tool development(poster version)Overview of DuraMat software tool development(poster version)
Overview of DuraMat software tool development (poster version)
 
Automated Machine Learning Applied to Diverse Materials Design Problems
Automated Machine Learning Applied to Diverse Materials Design ProblemsAutomated Machine Learning Applied to Diverse Materials Design Problems
Automated Machine Learning Applied to Diverse Materials Design Problems
 
Positioning University of California Information Technology for the Future: S...
Positioning University of California Information Technology for the Future: S...Positioning University of California Information Technology for the Future: S...
Positioning University of California Information Technology for the Future: S...
 
NASA Advanced Computing Environment for Science & Engineering
NASA Advanced Computing Environment for Science & EngineeringNASA Advanced Computing Environment for Science & Engineering
NASA Advanced Computing Environment for Science & Engineering
 

En vedette

Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things PayamBarnaghi
 
Semantic Technologies for the Internet of Things: Challenges and Opportunities
Semantic Technologies for the Internet of Things: Challenges and Opportunities Semantic Technologies for the Internet of Things: Challenges and Opportunities
Semantic Technologies for the Internet of Things: Challenges and Opportunities PayamBarnaghi
 
IoT-Lite: A Lightweight Semantic Model for the Internet of Things
IoT-Lite:  A Lightweight Semantic Model for the Internet of ThingsIoT-Lite:  A Lightweight Semantic Model for the Internet of Things
IoT-Lite: A Lightweight Semantic Model for the Internet of ThingsPayamBarnaghi
 
Tutorial ESWC2011 Building Semantic Sensor Web - 01 - Introduction
Tutorial ESWC2011 Building Semantic Sensor Web - 01 - IntroductionTutorial ESWC2011 Building Semantic Sensor Web - 01 - Introduction
Tutorial ESWC2011 Building Semantic Sensor Web - 01 - IntroductionJean-Paul Calbimonte
 
FiCloud2016 lov4iot extended
FiCloud2016 lov4iot extended FiCloud2016 lov4iot extended
FiCloud2016 lov4iot extended Amélie Gyrard
 
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...Laurent Lefort
 
MK:Smart - Overview
MK:Smart - OverviewMK:Smart - Overview
MK:Smart - OverviewEnrico Motta
 
Kerry Taylor - Semantics & sensors
Kerry Taylor - Semantics & sensorsKerry Taylor - Semantics & sensors
Kerry Taylor - Semantics & sensorsWeb Directions
 
Ingredients for Semantic Sensor Networks
Ingredients for Semantic Sensor NetworksIngredients for Semantic Sensor Networks
Ingredients for Semantic Sensor NetworksOscar Corcho
 
Toward Semantic Sensor Data Archives on the Web
Toward Semantic Sensor Data Archives on the WebToward Semantic Sensor Data Archives on the Web
Toward Semantic Sensor Data Archives on the WebJean-Paul Calbimonte
 
Semantic IoT Semantic Inter-Operability Practices - Part 1
Semantic IoT Semantic Inter-Operability Practices - Part 1Semantic IoT Semantic Inter-Operability Practices - Part 1
Semantic IoT Semantic Inter-Operability Practices - Part 1iotest
 
Ojo Al Data 100 - Call for sharing session at IODC 2016
Ojo Al Data 100 - Call for sharing session at IODC 2016Ojo Al Data 100 - Call for sharing session at IODC 2016
Ojo Al Data 100 - Call for sharing session at IODC 2016Oscar Corcho
 
Generating Linked Data in Real-time from Sensor Data Streams
Generating Linked Data in Real-time from Sensor Data StreamsGenerating Linked Data in Real-time from Sensor Data Streams
Generating Linked Data in Real-time from Sensor Data StreamsNikolaos Konstantinou
 
A Knowledge-based Approach for Real-Time IoT Stream Annotation and Processing
A Knowledge-based Approach for Real-Time IoT Stream Annotation and ProcessingA Knowledge-based Approach for Real-Time IoT Stream Annotation and Processing
A Knowledge-based Approach for Real-Time IoT Stream Annotation and ProcessingPayamBarnaghi
 
RDF, SPARQL and Semantic Repositories
RDF, SPARQL and Semantic RepositoriesRDF, SPARQL and Semantic Repositories
RDF, SPARQL and Semantic RepositoriesMarin Dimitrov
 
Laura Daniele | SAREF and SAREF4EE: Towards interoperability for Smart Applia...
Laura Daniele | SAREF and SAREF4EE: Towards interoperability for Smart Applia...Laura Daniele | SAREF and SAREF4EE: Towards interoperability for Smart Applia...
Laura Daniele | SAREF and SAREF4EE: Towards interoperability for Smart Applia...semanticsconference
 
Reginald Ford, Grit Denker, Daniel Elenius, Wesley Moore and Elie Abi-Lahoud ...
Reginald Ford, Grit Denker, Daniel Elenius, Wesley Moore and Elie Abi-Lahoud ...Reginald Ford, Grit Denker, Daniel Elenius, Wesley Moore and Elie Abi-Lahoud ...
Reginald Ford, Grit Denker, Daniel Elenius, Wesley Moore and Elie Abi-Lahoud ...semanticsconference
 
Dynamic Semantics for the Internet of Things
Dynamic Semantics for the Internet of Things Dynamic Semantics for the Internet of Things
Dynamic Semantics for the Internet of Things PayamBarnaghi
 
ifcOWL - An ontology for building data
ifcOWL - An ontology for building dataifcOWL - An ontology for building data
ifcOWL - An ontology for building dataLD4SC
 

En vedette (20)

Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things Semantic technologies for the Internet of Things
Semantic technologies for the Internet of Things
 
Semantic Technologies for the Internet of Things: Challenges and Opportunities
Semantic Technologies for the Internet of Things: Challenges and Opportunities Semantic Technologies for the Internet of Things: Challenges and Opportunities
Semantic Technologies for the Internet of Things: Challenges and Opportunities
 
IoT-Lite: A Lightweight Semantic Model for the Internet of Things
IoT-Lite:  A Lightweight Semantic Model for the Internet of ThingsIoT-Lite:  A Lightweight Semantic Model for the Internet of Things
IoT-Lite: A Lightweight Semantic Model for the Internet of Things
 
ontologie de capteurs
ontologie de capteursontologie de capteurs
ontologie de capteurs
 
Tutorial ESWC2011 Building Semantic Sensor Web - 01 - Introduction
Tutorial ESWC2011 Building Semantic Sensor Web - 01 - IntroductionTutorial ESWC2011 Building Semantic Sensor Web - 01 - Introduction
Tutorial ESWC2011 Building Semantic Sensor Web - 01 - Introduction
 
FiCloud2016 lov4iot extended
FiCloud2016 lov4iot extended FiCloud2016 lov4iot extended
FiCloud2016 lov4iot extended
 
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...
 
MK:Smart - Overview
MK:Smart - OverviewMK:Smart - Overview
MK:Smart - Overview
 
Kerry Taylor - Semantics & sensors
Kerry Taylor - Semantics & sensorsKerry Taylor - Semantics & sensors
Kerry Taylor - Semantics & sensors
 
Ingredients for Semantic Sensor Networks
Ingredients for Semantic Sensor NetworksIngredients for Semantic Sensor Networks
Ingredients for Semantic Sensor Networks
 
Toward Semantic Sensor Data Archives on the Web
Toward Semantic Sensor Data Archives on the WebToward Semantic Sensor Data Archives on the Web
Toward Semantic Sensor Data Archives on the Web
 
Semantic IoT Semantic Inter-Operability Practices - Part 1
Semantic IoT Semantic Inter-Operability Practices - Part 1Semantic IoT Semantic Inter-Operability Practices - Part 1
Semantic IoT Semantic Inter-Operability Practices - Part 1
 
Ojo Al Data 100 - Call for sharing session at IODC 2016
Ojo Al Data 100 - Call for sharing session at IODC 2016Ojo Al Data 100 - Call for sharing session at IODC 2016
Ojo Al Data 100 - Call for sharing session at IODC 2016
 
Generating Linked Data in Real-time from Sensor Data Streams
Generating Linked Data in Real-time from Sensor Data StreamsGenerating Linked Data in Real-time from Sensor Data Streams
Generating Linked Data in Real-time from Sensor Data Streams
 
A Knowledge-based Approach for Real-Time IoT Stream Annotation and Processing
A Knowledge-based Approach for Real-Time IoT Stream Annotation and ProcessingA Knowledge-based Approach for Real-Time IoT Stream Annotation and Processing
A Knowledge-based Approach for Real-Time IoT Stream Annotation and Processing
 
RDF, SPARQL and Semantic Repositories
RDF, SPARQL and Semantic RepositoriesRDF, SPARQL and Semantic Repositories
RDF, SPARQL and Semantic Repositories
 
Laura Daniele | SAREF and SAREF4EE: Towards interoperability for Smart Applia...
Laura Daniele | SAREF and SAREF4EE: Towards interoperability for Smart Applia...Laura Daniele | SAREF and SAREF4EE: Towards interoperability for Smart Applia...
Laura Daniele | SAREF and SAREF4EE: Towards interoperability for Smart Applia...
 
Reginald Ford, Grit Denker, Daniel Elenius, Wesley Moore and Elie Abi-Lahoud ...
Reginald Ford, Grit Denker, Daniel Elenius, Wesley Moore and Elie Abi-Lahoud ...Reginald Ford, Grit Denker, Daniel Elenius, Wesley Moore and Elie Abi-Lahoud ...
Reginald Ford, Grit Denker, Daniel Elenius, Wesley Moore and Elie Abi-Lahoud ...
 
Dynamic Semantics for the Internet of Things
Dynamic Semantics for the Internet of Things Dynamic Semantics for the Internet of Things
Dynamic Semantics for the Internet of Things
 
ifcOWL - An ontology for building data
ifcOWL - An ontology for building dataifcOWL - An ontology for building data
ifcOWL - An ontology for building data
 

Similaire à Overview of the W3C Semantic Sensor Network (SSN) ontology

MDM-2013, Milan, Italy, 6 June, 2013
MDM-2013, Milan, Italy, 6 June, 2013MDM-2013, Milan, Italy, 6 June, 2013
MDM-2013, Milan, Italy, 6 June, 2013Charith Perera
 
XGSN: An Open-source Semantic Sensing Middleware for the Web of Things
XGSN: An Open-source Semantic Sensing Middleware for the Web of ThingsXGSN: An Open-source Semantic Sensing Middleware for the Web of Things
XGSN: An Open-source Semantic Sensing Middleware for the Web of ThingsJean-Paul Calbimonte
 
Multi-component Modeling with Swift at Extreme Scale
Multi-component Modeling with Swift at Extreme ScaleMulti-component Modeling with Swift at Extreme Scale
Multi-component Modeling with Swift at Extreme ScaleDaniel S. Katz
 
Data persistency (draco, cygnus, sth comet, quantum leap)
Data persistency (draco, cygnus, sth comet, quantum leap)Data persistency (draco, cygnus, sth comet, quantum leap)
Data persistency (draco, cygnus, sth comet, quantum leap)Fernando Lopez Aguilar
 
An Open Source Web Service for Registering and Managing Environmental Samples
 An Open Source Web Service for Registering and Managing Environmental Samples An Open Source Web Service for Registering and Managing Environmental Samples
An Open Source Web Service for Registering and Managing Environmental SamplesAnusuriya Devaraju
 
Polar Domain Discovery with Sparkler - EarthCube
Polar Domain Discovery with Sparkler - EarthCubePolar Domain Discovery with Sparkler - EarthCube
Polar Domain Discovery with Sparkler - EarthCubeKaranjeet Singh
 
Enabling Cloud Bursting for Life Sciences within Galaxy
Enabling Cloud Bursting for Life Sciences within GalaxyEnabling Cloud Bursting for Life Sciences within Galaxy
Enabling Cloud Bursting for Life Sciences within GalaxyEnis Afgan
 
Scientific
Scientific Scientific
Scientific marpierc
 
GeoCENS OGC Standards and Sensor Web Enablement presented at GeoCENS Banff Se...
GeoCENS OGC Standards and Sensor Web Enablement presented at GeoCENS Banff Se...GeoCENS OGC Standards and Sensor Web Enablement presented at GeoCENS Banff Se...
GeoCENS OGC Standards and Sensor Web Enablement presented at GeoCENS Banff Se...Cybera Inc.
 
Grid Projects In The US July 2008
Grid Projects In The US July 2008Grid Projects In The US July 2008
Grid Projects In The US July 2008Ian Foster
 
Venice Juanillas at #ICG13: Rice Galaxy: an open resource for plant science
Venice Juanillas at #ICG13: Rice Galaxy: an open resource for plant scienceVenice Juanillas at #ICG13: Rice Galaxy: an open resource for plant science
Venice Juanillas at #ICG13: Rice Galaxy: an open resource for plant scienceGigaScience, BGI Hong Kong
 
SemsorGrid4Env (Newsfromthefront 2010)
SemsorGrid4Env (Newsfromthefront 2010)SemsorGrid4Env (Newsfromthefront 2010)
SemsorGrid4Env (Newsfromthefront 2010)STI International
 
Runtime Behavior of JavaScript Programs
Runtime Behavior of JavaScript ProgramsRuntime Behavior of JavaScript Programs
Runtime Behavior of JavaScript ProgramsIRJET Journal
 
Semantic Sensor Network Ontology: Description et usage
Semantic Sensor Network Ontology: Description et usageSemantic Sensor Network Ontology: Description et usage
Semantic Sensor Network Ontology: Description et usagecatherine roussey
 
Practical Machine Learning in Information Security
Practical Machine Learning in Information SecurityPractical Machine Learning in Information Security
Practical Machine Learning in Information SecuritySven Krasser
 
hans-werner_braun
hans-werner_braunhans-werner_braun
hans-werner_braunwebuploader
 
ICWE2017 BigDataEurope
ICWE2017 BigDataEuropeICWE2017 BigDataEurope
ICWE2017 BigDataEuropeBigData_Europe
 

Similaire à Overview of the W3C Semantic Sensor Network (SSN) ontology (20)

MDM-2013, Milan, Italy, 6 June, 2013
MDM-2013, Milan, Italy, 6 June, 2013MDM-2013, Milan, Italy, 6 June, 2013
MDM-2013, Milan, Italy, 6 June, 2013
 
XGSN: An Open-source Semantic Sensing Middleware for the Web of Things
XGSN: An Open-source Semantic Sensing Middleware for the Web of ThingsXGSN: An Open-source Semantic Sensing Middleware for the Web of Things
XGSN: An Open-source Semantic Sensing Middleware for the Web of Things
 
Multi-component Modeling with Swift at Extreme Scale
Multi-component Modeling with Swift at Extreme ScaleMulti-component Modeling with Swift at Extreme Scale
Multi-component Modeling with Swift at Extreme Scale
 
Data persistency (draco, cygnus, sth comet, quantum leap)
Data persistency (draco, cygnus, sth comet, quantum leap)Data persistency (draco, cygnus, sth comet, quantum leap)
Data persistency (draco, cygnus, sth comet, quantum leap)
 
An Open Source Web Service for Registering and Managing Environmental Samples
 An Open Source Web Service for Registering and Managing Environmental Samples An Open Source Web Service for Registering and Managing Environmental Samples
An Open Source Web Service for Registering and Managing Environmental Samples
 
Seminar
SeminarSeminar
Seminar
 
Polar Domain Discovery with Sparkler - EarthCube
Polar Domain Discovery with Sparkler - EarthCubePolar Domain Discovery with Sparkler - EarthCube
Polar Domain Discovery with Sparkler - EarthCube
 
Enabling Cloud Bursting for Life Sciences within Galaxy
Enabling Cloud Bursting for Life Sciences within GalaxyEnabling Cloud Bursting for Life Sciences within Galaxy
Enabling Cloud Bursting for Life Sciences within Galaxy
 
Scientific
Scientific Scientific
Scientific
 
GeoCENS OGC Standards and Sensor Web Enablement presented at GeoCENS Banff Se...
GeoCENS OGC Standards and Sensor Web Enablement presented at GeoCENS Banff Se...GeoCENS OGC Standards and Sensor Web Enablement presented at GeoCENS Banff Se...
GeoCENS OGC Standards and Sensor Web Enablement presented at GeoCENS Banff Se...
 
Grid Projects In The US July 2008
Grid Projects In The US July 2008Grid Projects In The US July 2008
Grid Projects In The US July 2008
 
Venice Juanillas at #ICG13: Rice Galaxy: an open resource for plant science
Venice Juanillas at #ICG13: Rice Galaxy: an open resource for plant scienceVenice Juanillas at #ICG13: Rice Galaxy: an open resource for plant science
Venice Juanillas at #ICG13: Rice Galaxy: an open resource for plant science
 
SemsorGrid4Env (Newsfromthefront 2010)
SemsorGrid4Env (Newsfromthefront 2010)SemsorGrid4Env (Newsfromthefront 2010)
SemsorGrid4Env (Newsfromthefront 2010)
 
ieee cloud 2015 keynote talk
ieee cloud 2015 keynote talkieee cloud 2015 keynote talk
ieee cloud 2015 keynote talk
 
Runtime Behavior of JavaScript Programs
Runtime Behavior of JavaScript ProgramsRuntime Behavior of JavaScript Programs
Runtime Behavior of JavaScript Programs
 
Semantic Sensor Network Ontology: Description et usage
Semantic Sensor Network Ontology: Description et usageSemantic Sensor Network Ontology: Description et usage
Semantic Sensor Network Ontology: Description et usage
 
Practical Machine Learning in Information Security
Practical Machine Learning in Information SecurityPractical Machine Learning in Information Security
Practical Machine Learning in Information Security
 
hans-werner_braun
hans-werner_braunhans-werner_braun
hans-werner_braun
 
Sigcomm16 sdn-nvf-topics-preview
Sigcomm16 sdn-nvf-topics-previewSigcomm16 sdn-nvf-topics-preview
Sigcomm16 sdn-nvf-topics-preview
 
ICWE2017 BigDataEurope
ICWE2017 BigDataEuropeICWE2017 BigDataEurope
ICWE2017 BigDataEurope
 

Dernier

SCM Symposium PPT Format Customer loyalty is predi
SCM Symposium PPT Format Customer loyalty is prediSCM Symposium PPT Format Customer loyalty is predi
SCM Symposium PPT Format Customer loyalty is predieusebiomeyer
 
Font Performance - NYC WebPerf Meetup April '24
Font Performance - NYC WebPerf Meetup April '24Font Performance - NYC WebPerf Meetup April '24
Font Performance - NYC WebPerf Meetup April '24Paul Calvano
 
Film cover research (1).pptxsdasdasdasdasdasa
Film cover research (1).pptxsdasdasdasdasdasaFilm cover research (1).pptxsdasdasdasdasdasa
Film cover research (1).pptxsdasdasdasdasdasa494f574xmv
 
Intellectual property rightsand its types.pptx
Intellectual property rightsand its types.pptxIntellectual property rightsand its types.pptx
Intellectual property rightsand its types.pptxBipin Adhikari
 
定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一
定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一
定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一Fs
 
Blepharitis inflammation of eyelid symptoms cause everything included along w...
Blepharitis inflammation of eyelid symptoms cause everything included along w...Blepharitis inflammation of eyelid symptoms cause everything included along w...
Blepharitis inflammation of eyelid symptoms cause everything included along w...Excelmac1
 
『澳洲文凭』买拉筹伯大学毕业证书成绩单办理澳洲LTU文凭学位证书
『澳洲文凭』买拉筹伯大学毕业证书成绩单办理澳洲LTU文凭学位证书『澳洲文凭』买拉筹伯大学毕业证书成绩单办理澳洲LTU文凭学位证书
『澳洲文凭』买拉筹伯大学毕业证书成绩单办理澳洲LTU文凭学位证书rnrncn29
 
Contact Rya Baby for Call Girls New Delhi
Contact Rya Baby for Call Girls New DelhiContact Rya Baby for Call Girls New Delhi
Contact Rya Baby for Call Girls New Delhimiss dipika
 
Git and Github workshop GDSC MLRITM
Git and Github  workshop GDSC MLRITMGit and Github  workshop GDSC MLRITM
Git and Github workshop GDSC MLRITMgdsc13
 
定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一
定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一
定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一Fs
 
PHP-based rendering of TYPO3 Documentation
PHP-based rendering of TYPO3 DocumentationPHP-based rendering of TYPO3 Documentation
PHP-based rendering of TYPO3 DocumentationLinaWolf1
 
Potsdam FH学位证,波茨坦应用技术大学毕业证书1:1制作
Potsdam FH学位证,波茨坦应用技术大学毕业证书1:1制作Potsdam FH学位证,波茨坦应用技术大学毕业证书1:1制作
Potsdam FH学位证,波茨坦应用技术大学毕业证书1:1制作ys8omjxb
 
『澳洲文凭』买詹姆士库克大学毕业证书成绩单办理澳洲JCU文凭学位证书
『澳洲文凭』买詹姆士库克大学毕业证书成绩单办理澳洲JCU文凭学位证书『澳洲文凭』买詹姆士库克大学毕业证书成绩单办理澳洲JCU文凭学位证书
『澳洲文凭』买詹姆士库克大学毕业证书成绩单办理澳洲JCU文凭学位证书rnrncn29
 
A Good Girl's Guide to Murder (A Good Girl's Guide to Murder, #1)
A Good Girl's Guide to Murder (A Good Girl's Guide to Murder, #1)A Good Girl's Guide to Murder (A Good Girl's Guide to Murder, #1)
A Good Girl's Guide to Murder (A Good Girl's Guide to Murder, #1)Christopher H Felton
 
Q4-1-Illustrating-Hypothesis-Testing.pptx
Q4-1-Illustrating-Hypothesis-Testing.pptxQ4-1-Illustrating-Hypothesis-Testing.pptx
Q4-1-Illustrating-Hypothesis-Testing.pptxeditsforyah
 
Packaging the Monolith - PHP Tek 2024 (Breaking it down one bite at a time)
Packaging the Monolith - PHP Tek 2024 (Breaking it down one bite at a time)Packaging the Monolith - PHP Tek 2024 (Breaking it down one bite at a time)
Packaging the Monolith - PHP Tek 2024 (Breaking it down one bite at a time)Dana Luther
 
办理多伦多大学毕业证成绩单|购买加拿大UTSG文凭证书
办理多伦多大学毕业证成绩单|购买加拿大UTSG文凭证书办理多伦多大学毕业证成绩单|购买加拿大UTSG文凭证书
办理多伦多大学毕业证成绩单|购买加拿大UTSG文凭证书zdzoqco
 

Dernier (20)

SCM Symposium PPT Format Customer loyalty is predi
SCM Symposium PPT Format Customer loyalty is prediSCM Symposium PPT Format Customer loyalty is predi
SCM Symposium PPT Format Customer loyalty is predi
 
Font Performance - NYC WebPerf Meetup April '24
Font Performance - NYC WebPerf Meetup April '24Font Performance - NYC WebPerf Meetup April '24
Font Performance - NYC WebPerf Meetup April '24
 
young call girls in Uttam Nagar🔝 9953056974 🔝 Delhi escort Service
young call girls in Uttam Nagar🔝 9953056974 🔝 Delhi escort Serviceyoung call girls in Uttam Nagar🔝 9953056974 🔝 Delhi escort Service
young call girls in Uttam Nagar🔝 9953056974 🔝 Delhi escort Service
 
Model Call Girl in Jamuna Vihar Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in  Jamuna Vihar Delhi reach out to us at 🔝9953056974🔝Model Call Girl in  Jamuna Vihar Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Jamuna Vihar Delhi reach out to us at 🔝9953056974🔝
 
Film cover research (1).pptxsdasdasdasdasdasa
Film cover research (1).pptxsdasdasdasdasdasaFilm cover research (1).pptxsdasdasdasdasdasa
Film cover research (1).pptxsdasdasdasdasdasa
 
Intellectual property rightsand its types.pptx
Intellectual property rightsand its types.pptxIntellectual property rightsand its types.pptx
Intellectual property rightsand its types.pptx
 
定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一
定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一
定制(UAL学位证)英国伦敦艺术大学毕业证成绩单原版一比一
 
Blepharitis inflammation of eyelid symptoms cause everything included along w...
Blepharitis inflammation of eyelid symptoms cause everything included along w...Blepharitis inflammation of eyelid symptoms cause everything included along w...
Blepharitis inflammation of eyelid symptoms cause everything included along w...
 
『澳洲文凭』买拉筹伯大学毕业证书成绩单办理澳洲LTU文凭学位证书
『澳洲文凭』买拉筹伯大学毕业证书成绩单办理澳洲LTU文凭学位证书『澳洲文凭』买拉筹伯大学毕业证书成绩单办理澳洲LTU文凭学位证书
『澳洲文凭』买拉筹伯大学毕业证书成绩单办理澳洲LTU文凭学位证书
 
Contact Rya Baby for Call Girls New Delhi
Contact Rya Baby for Call Girls New DelhiContact Rya Baby for Call Girls New Delhi
Contact Rya Baby for Call Girls New Delhi
 
Git and Github workshop GDSC MLRITM
Git and Github  workshop GDSC MLRITMGit and Github  workshop GDSC MLRITM
Git and Github workshop GDSC MLRITM
 
定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一
定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一
定制(Lincoln毕业证书)新西兰林肯大学毕业证成绩单原版一比一
 
PHP-based rendering of TYPO3 Documentation
PHP-based rendering of TYPO3 DocumentationPHP-based rendering of TYPO3 Documentation
PHP-based rendering of TYPO3 Documentation
 
Potsdam FH学位证,波茨坦应用技术大学毕业证书1:1制作
Potsdam FH学位证,波茨坦应用技术大学毕业证书1:1制作Potsdam FH学位证,波茨坦应用技术大学毕业证书1:1制作
Potsdam FH学位证,波茨坦应用技术大学毕业证书1:1制作
 
Hot Sexy call girls in Rk Puram 🔝 9953056974 🔝 Delhi escort Service
Hot Sexy call girls in  Rk Puram 🔝 9953056974 🔝 Delhi escort ServiceHot Sexy call girls in  Rk Puram 🔝 9953056974 🔝 Delhi escort Service
Hot Sexy call girls in Rk Puram 🔝 9953056974 🔝 Delhi escort Service
 
『澳洲文凭』买詹姆士库克大学毕业证书成绩单办理澳洲JCU文凭学位证书
『澳洲文凭』买詹姆士库克大学毕业证书成绩单办理澳洲JCU文凭学位证书『澳洲文凭』买詹姆士库克大学毕业证书成绩单办理澳洲JCU文凭学位证书
『澳洲文凭』买詹姆士库克大学毕业证书成绩单办理澳洲JCU文凭学位证书
 
A Good Girl's Guide to Murder (A Good Girl's Guide to Murder, #1)
A Good Girl's Guide to Murder (A Good Girl's Guide to Murder, #1)A Good Girl's Guide to Murder (A Good Girl's Guide to Murder, #1)
A Good Girl's Guide to Murder (A Good Girl's Guide to Murder, #1)
 
Q4-1-Illustrating-Hypothesis-Testing.pptx
Q4-1-Illustrating-Hypothesis-Testing.pptxQ4-1-Illustrating-Hypothesis-Testing.pptx
Q4-1-Illustrating-Hypothesis-Testing.pptx
 
Packaging the Monolith - PHP Tek 2024 (Breaking it down one bite at a time)
Packaging the Monolith - PHP Tek 2024 (Breaking it down one bite at a time)Packaging the Monolith - PHP Tek 2024 (Breaking it down one bite at a time)
Packaging the Monolith - PHP Tek 2024 (Breaking it down one bite at a time)
 
办理多伦多大学毕业证成绩单|购买加拿大UTSG文凭证书
办理多伦多大学毕业证成绩单|购买加拿大UTSG文凭证书办理多伦多大学毕业证成绩单|购买加拿大UTSG文凭证书
办理多伦多大学毕业证成绩单|购买加拿大UTSG文凭证书
 

Overview of the W3C Semantic Sensor Network (SSN) ontology

  • 1. Overview of the W3C Semantic Sensor Network Ontology Raúl García-Castro Ontology Engineering Group. Universidad Politécnica de Madrid, Spain rgarcia@fi.upm.es
  • 2. Overview of the SSN ontology© Raúl García Castro Index •  W3C Semantic Sensor Network XG •  Semantic Sensor Network ontology •  Use case: coastal flood emergency planning (FP7 SSG4Env project) •  Conclusions 2
  • 3. Overview of the SSN ontology© Raúl García Castro W3C Semantic Sensor Network (SSN) XG •  Goal: To begin the formal process of producing ontologies that define the capabilities of sensors and sensor networks •  Duration: March 2009 – June 2011 -  Continuity: W3C Semantic Sensor Networks CG (Since Feb. 2012) •  24 Participants from 14 institutions: -  CSIRO, Wrigth State University, University of Surrey, Universidad Politécnica de Madrid, Monterey Bay Aquarium Research Institute, Fraunhofer Gesellschaft, Pennsylvania State University, The Open University, University of Southampton, Open Geospatial Consortium, DERI at the National University of Ireland, Ericsson, Boeing, Fundación CTIC •  Outcomes: -  Final report •  http://www.w3.org/2005/Incubator/ssn/XGR-ssn/ -  Semantic Sensor Network (SSN) ontology •  http://purl.oclc.org/NET/ssnx/ssn 3
  • 4. Overview of the SSN ontology© Raúl García Castro W3C SSN XG motivation •  Sensor data are not just data: -  Event-based nature of sensors and sensor networks -  Temporal and spatial relationships -  Physical constraints (e.g., limited power availability, limited memory, variable data quality, loose connectivity) •  Reflect the Open Geospatial Consortium standards: -  Sensor Model Language (SensorML) -  Observations and Measurements (O&M) 4
  • 5. Overview of the SSN ontology© Raúl García Castro Motivating use cases 5 http://www.w3.org/2005/Incubator/ssn/XGR-ssn/
  • 6. Overview of the SSN ontology© Raúl García Castro Index •  W3C Semantic Sensor Network XG •  Semantic Sensor Network ontology •  Use case: coastal flood emergency planning (FP7 SSG4Env project) •  Conclusions 6
  • 7. Overview of the SSN ontology© Raúl García Castro Ontology module Class Individual Subclass-of property Type property Object or datatype property Equivalent to a restriction in an object property Subclass of a restriction in an object property Legend Module Class = objectProperty only | some objectProperty only | some property Class Class Class Individual 7
  • 8. Overview of the SSN ontology© Raúl García Castro SSO Pattern Device Deployment PlatformSite System Process ConstraintBlockMeasuringCapability OperatingRestriction Data Overview of the SSN ontology modules 8 http://www.w3.org/2005/Incubator/ssn/XGR-ssn/
  • 9. Overview of the SSN ontology© Raúl García Castro SSO Pattern Device Deployment PlatformSite System System onPlatform only hasSubsystem only, some SurvivalRange hasSurvivalRange only OperatingRange hasOperatingRange only hasDeployment only DeploymentRelatedProcess Deployment deploymentProcesPart only deployedSystem only Platform deployedOnPlatform only attachedSystem only Device Sensor SensingDevice Sensing implements some observes only hasMeasurementCapability only inDeployment only Stimulus detects only isProxyFor only ObservationValue SensorOutput hasValue some isProducedBy some Process Process hasInput only hasOutput only, some Input Output Observation observedBy only featureOfInterest only observationResult only Property observedProperty only hasProperty only, some isPropertyOf some sensingMethodUsed only includesEvent some FeatureOfInterest ConstraintBlock Condition inCondition only MeasuringCapability MeasurementCapability forProperty only OperatingRestriction inCondition only Data Overview of the SSN ontologies 9 http://www.w3.org/2005/Incubator/ssn/XGR-ssn/
  • 10. Overview of the SSN ontology© Raúl García Castro CommunicationMeasuringCapability MeasurementCapability MeasurementProperty hasMeasurementProperty only Accuracy DetectionLimit Drift Frequency MeasurementRange PrecisionResolution ResponseTime Selectivity Sensitivity Latency SSO Pattern EnergyRestrictionOperatingRestriction OperatingRange OperatingProperty hasOperatingProperty only EnvironmentalOperatingProperty MaintenanceSchedule SurvivalRange SurvivalProperty hasSurvivalProperty only EnvironmentalSurvivalProperty SystemLifetime BatteryLifetime OperatingPowerRange Property Sensor and environmental properties 10 http://www.w3.org/2005/Incubator/ssn/XGR-ssn/
  • 11. Overview of the SSN ontology© Raúl García Castro Data Device Deployment PlatformSiteSystem SystemDeploymentRelated Process Deployment Platform Device Sensor SensingDevice Sensing SensorInput ObservationValue SensorOutput Process Process SSO Pattern Observation Property FeatureOfInterest DOLCE UltraLite Situation Method Region Object Event QualityEvent InformationObject PhysicalObject Process DesignedArtifact or Alignment to DOLCE UltraLite 11 http://www.w3.org/2005/Incubator/ssn/XGR-ssn/
  • 12. Overview of the SSN ontology© Raúl García Castro Index •  W3C Semantic Sensor Network XG •  Semantic Sensor Network ontology •  Use case: coastal flood emergency planning (FP7 SSG4Env project) •  Conclusions 12
  • 13. Overview of the SSN ontology© Raúl García Castro Ontologies overview SWEET Service Coastal Defences Ordnance Survey Additional Regions Role DOLCE UltraLite Schema FOAF Upper External Infrastructure Flood domain 13 SSN SSN Extension 13
  • 14. Overview of the SSN ontology© Raúl García Castro SSNExtension ontology dul:Collection DUL ObservationCollection hasMember dul:Entity ssn:Observation dul:Situation SSN directlyPrecedes directlyFollows hasMember only PropertySummary hasPropertySummary ssn:Property forMeasuredProperty ssn:ObservationValue hasQuantityValue xsd:float hasQuantityUnitOfMeasure dul:UnitOfMeasure hasMeasuredValue (Mean, Median, Mode) ssn:Sensor observes only hasMeasurementCapability only ssn:MeasurementCapability forProperty only SSN ssn:MeasurementProperty hasMeasurementProperty only ssn:Frequencyssn:MeasurementRange (Min, Max) hasMeasurementPropertyValue DUL hasObservation (Min, Max, First, Last) hasObservationPeriod dul:TimeInterval xsd:datetime hasIntervalDate coversTemporalInterval (Start, End) includesCollection 14
  • 15. Overview of the SSN ontology© Raúl García Castro Sensor observes hasMeasurementCapability ObservationValue Property MeasurementCapability forProperty Sensor Capabilities example MeasurementProperty hasMeasurementProperty MeasurementRange hasQuantityValue hasQuantityUnitOfMeasure hasMeasurementPropertyMinValue hasMeasurementPropertyMaxValue Sensor001 cd:WaveHeight WaveHeightMeasurementCapability WaveHeightMeasurementRange_1 WaveHeightValue_1 3.6 hasQuantityValue WaveHeightValue_2 meter 1.2 hasQuantityUnitOfMeasure dul:UnitOfMeasure “Sensor001 can measure wave heights with a minimum value of 1.2 and a maximum one of 3.6” 15
  • 16. Overview of the SSN ontology© Raúl García Castro Infrastructure. Service ontology coversRegion hasTemporalExtent hasSpatialExtent hasDataset hasInterface hasServiceType containsOperation hasParameter includesProperty includesFeature hasEndpointReference 16 hasSchema hasStyleURL WebService StatefulWebService xsd:string sw:Dataset sw:Region sw:SpatialExtent sw:TemporalExtent ssn:Property ssn:FeatureOfInterest sm:Schema xsd:anyURI Interface Operation Parameter DataAccessInterface …ServiceType OGCS.T.InfrastructureS.T. GeoJSONS.T.XMLS.T. RSSXMLS.T. Schema SSN SWEETXSD ISO 19119 RDFS.T. 16
  • 17. Overview of the SSN ontology© Raúl García Castro Infrastructure. Schema Metadata ontology hasExtent hasPrimaryKey hasAttribute or hasSQLType hasTimestampAttribute 17 equivalentToProperty Extent Relation Stream Schema DatabaseSchema DataStreamSchema PrimaryKey Attribute TimestampAttribute ssn:Property SQLType SSN 17
  • 18. Overview of the SSN ontology© Raúl García Castro Domain. Coastal Defences ontology locatedInRegionssn:hasProperty 18 ssn:Property ssn:FeatureOfInterest sw:Region AssetProperty OceanRegionProperty Asset os:TopographicObject OceanRegion… … TideHeight WaveHeight SSN SWEET OS ssn:hasProperty only AnyOceanRegion ssn:hasProperty ssn:hasProperty sw:Unit dul:UnitOfMeasure DUL degree hectopascal 18
  • 19. Overview of the SSN ontology© Raúl García Castro Domain. Features and properties •  Physical atmosphere •  Air temperature •  Air pressure •  Wind speed •  Wind gust speed •  Wind direction •  Visibility •  Ocean region •  Sea temperature •  Wave height •  Maximum wave height •  Predicted wave height •  Wave periodicity •  Vertical heave •  Tide height •  Predicted tide height •  Asset •  Height •  Condition •  Class •  Width •  Inspection date •  Maintainer •  Location •  Mastermap Id •  Flood plain •  Water depth •  Flood zone •  Flood zone type •  Flood defence policy •  Strategic defence option •  Vessel •  Location •  Name •  Bearing •  Type •  Size •  Callsign •  Speed •  ETA •  Destination •  Draught •  Road problem •  Location •  Road identifier •  Description •  Event time 19 19
  • 20. Overview of the SSN ontology© Raúl García Castro Domain. Additional Regions ontology 20 sw:Region gz:NamedPlace Coastal Defence Partnership •  Coastal Defence Partnership •  Coastal Defence Partnership (Modelled area) Solent •  Solent •  Solent (Modelled area) •  Solent (AIS live) South East England •  South East England •  South East England (BRANCH) •  South East England (CCO) •  South East England (Highways Agency) South West England •  South West England (Highways Agency) Southern Coastal England •  Southern Coastal England (CCO) Poole Bay •  Poole Bay (Wavenet) Competent Harbour Authorities •  Southampton Competent Harbour Authority •  Portsmouth Competent Harbour Authority Statutory Harbour Authorities •  Southampton Statutory Harbour Authority •  Portsmouth Statutory Harbour Authority •  Cowes Statutory Harbour Authority 20
  • 21. Overview of the SSN ontology© Raúl García Castro Domain. Role ontology hasRegionOfResponsibility hasResponsibility undertakesTask foaf:member 21 assumesRole hasPosition occupies hasSubOrganization ssn:hasProperty hasRelatedProperty hasRelatedFeature isFulfilledBy definesisAssignedTo appliesTo ssn:Property ssn:FeatureOfInterest Position Role Task Responsibility Duty foaf:Person foaf:Organization sw:Region SSN SWEET FOAF isOperatedWithin assignsTask 21
  • 22. Overview of the SSN ontology© Raúl García Castro Index •  W3C Semantic Sensor Network XG •  Semantic Sensor Network ontology •  Use case: coastal flood emergency planning (FP7 SSG4Env project) •  Conclusions 22
  • 23. Overview of the SSN ontology© Raúl García Castro Conclusions The SSN ontology: •  Is compatible with the OGC standards •  Is aligned with an upper ontology -  Dolce Ultra Light (DUL) •  Only includes core concepts; needs to be extended: -  time, location, units of measurement, domain specific (feature/property/sensor) hierarchies, etc. •  Does not need to be wholly reused -  Only observations -  Only sensors -  ... 23
  • 24. Overview of the SSN ontology© Raúl García Castro References •  COMPTON, M., BARNAGHI, P., BERMUDEZ, L., GARCÍA-CASTRO, R., CORCHO, O., COX, S., GRAYBEAL, J., HAUSWIRTH, M., HENSON, C., HERZOG, A., HUANG, V., JANOWICZ, K., KELSEY, W., PHUOC, D., LEFORT, L., LEGGIERI, M., NEUHAUS, H., NIKOLOV, A., PAGE, K., PASSANT, A., SHETH, A., TAYLOR, K. The SSN Ontology of the W3C Semantic Sensor Network Incubator Group. Web Semantics: Science, Services and Agents on the World Wide Web, North America, 17, oct. 2012. •  GARCÍA-CASTRO, R., CORCHO, O., & HILL, C. (2012). A Core Ontological Model for Semantic Sensor Web Infrastructures. International Journal on Semantic Web and Information Systems (IJSWIS), 8(1), 22-42. 24
  • 25. Thank you for your attention!