Toward verifiable science assessment reporting: The Global Change Information System (GCIS)MPI-M Seminar – September 17, 2014
Peter Fox + (RPI) - GCIS Semantics Lead, [email protected], @taswegian, http://tw.rpi.edu+ lots of others (esp. R. Wolfe, C. Tilmes, X. Ma)
www.globalchange.gov
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Overview
• U.S. National Climate Assessment• About the GCIS
– Who are we?– What did we do and why?– Underlying methods and technologies– What are our plans for the future?
• Sneak peak of more verifiable science…
• Coordinates Federal research to better understand and prepare the nation for global change
• Prioritizes and supports cutting edge scientific work in global change
• Assesses the state of scientific knowledge and the Nation’s readiness to respond to global change
• Communicates research findings to inform, educate, and engage the global community
The Program:
U.S. Global Change Research Program
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Global Change Research Act (1990), Section 106…not less frequently than every 4 years, the Council… shall prepare… an assessment which–• integrates, evaluates, and interprets the findings
of the Program and discusses the scientific uncertainties associated with such findings;
• analyzes the effects of global change on the natural environment, agriculture, energy production and use, land and water resources, transportation, human health and welfare, human social systems, and biological diversity; and
• analyzes current trends in global change, both human- induced and natural, and projects major trends for the subsequent 25 to 100 years.
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National Climate AssessmentsClimate Change Impacts on the United States (2000)
Global Climate Change Impacts in the United States (2009)
Climate Change Impacts in the United States (2014)
See: http://globalchange.gov/
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NCA 2009
http://nca2009.globalchange.gov
Outline for Third NCA Report• Letter to the American People• Executive Summary: Report Findings• Introduction• Our Changing Climate• Sectors & Sectoral Cross-cuts• Regions & Biogeographical Cross-cuts• Responses
– Decision support– Mitigation– Adaptation
• Agenda for Climate Change Science• The NCA Long-term Process• Appendices
– Commonly Asked Questions– Expanded Climate Science Info
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Regions & Biogeographical Cross-Cuts
Coasts, Development, and Ecosystems
Oceans and Marine Resources
Sectors
• Water Resources• Energy Supply and Use• Transportation• Agriculture• Forestry• Ecosystems and
Biodiversity• Human Health
Sectoral Cross-Cuts• Water, Energy, and Land Use• Urban Systems, Infrastructure,
and Vulnerability• Impacts of Climate Change on
Tribal, Indigenous, and Native Lands and Resources
• Land Use and Land Cover Change
• Rural Communities• Biogeochemical Cycles
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globalchange.gov - v2.0
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National Climate Assessment 2014
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Global Change Information System(GCIS)
Long Term Vision:The Global Change Information System (GCIS) is intended to eventually become a unified web based source of authoritative, accessible, usable and timely information about climate and global change for use by scientists, decision makers, and the public.
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Global Change Information System(GCIS)
Long Term Vision:The Global Change Information System (GCIS) is intended to eventually become a unified web based source of authoritative, accessible, usable and timely information about climate and global change for use by scientists, decision makers, and the public.
Initial Prototype: Coincident with the release of the Third National Climate
Assessment (NCA) or May 6 2014, the GCIS supports the distribution, presentation and documentation needs of the NCA, integrating that content into the USGCRP web site and demonstrating the potential for GCIS to support the long term vision.
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Information Quality Act• Reproducibility means that the information is capable of being substantially reproduced,
subject to an acceptable degree of imprecision. For information judged to have more (less) important impacts, the degree of imprecision that is tolerated is reduced (increased). With respect to analytic results, "capable of being substantially reproduced'' means that independent analysis of the original or supporting data using identical methods would generate similar analytic results, subject to an acceptable degree of imprecision or error.
• Transparency is not defined in the OMB Guidelines, but the Supplementary Information to the OMB Guidelines indicates (p. 8456) that "transparency" is at the heart of the reproducibility standard. The Guidelines state that "The purpose of the reproducibility standard is to cultivate a consistent agency commitment to transparency about how analytic results are generated: the specific data used, the various assumptions employed, the specific analytic methods applied, and the statistical procedures employed. If sufficient transparency is achieved on each of these matters, then an analytic result should meet the reproducibility standard." In other words, transparency - and ultimately reproducibility - is a matter of showing how you got the results you got.
http://www.cio.noaa.gov/services_programs/IQ_Guidelines_011812.html
Complete Traceability for NCA Content
Traceable Sources
Traceable Data
• References• Image sources • Data sources
• Link to datasets • Complete metadata
Traceable Processes
• Description of methods
• Access to process info & review
Traceable Tools
Transparency ------------------------------------------------------------------------ Reproducibility
• Access to computer code
• Description of systems and platforms
Easi
er . . . . . . . . . . . . . . . . . . . . . . . .H
arde
r
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Data and The National Climate AssessmentThe Challenge
• More than 250 named authors (>1000 contributing!)• 827 pages• 43 Chapters and Appendices• 284 Figures• More than 600 Images• 3395 References• Approximately 83 data sources used across as many
as 235 instances
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Data and National Climate AssessmentThe Solution
• Defined categories of information within the report:– Figure– Image– Data Source
• Build a process for collecting source information that will satisfy IQA and HISA requirements:– Named sources and contacts for every figure, image, and data source– Web-based survey that requests inputs that address transparency
and reproducibility and build a foundation for providing the Metadata ISO 19115 standard
– IT infrastructure that connects and promotes automation between the web-based survey, a structured data server (SDS)/GCIS, and publication to an official, interactive NCA web site
The use case-driven iterative approach
More details at: http://tw.rpi.edu/web/doc/TWC_SemanticWebMethodology 19
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Ontology engineering use case
• Title: Find data used to generate a report figure
• Actor and system: A reader of the National Climate Assessment
• Flow of interactions: A reader wishes to identify the source of the data used to produce a particular figure in the NCA. A reference to the paper in which the image contained in this figure was originally published appears in the figure caption. Clicking that reference displays a page of metadata information about the paper, including links to the datasets used in that paper. Pursuing each of those links presents a page of metadata information about the dataset, including a link back to the agency/data center web page describing the dataset in more detail and making the actual data available for order or download.
The first use case
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Ontology engineering use case
• Title: Find data used to generate a report figure
• Actor and system: A reader of the National Climate Assessment
• Flow of interactions: A reader wishes to identify the source of the data used to produce a particular figure in the NCA. A reference to the paper in which the image contained in this figure was originally published appears in the figure caption. Clicking that reference displays a page of metadata information about the paper, including links to the datasets used in that paper. Pursuing each of those links presents a page of metadata information about the dataset, including a link back to the agency/data center web page describing the dataset in more detail and making the actual data available for order or download.
The first use case
An intuitive concept map of the 1st use case
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Classes and properties recognized from the use case
An intuitive concept map of the use case
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Classes and properties recognized from the use case
An intuitive concept map of the use case
From an intuitive model to an ontology:
(1) A defined class or property should be meaningful and robust enough to meet the requirements of various use cases
(2) An ontology can be extended by adding classes and properties recognized from new use cases through the iterative approach
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Data and The National Climate AssessmentThe Solution
globalchange.govwebsite
StructuredData
Server
NCA ResourcesSite Web Form
ATRAC/XMLFile Generator
Metadata Entry
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Dataset metadata from a figure
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Dataset metadata from a image in a figure
• Title: Identify roles of people in the generation of a chapter in the draft NCA3
• Actor and system: a viewer of the GCIS website• Flow of interactions: A viewer sees that Chapter 6 (Agriculture) in the
draft NCA3 was written by a group of authors mentioned in a list. On the title page of that chapter the reader can view the role of each author, e.g., convening lead author, lead author or contributing author, in the generation of this report chapter.
• We decided to use the PROV-O ontology to describe this use case
The second use case
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The three Starting Point classes in PROV-O ontology and the properties that relate them
Source: http://www.w3.org/TR/prov-o/ 29
Mapping the use case into PROV-O
isA isA
isAWriting of Chapter 6 in NCA3
Chapter 6 in NCA3
Author of Chapter 6
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Roles of agents in an activity in PROV-O
Source: http://www.w3.org/TR/prov-o/ 31
Mapping roles of chapter authors into PROV-O
Writing of Chapter 6 in NCA3
isAAuthor of Chapter 6
isA
Convening lead author
Lead author
Contributing author
isA
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Here only three of the eight authors of this chapter are shown. Each author had a specific role for this chapter.
Roles of people in the activity ‘Writing of Chapter 6’
Re-using existing ontologies for the GCIS ontology
By such mappings we can use reasoners that are suitable for the PROV-O ontology, and thus to retrieve provenance graphs from the established GCIS
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GCIS Structured Data Server• Capture – Obtain from a variety of sources: manual input by
trusted parties – support staff, agency partners, data centers; automated harvesting from publishers, agency data centers, etc.
• Identify – Assign persistent, resolvable, controlled identifiers to each element.
• Organize – Capture, discover and represent relationships between elements, including across various types of elements; across data centers; and across agency boundaries.
• Present – Provide machine accessible interfaces to retrieve structured metadata, and to search/data mine it.
• Maintain – Develop tools and processes to ensure quality and integrity of database contents over time.
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Global Change Content Elements
• Reports, Figures, Images, Research Papers, Journals, Measurements, Datasets, Instruments, Agencies, Projects, People, Models, Algorithms, …
• Findings – “Climate is changing.” “Sea Level is Rising.”
• Concepts: “Impacts of Climate Change on Human Health” “Adaptation”
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Machine Accessible Metadata
globalchange.govwebsite
StructuredData
Server
NCA ResourcesSite Web Form
ATRAC/XMLFile Generator
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Linked Open Data
http://5stardata.info
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Identifier Resolutiondoi:10.5067/MEASURES/GSSTF/DATA308
A common, persistent, citable reference to that dataset.
We build GCIS specific identifiers from those:
http://data.globalchange.gov/doi/10.5067/MEASURES/GSSTF/DATA308
Then we can resolve it (with content negotiation) on our site, and link it with identifiers for our other resources, including asserting equivalence and linking with the data center responsible for stewardship and distribution of the actual data. We can also refer and link to other repositories of information about those resources.
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Content Negotiationhttp://data.globalchange.gov/doi/10.5067/MEASURES/GSSTF/DATA308
The server response from the URI depends on what you ask for: •A traditional browser will ask for HTML, and receive and render a human readable description of the resource.•Web services can request formal, structured XML or RDF metadata about the resource.
Our goal is to provide a curated collection of authoritative global change information, but always link back to the data center or publisher responsible for the long term stewardship of the resource.
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GCIS Structured Data Server
data.globalchange.gov
GCIS Database/API
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• RESTful API at data.globalchange.gov• URLs correspond to ontology URIs• Primary storage : RDBMS (PostgreSQL)• Representation is serialized (for JSON) or
used in templates (for Turtle)• Turtle representation is exported into a
triple store (Virtuoso) which provides a SPARQL endpoint.
(a) Classes and properties representing a brief structure of the NCA3
GCIS Ontology (version
1.2)
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(b) Classes and properties relevant to the findings of the NCA3 and each chapter in it
(c) Classes and properties about sensors, instruments, platforms, and algorithms, etc. through which datasets are generated
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A few classes are asserted as sub-classes of PROV-O classes
Full GCIS Ontology documents are available at: http://tw.rpi.edu/web/project/gcis-imsap/GCISOntology
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(part of) GCIS Ontology
For more info, see http://data.globalchange.gov
Final output of the GCIS ontology
• Ontology documentation– http://escience.rpi.edu/ontology/GCIS-IMSAP/2/
GCISOntology_v_1_2.htm
• Concept map – http://cmapspublic3.ihmc.us/rid=1MCJMLST0-1
G0CSWH-2YH4/GCIS_Ontology_v1_2.cmap
• Ontology RDF serialized in Turtle format– http://escience.rpi.edu/ontology/GCIS-IMSAP/2/
GCISOntology_v_1_2.ttl
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Certain types of extreme weather events have become more frequent and intense, including heat waves, floods, and droughts in some regions. The increased intensity of heat waves has been most prevalent in the western parts of the country, while the intensity of flooding events has been more prevalent over the eastern parts. Droughts in the Southwest and heat waves everywhere are projected to become more intense in the future.
• ATMOSPHERIC/OCEAN INDICATORS > EXTREME WEATHER
• EXTREME WEATHER > EXTREME PRECIPITATION
• PRECIPITATION > PRECIPITATION RATE• EXTREME WEATHER > HEAT/COLD WAVE
FREQUENCY/INTENSITY• NATURAL HAZARDS > HEAT• NATURAL HAZARDS > FLOODS, • PRECIPITATION > PRECIPITATION AMOUNT• PRECIPITATION >RAIN• SURFACE WATER > FLOODS• ATMOSPHERIC PHENOMENA > DROUGHT,• EXTREME WEATHER > EXTREME DROUGHT, • NATURAL HAZARDS > DROUGHTS
GCMD v8.0Sample finding:
Global Change Keywords (GCMD)
SPARQL Example
• http://data.globalchange.gov/examples
• List 10 figures and datasets from which they were derived
select ?figure,?dataset FROM <http://data.globalchange.gov> where {
?figure gcis:hasImage ?img . ?img prov:wasDerivedFrom ?dataset
} limit 10
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Two Parallel Paths
Traceable Sources
Traceable Data
• References• Image sources • Data sources
• Link to datasets • Complete metadata
Traceable Processes
• Description of methods
• Access to process info & review
Traceable Tools
1. Third National Climate Assessment (NCA3)
• Access to computer code
• Description of systems and platforms
2 . GCIS
Two Parallel Paths
Traceable Sources
Traceable Data
• References• Image sources • Data sources
• Link to datasets • Complete metadata
Traceable Processes
• Description of methods
• Access to process info & review
Traceable Tools
1. NCA3 release
• Access to computer code
• Description of systems and platforms
2 . Populate GCIS
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Data and GCISThe Future
globalchange.govwebsite
StructuredData
Server
Interagency Information Integration
GCIS can use relationships between all relevant information about global change across the agencies:oFrom observations to datasets to research papers to models to
analyses to organizations to people to synthesized reports to human impacts...
oDetermine agency interdependencies -- An EPA analysis uses a NOAA model dependent on observations from a NASA satellite.
oCan present unique interagency metrics "How many papers referenced datasets from a specific satellite?"
oDirect users back to agency data centers for more detailed information and the actual content and data.
GCIS Data Mining
Structured information with relationships allows integrated data mining, searching, metrics.o What projects provided data used to produce figures that were
referenced in the 2013 NCA section about coastal sea level rise impacts?
o Which data centers hold data referenced by papers related to forests in the midwest?
o Which agencies have people working on projects related to societal impacts of extreme weather events?
o Show me the latest papers about health impacts of air quality in California. Which datasets were used in the analysis of air quality in California?
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Schedule2013 20152014 2016Now (Sep)
NCA ReportInitial data sets Full data sets
Release (5/6)
Earth Observation Assessment(possible support)
Health Assessment
Indicators
Demo Pilot
Ontology Improvements
Sustained NCA
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Staff (some of many contributors)
U.S. Global Change Research Program (USGCRP), National Coordination Office (NCO):Robert Wolfe1, Curt Tilmes1, Steve Aulenbach2, Brian Duggan2, Justin Goldstein2, Amanda McQueen2, Julie Morris2, Glynis Lough2
National Climate Assessment (NCA) Technical Support Unit (TSU):David Easterling3, Paula Hennon4, Angel Li4, April Sides6, Mark Phillips5, Sarah Champion4, Andrew Buddenberg4, Devin Thomas6
Habitat Seven (NCA Web Design and Development):Jamie Herring, Phil Evans, Aires Almeida, Graham Blair
Rensselaer Polytechnic Institute (RPI) Tetherless World Constellation (TWC) (Semantic Web Information Modeling):
Peter Fox, Xiaogang Ma, Patrick West, Stephan Zednik, Jin ZhengForum One (globalchange.gov Web Design, Development and Integration):
Michael Rader, John Schneider, Keenan Holloway, Sarah LeNguyen
1. NASA2. University Corporation for Atmospheric Research3. NOAA/NCDC4. The Cooperative Institute for Climate and Satellites (CICS), North Carolina State University5. National Environmental Modeling and Analysis Center (NEMAC), UNC Asheville6. ERT, Inc.
See also
• Ma, X., Fox, P., Tilmes, C., Jacobs, K., Waple, A., 2014. Capturing and presenting provenance of global change information. Nature Climate Change. 4, 409–413. doi:10.1038/nclimate2141
• Tilmes, C., Fox, P., Ma, X., McGuinness, D., Privette, A.P., Smith, A., Waple, A., Zednik, S., Zheng, J., 2013. Provenance representation for the National Climate Assessment in the Global Change Information System. IEEE Transactions on Geoscience and Remote Sensing, 51 (11), 5160-5168.
• Xiaogang Ma, Jin Guang Zheng, Justin C. Goldstein, Stephan Zednik, Linyun Fu, Brian Duggan, Steven M. Aulenbach, Patrick West, Curt Tilmes, Peter Fox 2014, Ontology engineering in provenance enablement for the National Climate Assessment, Environmental Modelling and Software, 16, 191-205. doi:10.1016/j.envsoft.2014.08.002
– Open access (until October 17, 2014): http://authors.elsevier.com/a/1Pc6G4sKhE0y1E
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Sneak peek for what is
next http://tw.rpi.edu/web/project/
ECOOP
60Climate Informatics: Human Experts and the End-to-End System, by Rood and Edwardshttp://www.earthzine.org/2014/05/22/climate-informatics-human-experts-and-the-end-to-end-system/
Courtesy: C Tilmes
Questions and Comments?
For more information visit http://www.globalchange.gov and http://data.globlchange.gov
Next … iPython meets NCA
NCA=National Climate Assessment
Stace Beaulieu