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GEON: GEOsciences Network Data Physical model Portal (login, myGEON) Registration GEONsearch Data Registration Integration Services Services Indexing Services GEONworkbench Community Modeling Environment Workflow Visualization & Mapping Services Services Modeling Environment Core Grid Services Authentication, monitoring, scheduling, catalog, data transfer, Replication, collection management, databases Physical Grid RedHat Linux, ROCKS, Internet, I2, OptIPuter (planned) Model results HPCC Agenda • Scientific Framework: Integration Scenarios • IT Advances • Data and Modeling - Scientific Advances • Educational Leadership • Social Aspects of Large Projects • Summary and Plans Snapshot of the Day • GEON research and education activities: – Highlights given in talks – Some details provided in posters – Presentations available at the end of the day • GEON infrastructure and applications: mostly prototypes GEON Principal Investigators • • Ramon Arrowsmith Chaitan Baru Arizona State University San Diego Supercomputer Center / University of California, San Diego • • • • Maria Luisa Crawford Karl Flessa Randy Keller Mian Liu Bryn Mawr College University of Arizona University of Texas at El Paso University of Missouri, Columbia • • • Chuck Meertens John Oldow Dogan Seber • • Paul Sikora Krishna Sinha UNAVCO, Inc. University of Idaho San Diego Supercomputer Center / University of California, San Diego University of Utah Virginia Tech GEON Mission and Goals “Enabling scientific discoveries and improving education in Earth Sciences through information technology research.” • Develop cyberinfrastructure for Geoscience research – Integrate, analyze and model 4-D data – Research and development in data integration systems, computing environments, and ontologic frameworks – Facilitate knowledge discovery for the geosciences • Promote leadership within geoscience education reform • Revolutionize how earth scientists do their science – democratize access to services and data – allow on-line replication of results – increase awareness of scientific knowledge “pathways” • Facilitate a cultural change Challenges Many databases and models: Interpretations limited by existing knowledge Capture of concepts and relationships needed for computational tractability Creation of community knowledge base: Required to support knowledge discovery Assists in hypothesis generation The Pathway…Partnership with Information Technology Access /share data and products Access /develop smart tools Access computational resources Access/apply knowledge management Preserve data Become educational leaders GEON supports such activities Access to data representing scales of phenomenon and processes will be available within the infrastructure for discovering new knowledge (remember EarthScope) Surface geology Deep mantle Distribution of faults and earthquakes in mid-Atlantic region Cratonal lithosphere Lithosphere thickness (schematic) based on Zoback and Mooney (2003), Geologic Map ( USGS), fault distribution from Sinha (unpubl.) GEON TestbedS cience Themes CRUSTAL EVOLUTION: ANATOMY OF AN OROGEN The Appalachian Orogen is a continental scale mountain belt that provides a geologic template to examine the growth and breakup of continents through plate tectonic processes . First Order Science Question: What is the geologic history of accretionary orogens ? Role of accretionary orogens in the growth of continents 1. Major site of juvenile continental crust production at convergent plate margins 2. Addition of crust through accretion (terranes) 3. Recycling of continental and oceanic crust The Appalachian orogen provides a natural laboratory to develop methods for integration of data, tools and models with an emphasis on 4-D management of data and knowledge Appalachian Mountains: Recording 1000 Ma Of Earth History Geologic phenomena • Assembly and dispersal of super-continents: Rodinia , the Grenville record • Neo-Proterozoic failed rift : testing multiple hypotheses • Successful rifting of Rodinia: rift to drift transition • Collisional events: representing an orogenic cycle • Successful rifting : present configuration Research tasks to represent and interpret phenomenon Representing paleo-geography of plates Developing process ontology for hypothesis evaluation Integration of disciplinary databases through developing schemas and object ontology research Present day properties Diversity Of Geologic Information Required To Analyze Crustal Evolution GEOLOGIC MAPS METAMORPHISM IGNEOUS ACTIVITY GEODYNAMIC MODELING TIME STRATIGRAPHY/ SEDIMENTOLOGY PLATE CONFIGURATION GEOPHYSICS STRUCTURE From schemas to ontologies to integration Virginia Tech research activities • Spatial distribution of igneous rocks: provide access to geologic maps at multiple scales • Capture igneous rock properties data in a digital format (database schema) • Provide web based tools • Develop discipline ontologies • Implement integration scenarios through ontologies • Shared educational opportunities (cs & geo graduate research) The rock record preserves processes associated with crustal evolution of continents Access, analysis and modeling of the igneous rock record is a prerequisite for understanding crustal evolution through time-space Scales of georeferenced observations contained in Virginia Tech database: facilitating analysis of orogens Conceptual Model for Igneous Rock Properties (static) and Genesis (dynamic) Design/Information Flow for Analysis of Igneous Rocks Schema Development Components of the Virginia Tech field based schema: deploying data across multiple scales of observation and analysis Design/Information Flow for Analysis of Igneous Rocks Ontology Development Igneous Rock Database Schema and Linked Ontology Prototype web based access and application of tools Results of query displayed geographically and used in spatial analyses of terranes Based on SDSC (KR research group) Query results displayed in tables and in classification diagrams Point-in-polygon routine classifies sample as Chrysolite. Sample can now participate in additional ontologically-driven comparative, statistical and data mining analyses. Based on SDSC (KR research group) Design and Information Flow for Analysis of Igneous Rocks Tool Development Ontology Based Data Mining Ontology Driven Data Mining GEOROC : UNIQUE DATABASE FOR DATA MINING RESEARCH Create reusable “Knowledge Base” Iterate over experiment to refine the knowledge base Minimize data handling/Maximize research Allow different levels of knowledge discovery: Hidden, Deep Adapted from Ramachandran, (2003) Ontology Driven Data Mining • • • • • Ontology assists in structuring the data Data sets associated with concepts in ontology User navigates ontology to choose data sets Helps to apply data mining at different levels of abstraction Spatial and temporal variables are represented in the data Plates Rock TIme Composition Age Thickness Density Velocity Thermal Prpoerties Upper Plate Units Subducted Plate angle Continental Margin Upper plate : continental Subducted plate: continental or oceanic Oceanic ARC Upper plate : oceanic Subducted plate: oceanic Web screen Problem: Scientific Data Integration... from Questions to Queries ... What is the distribution and U/ Pb zircon ages of A-type plutons in VA? How about their 3-D geometry ? domain How does it relate to host rock structures? knowledge Knowledge Representation: ontologies, concept spaces Database mediation Data modeling ? Information Integration “Complex Multiple-Worlds” Mediation raw data Geologic Map (Virginia) GeoChemical (From Ludaescher, SDSC) GeoPhysical GeoChronologic (gravity contours) (Concordia) Foliation Map (structure DB)