Louisa Casely-Hayford e-Science Ontologies & Ontology tools for the CCLRC Neutron & Muon Facility.

Slides:



Advertisements
Similar presentations
Shoaib Sufi CCLRC e-Science Centre CCLRC Scientific Metadata (CSMD) Model April 2004 NESC.
Advertisements

Towards an information model for I2S2
EBankII Workshop 1 Making Scientific Data Openly Available Simon Coles School of Chemistry, University of Southampton.
I2S2 - Infrastructure for Integration in Structural Sciences Cross-Institutional Pilot
I2S2 - Infrastructure for Integration in Structural Sciences Information Model Development Workshop RAL 11 th February 2010
ICAT + Information Model Brian Matthews Scientific Information Group E-Science Centre STFC Rutherford Appleton Laboratory
V Alyssa Rosemartin 1, Lee Marsh 1, Ellen Denny 1, Bruce Wilson USA National Phenology Network, Tucson, AZ; 2 - Oak Ridge National Laboratory, Oak.
IPY and Semantics Siri Jodha S. Khalsa Paul Cooper Peter Pulsifer Paul Overduin Eugeny Vyazilov Heather lane.
So What Does it All Mean? Geospatial Semantics and Ontologies Dr Kristin Stock.
Semiotics and Ontologies. Ontologies contain categories, lexicons contain word senses, terminologies contain terms, directories contain addresses, catalogs.
Dr Gordon Russell, Napier University Unit Data Dictionary 1 Data Dictionary Unit 5.3.
Using the Semantic Web to Construct an Ontology- Based Repository for Software Patterns Scott Henninger Computer Science and Engineering University of.
OntoBlog: Informal Knowledge Management by Semantic Blogging Aman Shakya 1, Vilas Wuwongse 2, Hideaki Takeda 1, Ikki Ohmukai 1 1 National Institute of.
Environmental Terminology System and Services (ETSS) June 2007.
PROMPT: Algorithm and Tool for Automated Ontology Merging and Alignment Natalya Fridman Noy and Mark A. Musen.
PROMPT: Algorithm and Tool for Automated Ontology Merging and Alignment Natalya F. Noy and Mark A. Musen.
Semantic Web Technologies Lecture # 2 Faculty of Computer Science, IBA.
Virtual Health Information Infrastructures: Scale and Scope Ann Séror, MBA, PhD 1 1 eResearch Collaboratory, Quebec City, QC, Canada, Url:
In The Name Of God. Jhaleh Narimisaei By Guide: Dr. Shadgar Implementation of Web Ontology and Semantic Application for Electronic Journal Citation System.
Blaz Fortuna, Marko Grobelnik, Dunja Mladenic Jozef Stefan Institute ONTOGEN SEMI-AUTOMATIC ONTOLOGY EDITOR.
Universität Stuttgart Universitätsbibliothek Information Retrieval on the Grid? Results and suggestions from Project GRACE Werner Stephan Stuttgart University.
Ontology Development Kenneth Baclawski Northeastern University Harvard Medical School.
 Copyright 2005 Digital Enterprise Research Institute. All rights reserved. Towards Translating between XML and WSML based on mappings between.
MSF Requirements Envisioning Phase Planning Phase.
Using Taxonomies Effectively in the Organization v. 2.0 KnowledgeNets 2001 Vivian Bliss Microsoft Knowledge Network Group
1 Common Challenges Across Scientific Disciplines Laurence Field CERN 18 th November 2013.
Developing an Ontology for Irrigation Information Resources *Cornejo, C., H.W. Beck, D.Z. Haman, F.S. Zazueta. University of Florida Gainesville, FL. USA.
Of 39 lecture 2: ontology - basics. of 39 ontology a branch of metaphysics relating to the nature and relations of being a particular theory about the.
Integrated e-Infrastructure for Scientific Facilities Kerstin Kleese van Dam STFC- e-Science Centre Daresbury Laboratory
CHAPTER ONE Problem Solving and the Object- Oriented Paradigm.
INF 384 C, Spring 2009 Ontologies Knowledge representation to support computer reasoning.
Metadata for Large Science: The ICAT Data Model Brian Matthews, Leader, Scientific Applications Group, E-Science Centre, STFC Rutherford Appleton Laboratory.
Building an Ontology of Semantic Web Techniques Utilizing RDF Schema and OWL 2.0 in Protégé 4.0 Presented by: Naveed Javed Nimat Umar Syed.
UOS 1 Ontology Based Personalized Search Zhang Tao The University of Seoul.
© 2008 IBM Corporation ® IBM Cognos Business Viewpoint Miguel Garcia - Solutions Architect.
1 Web: Steve Brewer: Web: EGI Science Gateways Initiative.
Teranode Tools and Platform for Pathway Analysis Michael Kellen, Solution Manager June 16, 2006.
Using Taxonomies Effectively in the Organization KMWorld 2000 Mike Crandall Microsoft Information Services
CBSOR,Indian Statistical Institute 30th March 07, ISI,Kokata 1 Digital Repository support for Consortium Dr. Devika P. Madalli Documentation Research &
SSO: THE SYNDROMIC SURVEILLANCE ONTOLOGY Okhmatovskaia A, Chapman WW, Collier N, Espino J, Conway M, Buckeridge DL Ontology Description The SSO was developed.
Automated Transformation of Statements Within Evolving Domain Specific Languages Peter Bell CEO/CTO, SystemsForge 7th OOPSLA Workshop on Domain-Specific.
Grid Computing & Semantic Web. Grid Computing Proposed with the idea of electric power grid; Aims at integrating large-scale (global scale) computing.
Portable Infrastructure for the Metafor Metadata System Charlotte Pascoe 1, Gerry Devine 2 1 NCAS-BADC, 2 NCAS-CMS University of Reading PIMMS provides.
The future of the Web: Semantic Web 9/30/2004 Xiangming Mu.
Marine Metadata Interoperability - Web Services Marine scientists face an opportunity and a challenge in the volume of data available from various ocean.
Breakout # 1 – Data Collecting and Making It Available Data definition “ Any information that [environmental] researchers need to accomplish their tasks”
Metadata Common Vocabulary a journey from a glossary to an ontology of statistical metadata, and back Sérgio Bacelar
Metadata for structural science Workshop on research metadata in context Nijmegen, 7–8 September 2010 Simon Lambert STFC e-Science UK.
Harvesting Social Knowledge from Folksonomies Harris Wu, Mohammad Zubair, Kurt Maly, Harvesting social knowledge from folksonomies, Proceedings of the.
Overview and Motivation of the ICAT Software Suite Kerstin Kleese van Dam.
CASE (Computer-Aided Software Engineering) Tools Software that is used to support software process activities. Provides software process support by:- –
Z39.50 & The Z Texas Profile William E. Moen School of Library and Information Sciences University of North Texas Denton, TX.
Louisa Casely-Hayford e-Science The ISIS Facilities Ontology and OntoMaintainer Louisa Casely-Hayford and Shoaib Sufi.
Marine Metadata Interoperability Acknowledgements Ongoing funding for this project is provided by the National Science Foundation.
DANIELA KOLAROVA INSTITUTE OF INFORMATION TECHNOLOGIES, BAS Multimedia Semantics and the Semantic Web.
CombeDay Making Data Openly Available Simon Coles.
Achieving Semantic Interoperability at the World Bank Designing the Information Architecture and Programmatically Processing Information Denise Bedford.
Semantic Data Extraction for B2B Integration Syntactic-to-Semantic Middleware Bruno Silva 1, Jorge Cardoso 2 1 2
Infrastructure Breakout What capacities should we build now to manage data and migrate it over the future generations of technologies, standards, formats,
High Risk 1. Ensure productive use of GRID computing through participation of biologists to shape the development of the GRID. 2. Develop user-friendly.
Semantics and the EPA System of Registries Gail Hodge IIa/ Consultant to the U.S. Environmental Protection Agency 18 April 2007.
Social and Personal Factors in Semantic Infusion Projects Patrick West 1 Peter Fox 1 Deborah McGuinness 1,2
Ontology in MBSE How ontologies fit into MBSE The benefits and challenges.
CRISP WP 17 1 / 2 Proposed Metadata Catalogue Architecture Document.
International Planetary Data Alliance Registry Project Update September 16, 2011.
1 Design Object Oriented Solutions Object Oriented Analysis & Design Lecturer: Mr. Mohammed Elhajj
IPDA Registry Definitions Project Dan Crichton Pedro Osuna Alain Sarkissian.
Databases and Database User ch1 Define Database? A database is a collection of related data.1 By data, we mean known facts that can be recorded and that.
Information Organization
CCNT Lab of Zhejiang University
Presentation transcript:

Louisa Casely-Hayford e-Science Ontologies & Ontology tools for the CCLRC Neutron & Muon Facility

Presenter Name Facility Name Louisa Casely-Hayford e-Science ISIS a CCLRC Neutron & Muon Facility ISIS is the worlds leading pulsed Neutron & Muon source situated at the CCLRC Rutherford Appleton Laboratory. ISIS supports an international community of around 1600 scientists in a range of scientific disciplines. Currently ISIS produces about 700GB of combined Neutron & Muon data each year and this figure is set to rise with the addition of a new target station. The ISIS Metadata Catalogue (ICAT) is a twenty year back catalogue of experiments conducted at ISIS it contains approximately 3GB of metadata which references 3TB of data. In order to maximise the value of data produced from the facility, it must be fully searchable. To address this problem, e-Science is developing numerous software solutions and ontologies are seen one of these useful approaches.

Presenter Name Facility Name Louisa Casely-Hayford e-Science Why Ontologies are a useful solution? Ontologies offer a powerful means to formally express the nature of a domain. To share common understanding of the structure of information among people To enable reuse of domain knowledge To make domain assumptions explicit They provide central controlled vocabularies that can be integrated into catalogues, databases, web publications and knowledge management applications Ontologies will facilitate searching of data by category and grouping of data into keywords across studies

Presenter Name Facility Name Louisa Casely-Hayford e-Science Building an Ontology Defining terms in a domain and relations between them. –Defining concepts in the domain (classes) –Arranging the concepts in a hierarchy (subclass-superclass hierarchy) –Defining which attributes and properties (slots) classes can have and constraints on their values –Defining individuals and filling in slot values Involves collaboration between domain experts and ontology builders. Ontologies are expressed in a formal language and developed within an editing environment.

Presenter Name Facility Name Louisa Casely-Hayford e-Science A Protégé-OWL Ontology Classes Individuals Properties A class is a concept in the domain - a class of People - a class of Pets - a class of Countries A class is a collection of elements with similar properties. Instances of classes - America can be an instance of the class Country. Gemma Mathew Fluffy Italy America England Fido Class Person Class Pet Class Country livesIn hasSibling hasPet

Presenter Name Facility Name Louisa Casely-Hayford e-Science Building of the ISIS Facilities Ontology The ISIS facilities ontology is based on keywords in the ISIS Metadata catalogue (ICAT). Over 10,000 keywords housed in ICAT and many are synonyms. Keywords in ICAT were grouped into 5 main categories: 1.Datafile name 2.Instrument 3.Investigation title 4.Investigator 5.Year Examples of keywords in these five categories are: HRP00145.RAW - a datafile name. HRPD - a High Resolution Powder Diffractometer one of the many instruments used in experiments at the ISIS facility. Hydrazinium - an investigation title, chemical names and compounds were used as investigation titles of experiments in ICAT the year in which a particular experiment was conducted JINR (Joint Institute for Nuclear Research) - the name of an investigator.

Presenter Name Facility Name Louisa Casely-Hayford e-Science ISIS Facilities Ontology Hierarchy

Presenter Name Facility Name Louisa Casely-Hayford e-Science Class ISISExperiment Class DataFile Class Year wasConductedIn hasInvestigator Class Instrument Class Investigator HRP00145.RAW 1986 Pete Jones HRPD Class CrystallographyGroupExperiment hasUsedInstrument Hydrazinium Class InvestigationTitle hasTitle hasDataFileName Protein Crystallography GroupExperiment ISIS Facilities Ontology

Presenter Name Facility Name Louisa Casely-Hayford e-Science

Presenter Name Facility Name Louisa Casely-Hayford e-Science ISIS Online Proposal System Scientists can submit applications for beamtime at ISIS through an online application form which is known as the ISIS Online Proposal System The ICAT(Metadata catalog) not only holds the 20 year back catalog of data, but will also hold data from approved proposals and data generated from experiments conducted at ISIS Three separate modular ontologies for Sample, Investigator and Experiment are being developed to mark up the Proposal system These ontologies are partly based on the proposal system database schema

Presenter Name Facility Name Louisa Casely-Hayford e-Science Sample, Investigator and Experiment Ontologies Sample Investigator Experiment

Presenter Name Facility Name Louisa Casely-Hayford e-Science OntoMaintainer Consensus on Concepts modelled in the ISIS Facilities ontology, was achieved through a series of interviews with domain experts. During the design and creation process, there was a difficulty in sharing current versions of the ontology with our collaborators at ISIS. This is because to view the hierarchical structure of the ontology, scientists would have to download and install Protégé locally. The Ontology Maintainer was developed to facilitate the community in remotely viewing current versions of the ontology.

Presenter Name Facility Name Louisa Casely-Hayford e-Science Screen Shot of OntoMaintainer

Presenter Name Facility Name Louisa Casely-Hayford e-Science Benefits of OntoMaintainer It is easily accessible because it is available over the web Allows domain experts to contribute towards the maintenance of the ontologies Encourages collaboration between domain experts (scientists) and ontology builders by allowing members of the community to be involved in the development and maintenance of ontologies Makes collaboration between domain experts and ontology builders more efficient

Presenter Name Facility Name Louisa Casely-Hayford e-Science Future Work Completion of Sample, Investigator, Experiment and ISIS Facilities Ontologies Ontology Maintainer will be improved through the addition of properties to enable relationships between individuals in classes to be shown. Graphical view of hierarchies of the ontology will be added to the user interface of the Ontology Maintainer. Tree hierarchy will be made more dynamic through automatic updating of classes.

Presenter Name Facility Name Louisa Casely-Hayford e-Science Conclusion Ontologies to mark up the ICAT back catalogue and new approved studies submitted through Online Proposal System to improve the search and navigation of data and search of concepts across scientific disciplines. Ontology Maintainer will facilitate the process of creating and maintaining ontologies by providing a means of getting feedback directly from domain experts. Major challenge scope, modularity and integration of ontologies.

Presenter Name Facility Name Louisa Casely-Hayford e-Science Question Time