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Pressure and Temperature Sensitive Paints

Tianshu Liu John P. Sullivan

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Institución detectada Año de publicación Navegá Descargá Solicitá
No detectada 2005 SpringerLink

Información

Tipo de recurso:

libros

ISBN impreso

978-3-540-22241-5

ISBN electrónico

978-3-540-26644-0

Editor responsable

Springer Nature

País de edición

Reino Unido

Fecha de publicación

Información sobre derechos de publicación

© Springer-Verlag Berlin Heidelberg 2005

Tabla de contenidos

Introduction

Tianshu Liu; John P. Sullivan

Many large organizations have their data and processing spread across multiple independent database applications. These data sources, with their own schemas, need to inter-operate to meet new requirements, both within and across organizations. In this paper, we propose a vision of an ontology-enabled database management systems (called OeDBMS) so that the end users can co-relate and integrate ontologies associated with individual sources and extract, co-relate and integrate data from different sources. We propose the architecture and ontology model for OeDBMS. We propose many useful extensions to the RDF/S-based ontology models that are emerging as standards, and provide a graph-based abstraction for the model. This becomes a basis for defining many useful ontology operators and an ontology query language for browsing, searching, matching and maintaining ontologies. We also address the need for ontology evolution by providing temporal support for ontology.

Pp. 1-14

Basic Photophysics

Tianshu Liu; John P. Sullivan

Many large organizations have their data and processing spread across multiple independent database applications. These data sources, with their own schemas, need to inter-operate to meet new requirements, both within and across organizations. In this paper, we propose a vision of an ontology-enabled database management systems (called OeDBMS) so that the end users can co-relate and integrate ontologies associated with individual sources and extract, co-relate and integrate data from different sources. We propose the architecture and ontology model for OeDBMS. We propose many useful extensions to the RDF/S-based ontology models that are emerging as standards, and provide a graph-based abstraction for the model. This becomes a basis for defining many useful ontology operators and an ontology query language for browsing, searching, matching and maintaining ontologies. We also address the need for ontology evolution by providing temporal support for ontology.

Pp. 15-32

Physical Properties of Paints

Tianshu Liu; John P. Sullivan

Many large organizations have their data and processing spread across multiple independent database applications. These data sources, with their own schemas, need to inter-operate to meet new requirements, both within and across organizations. In this paper, we propose a vision of an ontology-enabled database management systems (called OeDBMS) so that the end users can co-relate and integrate ontologies associated with individual sources and extract, co-relate and integrate data from different sources. We propose the architecture and ontology model for OeDBMS. We propose many useful extensions to the RDF/S-based ontology models that are emerging as standards, and provide a graph-based abstraction for the model. This becomes a basis for defining many useful ontology operators and an ontology query language for browsing, searching, matching and maintaining ontologies. We also address the need for ontology evolution by providing temporal support for ontology.

Pp. 33-60

Radiative Energy Transport and Intensity-Based Methods

Tianshu Liu; John P. Sullivan

Many large organizations have their data and processing spread across multiple independent database applications. These data sources, with their own schemas, need to inter-operate to meet new requirements, both within and across organizations. In this paper, we propose a vision of an ontology-enabled database management systems (called OeDBMS) so that the end users can co-relate and integrate ontologies associated with individual sources and extract, co-relate and integrate data from different sources. We propose the architecture and ontology model for OeDBMS. We propose many useful extensions to the RDF/S-based ontology models that are emerging as standards, and provide a graph-based abstraction for the model. This becomes a basis for defining many useful ontology operators and an ontology query language for browsing, searching, matching and maintaining ontologies. We also address the need for ontology evolution by providing temporal support for ontology.

Pp. 61-79

Image and Data Analysis Techniques

Tianshu Liu; John P. Sullivan

Many large organizations have their data and processing spread across multiple independent database applications. These data sources, with their own schemas, need to inter-operate to meet new requirements, both within and across organizations. In this paper, we propose a vision of an ontology-enabled database management systems (called OeDBMS) so that the end users can co-relate and integrate ontologies associated with individual sources and extract, co-relate and integrate data from different sources. We propose the architecture and ontology model for OeDBMS. We propose many useful extensions to the RDF/S-based ontology models that are emerging as standards, and provide a graph-based abstraction for the model. This becomes a basis for defining many useful ontology operators and an ontology query language for browsing, searching, matching and maintaining ontologies. We also address the need for ontology evolution by providing temporal support for ontology.

Pp. 81-113

Lifetime-Based Methods

Tianshu Liu; John P. Sullivan

Many large organizations have their data and processing spread across multiple independent database applications. These data sources, with their own schemas, need to inter-operate to meet new requirements, both within and across organizations. In this paper, we propose a vision of an ontology-enabled database management systems (called OeDBMS) so that the end users can co-relate and integrate ontologies associated with individual sources and extract, co-relate and integrate data from different sources. We propose the architecture and ontology model for OeDBMS. We propose many useful extensions to the RDF/S-based ontology models that are emerging as standards, and provide a graph-based abstraction for the model. This becomes a basis for defining many useful ontology operators and an ontology query language for browsing, searching, matching and maintaining ontologies. We also address the need for ontology evolution by providing temporal support for ontology.

Pp. 115-136

Uncertainty

Tianshu Liu; John P. Sullivan

Many large organizations have their data and processing spread across multiple independent database applications. These data sources, with their own schemas, need to inter-operate to meet new requirements, both within and across organizations. In this paper, we propose a vision of an ontology-enabled database management systems (called OeDBMS) so that the end users can co-relate and integrate ontologies associated with individual sources and extract, co-relate and integrate data from different sources. We propose the architecture and ontology model for OeDBMS. We propose many useful extensions to the RDF/S-based ontology models that are emerging as standards, and provide a graph-based abstraction for the model. This becomes a basis for defining many useful ontology operators and an ontology query language for browsing, searching, matching and maintaining ontologies. We also address the need for ontology evolution by providing temporal support for ontology.

Pp. 137-173

Time Response

Tianshu Liu; John P. Sullivan

Many large organizations have their data and processing spread across multiple independent database applications. These data sources, with their own schemas, need to inter-operate to meet new requirements, both within and across organizations. In this paper, we propose a vision of an ontology-enabled database management systems (called OeDBMS) so that the end users can co-relate and integrate ontologies associated with individual sources and extract, co-relate and integrate data from different sources. We propose the architecture and ontology model for OeDBMS. We propose many useful extensions to the RDF/S-based ontology models that are emerging as standards, and provide a graph-based abstraction for the model. This becomes a basis for defining many useful ontology operators and an ontology query language for browsing, searching, matching and maintaining ontologies. We also address the need for ontology evolution by providing temporal support for ontology.

Pp. 175-199

Applications of Pressure Sensitive Paint

Tianshu Liu; John P. Sullivan

Many large organizations have their data and processing spread across multiple independent database applications. These data sources, with their own schemas, need to inter-operate to meet new requirements, both within and across organizations. In this paper, we propose a vision of an ontology-enabled database management systems (called OeDBMS) so that the end users can co-relate and integrate ontologies associated with individual sources and extract, co-relate and integrate data from different sources. We propose the architecture and ontology model for OeDBMS. We propose many useful extensions to the RDF/S-based ontology models that are emerging as standards, and provide a graph-based abstraction for the model. This becomes a basis for defining many useful ontology operators and an ontology query language for browsing, searching, matching and maintaining ontologies. We also address the need for ontology evolution by providing temporal support for ontology.

Pp. 201-262

Applications of Temperature Sensitive Paint

Tianshu Liu; John P. Sullivan

Many large organizations have their data and processing spread across multiple independent database applications. These data sources, with their own schemas, need to inter-operate to meet new requirements, both within and across organizations. In this paper, we propose a vision of an ontology-enabled database management systems (called OeDBMS) so that the end users can co-relate and integrate ontologies associated with individual sources and extract, co-relate and integrate data from different sources. We propose the architecture and ontology model for OeDBMS. We propose many useful extensions to the RDF/S-based ontology models that are emerging as standards, and provide a graph-based abstraction for the model. This becomes a basis for defining many useful ontology operators and an ontology query language for browsing, searching, matching and maintaining ontologies. We also address the need for ontology evolution by providing temporal support for ontology.

Pp. 263-292