The web, and more recently the concept and technology of the Semantic Web, has created a wealth of new ideas and innovative tools for data management, integration and computation in an open framework and at a very large scale. One area of particular interest to the science of hydrology is the capture, representation, inference and presentation of provenance information: information that helps to explain how data were computed and how they should be interpreted. This paper is among the first to bring recent developments in the management of provenance developed for e-science and the Semantic Web to the problems of hydrology. Our main result is a formal ontological model for the representation of provenance information driven by a hydrologic ...
In this paper, we propose a provenance model able to represent the provenance of any data object cap...
Data provenance graphs are form of metadata that can be used to establish a variety of properties of...
Applications that require continuous processing of high-volume data streams have grown in prevalence...
UnrestrictedProvenance is metadata that pertains to the history of data products. It is useful infor...
The increasing data volume and highly complex models used in different domains make it difficult to ...
In any scientific experiment, researchers are required to access, compute, and analyze data to produ...
In many application areas like e-science and data-warehousing detailed information about the origin ...
Provenance is critically important for scientific workflow systems, as it allows users to verify dat...
Provenance, from the French word “provenir”, describes the lineage or history of a data entity. Prov...
Semantic modeling promises significant advances in automated reasoning to facilitate many analyses. ...
Provenance metadata describes the \u27lineage\u27 or history of an entity and necessary information ...
Provenance is becoming increasingly important as more and more people are using data that they thems...
The process of collecting and transforming data can extend across different platforms, both physical...
Scientific workflows may include automated decision steps, for instance to accept/reject certain dat...
Life science researchers increasingly rely on the web as a primary source of data, forcing them to a...
In this paper, we propose a provenance model able to represent the provenance of any data object cap...
Data provenance graphs are form of metadata that can be used to establish a variety of properties of...
Applications that require continuous processing of high-volume data streams have grown in prevalence...
UnrestrictedProvenance is metadata that pertains to the history of data products. It is useful infor...
The increasing data volume and highly complex models used in different domains make it difficult to ...
In any scientific experiment, researchers are required to access, compute, and analyze data to produ...
In many application areas like e-science and data-warehousing detailed information about the origin ...
Provenance is critically important for scientific workflow systems, as it allows users to verify dat...
Provenance, from the French word “provenir”, describes the lineage or history of a data entity. Prov...
Semantic modeling promises significant advances in automated reasoning to facilitate many analyses. ...
Provenance metadata describes the \u27lineage\u27 or history of an entity and necessary information ...
Provenance is becoming increasingly important as more and more people are using data that they thems...
The process of collecting and transforming data can extend across different platforms, both physical...
Scientific workflows may include automated decision steps, for instance to accept/reject certain dat...
Life science researchers increasingly rely on the web as a primary source of data, forcing them to a...
In this paper, we propose a provenance model able to represent the provenance of any data object cap...
Data provenance graphs are form of metadata that can be used to establish a variety of properties of...
Applications that require continuous processing of high-volume data streams have grown in prevalence...