To read this content please select one of the options below:

A semantic integration approach to publish and retrieve ecological data

Ana Maria de Carvalho Moura (Extreme Data Laboratory (DEXL), National Laboratory of Scientific Computing (LNCC), Petrópolis, Brazil)
Fabio Porto (Extreme Data Laboratory (DEXL), National Laboratory of Scientific Computing (LNCC), Petrópolis, Brazil)
Vania Vidal (Department of Computing, Federal University of Ceará, Fortaleza, Brazil)
Regis Pires Magalhães (Department of Computing, Federal University of Ceará, Fortaleza, Brazil)
Macedo Maia (Department of Computing, Federal University of Ceará, Fortaleza, Brazil)
Maira Poltosi (Extreme Data Laboratory (DEXL), National Laboratory of Scientific Computing (LNCC), Petrópolis, Brazil)
Daniele Palazzi (Extreme Data Laboratory (DEXL), National Laboratory of Scientific Computing (LNCC), Petrópolis, Brazil)

International Journal of Web Information Systems

ISSN: 1744-0084

Article publication date: 20 April 2015

878

Abstract

Purpose

The purpose of this paper is to present a four-level architecture that aims at integrating, publishing and retrieving ecological data making use of linked data (LD). It allows scientists to explore taxonomical, spatial and temporal ecological information, access trophic chain relations between species and complement this information with other data sets published on the Web of data. The development of ecological information repositories is a crucial step to organize and catalog natural reserves. However, they present some challenges regarding their effectiveness to provide a shared and global view of biodiversity data, such as data heterogeneity, lack of metadata standardization and data interoperability. LD rose as an interesting technology to solve some of these challenges.

Design/methodology/approach

Ecological data, which is produced and collected from different media resources, is stored in distinct relational databases and published as RDF triples, using a relational-Resource Description Format mapping language. An application ontology reflects a global view of these datasets and share with them the same vocabulary. Scientists specify their data views by selecting their objects of interest in a friendly way. A data view is internally represented as an algebraic scientific workflow that applies data transformation operations to integrate data sources.

Findings

Despite of years of investment, data integration continues offering scientists challenges in obtaining consolidated data views of a large number of heterogeneous scientific data sources. The semantic integration approach presented in this paper simplifies this process both in terms of mappings and query answering through data views.

Social implications

This work provides knowledge about the Guanabara Bay ecosystem, as well as to be a source of answers to the anthropic and climatic impacts on the bay ecosystem. Additionally, this work will enable evaluating the adequacy of actions that are being taken to clean up Guanabara Bay, regarding the marine ecology.

Originality/value

Mapping complexity is traded by the process of generating the exported ontology. The approach reduces the problem of integration to that of mappings between homogeneous ontologies. As a byproduct, data views are easily rewritten into queries over data sources. The architecture is general and although applied to the ecological context, it can be extended to other domains.

Keywords

Acknowledgements

This work has been partially supported by CNPq through its Institutional Capacity Program (Proc. 382.489/09-8) and Productivity Research Fellowship (Proc. 309502/2009-8) and FAPERJ through a research project (E-26/111.147/2011).

Citation

Moura, A.M.d.C., Porto, F., Vidal, V., Magalhães, R.P., Maia, M., Poltosi, M. and Palazzi, D. (2015), "A semantic integration approach to publish and retrieve ecological data", International Journal of Web Information Systems, Vol. 11 No. 1, pp. 87-119. https://doi.org/10.1108/IJWIS-08-2014-0028

Publisher

:

Emerald Group Publishing Limited

Copyright © 2015, Emerald Group Publishing Limited

Related articles