Artificial Neural Networks Manipulation Server: Research on the Integration of Databases and Artificial Neural Networks

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http://hdl.handle.net/2183/16096Collections
- Investigación (FIC) [1687]
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Artificial Neural Networks Manipulation Server: Research on the Integration of Databases and Artificial Neural NetworksAuthor(s)
Date
2002-06Citation
Santos-del-Riego Antonino, Arcay B, Albo A, Pazos A (2002) Artificial Neural Networks Manipulation Server: Research on the Integration of Databases and Artificial Neural Networks. Neural Computing & Applications, 11 (1) : 3–16
Abstract
This paper proposes a new whole and distributed integration approach between Artificial Neural Networks (ANNs) and Databases (DBs) taking into account the different stages of the former’s lifecycle (training, test and running). The integration architecture which has been developed consists of an ANN Manipulation Server (AMS) based on a client-server approach, which improves the ANNs’ manipulation and experimentation capabilities considerably, and also those of their training and test sets, together with their modular reuse among possibly remote applications. Moreover, the chances of integrating ANNs and DBs are analysed, proposing a new level of integration which improves the integration features considerably. This level has not been contemplated yet at full reach in any of the commercial or experimental tools analysed up to the present date. Finally, the application of the integration architecture which has been developed to the specific domain of Environmental Impact Assessments (EIAs) is studied. Thus, the versatility and efficacy of that architecture for developing ANNs is tested. The enormous complexity of the functioning of the patterns which rule the environment’s behaviour, and the great number of variables involved, make it the ideal domain for experimenting on the application of ANNs together with DBs.
Keywords
Artificial neural networks
Databases
Artificial neural networks manipulator server
Client-server architecture
Environmental impact assessment
Hybrid systems
Databases
Artificial neural networks manipulator server
Client-server architecture
Environmental impact assessment
Hybrid systems
Description
The final publication is available at Springer via http://dx.doi.org/10.1007/s005210200011
Editor version
ISSN
1433-3058
0941-0643
0941-0643