Automated Organization Profile

INESC-ID - IST

Current S-Index

3.4

Sum of Dataset Indices for all datasets

Average Dataset Index per Dataset

1.1

Average Dataset Index per dataset

Total Datasets

3

Total datasets in this organization

Average FAIR Score

34.6%

Average FAIR Score per dataset

Total Citations

2

Total citations to the organization's datasets

Total Mentions

0

Total mentions of the organization's datasets

S-Index Interpretation

S-Index Over Time

Cumulative Citations Over Time

Cumulative Mentions Over Time

Datasets

Intelligent Energy Systems Ontology: Local flexibility market and power system co-simulation demonstration (Version: 1.0)

The Intelligent Energy Systems Ontology (IESO) provides semantic interoperability within a society of multi-agent systems (MAS) developed in the scope of power and energy systems (PES). It leverages the knowledge from existing and publicly available semantic models developed for specific PES subdomains to accomplish a shared vocabulary among the agents of the MAS community, overcoming heterogeneity among the reused ontologies. IESO provides agents with semantic reasoning, constraints validation, and data uniformization. The use of IESO is demonstrated through the simulation of the management of a rural distribution network, considering the validation of the grid’s technical constraints. This dataset publishes files demonstrating: i) a snapshot of the initial semantic knowledge base (KB); ii) queries to the KB to get services inputs; iii) conversions between syntactic and semantic models; iv) constraints validations; v) automatic conversion of units of measure.

Authors

  • Santos, Gabriel ;
  • Morais, Hugo ;
  • Pinto, Tiago ;
  • Corchado, Juan M. ;
  • Vale, Zita
0 Citations0 Mentions13% FAIR0.3 Dataset Index
10.5281/zenodo.5526902November 2023

Intelligent Energy Systems Ontology: Local flexibility market and power system co-simulation demonstration

The Intelligent Energy Systems Ontology (IESO) provides semantic interoperability within a society of multi-agent systems (MAS) developed in the scope of power and energy systems (PES). It leverages the knowledge from existing and publicly available semantic models developed for specific PES subdomains to accomplish a shared vocabulary among the agents of the MAS community, overcoming heterogeneity among the reused ontologies. IESO provides agents with semantic reasoning, constraints validation, and data uniformization. The use of IESO is demonstrated through the simulation of the management of a rural distribution network, considering the validation of the grid’s technical constraints. This dataset publishes files demonstrating: i) a snapshot of the initial semantic knowledge base (KB); ii) queries to the KB to get services inputs; iii) conversions between syntactic and semantic models; iv) constraints validations; v) automatic conversion of units of measure.

Authors

  • Santos, Gabriel ;
  • Morais, Hugo ;
  • Pinto, Tiago ;
  • Corchado, Juan M. ;
  • Vale, Zita
2 Citations0 Mentions13% FAIR1.1 Dataset Index
10.5281/zenodo.10137320November 2023

Intelligent Energy Systems Ontology: Local flexibility market and power system co-simulation demonstration (Version: 1.0)

The Intelligent Energy Systems Ontology (IESO) provides semantic interoperability within a society of multi-agent systems (MAS) developed in the scope of power and energy systems (PES). It leverages the knowledge from existing and publicly available semantic models developed for specific PES subdomains to accomplish a shared vocabulary among the agents of the MAS community, overcoming heterogeneity among the reused ontologies. IESO provides agents with semantic reasoning, constraints validation, and data uniformization. The use of IESO is demonstrated through the simulation of the management of a rural distribution network, considering the validation of the grid’s technical constraints. This dataset publishes files demonstrating: i) a snapshot of the initial semantic knowledge base (KB); ii) queries to the KB to get services inputs; iii) conversions between syntactic and semantic models;
iv) constraints validations; v) automatic conversion of units of measure.

Authors

  • Santos, Gabriel ;
  • Morais, Hugo ;
  • Pinto, Tiago ;
  • Corchado, Juan M. ;
  • Vale, Zita
0 Citations0 Mentions77% FAIR1.9 Dataset Index
10.5281/zenodo.5526903September 2021