Fault Analysis Database with Features (FADbF)

  • Leandro Augusto Ensina (Créateur)
  • Luiz Eduardo Soares de Oliveira (Créateur)
  • Rafael Menelau Oliveira Cruz (Créateur)
  • George Darmiton da Cunha Cavalcanti (Créateur)

Ensemble de données

Description

This repository is also available in GitHub: https://github.com/leandroensina/FADbF The FADbF dataset companions the paper entitled "Fault Distance Estimation for Transmission Lines with Dynamic Regressor Selection", published in Neural Computing and Applications, doi: 10.1007/s00521-023-09155-y. More information about the dataset can be found in this reference. Associated Tasks: classification and regression Instances: 168,000 Attributes: 128, including the two possible targets Additional Information: this database comprises several attributes extracted from time series of fault simulations of a transmission line with 500 kV, 414 km, and 60 Hz. In total, we extracted 21 features separately for each of the three phases for both voltage and current waveforms along two post-fault cycles from a single terminal, resulting in 126 attributes (21 * 3 * 2 = 126) in addition to the two possible targets, i.e., fault type (classification task) and fault location (regression task). If desired, the fault type can also be used as a feature for the fault location task.
Date mise à disposition6 déc. 2023
EditeurZenodo

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