Revista Iberoamericana de Automática e Informática Industrial RIAI (Sep 2019)

A Set-Membership approach to short-term electric load forecasting

  • Jimena Diaz,
  • Jose Vuelvas,
  • Fredy Ruiz,
  • Diego Patiño

DOI
https://doi.org/10.4995/riai.2019.9819
Journal volume & issue
Vol. 16, no. 4
pp. 467 – 479

Abstract

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This work presents a model for the short-term forecast of electric load, based on Set-Membership techniques. The model is formed by a periodic component and an adaptive non-linear autoregressive component. The identifications set of the non-linear model is increased at each estimation step. The model is evaluated in a case study with more than 13.000 samples of hourly sampled energy demand, registered during three years at a rural town in Colombia. The performance of the estimator is evaluated and confronted to a linear autoregressive model and a standard Set-Membership model with fixed identification set. Results show that the proposed estimator is able to predict demand with an RMS error below 2.5% for validation data, using just a 5% of the available dataset for the model identification.

Keywords