Forecasting electricity generation from renewable sources during a pandemic

Author:

Reichert Bianca1ORCID,Souza Adriano Mendonça1ORCID,Mezzomo Meiri2

Affiliation:

1. Universidade Federal de Santa Maria, Brasil

2. Universidade Federal de Santa Catarina, Brasil

Abstract

Abstract Renewable sources are responsible for more than half of Brazilian electric generation, which basically correspond to hydropower, biomass and wind sources. This research aimed to verify if the Autoregressive Integrated Moving Average (ARIMA) models present good performance in predicting electricity generation from biomass, hydropower and wind power for the first months of COVID-19 pandemic in Brazil. The best forecasting models adjusted for biomass, hydropower and wind generation was the SARIMA, since this model was able to identify seasonal effects of climatic instability, such as periods of drought. Based on the seasonality of the largest generating sources, renewable generation needs to be offset by other sources, as non-renewable, and more efforts are needed to make Brazilian electric matrix more sustainable.

Publisher

FapUNIFESP (SciELO)

Subject

Industrial and Manufacturing Engineering,Business and International Management

Reference53 articles.

1. Programa de incentivo às fontes alternativas.,2017

2. Geração por fonte.,2020

3. A new look at the statistical model identification;Akaike H.;IEEE Transactions on Automatic Control,1974

4. Time series ARIMA model for prediction of daily and monthly average global solar radiation: the case study of Seoul, South Korea;Alsharif M. H.;Symmetry,2019

5. An overview of incentive policies for the expansion of renewable energy generation in electricity power systems and the Brazilian experience;Aquila G.;Renewable & Sustainable Energy Reviews,2017

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