Forecasting electricity generation from renewable sources during a pandemic

Bianca Reichert, A. Souza, Meiri Mezzomo
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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.
预测大流行期间可再生能源的发电量
可再生能源占巴西发电量的一半以上,基本对应水电、生物质能和风能。本研究旨在验证自回归综合移动平均(ARIMA)模型在预测巴西2019冠状病毒病大流行头几个月的生物质、水电和风力发电方面是否表现良好。根据生物质能、水力发电和风力发电进行调整的最佳预测模型是SARIMA,因为该模型能够确定气候不稳定的季节性影响,例如干旱时期。根据最大的发电来源的季节性,可再生能源发电需要被其他来源抵消,因为不可再生,需要更多的努力使巴西电力矩阵更具可持续性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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