Forecasting of Solar Irradiances using Time Series and Machine Learning Models: A Case Study from India

被引:5
作者
Sarita Sheoran [1 ]
Singh R.S. [1 ]
Pasari S. [1 ]
Kulshrestha R. [1 ]
机构
[1] Department of Mathematics, Birla Institute of Technology & Science Pilani, Pilani Campus, Rajasthan, Jhunjhunu
来源
Applied Solar Energy (English translation of Geliotekhnika) | 2022年 / 58卷 / 01期
关键词
forecasting; global horizontal irradiance; machine learning; renewable energy; time series;
D O I
10.3103/S0003701X22010170
中图分类号
学科分类号
摘要
With the focus on renewable energy resources due to environmental reasons, reliable forecasting of renewable energy has great societal importance. This study focuses on the analysis and forecasting of GHI data at two different locations in India, namely Pokhran and Bitta. Since the GHI time series plots exhibit seasonality and randomness, the time series SARIMA model along with two machine learning models, namely MLP and LSTM, are implemented for daily, weekly and monthly forecasting. The efficacy of these competitive models is assessed using MAPE and RMSE values. We also perform residual analysis as a post processing step of the implemented models. For monthly forecasting, the SARIMA model has the best performance, as it precisely captures monthly seasonality in comparison to the machine learning models. However, for short term daily forecasting, machine learning models provide much better estimates with MLP as the most desirable one. Since the SARIMA model fails to fully capture the high amount of fluctuation (mostly, seasonal fluctuation) in the daily and weekly observations, we additionally implement an ARIMA model with sliding windows to improve modelling efficacy. The present study therefore provides a clear guideline on the selection of forecasting models based on the desired time horizon. © 2022, Allerton Press, Inc.
引用
收藏
页码:137 / 151
页数:14
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