Abstract

The ever-growing interest in and requirement for green energy have led to an increased focus on research related to forecasting solar irradiance recently. This study aims to develop forecast models based on deep learning (DL) methodologies and multiple-site data to predict the daily solar irradiance in two locations of India based on the daily solar radiation data obtained from NASA’s POWER project repository over 36 years (1983–2019). The forecast modeling of solar irradiance data is performed for extracting and learning the symmetry latent in data patterns and relationships by the machine learning models and utilizing it to predict future solar data. The goodness of fit and model performance are compared with rolling window evaluation using mean squared error, root-mean-square error and coefficient of determination (R2) for evaluation. The contributions of this study can be summarized as follows: (i) time series models based on deep learning methodologies were implemented to forecast the daily solar irradiance of two locations in India in consideration of the historical data collected by NASA; (ii) the models were developed on the basis of single-location univariate data as well as multiple-location data; (iii) the accuracy, performance and reliability of the model were investigated on the basis of standard performance evaluation metrics and rolling window evaluation; (iv) the feature importance of the nearby locations with respect to forecasting target location solar irradiance was analyzed and compared based on the solar irradiance data obtained from NASA over 36 years. The results indicate that the bidirectional long short-term memory (LSTM) and attention-based LSTM models can be used for forecasting daily solar irradiance data. According to the findings, the multiple-site data with solar irradiance historical data improve upon the forecast performance of single-location univariate solar data.

Highlights

  • IntroductionClimate changes in recent times and the high demand for electricity have led to the requirement of power generation from green and renewable sources, solar energy being one of them

  • Solar irradiance forecast has captured the attention of current research due to the requirement and interest in renewable and green energy

  • Accurate forecasting of solar irradiance is required to understand the solar energy perspective of a region, considering the opportunities as well as challenges related to forecasting

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Summary

Introduction

Climate changes in recent times and the high demand for electricity have led to the requirement of power generation from green and renewable sources, solar energy being one of them. Sun into a major source of energy [1]. This solar power can be harnessed either through concentrated power plants or photovolatic (PV) power plants. We deal with the PV power plants; their performance is mainly related to the factors of electrical parameters of its components (PV panels, inverters), characteristics of the installation (orientation, tilt angle) and meteorological conditions [2]. The meteorological factor affecting the power produced by a PV field is mainly the absorbed solar irradiance. There is, a linear correlation between the PV modules’ maximum power and the Symmetry 2020, 12, 1830; doi:10.3390/sym12111830 www.mdpi.com/journal/symmetry

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