Abstract

We review the latest modeling techniques and propose new hybrid SAELSTM framework based on Deep Learning (DL) to construct prediction intervals for daily Global Solar Radiation (GSR) using the Manta Ray Foraging Optimization (MRFO) feature selection to select model parameters. Features are employed as potential inputs for Long Short-Term Memory and a seq2seq SAELSTM autoencoder Deep Learning (DL) system in the final GSR prediction. Six solar energy farms in Queensland, Australia are considered to evaluate the method with predictors from Global Climate Models and ground-based observation. Comparisons are carried out among DL models (i.e., Deep Neural Network) and conventional Machine Learning algorithms (i.e., Gradient Boosting Regression, Random Forest Regression, Extremely Randomized Trees, and Adaptive Boosting Regression). The hyperparameters are deduced with grid search, and simulations demonstrate that the DL hybrid SAELSTM model is accurate compared with the other models as well as the persistence methods. The SAELSTM model obtains quality solar energy prediction intervals with high coverage probability and low interval errors. The review and new modelling results utilising an autoencoder deep learning method show that our approach is acceptable to predict solar radiation, and therefore is useful in solar energy monitoring systems to capture the stochastic variations in solar power generation due to cloud cover, aerosols, ozone changes, and other atmospheric attenuation factors.

Highlights

  • Predictions; (b) a Manta Ray Foraging Optimization (MRFO)-based feature selection process was implemented to select the best set of features for the problem; (c) Long Short-Term Memory Network (LSTM)-based seq2seq architectures were explored for Global Solar Radiation (GSR) prediction and compared with Deep Neural Network (DNN), Gradient Boosting Regression (GBM), Random Forest Regression (RFR), Extremely

  • An extensive evaluation of the proposed deep hybrid Stacked LSTM-based seq2seq (SAELSTM) model compared with the Deep Learning (DL) model (DNN) as well as the conventional Machine Learning (ML) models (GBM, RFR, ETR, and Adaptive Boosting Regression (ADBR))

  • In order to find the optimal hyperparameter for deep hybrid SAELSTM as well as comparative models, a grid search method based on five-fold cross-validation was used

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Summary

A Review and New Modeling Results

Deo 1, * , Hua Wang 2 , Mohanad S. Al-Musaylh 3 , David Casillas-Pérez 4 and Sancho Salcedo-Sanz 5. Autoencoder with Feature Selection for Daily Solar Radiation Prediction:

Background
Review of Theoretical Framework for ML and DL Techniques
Benchmark Models
Study Area and Data Available
Predictive Model Development
Stacked LSTM Sequence to Sequence Autoencoder Model Development
Benchmark Model Development
Performance Evaluation Metrics Considered
Prediction Interval
Results and Discussion
Full Text
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