A Review and Evaluation of the State of Art in Image-Based Solar Energy Forecasting: The Methodology and Technology Used
Abstract
:1. Introduction
2. Review and Evaluation of Solar Irradiance Forecasting Sensors
- Studies published in peer-reviewed journals and conferences from 2000 to 2024.
- Research focusing on solar power forecasting using imagery-based methods, including ground-based sensors, satellite data, and all-sky cameras.
- Research that provides quantitative performance evaluations using standard error metrics.
- Studies not available in English or Spanish.
- Papers that did not provide sufficient methodological details or performance metrics.
- Research focused solely on theoretical models without practical implementation or validation. These criteria ensured that the review covered a wide range of relevant and high-quality studies, providing a robust basis for the comparative analysis presented.
2.1. Persistence Model and Error Metrics
- Mean Bias Error (MBE) is a metric appropriate for evaluating forecast bias by reflecting the difference between the average value and the actual value of measured magnitude. It is expected to be as small as possible.
- Mean Absolute Error (MAE) is a linear score which means that all individual differences are weighted equally in the average. It is a metric less sensitive to outliers than the widely used RMSE and is appropriate for estimating uniform prediction errors.
- Mean Absolute Percentage Error (MAPE) is used to evaluate uniform prediction errors such as MAE.
- Root Mean Square Error (RMSE) measures the global error over the entire forecasting period.
- Standard Deviation (std or SDE) is a relative measure of average dispersion that gives an idea of the magnitude outliers mentioned above.
- Coefficient of determination (R2) is one of the most common statistical metrics for characterizing model quality. It compares the error variance to the variance of the modeled data.
- KSI aims to quantify the model’s ability to reproduce observed statistical distributions.
2.2. Measuring Sensors Used in Solar Irradiance Forecasting
2.3. Satellites
2.4. All-Sky Cameras
3. Review and Evaluation of Solar Irradiance Forecasting Methods
- Studies published in peer-reviewed journals and conferences from 2000 to 2024.
- Studies employing advanced methodologies such as statistical regression, artificial intelligence, numerical models, and image processing techniques.
- Research that provides quantitative performance evaluations using standard error metrics.
- Studies not available in English or Spanish.
- Papers that did not provide sufficient methodological details or performance metrics.
- Research focused solely on theoretical models without practical implementation or validation. These criteria ensured that the review covered a wide range of relevant and high-quality studies, providing a robust basis for the comparative analysis presented.
3.1. Statistical Methods
3.1.1. Regression Methods
3.1.2. AI Artificial Intelligence Techniques
3.2. Numerical Models
3.3. Image-Based Methods
3.3.1. Satellite Imagery
3.3.2. All-Sky Images
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
ACCESS | Australian Community Climate and Earth-System Simulator |
AE | Automatic Encoder |
AI | Artificial Intelligence |
AMV | Atmospheric Motion Vector |
ANFIS | Adaptive Neuro Fuzzy Inference System |
ANN | Artificial Neural Network |
AOD | Aerosol Optical Depth |
ARIMA | Autoregressive Integrated Moving Average |
ARMA | Autoregressive Moving Average |
ARMAX | Autoregressive Moving Average with Exogenous Variables |
ARX | Autoregressive with exogenous inputs |
BPNN | Back Propagation Neural Network |
BRT | Boosted Regression Trees |
CARDS | Coupled Autoregressive and Dynamical System |
CCM | Cross-Correlation Method |
CLSTM | Convolutional Long Short-Term Memory |
CMD | Cloud Motion Displacement |
CNN | Convolutional Neural Networks |
CSL | Clear Sky Library |
CSM | Clear Sky Model |
DBN | Deep Belief Network |
DCNN | Deep Convolutional Neural Networks |
DHI | Diffuse Horizontal Irradiance |
DL | Deep Learning |
DNI | Direct Normal Irradiance |
DNN | Deep Neural Network |
ECMWF | European Centre for Medium-Range Weather Forecast |
ELM | Extreme Learning Machine |
ERA5 | ECMWF Reanalysis v5 |
FTM | Fixed Threshold Method |
GB | Gradient Boosting |
GFS | Global Forecast System |
GHI | Global Horizontal Irradiance |
HCF | Haze Correction Factor |
HRRR | High-Resolution Rapid Refresh |
HSR | Hourly Solar Radiation |
HYTA | Hybrid Thresholding Algorithm |
ISR | Incident Solar Radiation |
JMA | Japan Meteorological Agency |
k-NN | k-Nearest Neighbors |
LM | Levenberg-Marquardt |
LST | Land Surface Temperature |
LSTM | Long Short-Term Memory |
MAE | Mean Absolute Error |
MAPE | Mean Absolute Percentage Error |
MBE | Mean Bias Error |
MCE | Minimum Cross Entropy |
MLP | Multi-Layer Perceptron |
MM5 | Mesoscale Model version 5 |
MOS | Model Output Statistics |
MP | Megapixels |
MSG | Meteosat Second Generation |
MTF | Multi Transform Fusion |
MVIRI | Meteosat Visible and InfraRed Imager |
NAM | North Americam Mesoscale |
NARMAX | Non-linear Autoregressive Models with Moving Average and Exogenous Input |
NDFD | National Digital Forecast Database |
NWP | Numerical Weather Prediction |
PCA | Principal Component Analysis |
PSM | Physical Solar Model Version 3 |
PSO | Particle Swarm Optimization |
PV | Photovoltaic |
RBM | Restricted Boltzmann Machine |
RBR | Red-Blue Ratio |
RF | Random Forest |
RGB | Red Green Blue |
RMSE | Root Mean Square Error |
SAE | Stacker Automatic Encoder |
SARIMA | Seasonal Autoregressive Moving Average |
SDE | Standard Deviation |
SOM | Self-Organizing Maps |
SREF | Short Range Ensemble Forecast |
SS | Skill Score |
SVC | Support Vector Classifier |
SVM | Support Vector Machines |
SZA | Solar Zenith Angle |
VARX | Vector Autoregressive with Exogenous Input |
WC | Water Content |
WNN | Wavelet Neural Network |
WP | Water Path |
WRF | Weather Research and Forecasting |
WT | Wavelet Transform |
Appendix A
Reference | Aim | Methods Utilized | Forecast Horizon | Data Period | Location | Input Variables | Comparison Methods | Performance Metrics | Results and Observations |
---|---|---|---|---|---|---|---|---|---|
[191] | Performance comparison of the ST, NWP, and MOS models, as well as the reference persistence model (PM) | ST MOS ANN MLPNN STNN ECMWF-MOSNN | 24–72 h | January 2008–December 2011 | Italy | GHI and air temperature | Naive persistence ECMWF-NWP | nMAE RMSE MAE MBE | The ST model and the NWP model give similar results. However, the sources of forecast errors between the ST and NWP models are identified. The MOS model gives the best performance, improving the forecast by approximately 29% with respect to the PM. |
[5] | Non-parametric machine learning approach used for multi-site prediction of power generation | AR GBRT | 6 h | April 2014–February 2015 | Japan | Hourly average of power generation | Naive persistence K-fold Cross-validation Recursive AR Single-site Multi-site GRBT | RMSE nRMSE nMAE nMBE SS | A characteristics analysis demonstrates that variables related to lag observations are more important at the shorter forecast horizons. Over longer horizons, the importance of weather forecasts increases. |
[6] | Simplified method for predicting hourly global solar radiation using extraterrestrial radiation | ANN K-means SVM LightGBM | 1 h | 2022 | China | Solar irradiance | Naive persistence | RMSE MAE | Weather types were not the main factors that affected the prediction result of the model. |
[8] | Hybrid solar irradiance forecasting framework using a K-means algorithm | TB K-means MLPNN | 1–24 h | 2004 and 2013 | EEUU | Solar irradiance | Naive persistence | RMSE nRMSE Forecast Skill | This technique detects outliers and irregular patterns providing better characterization of the collected data. |
[9] | Three types of forecast enhancements are proposed; in a uniform forecast when there is no ramp, ramp forecast magnitude enhancements, and ramp forecast threshold changes | NWP TSI KDE SVR eFAST | 1 h | 2006 | EEUU | Solar energy index | Smart persistence | Correlation Coefficient RMSE nRMSE RMQE nRMQE MaxAE MAE MAPE MBE KSIPer OVERPer Std Skewness Kurtosis 95th Percentile Capacity | The distribution of forecast errors indicates that the relative forecast errors are smaller for a large geographic area. |
[10] | Physics-based endogenous persistence method to forecast power output and ramps a few minutes earlier | Cloud speed persistence AR | 180 s | 6 July 2011–11 July 2012 | EEUU | PV power outputs | Naive persistence Ramp persistence | rRMSE rMBE R skill | Excluding clear days and in terms of the mean square error percentage, the new method exceeded persistence by 16.2% at 20 s, 10.6% at 60 s, and 4.0% at 120 s forecast horizon. |
[11] | Series of approaches based on whole-sky deep imaging learning architectures for very short-term solar PV generation forecasting | PM SPM SLNN SLNN-weather LSTM SIO SIH CNN-LSTM CNN-LSTM-H ConvLSTM ConvLSTM-H PredNet PredNet-H | Not applied | December 2018–February 2019 | China | Sky images | Naive persistence SLNN SIH PredNet-H | RMSE nRMSE MAE MAPE | The proposed hybrid static imagery forecaster provides superior performance compared to benchmarking methods (i.e., those without sky images), with up to 8.3% improvement overall, and up to 32.8% improvement in the cases of ramp events. |
[12] | Development of a model to forecast global horizontal irradiance (GHI) using only sky images without numerical measurements and additional feature engineering | CNN ANN LSTM | 1 h | 1981–1987 | EEUU | GHI | ANN1 ANN2 GBM1 GBM2 GBM3 RF | RMSE MBE FSS | The model outperforms the benchmarking persistence of the cloud model and machine learning models with an nRMSE of 8.85% and an FSS of 25.14% in such a way that it shows superiority in various climatic conditions. |
[13] | Development of classification forecasts based on pattern recognition for GHI forecasting | SVM | 1 h | 113 days of which 87 are summer | EEUU | Location Sky images Actual GHI measurements | Smart persistence | nMAE nRMSE | The results show that the developed short-term forecast framework outperforms the persistence benchmark by 16% in terms of the normalized Mean Absolute Error and by 25% in terms of the normalized mean square error. |
[16] | Solar irradiance forecast for grid-connected PV plant | MLP | 24 h | 1 July 2008–23 May 2009 23 November 2009– 24 January 2010 | Denmark | Irradiance G in the PV plane and air temperature | Cross validation | MBE RMSE r | 98 to 99% for sunny days and 94 to 96% for cloudy days. |
[17] | Solar irradiance forecast for grid-connected PV plant | Clear sky modeling with statistical smoothing techniques | Up to 36 h | 2006 | Not indicated | Power gained from 21 PV Temperature from NWP | Naive persistence | RMSE nRMSE | For horizons below 2 h, solar energy is the most important input, but for horizons the next day it is appropriate to use NWP as an input. RMSE 35% on persistence. |
[18] | Assessment of the skill of the MM5 model | MM5 | 1–2 days | 2012 | Greece | Ground measurements of 11 radiometric stations | Not specified | MBE RMSE MAE | The seasonal analysis showed that the MM5 model tends to overestimate the GHI for all seasons of the year. |
[19] | The methodology applied to introduce a large-scale, public, and solar irradiance dataset | ERA5 LR RF SVR | Every 30 min up to 24 h | 2002–2019 | Spain | Solar current every half hour | ERA5 LR RF SVR | RMSE MAE FS | The forecast error of a model can be reduced by adding variables from its neighboring stations. |
[20] | PV power production forecasts under overcast skies | Clear sky model Clear sky index Kt Kalman filter | 30 s–6 h | 1 May 2011–30 April 2012 | EEUU | PV power measurements every 15 min of 80 panels | Naive persistence | RMS MBE | Exceeds the persistence model for forecast horizons ranging from 30 min to 90 min. RMS = 0.062 MBE = 0.91 |
[22] | Calculation of incident radiation in clear skies on any inclined surface without the use of complicated meteorological instrumentation | MLP NARX | Next day | 2006 | Denmark | Historical PV power | Clear sky model | MAPE | The test results demonstrate that the forecasting model can be used to accurately forecast the daily power of the photovoltaic power system (MAPE = 16.47%). |
[23] | Hybrid deep learning framework integrating convolutional neural network for pattern recognition with short-term memory network for global solar radiation (GSR) forecast every half hour | CLSTM hybrid model | 1 day–1 week–2 weeks and 8 months every half hour | 1 January 2006–31 August 2018 | Australia | GSR | CNN LSTM DNN MLP Decision tree | MAE RMAE RMSE RRMSE MAPE APB KGE r | The hybrid model records superior results with more than 70% predictive errors below ±10 Wm−2 and outperforms the reference model for GSR prediction every half hour of 1 day. |
[24] | Short-term prediction of solar radiation, based on data collected in the near past | AR ARMA k-NN ELM SVR | Not specified | October 2005–October 2007 | Italy | GHI database, weather station air temperature, and humidity | Naive persistence | Std Err(f) | The use of data collected from remote stations for short-term forecasts can be a useful alternative. |
[25] | Application of an analog set method (AnEn) to generate probabilistic solar power forecasts (SPF) | AnEn QR Boca NN | 3 days | 60 days | Italy | PV powers and temperature of three sites | PeEn persistence set | CRPS MRE MAE | The different climatology in the three solar farms affects the performance of QR and AnEn particularly in terms of MAE (20–25%). |
[26] | Analog set method for daily regional photovoltaic (PV) forecasting with resolution per hour | HDC EDAC NAM GFS SREF | NAM 84 h GFS 120 h SREF 87 h | 7 January 2015–27 September 2016 | EEUU | Historical temperature and irradiance data Astronomical data Current weather data | Naive persistence NWP model SVM model | nMAE NRMSE | The NRMSE has been reduced by 13.80% to 61.21% compared to the three baselines tested. |
[29] | PV power forecasting model, considering the aerosol index data (AI) as an additional input parameter | BP-ANN | 24 h | 2 months | EEUU | Historical data for AI, PV power, temperature, humidity, and wind speed Current weather data | Error gradient descent algorithm | MAPE APPV | BP’s neural network method has shown that the application of AI improves precision compared to conventional methods using ANN. MAPE = 7.65%. |
[27] | Proposes a GHI, DNI, and DHI forecast model of solar irradiance using both AOD and data observed from a ground station | MLP SVR k-NN Decision tree regression | 1 h | 3 years | Saudi Arabia | KACARE AERONET CAMS | Smart persistence | RMSE FS | The MLP model is especially applicable for desert areas under clear sky conditions, where dust storms are frequent and AOD in the air is high. FS = 42%. |
[28] | Aerosol-based solar irradiance forecasting for power applications system | Combination of aerosol forecasts with other measures | 2–3 days | 5 months | Germany, United Kingdom, Italy, France, Spain, Netherlands | Aerosol concentration Albedo Ozone Water steam Cloud forecast (EURAD) | ECMWG MM5 Meteosat-7 data Ground measurements | RMSE rRMSE Bias rBias | The AFSOL system significantly improves global irradiance and especially direct irradiance forecasts relative to ECMWF forecasts (bias reduction from 226% to 111%; RMSE reduction from 31% to 19% for direct irradiance). |
[33] | To accurately capture the effect of the cloud on irradiance, this article develops a real-time mapping model between the satellite image and solar irradiance | Image processing Deep CNN (VGG) | 1–4 h | January 2017–November 2019 | China | Satellite images GHI data Meteorological data | ANN MLP | RMSE MAE | The proposed hybrid method shows better precision and a smaller error range compared to other AI models. The proposed hybrid method could be applied to the forecast of regional or distributed photovoltaic energy. |
[34] | GHI estimation using a combination of satellite and ANN images | ANN | 30 min, 60 min, 90 min, 120 min. | 1 January 2011–31 January 2012. | EEUU | Velocimetry Cloud indices using satellite images Irradiance data | Naive persistence | MBE RMSE | Combining stochastic learning, image processing and terrestrial telemetry provide benefits in the robustness and accuracy of prediction. |
[35,71] | It combines ground measurements with exogenous inputs provided by satellites and PNT data. Using satellite data to improve prediction of solar radiation with Bayesian artificial neural networks | AR ARMA ANN. Bayesian ANN | 1 h–6 h. 1 h–6 h | 2005 2002 2003 2004 2005 | Spain | Terrestrial data set Satellite-derived data: GHI and irradiation on top of the atmosphere ECMWF data set Terrestrial data and satellite data (Helioclim-3) | Smart persistence NN SAT ECMWF. Naive persistence Smart persistence CLI ANN | RMSE MAE Skill RMSE MAE Skill | The combination of exogenous satellite data and ECMWF data provides the best forecast results. The different results obtained in the southern and northern areas and depending on the set of quarterly seasonal data seem to be a consequence of cloud formation. |
[36] | GHI’s forecasting approach that relies on satellite imagery and ground measurements as inputs | Optical flow | 1–2–3 h | 110 days | EEUU | Satellite images Ground measurements | K-persistence model | MAE MBE RMSE | The method works reliably for optically thick clouds that are easily distinguished from the background, while problems persist with optically thin clouds (opaque). SS = 8–19%. |
[37] | Analysis of ARMAX solar forecast models using ground measurements and satellite imagery | ARMAX | 10 min 20 min 30 min 40 min 50 min 60 min 120 min 180 min 240 min | 6 months | Argentina | Terrestrial data GHI Satellite albedo Local variability index | Naive persistence | MBD RMSD | All the models tested, whether or not they include exogenous variables, surpass the classic persistence procedure for the region. |
[38] | Combination of whole sky images and irradiance measurements for irradiance forecasting and ramp event detection using the ramp detection index (RDI) | CSL FTM CCM | 1–10 min | 6 months | Uruguay | All-sky images GHI ground measurements | Regular persistence Smart persistence | MBD MAD RMSD RM RDI | The proposed method achieved a maximum yield of 11.4% in forecast horizons of 6 and 10 min in partially cloudy conditions. |
[39] | Results of a very short-term horizontal irradiance forecasting (GHI) experiment based on images of the hemispheric sky are presented | RBR CSL Cloud and shadow mapping Gridding SVC Optical flow | Up to 25 min | 2 months (April and May 2013) | Germany | Ground irradiance measurements Cloud heights using ceilometer All-sky images | Naive persistence | MBE RMSE FS ACC | The study shows that for distances of more than 1–2 km from the camera in cumulus cloud conditions, a single pyranometer outperforms. |
[40] | System approach with four spatially distributed ASIs that manages to apply an individual 3D model of each detected cloud as a cloud object with different attributes | CSL RBR Voxel carving method Kalman filter | 15 min | 30 days | Spain | Ground irradiance measurements Alturas de nube mediante ceilómetro All-sky images | Validation of DNI maps by ground measurement | MAE rMAE | Spatially resolved DNI maps with a border length of 8 km. |
[42] | Relationship between the appearance of the sky and future photovoltaic energy production using deep learning | MLP CNN LSTM | 1 min | 90 days | Japan | HDR hemispheric sky image data set and corresponding PV power | Naive persistence | MAE RMSE | MLP SS-RMSE = 7% CNN SS-RMSE = 12% LSTM SS-RMSE = 21% |
[43,85] | Intelligent automatic cloud adaptive identification system (SACI) for projection of sky images and solar irradiance forecasting. Intelligent forecasting model for DNIs that combine sky image processing with ANN optimization schemes | CSL FTM MCE RBR ANN. GA ANN CVM RTM | 1–5–10–15 min | 5 March 2013–5 April 2013. 6 months | EEUU | 80 images captured in Merced and 30 sky images captured in Folsom DNI data and sky images | Naive persistence. Naive persistence and deterministic model | MBE RMSE MBE RMSE | Forecast skills above 14%, 18%, and 19% above persistence forecast for 5, 10, and 15 min forecasts, respectively. The hybrid forecasting models proposed in this work achieve statistically robust forecasting abilities that exceed 20% on persistence for forecasts 5 and 10 min in advance, respectively. |
[44] | Very short-term forecast of GHI and DNI solar irradiance using sky and optical flow cameras covering a variety of cloud conditions and more than ten different characteristics extracted from raw pixel data | Optical flow NN | 30 min–2 h | 24 months | Spain | All-sky images | Cross-validation 5 times | Bias | The applied method correctly classifies 95% of the clouds and with good forecasts, from low false positive rates of 0.08% to high overall accuracy rates of 96%. |
[53] | A multivariate regression model that uses irradiance values measured from previous hours to improve predictions for the next hour, which can be used to refine daily strategies based on predictions for the next day | ECMWF TRNSYS SAM | 1 day | 1 July 2017–30 June 2018 1 July 2018–30 June 2019 | Portugal | Ground irradiance data | Naive persistence | RMSE MSE MBE MAE r R2 SS | The proposed regression model significantly improves hourly predictions with a skill score of ≈0.84 (that is, an increase of ≈27.29% over the original hourly forecasts). The model shows a skill score of 70.78 (that is, an increase of ≈6% over the original forecasts). |
[92] | Solar irradiance forecast from a ground-based sky imaging system evaluating its performance on thirty-one consecutive days of historical data collected during winter | CSL METAR CBH CCM | 30 s–5 min | 31 days of winter | EEUU | Sky images | Naive persistence | rRMSE rMBE rMAE FS | On average, frozen cloud advection forecasts were found to outperform image persistence forecasts for all forecast horizons during the analysis period. Forecast errors over various periods were attributed to inaccurate cloud base height (CBH). |
[59] | A high-resolution cloud assimilation and numerical weather forecasting model for forecasting solar irradiance | WRF-CLDDA | 36 h | 3 days (06/19/11–06/21/11) | EEUU | Meteorological data | Naive persistence. NAM | rMBE rMAE rRMSE rSTDERR | WRF-CLDDA intraday forecasts had an rMBE of 0.4% compared to 17.8% for the NAM. Furthermore, rMAE was 21.3%, 4.1% lower than NAM. rSTDERR, was 2.4% higher than NAM, as a large part of the NAM error was attributed to systematic bias. |
[60] | Short-term solar irradiance prediction with a hybrid ensemble model | ML DL | Every 1 min | 2021 | Austria | Satellite images | Ground measurements | R2 Score nMAE nRMSE | This method highlights the model’s competency in capturing extremely high cloud variability during cloudy and heavily clouded sky conditions, resulting in a skill score improvement ranging from 10% to 30%. |
[61] | Regional PV power estimation and forecasting using numerical and satellite weather forecast data | ANNsE Clustering | 1–48 h | 2014 and 2015 | Italy | Satellite-derived irradiance data and numerical weather prediction (NWP) | Naive persistence Smart persistence | RMSE MAE SS | The model provided an intraday forecast (1 to 4 h) with an RMSE of 5–7% and a skill score with respect to intelligent persistence of -8% to 33.6%. The one and two-day ahead forecast achieved an RMSE of 7% and 7.5% and a skill score of 39.2% and 45.7%. |
[62] | Examines two spatio-temporal approaches to the short-term forecast of global horizontal irradiance using satellite-derived grid irradiances as experimental support | STVAR CMV | 1 h | 2 years (2008, 2009) | Montserrat Island | Satellite-derived irradiance data from the SUNY database | Scaled persistence | RMSE rMAE rMBE Skill score | The performance of the model depends significantly on the orographic influence and the type of day (clear versus cloudy). It was found that the errors increased significantly with the orography of the location and the variability of the irradiance of the day |
[63] | ANN accuracy is established along with satellite-derived Land Surface Temperature (LST) as a predictor to forecast solar radiation for the Queensland region | ANN | Monthly | 2 years (2012–2014) | Australia | LST data | MLR ARIMA Cross-validation | r RMSE MAE WI RRMSE MAPE | The results showed that an ANN model outperformed the MLR and ARIMA models where analysis showed 39% cumulative errors in the smallest magnitude range, while MLR and ARIMA produced 15% and 25%. |
[64] | Comparative study of LSTM neural networks to forecast daily global horizontal irradiance with satellite data | LSTM | 1 day | 2005–2014 | Australia | Remote sensing data from the 2014 AMS Kaggle database | Smart persistence GBR FFNN | RMSE MAE SS | ML models understand atmospheric behavior even in cases of high variability. SS = 52.2% |
[65] | GHI prediction using universally deployable extreme learning machines integrated with MODIS satellite predictors | ELM | 6 h–1 day | 2012–2015 | Not indicated | Satellite data from the Moderate Resolution Imaging Spectroradiometer (MODIS) | RF M5 tree MARS | RMS | ELM versatility to generate forecasts on heterogeneous and remote spatial sites, surpassing all comparison models. RMS < 6% SS RMSE = 67.3% |
[66,219] | Forecast method based on a phase correlation algorithm for estimating cloud movement derived from Meteosat-9 images. Two methods of extraction of motion vectors using correlation and optical flow methods | Phase correlation algorithm Heliosat-II method. Optical flow | 4 horas 15 min–4 h | 16 June 2012 at 1100 UTC 6 days daytime images Meteosat-10 | France | Images of Meteosat-9 Images of Meteosat-10 | Naive persistence | RMSE relative | The loss of precision compared to the existing method is still small, but real progress in time computing has been highlighted (25% reduction). Optical flow-based method outperforms all methods with satisfactory time calculation. |
[112] | Hybrid prediction using satellite remote sensing data of surface solar irradiation coupled to a double exponential smoothing time series model | ARMA NAR-NN DES Interpolation method Kriging | 1–2–3–4–5 days | 2013–2015 | Australia | EUMETSAT historical data | NWP-ANN ANN DCGSO-LASSO | RMSE MAPE r | The developed model provided very accurate forecasts, especially for the first four days. |
[58] | Analysis of satellite imagery and an Exponential Smoothing State Space (ESSS) hybrid model along with artificial neural networks (ANN) for solar irradiance prediction | Image análisis EES ANN | Hourly | 09/2010–07/2011 | Japan | Cloud cover index Satellite images Irradiance dataset of the SERIS station | ARIMA LES SES RW | nRMSE nMBE R2 | Compared to other popular statistical time series models such as ARIMA, LES, SES, and RW, the proposed model has superior forecasting accuracy. |
[68] | Development and validation of a satellite-based GHI forecast for high latitudes (Finland) | CSM | Up to 4 h every 15 min | 1 May 2016–31 August 2016 | Finland | CS models data and satellite images | McClear SPECMAGIC Pvlib-python Solis | rMBE rRMSE | Good forecasting performance shows that satellite-based GHI forecasting methods are a viable option in PV forecasting also for high latitudes |
[70] | Model proposal that can make short-term forecasts of solar irradiance at any general location without the need for measurements on the ground | DNN | Up to 6 h | 1 January 2014–31 December 2017 | Netherlands | Satellite measurements Weather forecasts Terrestrial data | 6 ECMWF predicted values for 6 forecast hours CL irradiance Satellite images | rRMSE MBE | The proposed model is equal to or better than the local models. Savings in operating costs of installing local sensors and collecting ground data. rRMSE general = 31.31% rRMSE local = 31.01% |
[75] | Method based on advanced machine learning algorithms for the selection and prediction of variables | NN RVS | 5–60 min | 1 January 2013–31 December 2014 | Italy | Previous PV data and previous weather data | Baseline B1 Baseline B2 | MAE MRE | PV power production for very short-term forecast horizons of 5 to 60 min can be accurately predicted using only past PV data, without weather information. |
[78,89,90] | Solar immediate prediction system based on shadow cameras for short-term forecasts and generation of DNI maps The validation of GHI and DNI maps projected from an example system consisting of 4 cameras for the entire sky WobaS-4cam is presented The validation of GHI and DNI maps projected from an example system consisting of 4 cameras for the entire sky WobaS-4cam is presented | KCF CSR-DCF. CSL. CSL | 1–2 min 0–15 min 0–15 min | 8 September 2015–14 January 2016. 30 days between September 2015 and October 2016. 30 days between September 2015 and October 2016 | Spain | Soil images and meteorological data Sky images Ground irradiance measurements Terrestrial images from shadow cameras Sky images Ground irradiance measurements Terrestrial images from shadow cameras | Wobas-2cam Ground measurements Terrestrial images. Ground measurements Terrestrial images | rRMSD rMAD rBias TDI. MAE rMAE bias rbias RMSE rRMSE std rstd MAE rMAE bias rbias RMSE rRMSE std rstd | Compared to a whole sky imaging system, better results are achieved for 1 and 2 min forecasts. Spatial aggregations reduce RMSE (GHI) values from 21.4% to 13.0%. Time averaging reduces RMSE (GHI) deviations from 25.3% (mean delivery time 7.5 min, time averaging 1 min) to 19.0% (mean delivery time 7.5 min, time averaging 15 min). Las agregaciones espaciales reducen los valores de RMSE (GHI) del 21.4% al 13.0%. El promedio temporal reduce las desviaciones de RMSE (GHI) del 25.3% (tiempo de entrega medio 7.5 min, promedio temporal de 1 min) al 19.0% (tiempo de entrega medio 7.5 min, promedio temporal de 15 min). |
[91] | Short-term solar forecasting system using low-cost ground-based sky imaging cameras | NN Optical flow | 0–20 min | 2 years | Australia | Sky images | Smart persistence | Accuracy Metrics | This model can be easily adapted for conservative or aggressive operation of a solar power system with a backup generator. |
[94] | Estimation of cloud movement and stability for intra-hourly solar forecasting | VOF CCM | 5–10–15 min | 1 month (November 2012) | EEUU | Sky images | Smart persistence CCM | Cloud Index FS | The VOF forecast with a fixed smoothness parameter was found to be superior to the image persistence forecast for all forecast horizons for almost every day and exceeds the CCM forecast with an average error reduction of 39%, 21%, 19%, and 19% for 0, 5, 10, and 15 min forecasts, respectively. |
[102] | 3D cloud detection and tracking system for solar forecasting using multiple sky imagers | Image processing SVM Stereographic calculations for cloud height Clustering Multi-layer aggregation | 1–15 min | 13 May 2013–3 June 2013 | EEUU | Sky images GHI measurements | Smart persistence | STI MAE RMSE | Compared to the persistent model, the system achieves at least a 26% improvement for all irradiance forecasts between one and fifteen minutes, as well as robustly tracking layers. |
[103,104,105] | Hybrid solar irradiance prediction method by merging the Kalman filter and a regression predictor. Prediction of slowdown events through improved cloud detection and tracking A mechanism for predicting dimming and deceleration events based on tracking and grouping information is proposed | Filtro de Kalman Regresor de predicción. RBR SVM Random forest Bayesian classifier Kalman filter Prediction regressor Clustering algorithm Markov SVM | 10–20 min. 10–15 min. 5–10–15–20 min | January 2014–September 2014. January 2014 May 2014 Not specified | EEUU, Taiwan, Taiwan | Ground irradiance measurements Sky images Ground irradiance measurements Sky images Ground irradiance measurements Sky images | Naive persistence 3 NN fusion alternatives. ANN HYTA Compared with its previous models | RMSE MAE RMSE MAE RMSE MAE | Experiments have shown that the time-varying system matrix design is useful in improving the prediction result of the Kalman filter and the proposed hybrid predictor outperforms all other methods being compared. Deceleration events are forecast according to the predicted position of the sun and the movement of clouds. The method could help grid operators make better use and management of solar energy resources. |
Reference | Aim | Methods Used | Forecast Horizon | Data Period | Input Variables | Comparison Methods | Performance Metrics | Results and Observations |
---|---|---|---|---|---|---|---|---|
[108] | 2D cloud map generation from sky cover | CSL RBR CCM | 30 s–5 min | 14 September 2009–10 March 2010 | Sky images | Cloud persistence | TSI | Cloud shadows in outer regions are now correctly cast 70% of the time. |
[111] | Deep learning-based approach to next-day solar PV forecast task | DL | 24 h | 1 January 2015–31 December 2016 | PV power | PSF NN | RMS MAE | The proposed deep learning approach is particularly suitable for solar big data, given its linear time increment behavior, contrary to PSF and NN which show an exponential time increment. |
[112] | Methodology to forecast the energy production of photovoltaic solar energy by using ARMA | ARMA | 1 h | 1 year | PV power | Naive persistence Smart persistence | MAE RMSE | The proposed model works better than an intelligent persistence model and is suitable for use in stochastic or robust optimization models for the operation and planning of the electrical system. |
[113] | Solar energy forecasting algorithm based on the vector autoregression framework, combining distributed time series information collected by the smart grid infrastructure | VAR VARX AR Gradient boosting | 1–6 h | Not specified | PV power | Not specified | RMSE | Real data results from a test pilot show that information from distributed PV generation, when combined into a common forecasting framework, can improve point forecasting ability, compared to a univariate model between 8% and 10%, with 12% on average. |
[114] | ARMAX model to forecast the energy production of a photovoltaic system connected to the grid | ARMAX | 1 day | 1 January 2011–30 June 2012 | Historical PV power | ARIMA NN | RMSE MAD MAPE | The ARMAX model is shown to greatly improve the output power forecasting accuracy over the ARIMA model. |
[115] | This study aims to develop a SARIMA model to predict daily and monthly solar radiation in Seoul, South Korea, based on hourly solar radiation data | SARIMA ACF PACF | Daily and monthly | 37 years (1981–2017) | Solar irradiance | SARIMA | RMSE | The results indicate that (1,1,2) the ARIMA model can be used to represent daily solar radiation, while the SARIMA (4,1,1) of 12 lags for both auto-regressive and moving average parts can be used to represent monthly solar radiation. |
[116] | SARIMA model for multi-step forecasting (20 min resolution) of photovoltaic solar generation | SARIMA ACF | Every 20 min | April 2017 | PV power | Naive persistence | Modified MAPE | Although model performance is considered satisfactory on sunny days (clear skies), it can degrade on cloudy days when solar PV generation is more intermittent. Therefore, the model may not be suitable for very short-term forecasts in months that have cloudy or rainy days. |
[124] | A model based on Mycielski is proposed that considers the hourly recorded solar radiation data as a matrix and, from the last record value, tries to find the most similar sub-matrix pattern in history | Mycielski Markov | 1 h | 4 and 2 years for each of the two different sites | Solar irradiance | Actual irradiance data | RMSE R2 MABE | Test results between 2-year and 4-year solar radiation data show that using more historical data, for example, more years like 6 or 8, will increase the accuracy of both models. |
[126] | Solar power forecasting with random forest based on ranking optimization | PCA K means clustering Random Forest | Hourly | 1 April 2012–29 June 2012 | GEFCom2014 energy forecast data | SVM ANN Decision tree Gaussian regression model | MAE RMSE | By establishing comparative experiments, the recommended model is found to have higher prediction accuracy and robustness. |
[129] | CARDS solar forecast, developed at the University of South Australia, for forecasting solar radiation series at three sites in Guadeloupe in the Caribbean | CARDS ARCH | 4 h | Each minute | Solar irradiance | Cross-correlation | MAPE MBE nRMSE | The final noise terms, obtained after the Fourier series models, the CARDS modeling, and the cross-correlative models, exhibit conditional volatility, which is also subject to cross-correlative effects. |
[130] | Forecast of solar radiation on an hourly time scale using a CARDS model | CARDS | 1 h | 1 year (2000) | GHI | DRWNN TDNN-ARMA Kaplani’s model | MAPE MBE nRMSE KSI | The results of the error analyses show that the CARDS model has reduced the forecast error of the combination model by 33.4% for ASM. |
[131] | Comparison of models with delivery times ranging between 1 and 6 h and that use only endogenous inputs to generate forecasts | ARMA CARDS NN LMQR WQR QRNN GARCHrls SB QRF GBDT | 1–6 h | 2 years | GHI Clear sky index | Smart persistence | RMSE MAE MBE FS | The combination of the models leads to a comparison of 20 probabilistic forecasts. LMQR, WQR, and GBDT are the most efficient models to generate probabilistic forecasts without the use of exogenous variables. |
[132] | Approach to predicting solar radiation series one hour in advance using various multiscale decomposition techniques of clear sky index Kc data | EMD EEMD Wavelet decomposition AR NN | 5 min–6 h | January 2012–December 2013 | Solar irradiance measurements | Naive persistence | rRMSE rMBE rMAE s | From the multi-scale decomposition, the accuracy of the solar forecast is significantly improved. For example, in terms of RMSE error, the forecast obtained with the classic NN model is around 25.86%, this error decreases to 16.91% with the EMD-Hybrid model, to 14.06% with the EEMD model hybrid and at 7.86% with the WD-hybrid model. |
[133] | Method for multi-month forecast of monthly mean daily global solar radiation time series and data-driven large-scale solar radiation forecast | ARMA ARIMA | 1–2–3 months | November 2018–March 2019 | Data collected from Meteonorm 8 software | Naive persistence | MBE RMSE MAPE Ts Sd | ARIMA (0, 2,1) is more suitable for forecasting the monthly mean daily global solar radiation for the city of Tetouan and may be so for other locations with similar climatic conditions. |
[134] | A data-driven framework is proposed for forecasting solar irradiance based on the fusion of spatial and temporal information | BRT ANN SVM LASSO | 30–60–90–120 min | 2014–2015 | GHI | Smart persistence AR ARX | nRMSE R2 S | The computational results of the multi-step ahead prediction demonstrate that the BRT model offers the best performance with the lowest normalized Root Mean Square Error of 18.4%, 24.3%, 27.9%, and 30.6% for prediction horizons of 30, 60, 90, and 120 -min, respectively. |
[136] | Short-term solar irradiance forecasting is conducted using WNN trained with GD and LM training, and SNN trained with LM training | WNN with LM and GD training | 1–2–4–6 h | 3 years (2007–2009) | Solar irradiance | SNN with training GD | MAPE RMSE | The proposed model has better generalizability and more precision than the conventional sigmoid neural network (SNN). |
[137] | Prediction of solar radiation per hour using a wavelet neural network and using the average daily solar radiation | WNN | Hourly | 5 years | Angle of the sun at sunset and sunrise Daily solar radiation | HSR data | MAPE RMSE | The 96% of R2, demonstrates that the model can be easily implemented and can increase the precision of the estimate. |
[138] | Mixed wave neural network (WNN) in for the forecast of solar irradiance in the short term, with initial application in the tropical zone | WNN | 15 min–1 h | 1 year (2014) | Clear sky index values Kc | Naive persistence ETS ARIMA ANN | MBE nRMSE | The key advantage of using WT methods is the high signal compression capacity, which makes them suitable for modeling non-stationary environmental parameters with high information content, such as short time scale solar irradiance. Optimal WNN architecture varies by season. |
[139] | A solar irradiance forecasting method for remote microgrids based on the Markov switching model is presented | MSM Fourier basis expansion | 1 day | 1998–2013 | Historical irradiance data | Error between years | MAPE RMSE | The study resulted in a Mean Absolute Percentage Error of 31.8% over five years, from 2001 to 2005, with higher errors during the summer months. |
[141] | Hybrid deep learning framework integrating convolutional neural network for pattern recognition with short-term memory network for global solar radiation (GSR) forecast every half hour | CLSTM hybrid model | 1 day–1 week–2 weeks and 8 months every half hour | 1 January 2006–31 August 2018 | GSR | CNN LSTM DNN MLP Decision tree | MAE RMAE RMSE RRMSE MAPE APB KGE r | The hybrid model registers superior results with more than 70% of predictive errors below ±10 Wm−2 and exceeds the reference model for the prediction of GSR every half hour of 1 day. |
[146] | Deep learning for solar power forecasting using an approach using an autoencoder and LSTM neural networks | Deep Belief Networks Autoencoder LSTM | 24–48 h | 990 days | PV power from GermanSolarFarm | P-PVFM | RMSE MAE AbsDev Bias Correlation | The best-performing model is the Auto-LSTM with an RMSE of 0.0713, closely followed by the DBN with an RMSE of 0.0714. This shows the feature extraction capabilities of these models, allowing for a good solar power forecast. Both models without this capability, the MLP and the LSTM without AE, perform worse. |
[147] | Forecast approach for irradiance time series that combines mutual information measurements and an extreme learning machine (ELM). The method is known as Minimum Redundancy—Maximum Relevance (MRMR) | IFS-based MRMR ELM | 15 min–1 h-24 h | Measurements at 20 sites every minute for 2 years | Solar irradiance data | Long window Short window PCA MRMR | R2 MAPE nMSE RMSE FS | The performance criteria indicate that the MRMR method clearly outperforms the other dimensionality reduction scenarios in most cases. Compared to other machine learning techniques, ELM has the advantage of achieving good performance in terms of accuracy in extremely fast computational time. |
[148] | Hybrid mapping based on applied deep learning for solar PV forecasting | CNN LSTM K-means clustering Convolutional Autoencoder | Not specified | 1 July 2017–30 June 2018 | 25,000 all-sky images | RMSE MAE CORR | CNN LSTM ANN | The proposed hybrid mapping model shows better precision, and a smaller error range compared to other deep learning methods. |
[149] | Short-term solar power forecasting with deep learning: exploration of the optimal input and output configuration using hybrid data, temporal history, and strong regularization | CNN | 15 min | 1 March 2017–1 March 2028 | Sky images PV power | Smart persistence AR | RMSE FS | It achieves a forecast ability of 15.7% on the overall test suite and 16.3% on the most demanding cloudy days, relative to the smart persistence model. Careful downsampling can reduce training time by up to 83% without affecting accuracy. |
[151] | A strategy that uses artificial intelligence (AI) to forecast irradiance directly from an extracted sub-image that surrounds the sun | Optical flow Ray tracing CNN GLM MLP RFR GBT | 15 min | October 2015–May 2016 (147 días) | Sky images | MLP Deep Learning RFR GBT | MAE MAPE nRMSE R2 | Several different AI models are compared, including deep learning and Gradient Boosted Trees. (MLP R2 = 0.71, RF R2 = 0.76, DL R2 = 0.871, GBT R2 = 0.875). |
[156] | High-resolution real-time NWP results based on the weather forecasting and research (WRF) model study the ability of the model to provide daytime GHI and clear sky index predictions | MOS | 2–5 days | 1 August 2015–31 December 2016 | GHI DRI forecast data | WRF | MBE rMBE MAE rMAE RMSE rRMSE r | The importance of developing a seasonal and site-specific climate-dependent model output statistics (MOS) approach is shown to improve forecast accuracy, eliminating bias and reducing the overall relative mean square error (rRMSE) of GHI. as much as 6%, compared to the uncorrected model output. |
[159] | The method is based on the advection and diffusion of estimates of the Meteosat Second Generation (MSG) cloud index using the numerical weather prediction (NWP) model of meteorological research and forecasting (WRF) | WRF | Up to 6 h with 15 min resolution | 25 days | GHI and DNI of three sites Cloud height by ceilometer Sky images Satellite images | Smart persistence OpenPIV CMV WRF-Solar | RMSE Bias Skill | The results showed that the model is capable of providing improved forecasts in areas with low topographic complexity, where the advection of clouds by the dynamics of the atmospheric mesoscale is not disturbed by the characteristics of the mountains (the model t outperforms the OpenPIV method (∼5% rRMSE), smart persistence (∼10–20% from 1 to 5 h of waiting time) and WRF-Solar (∼10–30% until the fourth forecast hour). |
[160] | Proposes a framework of stochastic differential equations to model the uncertainty associated with the prediction of the solar irradiance point | SDE Kalman filter Lamperti transform | 1 h–24 h | 01/01/09–31/12/11 | NWP irradiance predictions Solar irradiance measurements | Naive persistence | Training and testing | The combination of the extended Kalman filter and the Lamperti transform offers a flexible framework for estimating SDE with a relatively large number of data points. In addition, the in-sample and out-of-sample results indicate that the linearization introduced by the filter works satisfactorily. |
[161] | The purpose of this work is to establish a methodology to produce solar irradiance forecasts using WRF combined with a post-processing method | WRF ANDS ANNS BSNR | 1 h | 2009–2011 | Solar irradiance | WRF ANN | RMSE ME MSE | The study showed that the precisions derived from the ANN model had lower deviations in bias, MSE and RMSE increased the correlation coefficients in the dry and rainy seasons. In both seasons, the ANN model provided forecasts with a significant reduction in deviations compared to the WRF model. |
[162] | State-of-the-art implementations of climate research and forecasting are combined with multivariate statistical learning techniques | RTM WRF GFS MOS UR | De 5 a 6 h | From 2016 with data from 9 am to 5 pm | GHI of 25 different SERIS stations | Naive persistence | RMSE MAE MBE | It is concluded that WRF Solar is a significant improvement over the WRF standard with RRTMG. It is shown that, without statistical processing, WRF is a significant improvement over the global model. The multivariate model output statistics routine improves forecasts on all our models. |
[163] | An evaluation of the solar irradiance forecasts of the Global Forecast System is provided | ANN ARN BSRN NWP BRL | 1 day | 1 January 2015–31 December 2016 | Data from various weather stations in China | Naive persistence | MAE RMSE MBE | Statistical indicators show that GHI and DNI forecasts are generally overestimated by GFS, seeing that DNI is more complicated to predict than GHI. |
[164] | A corrective algorithm is proposed to improve the accuracy of the global horizontal irradiation (GHI) forecasts obtained from the numerical climate prediction model | ANN SVM RRTM | 4–24 h | May 2015–November 2016 January 2015–November 2016 | Meteorological variables | Smart persistence ECMWF ARIMA FFT | MBE MAE RMSE U95 R2 TS GPI FS | The GHI forecasts obtained from the IFS were shown to be more accurate for clear sky conditions, slightly underestimating the GHI value with MBE ranging from −6.46 to −9.14 w/m2. |
[165] | A hybrid forecasting model is proposed that combines Wavelet transform, swarm particle optimization and SVM for short-term generation power forecasting | NWP COSMO WRF RAMS MM5 PSO SVM WT | 3–24 h | May 2014–April 2015 | Meteorological variables | BPNN HGNN HPNN SVM HGS HPS HHPS | MAPE RMSE nMAE SSE SDE | The daily MAPE and NMAE have average values of 4.22% and 0.4%, respectively, surpassing other seven prediction strategies, while the average calculation time is less than 15 s. Therefore, the effectiveness for the prediction of photovoltaic solar energy in the short term is verified. |
[168] | Preprocessing of WRF initial conditions for coastal stratocumulus prediction | WEMPP CLDDA WRF | 5–10–30 min | 1 month | NAM and RAP data set | Comparison with ground measurements Naive persistence | MBE MAE | It is shown that the combination of both preprocessors provided improvement in the prediction of the spatial coverage, the thickness, and the useful life of Sc in the coastal regions where stratocumulus of the marine layer is observed more frequently, but the cloud cover over the ocean by all the preprocessors. |
[169] | A solar energy prediction model based on several satellite images and a supporting machine learning (SVM) scheme is proposed | SVM AMV ANN ARMA ARIMA NAR | Up to 1 h | April 2011–September 2015 | Satellite images | Smart persistence GHI | RMSE MRE R2 | Throughout the experiments, the proposed SVM-based prediction model shows the highest prediction precision, compared to other prediction models, such as conventional time series and ANN models. |
[170] | Satellite-based model fusion technique designed for short-term solar irradiance ramp forecasting | NWP CLAVR-x CIRACast SASRAB | Up to 3 h | January 2014–December 2016 | Images taken from satellite | SURFRAD GHI | nMAE MAPE RMSE | Typical errors range from 8.5% to 17.2%, depending on the complexity of the cloud regimes, and an operational demonstration exceeded the forecast based on persistence of global horizontal irradiance (GHI) under all conditions by ~10 W/m2. |
[171] | Surface solar radiation forecast algorithm using enhanced visible and infrared image cloud physical properties (SEVIRI) | HARMONIE KNMI SICCS CMVS | Up to 4 h | September 2016–April 2017 | Satellite images | SEVIRI | RMSE | The quality of the prediction depends on the weather conditions. CMVs using 5 images give better results for the radar advection algorithm. |
[173] | Estimation of solar irradiance using MSG images comparing each radiation component with the average value of the previous 15 min | ESRA Heliosat-2 | Hourly | 2010–2014 | Satellite data | Average radiation value of the previous 15 min | RMSE nRMSE MBE nMBE R | The nRMSE value for global estimates is approximately 7%, for beam estimates it is approximately 18%, and for diffuse estimates it is 16%. Under clear skies, the evaluation indicators present the best results. |
[175] | Identification of relationships between the accuracy of an intraday surface solar irradiance forecasting method and meteorological variables that can be easily observed or predicted | ARPEGE CMV | Up to 6 h | July 2017–June 2020 | Satellite images | FS | RMSE MBE MAE R | The results can help solar users anticipate the forecast start time up to several days in advance. SS positive forecast is achieved compared to persistence (up to 15%) and numerical weather predictions (between 20% and 40%). |
[209] | Solar irradiance forecasting method based on real-time surface irradiance mapping model, which is beneficial to achieve higher accuracy in solar energy forecast | RGB model Distortion correction CDV FPC BPNN SVM | Every minute (real time) | De 7.00 a 17.00 del 2 May 2017, 26 August 2016 y 8 June 2018 | Sky images Meteorological variables | ARIMA BPNN with meteorological variables as input | MAPE RMSE MBE | The average measurements of the proposed method using MAPE, RMSE, and MBE are 22.66%, 92.72, −1.26% for block clouds; 20.44%, 132.15, −1.06% for thin clouds and 18.82%, 120.78, −0.98% for thick clouds, thus offering a much higher forecast accuracy than other points of reference. |
[212] | Predicting cloud movement with an image registration approach | Thirions Demons Fischer | 20 s | In real time | Image acquisition | Chow method | Not Specified | The proposed method improves the block combination strategy by 19%. |
[215] | Method to track and predict cloud movement with ground-based sky images | Lucas-Kanade | 30–40 s | In real time | 640 × 480 pixels partial sky images | With himself | UCSD | The presented method has the potential to track clouds traveling in different directions and at different speeds. |
[220] | Various sky image processing techniques relevant to solar prediction are described, including velocity field calculations, spatial transformation of images, and cloud classification | MPIV K-means algorithm | 3–15 min | Every minute for 4 highly variable days | Sky images | Naive persistence | RMSE | RMSE errors demonstrate that sky imagers are useful for forecast horizons 3 to 15 min in advance. Compared to a persistent model, it appears that the most significant forecast accuracies are for 5 min ahead. |
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Forecasting Sensors/Method | Strengths | Weaknesses |
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Ground-Based Sensor Measurements |
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Satellite Data Processing |
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All-Sky Camera Images |
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Statistical Regression Approaches |
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Artificial Intelligence (AI) Methods |
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Numerical Models |
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Hybrid Methods |
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Travieso-González, C.M.; Cabrera-Quintero, F.; Piñán-Roescher, A.; Celada-Bernal, S. A Review and Evaluation of the State of Art in Image-Based Solar Energy Forecasting: The Methodology and Technology Used. Appl. Sci. 2024, 14, 5605. https://doi.org/10.3390/app14135605
Travieso-González CM, Cabrera-Quintero F, Piñán-Roescher A, Celada-Bernal S. A Review and Evaluation of the State of Art in Image-Based Solar Energy Forecasting: The Methodology and Technology Used. Applied Sciences. 2024; 14(13):5605. https://doi.org/10.3390/app14135605
Chicago/Turabian StyleTravieso-González, Carlos M., Fidel Cabrera-Quintero, Alejandro Piñán-Roescher, and Sergio Celada-Bernal. 2024. "A Review and Evaluation of the State of Art in Image-Based Solar Energy Forecasting: The Methodology and Technology Used" Applied Sciences 14, no. 13: 5605. https://doi.org/10.3390/app14135605
APA StyleTravieso-González, C. M., Cabrera-Quintero, F., Piñán-Roescher, A., & Celada-Bernal, S. (2024). A Review and Evaluation of the State of Art in Image-Based Solar Energy Forecasting: The Methodology and Technology Used. Applied Sciences, 14(13), 5605. https://doi.org/10.3390/app14135605