DocumentCode :
3596624
Title :
Day-ahead prediction of solar power output for grid-connected solar photovoltaic installations using Artificial Neural Networks
Author :
Ehsan, R. Muhammad ; Simon, Sishaj P. ; Venkateswaran, P.R.
Author_Institution :
Maintenance & Services, Bharat Heavy Electricals Ltd., Tiruchirappalli, India
fYear :
2014
Firstpage :
1
Lastpage :
4
Abstract :
Solar Photovoltaic (PV) systems are gaining popularity as a form of alternative energy with increased environmental awareness, renewable energy usage and concern for energy security. Lack of area-specific forecasts for the power output of grid-connected photovoltaic system hinders tapping solar power on a large scale. The objective of this paper is to estimate the profile of produced power of a grid-connected 20 kWp solar power plant in a reputed manufacturing industry located in Tiruchirappalli, India [10° 44\´ 42.3816" N, 78° 47\´ 9.4524" E]. An Artificial Neural Network (ANN)-based model is proposed in this paper. An experimental database of solar power output (from 7th January 2014 to 10th February 2014) has been used for training the ANN. Simulations were carried out with the Neural Network Fitting Toolbox of MATLAB software. Day-Ahead Forecasting results indicate that the proposed model performs well with great accuracy and efficiency. Statistical error analysis in terms of Mean Absolute Percentage Error (MAPE) was conducted and the best result was found to be 0.2887%. Reliable area-specific solar power production map can provide better utilization of solar energy resource and help in power system management.
Keywords :
error analysis; load forecasting; neural nets; photovoltaic power systems; power engineering computing; solar power stations; statistical analysis; ANN; India; MAPE; MATLAB software; PV systems; Tiruchirappalli; alternative energy; artificial neural networks; day-ahead forecasting; day-ahead prediction; energy security; environmental awareness; grid-connected photovoltaic system; grid-connected solar photovoltaic installations; manufacturing industry; mean absolute percentage error; neural network fitting toolbox; power system management; renewable energy usage; solar energy resource; solar power output; solar power plant; statistical error analysis; Artificial neural networks; Computational modeling; Photovoltaic systems; Predictive models; Renewable energy sources; Solar radiation; Training; Artificial neural network; Day-Ahead Prediction; Photovoltaic system;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Emerging Electronics (ICEE), 2014 IEEE 2nd International Conference on
Print_ISBN :
978-1-4673-6527-7
Type :
conf
DOI :
10.1109/ICEmElec.2014.7151201
Filename :
7151201
Link To Document :
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