Abstract

Prediction of Solar power generation plays an important role to improve the efficiency ofeconomic dispatch function and reduce the dependence on fossil fuels and help in the energy managementsystem. For time series solar energy prediction multiple models were introduced but these model trains arebased on yearly historical data. A big data collection containing many missing values makes these modeltraining more complicated that’s why In this paper, an efficient energy prediction model is proposed for theprediction of time series solar energy based on short predicted weather training data. Two complimentarymodels are based on linear regression and a knowledge based neural network is exploited to predict futuresolar power, with offline training. The LR is structured under the direction of the proposed input methodparameter selection and used when training data is enough. KBNN is used for existing advantagespredictive models are also very important when training data is not enough. According to test findings usingreal data sets. An LR model can deal effectively with linear data, but a KBNN model can cope effectivelywith nonlinear behavior. Additionally, the results demonstrate the effectiveness of LR showing a correlationcoefficient (R2) is 98% with a root mean square error of 45 and KBNN shows a correlation coefficient (R2)is 99% with a root mean square error of 44 in providing a reliable version, The results additionally showthe functionality of LR and KBNN in imparting a dependable version, especially when the short trainingdataset is available.

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