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Support vector machine based prediction of photovoltaic module and power station parameters
Authors:Ashfaq Ahmad  Changan Zhu  Iqra Javed  M Waqar Akram  Noman Ali Buttar
Institution:1. Department of Precision Machinery &2. Instrumentation, University of Science and Technology of China, Hefei, China;3. Department of Electronics &4. Electrical Systems, The University of Lahore, Lahore, Pakistan;5. Department of Informatics and Systems, School of Science and Technology, University of Management and Technology, Lahore, Pakistan;6. Department of Mechanical Engineering, University of Malaya, Kuala Lumpur, Malaysia;7. School of Agricultural Equipment Engineering, Jiangsu University, Zhenjiang, China
Abstract:ABSTRACT

The uncertainty in the output power of the photovoltaic (PV) power generation station due to variation in meteorological parameters is of serious concern. An accurate output power prediction of a PV system helps in better design and planning. The present study is carried out for the prediction of output power of PV generating station by using Support Vector Machines. Two cases are considered in the present study for prediction. Case-I deals with the prediction of PV module parameters such as Voc, Ish, Rs, Rsh, Imax, Vmax, Pmax, and case-II deals with the prediction of power generation parameters such as PDC, PAC, and system efficiency. Historical data of PV power station with an installed capacity of 10 MW and weather information are used as input to develop four different seasons-based SVM models for all parameters. The performance results of the models are presented in terms of Mean Relative Error (MRE) and Root Mean Square Error (RMSE). Additionally, the performance results obtained with polynomial and Radial Based Function kernel are also compared to show that which kernel has better prediction accuracy, and practicability. The result shows that the minimum average RMSE and MRE for case-I with Radial Based Function kernel are 0.034%, 0.055%, 0.002%, 1.726%, 0.044%, 0.047%, 2.342%, and 0.005%, 0.014%, 0.079%, 0.885%, 0.005%, 0.007%, 0.013%, and for case-II with poly kernel are 0.014%, 0.016%, 0.149% and 0.011%, 0.0175, 1.03%, respectively. The present study will be helpful to provide technical guidance to the prediction of the PV power System.
Keywords:Photovoltaic system  power Prediction  seasonal Classification  support Vector Machine  support Vector Regression
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