Copyright © 2018 Proceedings of 9th Edition of International Conference on Biofuels and Bioenergy. All Rights Reserved.
Biofuls, 2018. V.1.
ScientificTracks Abstracts: Archives in Chemical Research (ISSN 2572-4657)
doi: 10.21767/2572-4657-C1-002
Abstract
The uncertainly management is a key challenge in grid operations and the probabilistic forecasts will play an important role toward this end as the penetration of photovoltaic solar generation continues to increase. Since so many different aspects can influence in forecasting of photovoltaic solar generation, mainly for this forecasting does an intermediate step of global solar irradiance forecasting, the probabilistic forecasting to predicting ramp events is increasingly used to deal with the factor of global solar irradiance dependence to the dynamics atmospheric and presence and level of clouds, and contribute to higher prediction accuracy through characterization of the ramp events. This paper proposes an algorithm for development of transition probabilities matrices to predicting ramp events, based on Markov model, for application, mainly in local site where there is the absence of a long amount of solarimetric dates and clouds patters information to represent the best characteristics of the ramp events. The tests are repeated for solar data set and observations are presented, prediction modeling results with distinct properties in terms of accuracy are achieved. Through the calculation results of RMSE for the tests of the solar data set referring to the January 2015 of Natal city, It was possible to establish a performance of the prediction method, at time intervals that presented ramp events, with an accuracy from 6,94% to 12,35%. Through the calculation results of RMSE for the tests of the solar data set referring to the January 2016 of Natal city, It was possible to establish a performance of the prediction method, at time intervals that presented ramp events, with an accuracy from 7,06% to 19,36%. This algorithm can be useful and contribute to higher prediction accuracy of global solar irradiance incidence, consequently, photovoltaic solar generation.
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