Ma, Jie and Ma, Xiandong (2017) State-of-the-art forecasting algorithms for microgrids. In: 23rd International Conference on Automation and Computing (ICAC),2017 :. IEEE. ISBN 9781509050406
State_of_the_art_Forecasting_Algorithms_for_Microgrids_.pdf - Accepted Version
Available under License Creative Commons Attribution-NonCommercial.
Download (362kB)
Abstract
As a controllable subsystem integrating with the utility, a microgrid system consists of distributed energy sources, power conversion circuits, storage units and adjustable loads. Distributed energy sources employ non-polluted and sustainable resources such as wind and solar power in accordance with local terrain and climate to provide a reliable, consistent power supply for local customers. However, the electricity production in such a system is intermittent in nature, due to the time-varying weather conditions. Therefore, studies on accurate forecasting power generation and load demand are worthwhile in order to build a smart energy management system. The paper firstly reviews the forecasting algorithms for power supply side and load demand. The feasibly of the current control strategy is discussed. Finally, taking the wind turbine operational at Lancaster University campus as an example, results on power generation forecasting are presented by using a hybrid model combining Radial Basis Function and K-Means clustering. Development of new hybrid techniques aiming at improving model efficiency for online and real time forecasting will be one of the future research directions in this field.