Control, forecasting and optimisation for wave energy conversion
John V. Ringwood, Giorgio Bacelli, et al.
IFAC 2014
We demonstrate progress on the deployment of two sets of technologies to support distribution grid operators integrating high shares of renewable energy sources, based on a market for trading local energy flexibilities. An artificial-intelligence (AI) grid modelling tool, based on probabilistic graphs, predicts congestions and estimates the amount and location of energy flexibility required to avoid such events. A scalable timeseries forecasting system delivers large numbers of short-term predictions of distributed energy demand and generation. We discuss the deployment of the technologies at three trial demonstration sites across Europe, in the context of a research project carried out in a consortium with energy utilities, technology providers and research institutions.
John V. Ringwood, Giorgio Bacelli, et al.
IFAC 2014
Francesco Fusco, John V. Ringwood
IEEE Trans. Sustainable Energy
Bradley Eck, Francesco Fusco, et al.
EWRI 2015
John V. Ringwood, Alexis Merigaud, et al.
IEEE TCST