The increase in renewable energy generators introduced into the electricity grid is putting pressure on its stability and management as predictions of renewable energy sources cannot be accurate or fully controlled. This, with the additional pressure of fluctuations in demand, presents a problem more complex than the current methods of controlling electricity distribution were designed for. A global approximate and distributed optimisation method for power allocation that accommodates uncertainties and volatility is suggested and analysed. It is based on a probabilistic method known as message passing [1], which has deep links to statistical physics methodology. This principled method of optimisation is based on local calculations and inher...
Power system operation and planning studies face many challenges with increasing of renewable energy...
This dissertation studies two important models in the field of the distributed generation technologi...
This paper proposes a multi-period two-stage adaptive robust optimization model for long term power ...
The increase in renewable energy generators introduced into the electricity grid is putting pressure...
The design of future electricity grids will allow for renewable energy generators to be effectively ...
The increased penetration of volatile and intermittent renewable energy sources challenges existing ...
Current methods of optimal power flow were not designed to handle increasing level of volatility in ...
International audienceThis paper presents a computational framework for the integration of renewable...
High levels of clean renewable energy are being integrated into the power systems as a result of rec...
"Somewhere, there is always wind blowing or the sun shining." This maxim could lead the global shift...
The energy sector is the largest source of greenhouse-gas emissions, and has therefore a crucial rol...
The increase in renewable energy sources (RESs), like wind or solar power, results in growing uncert...
Uncertainties that result from renewable generation and load consumption can complicate the optimal ...
In the last decades, power systems are undergoing major modifications, mostly driven by the climate ...
Power grids are already complex systems with many parameters such as generation, transmission, distr...
Power system operation and planning studies face many challenges with increasing of renewable energy...
This dissertation studies two important models in the field of the distributed generation technologi...
This paper proposes a multi-period two-stage adaptive robust optimization model for long term power ...
The increase in renewable energy generators introduced into the electricity grid is putting pressure...
The design of future electricity grids will allow for renewable energy generators to be effectively ...
The increased penetration of volatile and intermittent renewable energy sources challenges existing ...
Current methods of optimal power flow were not designed to handle increasing level of volatility in ...
International audienceThis paper presents a computational framework for the integration of renewable...
High levels of clean renewable energy are being integrated into the power systems as a result of rec...
"Somewhere, there is always wind blowing or the sun shining." This maxim could lead the global shift...
The energy sector is the largest source of greenhouse-gas emissions, and has therefore a crucial rol...
The increase in renewable energy sources (RESs), like wind or solar power, results in growing uncert...
Uncertainties that result from renewable generation and load consumption can complicate the optimal ...
In the last decades, power systems are undergoing major modifications, mostly driven by the climate ...
Power grids are already complex systems with many parameters such as generation, transmission, distr...
Power system operation and planning studies face many challenges with increasing of renewable energy...
This dissertation studies two important models in the field of the distributed generation technologi...
This paper proposes a multi-period two-stage adaptive robust optimization model for long term power ...