Microgrid management with weather-based forecasting of energy generation, consumption and prices
Jonathan Dumas

TL;DR
This paper explores probabilistic forecasting and decision-making for microgrid energy management, focusing on renewable generation, consumption, and prices to improve reliability amid renewable energy uncertainties.
Contribution
It introduces methods for producing reliable probabilistic forecasts and decision-making strategies tailored for residential microgrids with high renewable integration.
Findings
Probabilistic forecasts improve renewable energy prediction accuracy.
Decision strategies effectively manage uncertainty in microgrid operations.
Enhanced microgrid reliability with renewable energy integration.
Abstract
The Intergovernmental Panel on Climate Change proposes different mitigation strategies to achieve the net emissions reductions that would be required to follow a pathway that limits global warming to 1.5{\deg}C with no or limited overshoot. The transition towards a carbon-free society goes through an inevitable increase in the share of renewable generation in the energy mix and a drastic decrease in the total consumption of fossil fuels. Therefore, this thesis studies the integration of renewables in power systems by investigating forecasting and decision-making tools. Indeed, in contrast to conventional power plants, renewable energy is subject to uncertainty. Most of the generation technologies based on renewable sources are non-dispatchable, and their production is stochastic and complex to predict in advance. A high share of renewables is challenging for power systems that have been…
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Taxonomy
TopicsEnergy Load and Power Forecasting
