Designing a reliable and robust micro-grid (MG) aided by energy storage devices requires quantifying the parametric uncertainty associated with input data time-series, among other types of uncertainties – and in particular, the uncertainty in forecasted meteorological, load demand, and wholesale electricity price time-series. Given the computational complexities involved, the recent battery-storage-supported MG capacity optimisation literature fails to simultaneously characterise multiple sources of data uncertainty. This paper, therefore, seeks to address this knowledge gap by hedging against a wide array of parametric uncertainties at the same time, whilst exploring the potentially salient implications of high-dimensional uncertainty char...
Integrating high levels of variable renewable energy sources (VRESs) in power systems imperils the s...
This paper endeavors a probabilistic framework to ascertain optimal operation of a microgrid with a ...
Balancing of intermittent energy such as solar energy can be achieved by batteries and hydrogen-base...
Designing a reliable and robust micro-grid (MG) aided by energy storage devices requires quantifying...
A robust solution to the optimal micro-grid (MG) sizing problem requires comprehensive quantificatio...
During renewable energy system design, parameters are generally fixed or characterized by a precise ...
International audienceLoad forecasting models are widely used to examine future electricity system. ...
This paper addresses an optimized management of a storage energy battery which is part of a microgri...
Imbalance costs caused by forecasting errors are considerable for grid-connected wind farms. In orde...
International audienceThis paper is motivated by the question of the impact that uncertainty in PV f...
The power grid consists of various electrical components and of multiple levels: transmission HV (Hi...
In order to maximize the use of renewable-based distributed generators (DGs), in addition to dealing...
We present two Mixed-Integer Linear Programming (MILP) models for a complete microgrid planning prob...
Integrating high levels of variable renewable energy sources (VRESs) in power systems imperils the s...
This paper endeavors a probabilistic framework to ascertain optimal operation of a microgrid with a ...
Balancing of intermittent energy such as solar energy can be achieved by batteries and hydrogen-base...
Designing a reliable and robust micro-grid (MG) aided by energy storage devices requires quantifying...
A robust solution to the optimal micro-grid (MG) sizing problem requires comprehensive quantificatio...
During renewable energy system design, parameters are generally fixed or characterized by a precise ...
International audienceLoad forecasting models are widely used to examine future electricity system. ...
This paper addresses an optimized management of a storage energy battery which is part of a microgri...
Imbalance costs caused by forecasting errors are considerable for grid-connected wind farms. In orde...
International audienceThis paper is motivated by the question of the impact that uncertainty in PV f...
The power grid consists of various electrical components and of multiple levels: transmission HV (Hi...
In order to maximize the use of renewable-based distributed generators (DGs), in addition to dealing...
We present two Mixed-Integer Linear Programming (MILP) models for a complete microgrid planning prob...
Integrating high levels of variable renewable energy sources (VRESs) in power systems imperils the s...
This paper endeavors a probabilistic framework to ascertain optimal operation of a microgrid with a ...
Balancing of intermittent energy such as solar energy can be achieved by batteries and hydrogen-base...