A novel microgrid support management system based on stochastic mixed-integer linear programming

This paper focuses on a support management system for the management and operation planning of a microgrid by the new electricity market agent, the microgrid aggregator. The aggregator performs the management of microturbines, wind and photovoltaic systems, energy storage, electric vehicles, and usa...

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Veröffentlicht in:Energy (Oxford) 2021-05, Vol.223, p.120030, Article 120030
Hauptverfasser: Gomes, I.L.R., Melicio, R., Mendes, V.M.F.
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description This paper focuses on a support management system for the management and operation planning of a microgrid by the new electricity market agent, the microgrid aggregator. The aggregator performs the management of microturbines, wind and photovoltaic systems, energy storage, electric vehicles, and usage of energy aiming at having the best participation in the market. Nowadays, the electricity market participation entails making decisions aided by a support and information system, which is an important part of a microgrid support management system. The microgrid support management system developed in this paper has a formulation based on a stochastic mixed-integer linear programming problem that depends on knowledge of the stochastic processes that describe the uncertain parameters. A set of plausible scenarios computed by Kernel Density Estimation sets the characterization of the random variables. But as commonly happen, a scenario reduction is necessary to avoid the need to have significant computational requirements due to the high degree of uncertainty. The scenario reduction carried out is a two-tier procedure, following a K-means clustering technique and a fast backward scenario reduction method. The case studies reveal the performance of the microgrid and validate the methodology basis conceived for the microgrid support management system. •Microgrid support management system in the scope of electricity markets.•Stochastic programming problem to consider the uncertainty in the microgrid.•Two-tier scenario reduction capable of reducing the computation time.•Integration of electric vehicles and the consideration of demand response.•Case studies describing the performance of the microgrid.
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subjects Cluster analysis
Clustering
Computer applications
Demand response
Distributed generation
Electric vehicles
Electricity
Energy storage
Integer programming
Linear programming
Microgrid
Microgrid aggregator
Mixed integer
Parameter uncertainty
Photovoltaics
Random variables
Reduction
Renewable energy
Risk management
Stochastic processes
Vector quantization
title A novel microgrid support management system based on stochastic mixed-integer linear programming
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