Title :
Scheduling distributed energy storage units to provide multiple services
Author :
Megel, Olivier ; Mathieu, Johanna L. ; Andersson, Goran
Author_Institution :
Power Syst. Lab., ETH Zurich, Zurich, Switzerland
Abstract :
When energy storage units (ESUs) within the distribution grid, e.g. batteries, provide local services such as PV integration support, peak shaving, and infrastructure upgrade deferral, they are inactive or only partially used most of time. Moreover, they are often not profitable because of their high investment costs. Their unused capacities could be used to provide power system services, such as frequency control, allowing them to generate additional revenues. However, individual units might not be available to provide system services over the entire contract duration, since they must also provide their local services. This paper shows how an aggregation of distributed ESUs can simultaneously provide local services individually and system services in aggregate. Using a model predictive control approach, a central scheduler dynamically allocates parts of the energy and power capacities of each ESU to either the local or grid service with the objective of maximizing the profit of the aggregation. A key contribution of this paper is the development of an algorithm that handles both resource aggregation and optimal provision of multiple services. We find that multitasking can almost double an ESU´s profits as compared with a single-service approach, and that the benefits from aggregation depend on the grid service market structure and how often the local service is required.
Keywords :
distributed power generation; power distribution control; power distribution economics; power generation scheduling; power grids; power markets; predictive control; profitability; central scheduler; distributed ESU; distributed energy storage unit scheduling; distribution grid service; dynamic energy capacity allocation; dynamic power capacity allocation; grid service market structure; model predictive control approach; optimal provision; power system services; profit maximization; resource aggregation; system services; Batteries; Degradation; Frequency control; Load modeling; Mathematical model; Resource management; Schedules; battery; distributed storage; scheduling;
Conference_Titel :
Power Systems Computation Conference (PSCC), 2014
Conference_Location :
Wroclaw
DOI :
10.1109/PSCC.2014.7038358