Multi-scenario source-grid-load-storage cooperative optimal scheduling
considering multi-side complex type storage capacity configuration
Abstract
To both enhance the flexibility of the power system and absorption
capacity of renewable energy connected to a grid and achieve the
efficient use and cooperation of multi-side complex type energy storage
resources on the source, grid, and load sides, a collaborative optimal
scheduling system architecture of source-grid-load-storage (SGLS)
considering multiple energy storage types was constructed. Latin
hypercube sampling and sample reduction based on k-medoids clustering
were adopted to generate the SGLS scenarios, considering the emergency
circumstances of the power system. The flexibility of the multi-scenario
power system was evaluated, and the battery energy storage stations,
pumped storage, and electric vehicles with sufficient capacity were
configured on the source, grid, and load sides, respectively, to
participate in the scheduling. A multi-scenario SGLS cooperative
optimisation scheduling model that considers multiple energy storage
capacity configuration types was constructed for economic and
environmental protection. Based on data-driven, a multi-objective
optimisation algorithm was proposed by using the Gaussian process
regression algorithm and non-dominated sorting genetic algorithm II,
combined with the manifold interpolation batch evolution mechanism.
Finally, using actual regional power grid data for verification, the
proposed strategy effectively reduces system operating cost, enhances
energy storage battery life, and improves the renewable energy
consumption capacity.