Collaborative optimization strategy of Source-Grid-Load-Storage
considering dynamic time series complementarity of multiple storages
Abstract
The multi-scale flexibility coordination of multiple storages is a key
technology to enhance the diversified regulation ability of the power
system.This paper first considered the interaction mechanism of
multi-type storage peak regulation time sequences based on the Euclidian
distance, Dynamic time warping distance, and storage correlation
distance. A matching index was proposed to consider the temporal
correlation, overall distribution characteristics, and dynamic
characteristics of the net load and energy storage. The multitype
storage coordination mode, including battery storage, pumped storage,
and electric vehicles, was formulated, and a collaborative optimal
scheduling system architecture of source-grid-load-storage (SGLS) was
constructed. To attain a low-carbon economy, a collaborative optimal
scheduling model of SGLS considering the dynamic time-series
complementarity of multiple energy storage systems was constructed. The
Nash equilibrium theory was used to achieve friendly interaction among
the source, grid, load, and storage. Then, an improved transfer
reinforcement learning algorithm for SGLS was proposed, which used
reinforcement learning and transfer learning algorithms combined with
K-means clustering and dual-structure experience pool technology. The
test results of actual regional power grid data indicated that the
proposed strategy can effectively reduce the economic and carbon
treatment costs of the system and improve the absorption capacity of
renewable energy.