Real-time Shared Energy Storage Management for Renewable Energy Integration in Smart Grid
Katayoun Rahbar, Mohammad R. Vedady Moghadam, and Sanjib Kumar Panda

TL;DR
This paper introduces a distributed, privacy-preserving energy management algorithm for shared energy storage systems in smart grids, optimizing renewable energy integration and reducing costs.
Contribution
It proposes a novel distributed algorithm for shared ESS management that preserves user privacy and improves cost efficiency over individual ESS deployment.
Findings
Shared ESS reduces overall energy costs compared to individual ESSs.
The distributed algorithm converges efficiently with limited information exchange.
Online algorithms effectively handle load and renewable energy prediction errors.
Abstract
Energy storage systems (ESSs) are essential components of the future smart grids with high penetration of renewable energy sources. However, deploying individual ESSs for all energy consumers, especially in large systems, may not be practically feasible mainly due to high upfront cost of purchasing many ESSs and space limitation. As a result, the concept of shared ESS enabling all users charge/discharge to/from a common ESS has become appealing. In this paper, we study the energy management problem of a group of users with renewable energy sources and controllable (i.e., demand responsive) loads that all share a common ESS so as to minimize their sum weighted energy cost. Specifically, we propose a distributed algorithm to solve the formulated problem, which iteratively derives the optimal values of charging/discharging to/from the shared ESS, while only limited information is exchanged…
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Taxonomy
TopicsSmart Grid Energy Management · Microgrid Control and Optimization · Smart Grid Security and Resilience
