Connecting Distributed Pockets of EnergyFlexibility through Federated Computations:Limitations and Possibilities
Javad Mohammadi, Jesse Thornburg

TL;DR
This paper explores how federated computation can enable collaboration among distributed energy resources in power grids, addressing privacy, heterogeneity, and data silo challenges to improve energy management.
Contribution
It introduces a novel federated computation framework tailored for multi-agent energy systems and demonstrates initial field tests in real-world applications.
Findings
Federated computation can facilitate privacy-preserving energy optimization.
Challenges include heterogeneity of agents and data privacy concerns.
Initial field tests show promising results in real-world energy management scenarios.
Abstract
Electric grids are traditionally operated as multi-entity systems with each entity managing a geographical region. Interest and demand for decarbonization and energy democratization is resulting in growing penetration of controllable energy resources. In turn, this process is increasing the number of grid entities. The paradigm shift is also fueled by increased adoption of intelligent sensors and actuators equipped with advanced processing and computing capabilities. While collaboration among power grid entities (agents) reduces energy cost and increases overall reliability, achieving effective collaboration is challenging. The main challenges stem from the heterogeneity of system agents and their collected information. Furthermore, the scale of data collection is constantly increasing and many grid entities have strict privacy requirements. Another challenge is the energy industry's…
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