Distributed Power Loss Minimization in Residential Micro Grids: a Communications Perspective
Riccardo Bonetto, Stefano Tomasin, Michele Rossi

TL;DR
This paper develops a distributed control system for residential micro grids that minimizes power losses using resilient communication protocols, demonstrating significant efficiency gains and robustness through extensive simulations.
Contribution
It extends existing algorithms for power loss minimization by incorporating resilient communication protocols and analyzing their performance in realistic micro grid scenarios.
Findings
Power demand is halved with 30% DGs in the network.
Convergence achieved within 5-10 communication steps in some configurations.
Approaches show robustness with up to 50% link failure rates.
Abstract
The constantly increasing number of power generation devices based on renewables is calling for a transition from the centralized control of electrical distribution grids to a distributed control scenario. In this context, distributed generators (DGs) are exploited to achieve other objectives beyond supporting loads, such as the minimization of the power losses along the distribution lines. The aim of this work is that of designing a full-fledged system that extends existing state of the art algorithms for the distributed minimization of power losses. We take into account practical aspects such as the design of a communication and coordination protocol that is resilient to link failures and manages channel access, message delivery and DG coordination. Thus, we analyze the performance of the resulting optimization and communication scheme in terms of power loss reduction, reduction of…
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Taxonomy
TopicsMicrogrid Control and Optimization · Power Line Communications and Noise · Advanced MIMO Systems Optimization
