Distribution network reconfiguration for operational objectives: reducing voltage violation incidents and network losses
Geert Mangelschots, Sari Kerckhove, Md Umar Hashmi, Dirk Van, Hertem

TL;DR
This paper proposes a method for optimizing distribution network reconfiguration by identifying key switches for remote control, significantly reducing voltage violations and power losses in low voltage distribution networks with high DER integration.
Contribution
It introduces an exhaustive search algorithm that determines which manual switches to replace with remote switches to improve network performance.
Findings
Replacing top switches reduced power losses by 4.51%.
Voltage violations decreased by 38.17%.
Few reconfigurable switches can greatly enhance operational efficiency.
Abstract
As the share of Distributed energy resources (DER) in the low voltage distribution network (DN) is expected to rise, a higher and more variable electric load and generation could stress the DNs, leading to increased congestion and power losses. To address these challenges, DSOs will have to invest in strengthening the network infrastructure in the coming decade. This paper looks to minimize the need for flexibility through dynamic DN reconfiguration. Typically, European DNs predominantly use manual switches. Hence, the network configuration is set for longer periods of time. Therefore, an opportunity is missed to benefit from more short-term dynamic switching. In this paper, a method is proposed which identifies the best manual switches to replace with remotely controlled switches based on their performance in terms of avoided voltage congestion incidents and DN power losses. The…
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Taxonomy
TopicsSmart Grid Energy Management · Optimal Power Flow Distribution · Electricity Theft Detection Techniques
MethodsSparse Evolutionary Training
