Ensembles of Realistic Power Distribution Networks
Rounak Meyur, Anil Vullikanti, Samarth Swarup, Henning Mortveit,, Virgilio Centeno, Arun Phadke, H. Vincent Poor, Madhav Marathe

TL;DR
This paper introduces a scalable framework for synthesizing realistic power distribution networks using open data, incorporating engineering constraints, and generating ensembles for comprehensive analysis of power grid phenomena.
Contribution
It presents a novel method to create realistic, diverse power distribution network datasets from open data, including ensemble generation for robust analysis.
Findings
Generated networks closely match real distribution systems
Ensembles enable statistical analysis of network variability
Framework supports realistic simulation of power grid events
Abstract
The power grid is going through significant changes with the introduction of renewable energy sources and incorporation of smart grid technologies. These rapid advancements necessitate new models and analyses to keep up with the various emergent phenomena they induce. A major prerequisite of such work is the acquisition of well-constructed and accurate network datasets for the power grid infrastructure. In this paper, we propose a robust, scalable framework to synthesize power distribution networks which resemble their physical counterparts for a given region. We use openly available information about interdependent road and building infrastructures to construct the networks. In contrast to prior work based on network statistics, we incorporate engineering and economic constraints to create the networks. Additionally, we provide a framework to create ensembles of power distribution…
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Taxonomy
TopicsData Visualization and Analytics · Complex Network Analysis Techniques · Traffic Prediction and Management Techniques
