A Bayesian Hierarchical Model for Generating Synthetic Unbalanced Power Distribution Grids
Henrique O. Caetano, Rahul K. Gupta, Marco Aiello, Carlos Dias Maciel

TL;DR
This paper introduces a Bayesian Hierarchical Model that efficiently generates realistic unbalanced three-phase power distribution networks, addressing data privacy issues and improving upon existing methods by capturing system unbalance and enabling transfer learning.
Contribution
The paper presents a novel Bayesian Hierarchical Model for generating unbalanced power distribution systems, capable of transfer learning and producing high-accuracy synthetic networks from limited data.
Findings
Achieves less than 8% MAPE in system generation
Generates networks in about 3 seconds per sample
Successfully applied to European 906 and IEEE-123 systems
Abstract
The real-world data of power networks is often inaccessible due to privacy and security concerns, highlighting the need for tools to generate realistic synthetic network data. Existing methods leverage geographic tools like OpenStreetMap with heuristic rules to model system topology and typically focus on single-phase, balanced systems, limiting their applicability to real-world distribution systems, which are usually unbalanced. This work proposes a Bayesian Hierarchical Model (BHM) to generate unbalanced three-phase distribution systems learning from existing networks. The scheme takes as input the base topology and aggregated demand per node and outputs a three-phase unbalanced system. The proposed scheme achieves a Mean Absolute Percentage Error (MAPE) of less than across all phases, with computation times of 20.4 seconds for model training and 3.1 seconds per sample…
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Taxonomy
TopicsPower Line Communications and Noise · Power Systems and Technologies · Electric Vehicles and Infrastructure
MethodsBalanced Selection · Focus
