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Voltage Calculations in Secondary Distribution Networks via Physics-Inspired Neural Network Using Smart Meter Data

Liming Liu, Naihao Shi, Dingwei Wang, Zixiao Ma, Zhaoyu Wang, Matthew J. Reno, Joseph A. Azzolini

2024IEEE Transactions on Smart Grid26 citationsDOI

Abstract

The increasing penetration of distributed energy resources (DERs) leads to voltage issues across distribution networks, necessitating voltage calculations by utilities. Electric model-free voltage calculation offers an enticing solution. However, most researches mainly focus on primary distribution networks ignoring secondary distribution networks and commonly overlook extreme voltage case calculations, which require the model’s extrapolation abilities. In addressing the gaps, this paper presents a customized physics-inspired neural network (PINN) model, the structure of which is inspired by the derived coupled power flow model of primary-secondary distribution networks. To ensure precision and rapid convergence, a crafted training framework for the PINN model is proposed. The PINN’s “structure-mimetic” design enables superior extrapolation for unseen scenarios and enhances physical information awareness. We demonstrate this through two applications: hosting capacity analysis and customer-transformer connectivity. The effectiveness and advantages of the proposed PINN model are validated on two public testing systems and one utility distribution feeder model.

Topics & Concepts

Smart meterArtificial neural networkMetreVoltageElectrical engineeringSmart gridAutomatic meter readingComputer sciencePhysicsElectronic engineeringArtificial intelligenceEngineeringQuantum mechanicsEnergy Load and Power ForecastingElectricity Theft Detection TechniquesSmart Grid Energy Management
Voltage Calculations in Secondary Distribution Networks via Physics-Inspired Neural Network Using Smart Meter Data | Litcius