Multiarea inertia estimation using convolutional neural networks and federated learning
Dec 29, 2021·
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Abodh Poudyal
Ujjwol Tamrakar
Rodrigo D. Trevizan
Robert Fourney
Reinaldo Tonkoski
Timothy M. Hansen
Abstract
With the increase in penetration of renewable energy sources (RES), traditional inertia estimation techniques based purely on the number of online synchronous generators are increasingly unsuitable, ultimately leading towards suboptimal frequency control in the electric power grid. The stochastic nature of RES additionally makes the system inertia a time-varying quantity. Furthermore, the frequency and inertial response of power systems change drastically in multiarea power systems with interconnected tie-lines. Hence, it is important for state/parameter estimation (e.g., inertia) in multiarea systems, while ensuring communication between each of the areas. In this article, a client–server-based federated learning framework is used to estimate power system inertia in a multiarea system. Federated learning is a machine learning technique where multiple decentralized devices are trained with local data, and a global model is updated and redistributed by a central server by aggregating the trained weights of the decentralized devices, without exchanging the local data. Using local frequency measurements, obtained from the phase-locked loop of an energy storage system, the inertia at each of the areas can be estimated locally via offline training using convolutional neural networks (CNNs), whereas the CNN weights update in an online fashion. The framework, tested on a two-area power system, accurately estimated the inertia constant for both independent and identically distributed (IID) and non-IID data. Furthermore, the CNN-based method outperformed conventional neural network-based estimation techniques in terms of number of communication rounds and estimation accuracy.
Type
Publication
IEEE Systems Journal
Convolutional Neural Networks (CNNs)
Federated Learning (FL)
Low-Inertia Grids
Multiarea Power System
Power System Inertia Estimation

Authors
Sr. Software Power Systems Engineer
Abodh Poudyal is a Senior Software Power Systems Engineer at Electric Power Engineers, where he leads efforts in developing automated solutions for grid modernization, resilience, and reliability.
Abodh is passionate about advancing the future of power systems through innovative software solutions. With over nine years of experience, Abodh specializes in automating grid operations and developing scalable tools for utilities.
His expertise spans power system analysis, operations research, machine learning, high-performance computing, and software develpoment. Before joining EPE, Abodh worked as a researcher with the National Renewable Energy Laboratory (now known as the National Laboratory of the Rockies). He is also actively involved as a secretary of the IEEE Modern and Future Distribution Systems Planning Working Group.
His expertise spans power system analysis, operations research, machine learning, high-performance computing, and software develpoment. Before joining EPE, Abodh worked as a researcher with the National Renewable Energy Laboratory (now known as the National Laboratory of the Rockies). He is also actively involved as a secretary of the IEEE Modern and Future Distribution Systems Planning Working Group.
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