A digital twin based forecasting framework for power flow management in DC microgrids

Abstract The ability to forecast system conditions is integral to the definition and functionality of digital twins. While forecasting methods have been explored for use in digital twin systems, the integration of feedback mechanisms for real-time forecasting and in-situ decision-making in DC microg...

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Main Authors: Kerry Sado, Jarrett Peskar, Austin Downey, Jamil Khan, Kristen Booth
Format: Article
Language:English
Published: Nature Portfolio 2025-02-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-025-91074-0
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author Kerry Sado
Jarrett Peskar
Austin Downey
Jamil Khan
Kristen Booth
author_facet Kerry Sado
Jarrett Peskar
Austin Downey
Jamil Khan
Kristen Booth
author_sort Kerry Sado
collection DOAJ
description Abstract The ability to forecast system conditions is integral to the definition and functionality of digital twins. While forecasting methods have been explored for use in digital twin systems, the integration of feedback mechanisms for real-time forecasting and in-situ decision-making in DC microgrids has not been extensively investigated. This research develops a modular forecasting framework tailored for digital twins in DC microgrids to enable real-time monitoring, online forecasting, and decision-making. DC microgrids, characterized by dynamic load variations, benefit from advanced predictive capabilities to maintain stability and operational efficiency. The proposed digital twin-based forecasting framework addresses these challenges by providing real-time predictive insights based on dynamic system conditions and a forecasting window defined by a decision-maker, facilitating proactive management strategies. Leveraging real-time sensor data, the digital twin forecasts system behavior under varying load conditions, enabling proactive management through real-time decision-making within operational constraints. As a proof of concept, the framework incorporates an electro-thermal digital twin designed to manage power flow based on thermal constraints in power distribution cables. Experimental validation using a simplified three-bus DC microgrid testbed demonstrates the effectiveness of the framework in enabling timely adjustments to power flows and preventing thermal overloads.
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spelling doaj-art-cd2943fceb4d4286b283df47a7eb10562025-08-20T03:10:50ZengNature PortfolioScientific Reports2045-23222025-02-0115111210.1038/s41598-025-91074-0A digital twin based forecasting framework for power flow management in DC microgridsKerry Sado0Jarrett Peskar1Austin Downey2Jamil Khan3Kristen Booth4Department of Electrical Engineering, University of South CarolinaDepartment of Mechanical Engineering, University of South CarolinaDepartment of Mechanical Engineering, University of South CarolinaDepartment of Mechanical Engineering, University of South CarolinaDepartment of Electrical Engineering, University of South CarolinaAbstract The ability to forecast system conditions is integral to the definition and functionality of digital twins. While forecasting methods have been explored for use in digital twin systems, the integration of feedback mechanisms for real-time forecasting and in-situ decision-making in DC microgrids has not been extensively investigated. This research develops a modular forecasting framework tailored for digital twins in DC microgrids to enable real-time monitoring, online forecasting, and decision-making. DC microgrids, characterized by dynamic load variations, benefit from advanced predictive capabilities to maintain stability and operational efficiency. The proposed digital twin-based forecasting framework addresses these challenges by providing real-time predictive insights based on dynamic system conditions and a forecasting window defined by a decision-maker, facilitating proactive management strategies. Leveraging real-time sensor data, the digital twin forecasts system behavior under varying load conditions, enabling proactive management through real-time decision-making within operational constraints. As a proof of concept, the framework incorporates an electro-thermal digital twin designed to manage power flow based on thermal constraints in power distribution cables. Experimental validation using a simplified three-bus DC microgrid testbed demonstrates the effectiveness of the framework in enabling timely adjustments to power flows and preventing thermal overloads.https://doi.org/10.1038/s41598-025-91074-0Digital twinForecastingPower systemsElectric shipsDecision-making
spellingShingle Kerry Sado
Jarrett Peskar
Austin Downey
Jamil Khan
Kristen Booth
A digital twin based forecasting framework for power flow management in DC microgrids
Scientific Reports
Digital twin
Forecasting
Power systems
Electric ships
Decision-making
title A digital twin based forecasting framework for power flow management in DC microgrids
title_full A digital twin based forecasting framework for power flow management in DC microgrids
title_fullStr A digital twin based forecasting framework for power flow management in DC microgrids
title_full_unstemmed A digital twin based forecasting framework for power flow management in DC microgrids
title_short A digital twin based forecasting framework for power flow management in DC microgrids
title_sort digital twin based forecasting framework for power flow management in dc microgrids
topic Digital twin
Forecasting
Power systems
Electric ships
Decision-making
url https://doi.org/10.1038/s41598-025-91074-0
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