We present two approaches for digital twinning in the context of the forecast of power production by photovoltaic panels. We employ two digital models that are complemen- tary: the first one is a cyber-physical system, simulating the physical properties of a photovoltaic panel, built by the Open-Source Object-Oriented modeling language Modelica. The second model is data-driven, obtained by the application of Machine Learning techniques on the data collected in an installation of the equipment. Both approaches make use of data from the weather forecast of each day. We compare the results of the two approaches. Finally, we integrate them in more sophisticated hybrid systems that get the benefits of both.

Experiments and Comparison of Digital Twinning of Photovoltaic Panels by Machine Learning Models and A Cyber-Physical Model in Modelica

Federico Delussu
Co-first
;
Rosa Meo
Co-first
;
Mark Asare
Last
2022-01-01

Abstract

We present two approaches for digital twinning in the context of the forecast of power production by photovoltaic panels. We employ two digital models that are complemen- tary: the first one is a cyber-physical system, simulating the physical properties of a photovoltaic panel, built by the Open-Source Object-Oriented modeling language Modelica. The second model is data-driven, obtained by the application of Machine Learning techniques on the data collected in an installation of the equipment. Both approaches make use of data from the weather forecast of each day. We compare the results of the two approaches. Finally, we integrate them in more sophisticated hybrid systems that get the benefits of both.
2022
18
6
4018
4028
https://ieeexplore.ieee.org/document/9525233
photovoltaic panels, energy production, cyber- physical system, Modelica, LSTM, energy prediction, anomaly detection
Federico Delussu, Davide Manzione, Rosa Meo, Gabriele Ottino, Mark Asare
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1799266
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