Digital twins in solar farms: An approach through time series and deep learning

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Abstract

The generation of electricity through renewable energy sources increases every day, with solar energy being one of the fastest-growing. The emergence of information technologies such as Digital Twins (DT) in the field of the Internet of Things and Industry 4.0 allows a substantial development in automatic diagnostic systems. The objective of this work is to obtain the DT of a Photo-voltaic Solar Farm (PVSF) with a deep-learning (DL) approach. To build such a DT, sensor-based time series are properly analyzed and processed. The resulting data are used to train a DL model (e.g., autoencoders) in order to detect anomalies of the physical system in its DT. Results show a reconstruction error around 0.1, a recall score of 0.92 and an Area Under Curve (AUC) of 0.97. There-fore, this paper demonstrates that the DT can reproduce the behavior as well as detect efficiently anomalies of the physical system.

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Arafet, K., & Berlanga, R. (2021). Digital twins in solar farms: An approach through time series and deep learning. Algorithms, 14(5). https://doi.org/10.3390/a14050156

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