Privacy-preserving federated learning: Application to behind-the-meter solar photovoltaic generation forecasting

dc.contributor.authorHosseini, Paniz
dc.contributor.authorTaheri, Saman
dc.contributor.authorAkhavan, Javid
dc.contributor.authorRazban, Ali
dc.contributor.departmentMechanical and Energy Engineering, Purdue School of Engineering and Technology
dc.date.accessioned2024-12-13T21:46:24Z
dc.date.available2024-12-13T21:46:24Z
dc.date.issued2023-05
dc.description.abstractThe growing usage of decentralized renewable energy sources has made accurate estimation of their aggregated generation crucial for maintaining grid flexibility and reliability. However, the majority of distributed photovoltaic (PV) systems are behind-the-meter (BTM) and invisible to utilities, leading to three challenges in obtaining an accurate forecast of their aggregated output. Firstly, traditional centralized prediction algorithms used in previous studies may not be appropriate due to privacy concerns. There is therefore a need for decentralized forecasting methods, such as federated learning (FL), to protect privacy. Secondly, there has been no comparison between localized, centralized, and decentralized forecasting methods for BTM PV production, and the trade-off between prediction accuracy and privacy has not been explored. Lastly, the computational time of data-driven prediction algorithms has not been examined. This article presents a FL power forecasting method for PVs, which uses federated learning as a decentralized collaborative modeling approach to train a single model on data from multiple BTM sites. The machine learning network used to design this FL-based BTM PV forecasting model is a multi-layered perceptron, which ensures privacy and security of the data. Comparing the suggested FL forecasting model to non-private centralized and entirely private localized models revealed that it has a high level of accuracy, with an RMSE that is 18.17% lower than localized models and 9.9% higher than centralized models.
dc.eprint.versionAuthor's manuscript
dc.identifier.citationHosseini, P., Taheri, S., Akhavan, J., & Razban, A. (2023). Privacy-preserving federated learning: Application to behind-the-meter solar photovoltaic generation forecasting. Energy Conversion and Management, 283, 116900. https://doi.org/10.1016/j.enconman.2023.116900
dc.identifier.urihttps://hdl.handle.net/1805/45050
dc.language.isoen
dc.publisherElsevier
dc.relation.isversionof10.1016/j.enconman.2023.116900
dc.relation.journalEnergy Conversion and Managemen
dc.rightsPublisher Policy
dc.sourceAuthor
dc.subjectbehind-the-meter
dc.subjectfederated learning
dc.subjectprivacy-enhanced
dc.titlePrivacy-preserving federated learning: Application to behind-the-meter solar photovoltaic generation forecasting
dc.typeArticle
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