4.5 Article

Advances in the Application of Machine Learning Techniques for Power System Analytics: A Survey

Journal

ENERGIES
Volume 14, Issue 16, Pages -

Publisher

MDPI
DOI: 10.3390/en14164776

Keywords

machine learning; power systems; smart grids; power flows; power quality; photovoltaic; intelligent transportation; load forecasting; survey

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With recent advances in computing technologies and the increasing availability of large amounts of data in smart grids and smart cities, new research opportunities are emerging for applying Machine Learning to improve the observability and efficiency of modern power grids. A systematic review of state-of-the-art studies implementing ML techniques in power systems reveals that ML algorithms can handle massive quantities of data with high dimensionality and hybrid models generally show better performances than single ML-based models.
The recent advances in computing technologies and the increasing availability of large amounts of data in smart grids and smart cities are generating new research opportunities in the application of Machine Learning (ML) for improving the observability and efficiency of modern power grids. However, as the number and diversity of ML techniques increase, questions arise about their performance and applicability, and on the most suitable ML method depending on the specific application. Trying to answer these questions, this manuscript presents a systematic review of the state-of-the-art studies implementing ML techniques in the context of power systems, with a specific focus on the analysis of power flows, power quality, photovoltaic systems, intelligent transportation, and load forecasting. The survey investigates, for each of the selected topics, the most recent and promising ML techniques proposed by the literature, by highlighting their main characteristics and relevant results. The review revealed that, when compared to traditional approaches, ML algorithms can handle massive quantities of data with high dimensionality, by allowing the identification of hidden characteristics of (even) complex systems. In particular, even though very different techniques can be used for each application, hybrid models generally show better performances when compared to single ML-based models.

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