Resiliency of forecasting methods in different application areas of smart grids: A review and future prospects

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Rahman, MA
Islam, MR
Hossain, MA
Rana, MS
Hossain, MJ
Gray, EMA
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2024
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Abstract

The cyber–physical infrastructure of a smart grid requires data-dependent artificial intelligence (AI)-based forecasting schemes for predicting different aspects for the short- to long-term, where AI-based schemes include machine learning (ML), deep learning (DL), and hybrid models. These forecasting schemes in different application areas of a smart grid can be vulnerable to cyber-attacks, which is yet to be addressed from a broad perspective. This work reviews the literature addressing the vulnerability of forecasting schemes in smart grids with a categorization of application areas. The existing research works addressing cyber-security or cyber resiliency are reviewed and then presented in an organized manner according to application areas to highlight their advantages and disadvantages. The findings of this review indicate a critical need to develop accurate and robust AI-based forecasting schemes capable of withstanding diverse attack scenarios in each sector, while addressing unsymmetrical attention to different sectors of smart grids. Hence, this review provides a comprehensive overview of the current literature and emphasizes the necessity for the research community to advance toward developing attack-resilient AI-based forecasting schemes designed explicitly for smart grids.

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Engineering Applications of Artificial Intelligence

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135

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Artificial intelligence

Engineering

Information and computing sciences

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Rahman, MA; Islam, MR; Hossain, MA; Rana, MS; Hossain, MJ; Gray, EMA, Resiliency of forecasting methods in different application areas of smart grids: A review and future prospects, Engineering Applications of Artificial Intelligence, 2024, 135, pp. 108785

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