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Article

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Title

Operational Roles of Artificial Intelligence in Energy Security : A Triangulated Review of Abstracts (2021–2025)

Authors

[ 1 ] Wydział Zarządzania i Dowodzenia, Akademia Sztuki Wojennej | [ P ] employee

Scientific discipline (Law 2.0)

[6.3] Security studies

Year of publication

2025

Published in

Energies

Journal year: 2025 | Journal volume: Vol. 18 | Journal number: Nr 16

Article type

scientific article

Publication language

english

Keywords
PL
  • Bezpieczeństwo energetyczne
  • Sztuczna inteligencja
  • Publikacje naukowe
  • Przegląd literatury
  • Analiza danych
  • Analiza semantyczna
  • Metodologia
  • Metody badawcze
  • Triangulacja (nauki społeczne)
Abstract

EN The operational roles of artificial intelligence in energy security remain inconsistently defined across the scientific literature. To address this gap, the present review examines 165 peer-reviewed abstracts published between 2021 and 2025 using a triangulated methodology that combines trigram frequency analysis, manual qualitative coding, and semantic clustering with sentence embeddings. Eight core roles were identified: forecasting and prediction, optimisation of energy systems, renewable energy integration, monitoring and anomaly detection, grid management and stability, energy market operations/trading, cybersecurity, and infrastructure and resource planning. According to the results, the most frequently identified roles, based on the average distribution across all three methods, are forecasting and prediction, optimisation of energy systems, and energy market operations/trading. Roles such as cybersecurity and infrastructure and resource planning appear less frequently and are primarily detected through manual interpretation and semantic clustering. Trigram analysis alone failed to capture these functions due to terminological ambiguity or diffuse expression. However, correlation coefficients indicate high concordance between manual and semantic methods (Spearman’s ρ = 0.91), confirming the robustness of the classification. A structured typology of AI roles supports the development of more coherent analytical frameworks in energy research. Future research incorporating full texts, policy taxonomies, and real-world use cases may help integrate AI more effectively into energy security planning and decision support environments.

Date of online publication

11.08.2025

Pages (from - to)

1 - 23

DOI

10.3390/en18164275

URL

https://www.mdpi.com/1996-1073/18/16/4275

Comments

Bibliografia, netografia na stronach 18-23.

Open Access Mode

open journal

Open Access Text Version

final published version

Release date

11.08.2025

Date of Open Access to the publication

at the time of publication

Full text of article

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Access level to full text

public

Ministry points / journal

140

Impact Factor

3,2 [List 2024]