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Vol 11, Issue 2, 2023
Pages: 242 - 253
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Received: 06.12.2023. >> Accepted: 13.12.2023. >> Published: 16.12.2023. Review paper

MODELI PRIMJENE UMJETNE INTELIGENCIJE U PROIZVODNJI ELEKTRIČNE ENERGIJE/ MODELS OF APPLICATION OF ARTIFICIAL INTELLIGENCE IN THE PRODUCTION OF ELECTRICITY

By
Muhamed Čosić
Muhamed Čosić

International University of Travnik , Travnik , Bosnia and Herzegovina

Abstract

Artificial intelligence has become ubiquitous, exponentially increasing the productivity of both individuals and businesses. The sophistication of artificial intelligence allows individuals to increase their own abilities in performing various tasks, and companies to perform better in the expansion of business services and production. Today, almost every industry uses artificial intelligence applications in order to automate everyday tasks and increase competitiveness in the market. The tape trend is increasingly popular in the power industry, which seeks to use the potential of artificial intelligence to increase efficiency, optimize performance, and accelerate its growth. Machine learning, deep learning, neural networks, big data techniques and other artificial intelligence technologies are increasing their presence on the power market every day. This paper discusses the use of artificial intelligence in one of the most important segments of power engineering, the production of electricity. The focus of the paper is on presenting the application model as well as the challenges of using artificial intelligence in this segment.

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