2019
DOI: 10.2478/jee-2019-0078
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A novel measurement-based procedure for dynamic equivalents of electric power systems for stability studies using improved sine cosine algorithm

Abstract: Dynamic equivalent (DE) is an important process of multi-area interconnected power systems. It allows to perform stability assessment of a specific area (area of interest) at minimum cost. This study is intended to investigate the dynamic equivalent of two relatively large power systems. The fourth-order model of synchronous generators with a simplified excitation system is used as equivalent to the group of generators in the external system. To improve the accuracy of the estimated model, the identification i… Show more

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“…Several studies, like Benmiloud and Arif (2021), have acknowledged the transformative role of machine learning in education. While these works discuss the broader implications and potential benefits of applying machine learning to teaching and learning processes, they do not delve into the development of a specialized early warning system for ideological and political education within college English courses.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Several studies, like Benmiloud and Arif (2021), have acknowledged the transformative role of machine learning in education. While these works discuss the broader implications and potential benefits of applying machine learning to teaching and learning processes, they do not delve into the development of a specialized early warning system for ideological and political education within college English courses.…”
Section: Literature Reviewmentioning
confidence: 99%