Comparative Analysis of Machine Learning Approaches in Enhancing Power System Stability
Created by W.Langdon from
gp-bibliography.bib Revision:1.8098
- @InBook{Pathan:2023:Systems,
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author = "Md. I. H. Pathan and Mohammad S. Shahriar and
Mohammad M. Rahman and Md. Sanwar Hossain and Nadia Awatif and
Md. Shafiullah",
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booktitle = "Artificial Intelligence-based Smart Power Systems",
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title = "Comparative Analysis of Machine Learning Approaches in
Enhancing Power System Stability",
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year = "2023",
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pages = "157--177",
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publisher = "IEEE",
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keywords = "genetic algorithms, genetic programming, Power system
stability, Stability analysis, Tuning, Eigenvalues and
eigenfunctions, Transformers, Real-time systems,
Reactive power",
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DOI = "doi:10.1002/9781119893998.ch9",
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isbn13 = "9781119893974",
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URL = "https://ieeexplore.ieee.org/document/9983996",
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abstract = "The lowafrequency oscillations (LFOs) are usually
considered as the slowapoisoning issues for electric
power networks as they can cause system blackout if not
resolved in time. However, this LFO issue has recently
become a significant concern to the utility body owing
to integrating renewable energy (RE) resources in the
power networks. Because of the intermittent nature of
RE sources, the LFOs are frequently introduced in the
power networks and appear as a threatening issue in the
end. Therefore, this chapter has addressed an efficient
solution: implementing different artificial
intelligence (AI) techniques in electric power networks
to overcome the undesired LFOs and improve the overall
stability of the networks by tuning the power system
stabilizer (PSS) parameters. In this case, four machine
learning (ML) tools, group method of data handling
(GMDH), extreme learning machine (ELM), neurogenetic
(NG), and multiagene genetic programming (MGGP), were
employed in two different electric networks to
investigate the applicability of AI techniques in
enhancing the system's stability. The stability
measuring indices of the power networks like minimum
damping ratio (MDR), eigenvalues, and the time-domain
simulations are evaluated for different operating
situations with newly conjectured key parameters of
PSS, tuned in real time. Furthermore, the results of
the developed ML models were compared with the
conventional approach to exhibit the applicability and
superiority of AI techniques over similar approaches.",
-
notes = "Also known as \cite{9983996}",
- }
Genetic Programming entries for
Md Ilius Hasan Pathan
Mohammad Shoaib Shahriar
Mohammad Mominur Rahman
Md Sanwar Hossain
Nadia Awatif
Md Shafiullah
Citations