Stability improvement of the PSS-connected power system network with ensemble machine learning tool
Created by W.Langdon from
gp-bibliography.bib Revision:1.8081
- @Article{SHAHRIAR:2022:egyr,
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author = "M. S. Shahriar and M. Shafiullah and
M. I. H. Pathan and Y. A. Sha'aban and Houssem R. E. H. Bouchekara and
Makbul A. M. Ramli and M. M. Rahman",
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title = "Stability improvement of the {PSS-connected} power
system network with ensemble machine learning tool",
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journal = "Energy Reports",
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volume = "8",
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pages = "11122--11138",
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year = "2022",
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ISSN = "2352-4847",
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DOI = "doi:10.1016/j.egyr.2022.08.225",
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URL = "https://www.sciencedirect.com/science/article/pii/S2352484722016699",
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keywords = "genetic algorithms, genetic programming, Artificial
intelligence, Backtracking search algorithm, Ensemble
method, Extreme learning machine, Low-frequency
oscillation, Neurogenetic, Power system stability,
Real-time",
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abstract = "Stability is a primary requirement of the electrical
power system for its flawless, secure, and economical
operation. Low-frequency oscillations (LFOs), commonly
seen in interconnected power systems, initiate the
possibility of instability and, therefore, require
sophisticated care to deal with. This paper proposes an
original approach to tuning the parameters of the power
system stabilizer (PSS), which plays a crucial role in
the power system networks to dampen unwanted
oscillations. The ensemble method combines multiple
machine learning techniques and has been used for
tuning the PSS parameters in real-time for two
PSS-connected power system networks. The first system
is a single-machine infinite bus power system, while
the second is a unified power flow controller (UPFC)
device. The backtracking search algorithm (BSA) based
proposed ensemble model is formed by combining three
machine learning (ML) techniques, namely the extreme
learning machine (ELM), neurogenetic (NG) system, and
multi-gene genetic programming (MGGP). To validate the
stability of the network, Eigenvalues, well-recognized
statistical parameters, and minimum damping ratios were
analyzed, besides the time-domain simulation results.
Furthermore, results for various loading conditions
were prepared to check the robustness of the proposed
model. A comparative study of the proposed approach
with NG, ELM, MGGP models, and two reference cases
along with the conventional method will validate the
superiority of the employed ML approach",
- }
Genetic Programming entries for
Mohammad Shoaib Shahriar
Shafiullah A Hossain
Md Ilius Hasan Pathan
Yusuf A Sha'aban
Houssem Rafik El-Hana Bouchekara
Makbul A M Ramli
Mohammad Mominur Rahman
Citations