Driver training based optimized fractional order PI-PDF controller for frequency stabilization of diverse hybrid power system
This work provides an enhanced novel cascaded controller-based frequency stabilization of a two-region interconnected power system incorporating electric vehicles. The proposed controller combines a cascade structure comprising a fractional-order proportional integrator and a proportional derivative...
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my.um.eprints.383872023-11-28T01:01:36Z http://eprints.um.edu.my/38387/ Driver training based optimized fractional order PI-PDF controller for frequency stabilization of diverse hybrid power system Zhang, Guoqiang Daraz, Amil Khan, Irfan Ahmed Basit, Abdul Khan, Muhammad Irshad Ullah, Mirzat QA Mathematics This work provides an enhanced novel cascaded controller-based frequency stabilization of a two-region interconnected power system incorporating electric vehicles. The proposed controller combines a cascade structure comprising a fractional-order proportional integrator and a proportional derivative with a filter term to handle the frequency regulation challenges of a hybrid power system integrated with renewable energy sources. Driver training-based optimization, an advanced stochastic meta-heuristic method based on human learning, is employed to optimize the gains of the proposed cascaded controller. The performance of the proposed novel controller was compared to that of other control methods. In addition, the results of driver training-based optimization are compared to those of other recent meta-heuristic algorithms, such as the imperialist competitive algorithm and jellyfish swarm optimization. The suggested controller and design technique have been evaluated and validated under a variety of loading circumstances and scenarios, as well as their resistance to power system parameter uncertainties. The results indicate the new controller's steady operation and frequency regulation capability with an optimal controller coefficient and without the prerequisite for a complex layout procedure. MDPI 2023-04 Article PeerReviewed Zhang, Guoqiang and Daraz, Amil and Khan, Irfan Ahmed and Basit, Abdul and Khan, Muhammad Irshad and Ullah, Mirzat (2023) Driver training based optimized fractional order PI-PDF controller for frequency stabilization of diverse hybrid power system. Fractal and Fractional, 7 (4). ISSN 2504-3110, DOI https://doi.org/10.3390/fractalfract7040315 <https://doi.org/10.3390/fractalfract7040315>. 10.3390/fractalfract7040315 |
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QA Mathematics Zhang, Guoqiang Daraz, Amil Khan, Irfan Ahmed Basit, Abdul Khan, Muhammad Irshad Ullah, Mirzat Driver training based optimized fractional order PI-PDF controller for frequency stabilization of diverse hybrid power system |
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This work provides an enhanced novel cascaded controller-based frequency stabilization of a two-region interconnected power system incorporating electric vehicles. The proposed controller combines a cascade structure comprising a fractional-order proportional integrator and a proportional derivative with a filter term to handle the frequency regulation challenges of a hybrid power system integrated with renewable energy sources. Driver training-based optimization, an advanced stochastic meta-heuristic method based on human learning, is employed to optimize the gains of the proposed cascaded controller. The performance of the proposed novel controller was compared to that of other control methods. In addition, the results of driver training-based optimization are compared to those of other recent meta-heuristic algorithms, such as the imperialist competitive algorithm and jellyfish swarm optimization. The suggested controller and design technique have been evaluated and validated under a variety of loading circumstances and scenarios, as well as their resistance to power system parameter uncertainties. The results indicate the new controller's steady operation and frequency regulation capability with an optimal controller coefficient and without the prerequisite for a complex layout procedure. |
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Article |
author |
Zhang, Guoqiang Daraz, Amil Khan, Irfan Ahmed Basit, Abdul Khan, Muhammad Irshad Ullah, Mirzat |
author_facet |
Zhang, Guoqiang Daraz, Amil Khan, Irfan Ahmed Basit, Abdul Khan, Muhammad Irshad Ullah, Mirzat |
author_sort |
Zhang, Guoqiang |
title |
Driver training based optimized fractional order PI-PDF controller for frequency stabilization of diverse hybrid power system |
title_short |
Driver training based optimized fractional order PI-PDF controller for frequency stabilization of diverse hybrid power system |
title_full |
Driver training based optimized fractional order PI-PDF controller for frequency stabilization of diverse hybrid power system |
title_fullStr |
Driver training based optimized fractional order PI-PDF controller for frequency stabilization of diverse hybrid power system |
title_full_unstemmed |
Driver training based optimized fractional order PI-PDF controller for frequency stabilization of diverse hybrid power system |
title_sort |
driver training based optimized fractional order pi-pdf controller for frequency stabilization of diverse hybrid power system |
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MDPI |
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2023 |
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http://eprints.um.edu.my/38387/ |
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1783876664123457536 |
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13.211869 |