Design and development of PI controller for DFIG grid integration using neural tuning method ensembled with dense plexus terminals

In a DFIG grid interconnected system, the control of real and reactive power relies on various factors. This paper presents an approach to regulate the flow of real and reactive power using a Neural Tuning Machine (NTM) based on a recurrent neural network. The focus is on controlling the flow of rea...

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Veröffentlicht in:Scientific reports 2024-04, Vol.14 (1), p.7916-20, Article 7916
Hauptverfasser: Hete, R. R., Shrivastava, Tarun, Dash, Ritesh, Anupallavi, L., Fathima, Misba, Reddy, K. Jyotheeswara, Dhanamjayalu, C., Mohammad, Faruq, Khan, Baseem
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Sprache:eng
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Zusammenfassung:In a DFIG grid interconnected system, the control of real and reactive power relies on various factors. This paper presents an approach to regulate the flow of real and reactive power using a Neural Tuning Machine (NTM) based on a recurrent neural network. The focus is on controlling the flow of reactive power from the rotor-side converter, which is proportional to the grid-side controller through a coupling voltage. The proposed NTM method leverages neural networks to fine-tune the parameters of the PI controller, optimizing performance for DFIG grid integration. By integrating dense plexus terminals, also known as dense connections, within the neural network, the control system achieves enhanced adaptability, robustness, and nonlinear dynamics, addressing the challenges of the grid. Grid control actions are based on the voltage profile at different bus locations, thereby regulating voltage. This article meticulously examines the analysis in terms of DFIG configuration and highlights the advantages of the neural tuning machine in controlling inner current loop parameters compared to conventional PI controllers. To demonstrate the robustness of the control algorithm, a MATLAB Simulink model is designed, and validation is conducted with three different benchmarking models. All calculations and results presented in the article strictly adhere to IEEE and IEC standards. This research contributes to advancing control methodologies for DFIG grid integration and lays the groundwork for further exploration of neural tuning methods in power system control.
ISSN:2045-2322
2045-2322
DOI:10.1038/s41598-024-56904-7