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The Hybrid Kalman Filter for Grid State Estimation is a powerful tool used to monitor, control and stabilize power systems in real-time. In this study, N. Priyadharshini investigates the use of this state-of-the-art technique in the context of power systems, along with optimal placement of phasor measurement units (PMUs) for accurate monitoring. The author emphasizes the importance of accurate state estimation in ensuring grid reliability and stability, especially in the presence of increasing levels of renewable energy integration and distributed energy resources. The hybrid Kalman filter,…mehr

Produktbeschreibung
The Hybrid Kalman Filter for Grid State Estimation is a powerful tool used to monitor, control and stabilize power systems in real-time. In this study, N. Priyadharshini investigates the use of this state-of-the-art technique in the context of power systems, along with optimal placement of phasor measurement units (PMUs) for accurate monitoring. The author emphasizes the importance of accurate state estimation in ensuring grid reliability and stability, especially in the presence of increasing levels of renewable energy integration and distributed energy resources. The hybrid Kalman filter, which combines the advantages of both dynamic and static state estimation, is shown to be an effective algorithm for accurately estimating the state of power systems using synchronized measurements from PMUs. The study also addresses the optimal placement of PMUs for improving system observability and detecting and diagnosing faults in the grid. The placement of PMUs is optimized using observability analysis techniques, and the proposed algorithm is validated through numerical simulations. The study covers various aspects of power system modeling, control, and stability, such as power flow analysis, observability analysis, system dynamics, and fault detection and diagnosis. The application of the hybrid Kalman filter for dynamic state estimation and measurement error correction is thoroughly discussed. Moreover, the study explores the integration of renewable energy sources and microgrids into the power system, and the use of smart grid technologies for enhancing energy efficiency and power quality. Overall, the study provides valuable insights into the use of hybrid Kalman filters for accurate grid state estimation, optimal placement of PMUs, and advanced power system monitoring and control. It is a useful reference for researchers and engineers working in the field of power systems and smart grid technologies.