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Título del libro: 2022 International Conference On Smart Grid Synchronized Measurements And Analytics, Sgsma 2022 - Proceedings
Título del capítulo: Real-time Coherency Identification using a Window-Size-Based Recursive Typicality Data Analysis

Autores UNAM:
MARIO ROBERTO ARRIETA PATERNINA;
Autores externos:

Idioma:

Año de publicación:
2022
Palabras clave:

Data handling; Information analysis; Phasor measurement units; Clusterings; Coherency; Coherency identification; Data-driven analysis; Data-driven methods; Minimal lengths; Real- time; Time coherencies; Typicality; Window Size; Iterative methods


Resumen:

This work presents a data-driven analysis of minimal length necessary for coherency detection considering a recursive form of the typicality-based Data analysis (TDA). It proposes a methodology that encloses the observation of the variance of the typicality (t) to asses the minimal window length necessary to determine the coherent buses, where the properties of the TDA approach and the groups of buses are iteratively calculated at every new data point sampled. Once the variance of each group reaches a certain value, the minimal window length is determined. Besides, this method preserves the TDA characteristics of using exclusively measurements, not requiring pre-determination of number of groups, group centers or cut-off constants. The method is applied to the well know 2-area Kundur test system, allowing to corroborate its effectiveness and draw conclusions regarding minimal window length dependence on the slowest inter-area mode. © 2022 IEEE.


Entidades citadas de la UNAM: