Statistical inference of multivariable modal stability margins of time delay perturbated power systems
Fecha
2020-01-07Autor
Morfin, Onofre
Esquivel, Pedro
Romero, G.
Ornelas-Tellez, Fernando
Reyes, Evaristo N.
Catañeda, Carlos Eduardo
Metadatos
Mostrar el registro completo del ítemResumen
This paper proposes a modal statistical inference algorithm to define multivariable operational stability limits of
time-delay perturbed dynamic systems by employing remote sensor signals. Our proposal overcomes the
drawbacks of linear independence and inter-area geometry of time-delays to analyze multiple-input, multipleoutput dynamic systems. The manuscript contributes with: (a) the study of stability margins under distributed
uncertainty and time-delays for large power systems, (b) the determination of stability conditions of inter-area
oscillations through a new probabilistic modeling approach under the influence of intermissions, and (c) the
usage of the proposed methodology to derive controlled stability limits and assess the modal resilience of perturbed power systems. Studies on the multi-scale signals sensitivity and multivariable polynomial intersection
from empirical perspectives in modal stability analysis are also explored. Results on an IEEE 16-generator 68-bus
system are presented to illustrate the effectiveness of the proposed algorithm. The estimation of multivariable
operational stability limits and time-delays of inter-area oscillation modes are verified with the vector fitting
procedure and first-order Padé approximation.
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