4.6 Article

Inference of dominant modes for linear stochastic processes

Journal

ROYAL SOCIETY OPEN SCIENCE
Volume 8, Issue 4, Pages -

Publisher

ROYAL SOC
DOI: 10.1098/rsos.201442

Keywords

inference; linear stochastic process; mode; Gaussian process; Kalman filter; AC power networks

Funding

  1. National Grid under Network Innovation Allowance [NIA_NGET0161]
  2. Alan Turing Institute [TU/B/000101]
  3. Alan Turing Institute [TU/B/000101] Funding Source: researchfish

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This paper presents methods to infer dominant modes of dynamical systems in real time, which can be real or complex, with specific characteristics such as damping rate and frequency. This work is motivated by the problem of oscillation detection in power flow in AC electrical networks, with suggestions for other potential applications provided.
For dynamical systems that can be modelled as asymptotically stable linear systems forced by Gaussian noise, this paper develops methods to infer (estimate) their dominant modes from observations in real time. The modes can be real or complex. For a real mode (monotone decay), the goal is to infer its damping rate and mode shape. For a complex mode (oscillatory decay), the goal is to infer its frequency, damping rate and (complex) mode shape. Their amplitudes and correlations are encoded in a mode covariance matrix that is also to be inferred. The work is motivated and illustrated by the problem of detection of oscillations in power flow in AC electrical networks. Suggestions of some other applications are given.

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