학술논문

State Estimation Model Reduction Through the Manifold Boundary Approximation Method
Document Type
Periodical
Source
IEEE Transactions on Power Systems IEEE Trans. Power Syst. Power Systems, IEEE Transactions on. 37(1):272-281 Jan, 2022
Subject
Power, Energy and Industry Applications
Components, Circuits, Devices and Systems
Computational modeling
Data models
Jacobian matrices
Observability
Manifolds
Information and communication technology
Analytical models
State estimation
model reduction
communication outages
manifold boundary approximation method
information geometry
Language
ISSN
0885-8950
1558-0679
Abstract
This paper presents a procedure for estimating the systems state when considerable Information and Communication Technology (ICT) component outages occur, leaving entire system areas unobservable. For this task, a novel method for analyzing system observability is proposed based on the Manifold Boundary Approximation Method (MBAM). By utilizing information geometry, MBAM analyzes boundaries of models in data space, thus detecting unidentifiable system parameters and states based on available data. This approach extends local, matrix-based methods to a global perspective, making it capable of detecting both structurally unidentifiable parameters as well as practically unidentifiable parameters (i.e., identifiable with low accuracy). Beyond partitioning identifiable/unidentifiable states, MBAM also reduces the model to remove reference to the unidentifiable state variables. To test this procedure, cyber-physical system (CPS) simulation environments are constructed by co-simulating the physical and cyber system layers.