September 29, 2023
Conference Paper

Towards Smart Grids Enhanced Situation Awareness: A Bi-Level Quasi-Static State Estimation Model

Abstract

Smart Grid situational awareness is provided by Energy Management Systems. A core process of these systems is State Estimation. The great majority of state estimators model the Smart Grid through a set of nonlinear algebraic equations, named the measurement model. Problem formulation considers the Gauss solution. Several model improvements have been presented regarding the Gauss solution, aiming between others to provide measurement noise robustness to the state estimation process. While considerable effort has been focused on such developments, state estimation is still constrained by the implicit modelling error, and thus inevitably vulnerable to cyber-threats. In this work, a state estimation bi-level formal model is presented towards Smart Grids enhanced situational awareness considering the concepts of synthetic measurements and innovation. Comparative test results with the state-of-the-art on the IEEE 14-bus system are presented highlighting improved situational awareness to bad data. Easy-to-implement model, without hard-to-derive parameters, built-on the classic weighted least squares solution, highlight potential aspects for real-life implementation.

Published: September 29, 2023

Citation

Bretas A., M.J. Rice, C.A. Bonebrake, C.H. Miller, A.D. McKinnon, and A.R. Vielma. 2023. Towards Smart Grids Enhanced Situation Awareness: A Bi-Level Quasi-Static State Estimation Model. In 2023 IEEE Power & Energy Society General Meeting (PESGM), 1-5. Orlando, Florida:IEEE. PNNL-SA-174139. doi:10.1109/PESGM52003.2023.10252105

Research topics