Title
Convexification of Power Flow Equations in the Presence of Noisy Measurements
Abstract
This paper is concerned with the power system state estimation (PSSE) problem that aims to find the unknown operating point of a power network based on a given set of measurements. We first study the power flow (PF) problem as an important special case of PSSE, which is known to be non-convex and NP-hard in the worst case. To this end, we propose a set of semidefinite programs (SDPs) with the property that they all solve the PF problem as long as the voltage angles are relatively small. Associated with each SDP, we explicitly characterize the set of all complex voltages that can be recovered via that convex problem. As a generalization, the design of an SDP problem that recovers multiple nominal points and a neighborhood around each point is also cast as a convex program. The results are then extended to the PSSE problem, where the measurements used in the PF problem are subject to noise. A two-term objective function is employed for each convex program developed for the PSSE problem: (i) one term accounting for the non-convexity of the power flow equations, (ii) another one for estimating the noise levels. An upper bound on the estimation error is derived with respect to the noise level and the proposed techniques are demonstrated on multiple test systems, including a 9241-bus European network. Although the focus of the paper is on power networks, the developed results apply to every arbitrary state estimation problem with quadratic measurement equations.
Year
DOI
Venue
2019
10.1109/tac.2019.2897939
IEEE Transactions on Automatic Control
Keywords
Field
DocType
Mathematical model,Transmission line measurements,Noise measurement,Linear programming,Power measurement,Power systems,State estimation
Mathematical optimization,Noise measurement,Operating point,Upper and lower bounds,Quadratic equation,Electric power system,Linear programming,Convex optimization,Mathematics,Special case
Journal
Volume
Issue
ISSN
64
8
0018-9286
Citations 
PageRank 
References 
0
0.34
0
Authors
3
Name
Order
Citations
PageRank
Ramtin Madani1357.99
Javad Lavaei258771.90
Ross Baldick332242.22