@article{8ff2d79412e745218c0bbdbe9890e71e,
title = "Online fault diagnosis for nonlinear power systems",
abstract = "This paper considers the problem of automatic fault diagnosis for transmission lines in large scale power networks. Since faults in transmission lines threatens stability of the entire power network, fast and reliable fault diagnosis is an important problem in transmission line protection. This work is the first paper exploiting sparse signal recovery for the fault-diagnosis problem in power networks with nonlinear swing-type dynamics. It presents a novel and scalable technique to detect, isolate and identify transmission faults using a relatively small number of observations by exploiting the sparse nature of the faults. Buses in power networks are typically described by second-order nonlinear swing equations. Based on this description, the problem of fault diagnosis for transmission lines is formulated as a compressive sensing or sparse signal recovery problem, which is then solved using a sparse Bayesian formulation. An iterative reweighted ℓ1-minimisation algorithm based on the sparse Bayesian learning update is then derived to solve the fault diagnosis problem efficiently. With the proposed framework, a real-time fault monitoring scheme can be built using only measurements of phase angles at the buses.",
keywords = "fault detection and isolation, machine learning, power systems",
author = "Wei Pan and Ye Yuan and Henrik Sandberg and Jorge Gon{\c c}alves and Stan, {Guy Bart}",
note = "Funding Information: Guy-Bart Stan is a Reader in Engineering Design for Synthetic Biology and the head of the “Control Engineering Synthetic Biology” group at the Department of Bioengineering of Imperial College London. He is the recipient of the very prestigious UK Engineering and Physical Sciences Research Council (EPSRC) Fellowship for Growth in Synthetic Biology, directly supporting his research from February 2015 until January 2020. He received his Ph.D. in Applied Sciences (nonlinear dynamical systems and control) from the University of Li{\`e}ge, Belgium in March 2005 and subsequently worked for Philips Applied Technologies, Leuven, Belgium. From January 2006 until December 2009, he worked as Research Associate in the Control Group of the University of Cambridge, first supported by a Marie Curie Intra-European Fellowship and then by the UK EPSRC. Funding Information: Mr. Wei Pan acknowledges the support of Microsoft Research through the Ph.D. Scholarship Program. Dr. Ye Yuan and Dr. Jorge Gon{\c c}alves acknowledge the support of EPSRC through projects EP/I03210X/1 and EP/G066477/1. Dr. Henrik Sandberg acknowledges the support from the Swedish Research Council through grants 2009-4565 and 2013-5523 and the Swedish Foundation for Strategic Research through the project ICT-Psi. Dr. Guy-Bart Stan gratefully acknowledges the support of the EPSRC Centre for Synthetic Biology and Innovation at Imperial College London through the Science and Innovation award EP/G036004/1 . ",
year = "2015",
month = may,
day = "1",
doi = "10.1016/j.automatica.2015.02.032",
language = "English",
volume = "55",
pages = "27--36",
journal = "Automatica",
issn = "0005-1098",
publisher = "Elsevier BV",
}