Published March 2015 | Version Submitted
Journal Article Open

Equivalent relaxations of optimal power flow

Abstract

Several convex relaxations of the optimal power flow (OPF) problem have recently been developed using both bus injection models and branch flow models. In this paper, we prove relations among three convex relaxations: a semidefinite relaxation that computes a full matrix, a chordal relaxation based on a chordal extension of the network graph, and a second-order cone relaxation that computes the smallest partial matrix. We prove a bijection between the feasible sets of the OPF in the bus injection model and the branch flow model, establishing the equivalence of these two models and their second-order cone relaxations. Our results imply that, for radial networks, all these relaxations are equivalent and one should always solve the second-order cone relaxation. For mesh networks, the semidefinite relaxation and the chordal relaxation are equally tight and both are strictly tighter than the second-order cone relaxation. Therefore, for mesh networks, one should either solve the chordal relaxation or the SOCP relaxation, trading off tightness and the required computational effort. Simulations are used to illustrate these results.

Additional Information

© 2013 IEEE. Received: September 7, 2014. We are thankful to Prof. K. Mani Chandy and Lingwen Gan at Caltech for helpful discussions. We also acknowledge the support of NSF through NetSE grant CNS 0911041, CNS-0932428, CCF-1018927, CCF-1423663 and CCF-1409204, ARPA-E through grant DE-AR0000226, the National Science Council of Taiwan (R. O. C.) through grant NSC 103-3113-P-008-001, Southern California Edison, the Los Alamos National Lab (DoE), Resnick Institute at Caltech, Office of Naval Research under the MURI grant N00014-08–0747, Qualcomm Inc., and King Abdulaziz University.

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Additional details

Identifiers

Eprint ID
53561
Resolver ID
CaltechAUTHORS:20150112-101936328

Related works

Funding

NSF
CNS 0911041
NSF
CNS-0932428
NSF
CCF-1018927
NSF
CCF-1423663
NSF
CCF-1409204
ARPA-E
DE-AR0000226
National Science Council of Taiwan
NSC 103-3113-P-008-001
Southern California Edison
Los Alamos National Laboratory (LANL)
Caltech Resnick Institute
Office of Naval Research (ONR)
N00014-08-0747
Qualcomm Inc.
King Abdulaziz University

Dates

Created
2015-01-13
Created from EPrint's datestamp field
Updated
2021-11-10
Created from EPrint's last_modified field

Caltech Custom Metadata

Caltech groups
Resnick Sustainability Institute