Title
Smart grid topology identification using sparse recovery
Abstract
The technology of smart grid (SG) shapes the traditional power grid into a dynamical network which includes a layer of information that flows through the energy system. Recorded data from a variety of parameters in SGs, can improve analysis of different supervisory problems, but an important issue is the cost and power efficiency in data analysis procedures. This paper presents an efficient solution for topology identification (TI) and monitoring activities in SG. The basic idea of this work comes from combining the sparse recovery theory with graph theory concepts. The power network is modeled as a large interconnected graph, which can be evaluated with the DC power-flow model. Therefore the topology identification for such a system is mathematically reformulated as a sparse recovery problem (SRP), which can be efficiently solved using SRP solvers. In this paper, the network models have been generated with MATPOWER toolbox, and Matlab based simulation results have shown that the proposed method represents a promising approach for real time TI in SGs.
Year
Venue
Keywords
2015
IEEE Industry Applications Society Annual Meeting
Smart Grid,Compressive Sensing,Sparse Recovery,Topology Identification
Field
DocType
ISSN
Graph theory,Electrical efficiency,MATLAB,Smart grid,Computer science,Toolbox,Network topology,Computational science,Topology identification,Network model,Distributed computing
Conference
0197-2618
Citations 
PageRank 
References 
1
0.36
17
Authors
5
Name
Order
Citations
PageRank
Mohammad Babakmehr110.70
Marcelo Godoy Simões216632.52
Michael B. Wakin34299271.57
ahmed al durra432.49
Farnaz Harirchi510.70