Title :
Distributed Maximum Likelihood Sensor Network Localization
Author :
Simonetto, Andrea ; Leus, Geert
Author_Institution :
Fac. of Electr. Eng., Math. & Comput. Sci., Delft Univ. of Technol., Delft, Netherlands
Abstract :
We propose a class of convex relaxations to solve the sensor network localization problem, based on a maximum likelihood (ML) formulation. This class, as well as the tightness of the relaxations, depends on the noise probability density function (PDF) of the collected measurements. We derive a computational efficient edge-based version of this ML convex relaxation class and we design a distributed algorithm that enables the sensor nodes to solve these edge-based convex programs locally by communicating only with their close neighbors. This algorithm relies on the alternating direction method of multipliers (ADMM), it converges to the centralized solution, it can run asynchronously, and it is computation error-resilient. Finally, we compare our proposed distributed scheme with other available methods, both analytically and numerically, and we argue the added value of ADMM, especially for large-scale networks.
Keywords :
convex programming; distributed algorithms; maximum likelihood estimation; probability; wireless sensor networks; ADMM; ML convex relaxation class; PDF; alternating direction method-of-multipliers; computation error-resilient; distributed algorithm; distributed maximum likelihood sensor network localization; edge-based convex programs; large-scale networks; maximum likelihood formulation; measurement collection; noise probability density function; sensor nodes; Distributed algorithms; Maximum likelihood estimation; Noise; Optimization; Probability density function; Robot sensing systems; Signal processing algorithms; ADMM; Distributed optimization; convex relaxations; distributed algorithms; distributed localization; maximum likelihood; sensor network localization; sensor networks;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2014.2302746