Abstract

Wireless sensor networks are posed as the new communication paradigm where the use of small, low-complexity, and low-power devices is preferred over costly centralized systems. The spectra of potential applications of sensor networks is very wide, ranging from monitoring, surveillance, and localization, among others. Localization is a key application in sensor networks and the use of simple, efficient, and distributed algorithms is of paramount practical importance. Combining convex optimization tools with consensus algorithms we propose a distributed localization algorithm for scenarios where received signal strength indicator readings are used. We approach the localization problem by formulating an alternative problem that uses distance estimates locally computed at each node. The formulated problem is solved by a relaxed version using semidefinite relaxation technique. Conditions under which the relaxed problem yields to the same solution as the original problem are given and a distributed consensus-based implementation of the algorithm is proposed based on an augmented Lagrangian approach and primal-dual decomposition methods. Although suboptimal, the proposed approach is very suitable for its implementation in real sensor networks, i.e., it is scalable, robust against node failures and requires only local communication among neighboring nodes. Simulation results show that running an additional local search around the found solution can yield performance close to the maximum likelihood estimate.

Highlights

  • The deployment of a large number of scattered sensors in a certain area constitutes a very powerful tool for sensing and retrieving information from the environment

  • An alternative problem to the maximum likelihood (ML) position estimation problem has been proposed based on local ML distance estimates at each node

  • In order to circumvent the non-convexity of the problem, semidefinite relaxation technique has been employed and conditions that guarantee zero gap between the relaxed and the original problem have been given

Read more

Summary

Introduction

The deployment of a large number of scattered sensors in a certain area constitutes a very powerful tool for sensing and retrieving information from the environment (e.g., temperature, humidity, motion). In real applications this will cause rapid battery depletion if far away nodes are to communicate In both approaches the estimation is performed only by a subset of nodes that are selected according to their received signal to noise ratio. The required signaling and routing overhead necessary for node coordination may limit their application In this contribution, we propose a distributed algorithm for localization in WSN’s by fusing RSSI measurements. The developed approach offers an advantage over centralized approaches as it is scalable, robust against changes in network’s topology and requires only local communication among neighboring nodes. These are key properties very desirable in the context of WSN’s. The received power rm will be used to get an estimate of the true target position

ML estimation
Findings
Conclusions
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call