Abstract

Energy consumption and tracking accuracy are two significant issues for collaborative tracking in distributed wireless sensor networks (DWSNs). To obtain a benefit from those issues, most of the recent work tends to reduce the spatial redundancy, while ignoring utilizing the attribute of time redundancy. In this paper, a novel energy-efficient framework of collaborative signal and information fusion is proposed for acoustic target tracking. The proposed fusion algorithm is based on neural network aggregation model and Gaussian particle filtering (GPF) estimation. And the neural network based aggregation (NNBA) can reduce spatial and time redundancy. Furthermore, a fresh cluster head (CH) selection method demanding less task handover is also presented to decrease energy consumption. The analyzed framework coupled with simulations demonstrates its excellent performance in tracking accuracy and energy consumption.

Highlights

  • With the fast development of microelectromechanical system (MEMS), digital signal processing, and embedded computing, sensor nodes are becoming smaller and cheaper

  • Challenges and difficulties exist in target tracking distributed wireless sensor networks (DWSNs) [3,4,5]: (1) sensor resources limitation [6]; (2) deployment and coordination of a mountain of sensors; (3) redundant data caused by similar measurements of adjacent sensors

  • We have presented a high energy-effective strategy of collaborative signal and information fusion processing for acoustic target tracking applications in DWSNs

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Summary

Introduction

With the fast development of microelectromechanical system (MEMS), digital signal processing, and embedded computing, sensor nodes are becoming smaller and cheaper. The work in [11] proposed an adaptive dynamic clusterbased tracking (ADCT) protocol in which CHs are selected dynamically; sensor nodes surrounding the target are waken up to construct a cluster with the target’s moving in the network. Such scheme can be called the second CSIP (CSIP2). The purpose of this paper is to design a novel energy-efficient collaborative signal and information fusion processing (CSIFP) framework for acoustic target tracking in DWSNs, to collaboratively estimate the position and velocity of a moving target.

Problem Statements
Distributed Collaborative Target Tracking Framework
Neural Network Based Aggregation Tracking Model
NNBA Neuron Model
Simulation Environment and Setup
Performance Metrics
Simulation and Analysis
State dimension
Findings
Conclusions
Full Text
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