An Energy-Efficient Collaborative Target Tracking Framework in Distributed Wireless Sensor Networks

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 redund...

Full description

Bibliographic Details
Main Authors: Lin Shang, Kang Zhao, Zhengguo Cai, Dan Gao, Maolin Hu
Format: Article
Language:English
Published: SAGE Publishing 2014-07-01
Series:International Journal of Distributed Sensor Networks
Online Access:https://doi.org/10.1155/2014/396109
id doaj-7c608ca3fdd04c869100a0f52782e535
record_format Article
spelling doaj-7c608ca3fdd04c869100a0f52782e5352020-11-25T03:43:31ZengSAGE PublishingInternational Journal of Distributed Sensor Networks1550-14772014-07-011010.1155/2014/396109396109An Energy-Efficient Collaborative Target Tracking Framework in Distributed Wireless Sensor NetworksLin ShangKang ZhaoZhengguo CaiDan GaoMaolin HuEnergy 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.https://doi.org/10.1155/2014/396109
collection DOAJ
language English
format Article
sources DOAJ
author Lin Shang
Kang Zhao
Zhengguo Cai
Dan Gao
Maolin Hu
spellingShingle Lin Shang
Kang Zhao
Zhengguo Cai
Dan Gao
Maolin Hu
An Energy-Efficient Collaborative Target Tracking Framework in Distributed Wireless Sensor Networks
International Journal of Distributed Sensor Networks
author_facet Lin Shang
Kang Zhao
Zhengguo Cai
Dan Gao
Maolin Hu
author_sort Lin Shang
title An Energy-Efficient Collaborative Target Tracking Framework in Distributed Wireless Sensor Networks
title_short An Energy-Efficient Collaborative Target Tracking Framework in Distributed Wireless Sensor Networks
title_full An Energy-Efficient Collaborative Target Tracking Framework in Distributed Wireless Sensor Networks
title_fullStr An Energy-Efficient Collaborative Target Tracking Framework in Distributed Wireless Sensor Networks
title_full_unstemmed An Energy-Efficient Collaborative Target Tracking Framework in Distributed Wireless Sensor Networks
title_sort energy-efficient collaborative target tracking framework in distributed wireless sensor networks
publisher SAGE Publishing
series International Journal of Distributed Sensor Networks
issn 1550-1477
publishDate 2014-07-01
description 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.
url https://doi.org/10.1155/2014/396109
work_keys_str_mv AT linshang anenergyefficientcollaborativetargettrackingframeworkindistributedwirelesssensornetworks
AT kangzhao anenergyefficientcollaborativetargettrackingframeworkindistributedwirelesssensornetworks
AT zhengguocai anenergyefficientcollaborativetargettrackingframeworkindistributedwirelesssensornetworks
AT dangao anenergyefficientcollaborativetargettrackingframeworkindistributedwirelesssensornetworks
AT maolinhu anenergyefficientcollaborativetargettrackingframeworkindistributedwirelesssensornetworks
AT linshang energyefficientcollaborativetargettrackingframeworkindistributedwirelesssensornetworks
AT kangzhao energyefficientcollaborativetargettrackingframeworkindistributedwirelesssensornetworks
AT zhengguocai energyefficientcollaborativetargettrackingframeworkindistributedwirelesssensornetworks
AT dangao energyefficientcollaborativetargettrackingframeworkindistributedwirelesssensornetworks
AT maolinhu energyefficientcollaborativetargettrackingframeworkindistributedwirelesssensornetworks
_version_ 1724519314567987200