A HARDWARE ARCHITECTURE FOR GPS/INS-ENABLED WIRELESS SENSOR NETWORKS

Wireless sensor network technology has now been widely adopted. In many applications, distributed sensor nodes collect data at different locations and the location information of each node is required. The Global Positioning System is commonly used to identify the location of the nodes in such netw...

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Main Author: Tang, Chun
Other Authors: Queen's University (Kingston, Ont.). Theses (Queen's University (Kingston, Ont.))
Language:en
en
Published: 2012
Subjects:
WSN
DSP
Online Access:http://hdl.handle.net/1974/6956
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-OKQ.1974-69562013-12-20T03:40:29ZA HARDWARE ARCHITECTURE FOR GPS/INS-ENABLED WIRELESS SENSOR NETWORKSTang, ChunEmbedded SystemsGPS/INS IntegrationWSNDSPWireless sensor network technology has now been widely adopted. In many applications, distributed sensor nodes collect data at different locations and the location information of each node is required. The Global Positioning System is commonly used to identify the location of the nodes in such networks. Although GPS localization has consistent long-term accuracy, it is limited by the inherent dependency on a direct line of sight to 4 or more external satellites. The increasing demand for an embedded system providing reliable navigation solutions regardless of its operational environment has motivated investigations into the use of integrated systems that combine inertial sensors with GPS receivers. This research proposes a hardware architecture for location-based wireless sensor networks. In this architecture, each sensor node consists of a GPS receiver, a reduced set of low cost micro-electro-mechanical-system-based INS and a wireless transceiver. Sensor nodes in WSN are often equipped with irreplaceable batteries, which makes the power consumption crucial. To reduce the energy consumption, a microcontroller is used to control the power supply. Besides, a motion detection scheme is proposed by taking advantage of the ultra low-power wake-up function of the microcontroller. A low-power featured digital signal processor is used to accomplish the navigation computation using the Kalman filter for GPS/INS data fusion. Non-Holonomic Constraints derived velocity updates are applied to reduce the position errors. Field tests are conducted to verify the real-time performance of the proposed system with a positioning update rate of 20 Hz. The first test shows that the 2D INS/GPS integration can maintain the average system position error within 5 meters during a 60-second GPS outage. The second test used low cost inertial sensors. The average position error was 10.17 meters during a 20-second outage. The largest RMS value of position errors among these outages was within 14.5 meters. Furthermore, additional accuracy improvements of approximately 1.4 meters were achieved by utilizing NHC during GPS outages. The third test shows that the average error during a 30-second outage is approximately 20.6 meters for the on-foot scenario and 26.7 meters for the in-vehicle scenario.Thesis (Master, Electrical & Computer Engineering) -- Queen's University, 2012-01-13 14:46:45.44Queen's University (Kingston, Ont.). Theses (Queen's University (Kingston, Ont.))2012-01-06 12:29:00.9412012-01-12 16:00:47.9832012-01-13 14:46:45.442012-01-13T20:11:32Z2012-01-13T20:11:32Z2012-01-13Thesishttp://hdl.handle.net/1974/6956enenCanadian thesesThis publication is made available by the authority of the copyright owner solely for the purpose of private study and research and may not be copied or reproduced except as permitted by the copyright laws without written authority from the copyright owner.
collection NDLTD
language en
en
sources NDLTD
topic Embedded Systems
GPS/INS Integration
WSN
DSP
spellingShingle Embedded Systems
GPS/INS Integration
WSN
DSP
Tang, Chun
A HARDWARE ARCHITECTURE FOR GPS/INS-ENABLED WIRELESS SENSOR NETWORKS
description Wireless sensor network technology has now been widely adopted. In many applications, distributed sensor nodes collect data at different locations and the location information of each node is required. The Global Positioning System is commonly used to identify the location of the nodes in such networks. Although GPS localization has consistent long-term accuracy, it is limited by the inherent dependency on a direct line of sight to 4 or more external satellites. The increasing demand for an embedded system providing reliable navigation solutions regardless of its operational environment has motivated investigations into the use of integrated systems that combine inertial sensors with GPS receivers. This research proposes a hardware architecture for location-based wireless sensor networks. In this architecture, each sensor node consists of a GPS receiver, a reduced set of low cost micro-electro-mechanical-system-based INS and a wireless transceiver. Sensor nodes in WSN are often equipped with irreplaceable batteries, which makes the power consumption crucial. To reduce the energy consumption, a microcontroller is used to control the power supply. Besides, a motion detection scheme is proposed by taking advantage of the ultra low-power wake-up function of the microcontroller. A low-power featured digital signal processor is used to accomplish the navigation computation using the Kalman filter for GPS/INS data fusion. Non-Holonomic Constraints derived velocity updates are applied to reduce the position errors. Field tests are conducted to verify the real-time performance of the proposed system with a positioning update rate of 20 Hz. The first test shows that the 2D INS/GPS integration can maintain the average system position error within 5 meters during a 60-second GPS outage. The second test used low cost inertial sensors. The average position error was 10.17 meters during a 20-second outage. The largest RMS value of position errors among these outages was within 14.5 meters. Furthermore, additional accuracy improvements of approximately 1.4 meters were achieved by utilizing NHC during GPS outages. The third test shows that the average error during a 30-second outage is approximately 20.6 meters for the on-foot scenario and 26.7 meters for the in-vehicle scenario. === Thesis (Master, Electrical & Computer Engineering) -- Queen's University, 2012-01-13 14:46:45.44
author2 Queen's University (Kingston, Ont.). Theses (Queen's University (Kingston, Ont.))
author_facet Queen's University (Kingston, Ont.). Theses (Queen's University (Kingston, Ont.))
Tang, Chun
author Tang, Chun
author_sort Tang, Chun
title A HARDWARE ARCHITECTURE FOR GPS/INS-ENABLED WIRELESS SENSOR NETWORKS
title_short A HARDWARE ARCHITECTURE FOR GPS/INS-ENABLED WIRELESS SENSOR NETWORKS
title_full A HARDWARE ARCHITECTURE FOR GPS/INS-ENABLED WIRELESS SENSOR NETWORKS
title_fullStr A HARDWARE ARCHITECTURE FOR GPS/INS-ENABLED WIRELESS SENSOR NETWORKS
title_full_unstemmed A HARDWARE ARCHITECTURE FOR GPS/INS-ENABLED WIRELESS SENSOR NETWORKS
title_sort hardware architecture for gps/ins-enabled wireless sensor networks
publishDate 2012
url http://hdl.handle.net/1974/6956
work_keys_str_mv AT tangchun ahardwarearchitectureforgpsinsenabledwirelesssensornetworks
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