Small range localization using wireless ultrasound sensor network

In the past few years, technological advances in electronics have led to cost effective, power efficient and small Wireless Sensor Network (WSN). Many new techniques to localize mobile targets in indoor environment were investigated and there are a lot of other vast new systems that requires this tr...

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Main Author: Tan, Eric Wee Shan
Other Authors: Soh Cheong Boon
Format: Final Year Project
Language:English
Published: 2016
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Online Access:http://hdl.handle.net/10356/67647
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-676472023-07-07T15:41:46Z Small range localization using wireless ultrasound sensor network Tan, Eric Wee Shan Soh Cheong Boon School of Electrical and Electronic Engineering DRNTU::Engineering In the past few years, technological advances in electronics have led to cost effective, power efficient and small Wireless Sensor Network (WSN). Many new techniques to localize mobile targets in indoor environment were investigated and there are a lot of other vast new systems that requires this tracking techniques. Object localization and tracking problems in WSNs have been capturing quite a lot of attention lately. Electronics future of precision had prompted the need to achieve higher localization accuracy, smallest form factor and lower cost price. Received Signal Strength (RSS) based localization techniques are the state-of-the-art tracking research type of applications. Another type of localization method, analytical localization, is also used and it involves the use of Triangulation and Trilateration. However, when ultrasound is introduced to the localization systems, noise was introduced and it can cause variations of the distance measurement readings from the sensors and renders the analytical localization methods to be producing inaccurate results. Thus, Kalman filter was then introduced as it is an iterative state estimator and is very useful in tracking objects with noisy measurements. The localization system will be carried out in two steps, namely distance measurement and localization. The first step is range measurement where the testing between a number of reference nodes and the target is carried out. The second step, localization, is the computation of the position of the mobile node based on the TOA-based ranging data. Bachelor of Engineering 2016-05-19T01:57:40Z 2016-05-19T01:57:40Z 2016 Final Year Project (FYP) http://hdl.handle.net/10356/67647 en Nanyang Technological University 56 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering
spellingShingle DRNTU::Engineering
Tan, Eric Wee Shan
Small range localization using wireless ultrasound sensor network
description In the past few years, technological advances in electronics have led to cost effective, power efficient and small Wireless Sensor Network (WSN). Many new techniques to localize mobile targets in indoor environment were investigated and there are a lot of other vast new systems that requires this tracking techniques. Object localization and tracking problems in WSNs have been capturing quite a lot of attention lately. Electronics future of precision had prompted the need to achieve higher localization accuracy, smallest form factor and lower cost price. Received Signal Strength (RSS) based localization techniques are the state-of-the-art tracking research type of applications. Another type of localization method, analytical localization, is also used and it involves the use of Triangulation and Trilateration. However, when ultrasound is introduced to the localization systems, noise was introduced and it can cause variations of the distance measurement readings from the sensors and renders the analytical localization methods to be producing inaccurate results. Thus, Kalman filter was then introduced as it is an iterative state estimator and is very useful in tracking objects with noisy measurements. The localization system will be carried out in two steps, namely distance measurement and localization. The first step is range measurement where the testing between a number of reference nodes and the target is carried out. The second step, localization, is the computation of the position of the mobile node based on the TOA-based ranging data.
author2 Soh Cheong Boon
author_facet Soh Cheong Boon
Tan, Eric Wee Shan
format Final Year Project
author Tan, Eric Wee Shan
author_sort Tan, Eric Wee Shan
title Small range localization using wireless ultrasound sensor network
title_short Small range localization using wireless ultrasound sensor network
title_full Small range localization using wireless ultrasound sensor network
title_fullStr Small range localization using wireless ultrasound sensor network
title_full_unstemmed Small range localization using wireless ultrasound sensor network
title_sort small range localization using wireless ultrasound sensor network
publishDate 2016
url http://hdl.handle.net/10356/67647
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