Novel Online Data Cleaning Protocols for Data Streams in Trajectory, Wireless Sensor Networks

The promise of Wireless Sensor Networks (WSNs) is the autonomous collaboration of a collection of sensors to accomplish some specific goals which a single sensor cannot offer. Basically, sensor networking serves a range of applications by providing the raw data as fundamentals for further analyses a...

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Main Author: Pumpichet, Sitthapon
Format: Others
Published: FIU Digital Commons 2013
Subjects:
Online Access:http://digitalcommons.fiu.edu/etd/1004
http://digitalcommons.fiu.edu/cgi/viewcontent.cgi?article=2129&context=etd
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spelling ndltd-fiu.edu-oai-digitalcommons.fiu.edu-etd-21292018-07-19T03:33:21Z Novel Online Data Cleaning Protocols for Data Streams in Trajectory, Wireless Sensor Networks Pumpichet, Sitthapon The promise of Wireless Sensor Networks (WSNs) is the autonomous collaboration of a collection of sensors to accomplish some specific goals which a single sensor cannot offer. Basically, sensor networking serves a range of applications by providing the raw data as fundamentals for further analyses and actions. The imprecision of the collected data could tremendously mislead the decision-making process of sensor-based applications, resulting in an ineffectiveness or failure of the application objectives. Due to inherent WSN characteristics normally spoiling the raw sensor readings, many research efforts attempt to improve the accuracy of the corrupted or “dirty” sensor data. The dirty data need to be cleaned or corrected. However, the developed data cleaning solutions restrict themselves to the scope of static WSNs where deployed sensors would rarely move during the operation. Nowadays, many emerging applications relying on WSNs need the sensor mobility to enhance the application efficiency and usage flexibility. The location of deployed sensors needs to be dynamic. Also, each sensor would independently function and contribute its resources. Sensors equipped with vehicles for monitoring the traffic condition could be depicted as one of the prospective examples. The sensor mobility causes a transient in network topology and correlation among sensor streams. Based on static relationships among sensors, the existing methods for cleaning sensor data in static WSNs are invalid in such mobile scenarios. Therefore, a solution of data cleaning that considers the sensor movements is actively needed. This dissertation aims to improve the quality of sensor data by considering the consequences of various trajectory relationships of autonomous mobile sensors in the system. First of all, we address the dynamic network topology due to sensor mobility. The concept of virtual sensor is presented and used for spatio-temporal selection of neighboring sensors to help in cleaning sensor data streams. This method is one of the first methods to clean data in mobile sensor environments. We also study the mobility pattern of moving sensors relative to boundaries of sub-areas of interest. We developed a belief-based analysis to determine the reliable sets of neighboring sensors to improve the cleaning performance, especially when node density is relatively low. Finally, we design a novel sketch-based technique to clean data from internal sensors where spatio-temporal relationships among sensors cannot lead to the data correlations among sensor streams. 2013-11-12T08:00:00Z text application/pdf http://digitalcommons.fiu.edu/etd/1004 http://digitalcommons.fiu.edu/cgi/viewcontent.cgi?article=2129&context=etd FIU Electronic Theses and Dissertations FIU Digital Commons Online data cleaning: Data stream recovery: Mobile wireless sensor networks: Virtual sensor: Belief-based data cleaning: Sketch technique: Trajectory sensor data cleaning Digital Communications and Networking Systems and Communications
collection NDLTD
format Others
sources NDLTD
topic Online data cleaning: Data stream recovery: Mobile wireless sensor networks: Virtual sensor: Belief-based data cleaning: Sketch technique: Trajectory sensor data cleaning
Digital Communications and Networking
Systems and Communications
spellingShingle Online data cleaning: Data stream recovery: Mobile wireless sensor networks: Virtual sensor: Belief-based data cleaning: Sketch technique: Trajectory sensor data cleaning
Digital Communications and Networking
Systems and Communications
Pumpichet, Sitthapon
Novel Online Data Cleaning Protocols for Data Streams in Trajectory, Wireless Sensor Networks
description The promise of Wireless Sensor Networks (WSNs) is the autonomous collaboration of a collection of sensors to accomplish some specific goals which a single sensor cannot offer. Basically, sensor networking serves a range of applications by providing the raw data as fundamentals for further analyses and actions. The imprecision of the collected data could tremendously mislead the decision-making process of sensor-based applications, resulting in an ineffectiveness or failure of the application objectives. Due to inherent WSN characteristics normally spoiling the raw sensor readings, many research efforts attempt to improve the accuracy of the corrupted or “dirty” sensor data. The dirty data need to be cleaned or corrected. However, the developed data cleaning solutions restrict themselves to the scope of static WSNs where deployed sensors would rarely move during the operation. Nowadays, many emerging applications relying on WSNs need the sensor mobility to enhance the application efficiency and usage flexibility. The location of deployed sensors needs to be dynamic. Also, each sensor would independently function and contribute its resources. Sensors equipped with vehicles for monitoring the traffic condition could be depicted as one of the prospective examples. The sensor mobility causes a transient in network topology and correlation among sensor streams. Based on static relationships among sensors, the existing methods for cleaning sensor data in static WSNs are invalid in such mobile scenarios. Therefore, a solution of data cleaning that considers the sensor movements is actively needed. This dissertation aims to improve the quality of sensor data by considering the consequences of various trajectory relationships of autonomous mobile sensors in the system. First of all, we address the dynamic network topology due to sensor mobility. The concept of virtual sensor is presented and used for spatio-temporal selection of neighboring sensors to help in cleaning sensor data streams. This method is one of the first methods to clean data in mobile sensor environments. We also study the mobility pattern of moving sensors relative to boundaries of sub-areas of interest. We developed a belief-based analysis to determine the reliable sets of neighboring sensors to improve the cleaning performance, especially when node density is relatively low. Finally, we design a novel sketch-based technique to clean data from internal sensors where spatio-temporal relationships among sensors cannot lead to the data correlations among sensor streams.
author Pumpichet, Sitthapon
author_facet Pumpichet, Sitthapon
author_sort Pumpichet, Sitthapon
title Novel Online Data Cleaning Protocols for Data Streams in Trajectory, Wireless Sensor Networks
title_short Novel Online Data Cleaning Protocols for Data Streams in Trajectory, Wireless Sensor Networks
title_full Novel Online Data Cleaning Protocols for Data Streams in Trajectory, Wireless Sensor Networks
title_fullStr Novel Online Data Cleaning Protocols for Data Streams in Trajectory, Wireless Sensor Networks
title_full_unstemmed Novel Online Data Cleaning Protocols for Data Streams in Trajectory, Wireless Sensor Networks
title_sort novel online data cleaning protocols for data streams in trajectory, wireless sensor networks
publisher FIU Digital Commons
publishDate 2013
url http://digitalcommons.fiu.edu/etd/1004
http://digitalcommons.fiu.edu/cgi/viewcontent.cgi?article=2129&context=etd
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