Data Collection and Distribution in Sensory Networks

<p>The deployment of large-scale, low-cost, low-power, multifunctional sensory networks brings forward numerous and diverse research challenges. Critical to the design of systems that must operate under extreme resource constraints, the understanding of the fundamental performance limits of se...

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Main Author: Florens, Cédric Jean Paul
Format: Others
Language:en
Published: 2004
Online Access:https://thesis.library.caltech.edu/2325/1/mythesis.pdf
Florens, Cédric Jean Paul (2004) Data Collection and Distribution in Sensory Networks. Dissertation (Ph.D.), California Institute of Technology. doi:10.7907/ZK3J-VB92. https://resolver.caltech.edu/CaltechETD:etd-05312004-205111 <https://resolver.caltech.edu/CaltechETD:etd-05312004-205111>
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spelling ndltd-CALTECH-oai-thesis.library.caltech.edu-23252021-02-04T05:01:26Z https://thesis.library.caltech.edu/2325/ Data Collection and Distribution in Sensory Networks Florens, Cédric Jean Paul <p>The deployment of large-scale, low-cost, low-power, multifunctional sensory networks brings forward numerous and diverse research challenges. Critical to the design of systems that must operate under extreme resource constraints, the understanding of the fundamental performance limits of sensory networks is a research topic of particular importance. This thesis examines, in this respect, an essential function of sensory networks, viz., data collection, that is, the aggregation at the user location of information gathered by sensor nodes.</p> <p>In the first part of this dissertation we study, via simple discrete mathematical models, the time performance of the data collection and data distribution tasks in sensory networks. Specifically, we derive the minimum delay in collecting sensor data for networks of various topologies such as line, multi-line, tree and give corresponding optimal scheduling strategies assuming that the amount of data observed at each node is finite and known at the beginning of the data collection phase. Furthermore, we bound the data collection time on general graph networks.</p> <p>In the second part of this dissertation we take the view that the amount of data collected at a node is random and study the statistics of the data collection time. Specifically, we analyze the average minimum delay in collecting randomly located/distributed sensor data for networks of various topologies when the number of nodes becomes large. Furthermore, we analyze the impact of various parameters such as lack of synchronization, size of packet, transmission range, and channel packet erasure probability on the optimal time performance. Our analysis applies to directional antenna systems as well as omnidirectional ones. We conclude our study with a simple comparative analysis showing the respective advantages of the two systems.</p> 2004 Thesis NonPeerReviewed application/pdf en other https://thesis.library.caltech.edu/2325/1/mythesis.pdf Florens, Cédric Jean Paul (2004) Data Collection and Distribution in Sensory Networks. Dissertation (Ph.D.), California Institute of Technology. doi:10.7907/ZK3J-VB92. https://resolver.caltech.edu/CaltechETD:etd-05312004-205111 <https://resolver.caltech.edu/CaltechETD:etd-05312004-205111> https://resolver.caltech.edu/CaltechETD:etd-05312004-205111 CaltechETD:etd-05312004-205111 10.7907/ZK3J-VB92
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description <p>The deployment of large-scale, low-cost, low-power, multifunctional sensory networks brings forward numerous and diverse research challenges. Critical to the design of systems that must operate under extreme resource constraints, the understanding of the fundamental performance limits of sensory networks is a research topic of particular importance. This thesis examines, in this respect, an essential function of sensory networks, viz., data collection, that is, the aggregation at the user location of information gathered by sensor nodes.</p> <p>In the first part of this dissertation we study, via simple discrete mathematical models, the time performance of the data collection and data distribution tasks in sensory networks. Specifically, we derive the minimum delay in collecting sensor data for networks of various topologies such as line, multi-line, tree and give corresponding optimal scheduling strategies assuming that the amount of data observed at each node is finite and known at the beginning of the data collection phase. Furthermore, we bound the data collection time on general graph networks.</p> <p>In the second part of this dissertation we take the view that the amount of data collected at a node is random and study the statistics of the data collection time. Specifically, we analyze the average minimum delay in collecting randomly located/distributed sensor data for networks of various topologies when the number of nodes becomes large. Furthermore, we analyze the impact of various parameters such as lack of synchronization, size of packet, transmission range, and channel packet erasure probability on the optimal time performance. Our analysis applies to directional antenna systems as well as omnidirectional ones. We conclude our study with a simple comparative analysis showing the respective advantages of the two systems.</p>
author Florens, Cédric Jean Paul
spellingShingle Florens, Cédric Jean Paul
Data Collection and Distribution in Sensory Networks
author_facet Florens, Cédric Jean Paul
author_sort Florens, Cédric Jean Paul
title Data Collection and Distribution in Sensory Networks
title_short Data Collection and Distribution in Sensory Networks
title_full Data Collection and Distribution in Sensory Networks
title_fullStr Data Collection and Distribution in Sensory Networks
title_full_unstemmed Data Collection and Distribution in Sensory Networks
title_sort data collection and distribution in sensory networks
publishDate 2004
url https://thesis.library.caltech.edu/2325/1/mythesis.pdf
Florens, Cédric Jean Paul (2004) Data Collection and Distribution in Sensory Networks. Dissertation (Ph.D.), California Institute of Technology. doi:10.7907/ZK3J-VB92. https://resolver.caltech.edu/CaltechETD:etd-05312004-205111 <https://resolver.caltech.edu/CaltechETD:etd-05312004-205111>
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