Selective Data Gathering in Community Sensor Networks

<p>Smartphones and other powerful sensor-equipped consumer devices make it possible to sense the physical world at an unprecedented scale. Nearly 2 million Android and iOS devices are activated every day, each carrying numerous sensors and a high-speed internet connection. Whereas traditional...

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Main Author: Faulkner, Matthew Nicholas
Format: Others
Published: 2014
Online Access:https://thesis.library.caltech.edu/8185/1/faulkner-ms-thesis.pdf
Faulkner, Matthew Nicholas (2014) Selective Data Gathering in Community Sensor Networks. Master's thesis, California Institute of Technology. doi:10.7907/NBQ4-6Q72. https://resolver.caltech.edu/CaltechTHESIS:04102014-131741107 <https://resolver.caltech.edu/CaltechTHESIS:04102014-131741107>
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spelling ndltd-CALTECH-oai-thesis.library.caltech.edu-81852019-10-05T03:02:57Z Selective Data Gathering in Community Sensor Networks Faulkner, Matthew Nicholas <p>Smartphones and other powerful sensor-equipped consumer devices make it possible to sense the physical world at an unprecedented scale. Nearly 2 million Android and iOS devices are activated every day, each carrying numerous sensors and a high-speed internet connection. Whereas traditional sensor networks have typically deployed a fixed number of devices to sense a particular phenomena, community networks can grow as additional participants choose to install apps and join the network. In principle, this allows networks of thousands or millions of sensors to be created quickly and at low cost. However, making reliable inferences about the world using so many community sensors involves several challenges, including scalability, data quality, mobility, and user privacy.</p> <p>This thesis focuses on how learning at both the sensor- and network-level can provide scalable techniques for data collection and event detection. First, this thesis considers the abstract problem of distributed algorithms for data collection, and proposes a distributed, online approach to selecting which set of sensors should be queried. In addition to providing theoretical guarantees for submodular objective functions, the approach is also compatible with local rules or heuristics for detecting and transmitting potentially valuable observations. Next, the thesis presents a decentralized algorithm for spatial event detection, and describes its use detecting strong earthquakes within the Caltech Community Seismic Network. Despite the fact that strong earthquakes are rare and complex events, and that community sensors can be very noisy, our decentralized anomaly detection approach obtains theoretical guarantees for event detection performance while simultaneously limiting the rate of false alarms.</p> 2014 Thesis NonPeerReviewed application/pdf https://thesis.library.caltech.edu/8185/1/faulkner-ms-thesis.pdf https://resolver.caltech.edu/CaltechTHESIS:04102014-131741107 Faulkner, Matthew Nicholas (2014) Selective Data Gathering in Community Sensor Networks. Master's thesis, California Institute of Technology. doi:10.7907/NBQ4-6Q72. https://resolver.caltech.edu/CaltechTHESIS:04102014-131741107 <https://resolver.caltech.edu/CaltechTHESIS:04102014-131741107> https://thesis.library.caltech.edu/8185/
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description <p>Smartphones and other powerful sensor-equipped consumer devices make it possible to sense the physical world at an unprecedented scale. Nearly 2 million Android and iOS devices are activated every day, each carrying numerous sensors and a high-speed internet connection. Whereas traditional sensor networks have typically deployed a fixed number of devices to sense a particular phenomena, community networks can grow as additional participants choose to install apps and join the network. In principle, this allows networks of thousands or millions of sensors to be created quickly and at low cost. However, making reliable inferences about the world using so many community sensors involves several challenges, including scalability, data quality, mobility, and user privacy.</p> <p>This thesis focuses on how learning at both the sensor- and network-level can provide scalable techniques for data collection and event detection. First, this thesis considers the abstract problem of distributed algorithms for data collection, and proposes a distributed, online approach to selecting which set of sensors should be queried. In addition to providing theoretical guarantees for submodular objective functions, the approach is also compatible with local rules or heuristics for detecting and transmitting potentially valuable observations. Next, the thesis presents a decentralized algorithm for spatial event detection, and describes its use detecting strong earthquakes within the Caltech Community Seismic Network. Despite the fact that strong earthquakes are rare and complex events, and that community sensors can be very noisy, our decentralized anomaly detection approach obtains theoretical guarantees for event detection performance while simultaneously limiting the rate of false alarms.</p>
author Faulkner, Matthew Nicholas
spellingShingle Faulkner, Matthew Nicholas
Selective Data Gathering in Community Sensor Networks
author_facet Faulkner, Matthew Nicholas
author_sort Faulkner, Matthew Nicholas
title Selective Data Gathering in Community Sensor Networks
title_short Selective Data Gathering in Community Sensor Networks
title_full Selective Data Gathering in Community Sensor Networks
title_fullStr Selective Data Gathering in Community Sensor Networks
title_full_unstemmed Selective Data Gathering in Community Sensor Networks
title_sort selective data gathering in community sensor networks
publishDate 2014
url https://thesis.library.caltech.edu/8185/1/faulkner-ms-thesis.pdf
Faulkner, Matthew Nicholas (2014) Selective Data Gathering in Community Sensor Networks. Master's thesis, California Institute of Technology. doi:10.7907/NBQ4-6Q72. https://resolver.caltech.edu/CaltechTHESIS:04102014-131741107 <https://resolver.caltech.edu/CaltechTHESIS:04102014-131741107>
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