Adaptive Sampling Using an Unsupervised Learning of GMMs: A Real-Time Multi-Hypothesis Algorithm Applied to a Fleet of AUVs with CTD Measurements
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Adaptive Sampling Using an Unsupervised Learning of GMMs (2015)
DE PB NW RP
ISBN: 9783639859768 bzw. 3639859766, in Deutsch, SPS Nov 2015, Taschenbuch, neu, Nachdruck.
Von Händler/Antiquariat, AHA-BUCH GmbH [51283250], Einbeck, Germany.
This item is printed on demand - Print on Demand Neuware - This book addresses the problem of real-time adaptive sampling using a coordinated fleet of Autonomous Underwater Vehicles (AUVs). The system setup consists of one leader AUV and one or more follower AUV(s), all equipped with conductivity, temperature and depth (CTD) sensor devices and capable of running an on-line unsupervised learning of Gaussian Mixture Models (GMMs) algorithm. The proposed multi-hypothesis adaptive algorithm continuously updates the number of components and estimates the GMM parameters in real-time, without any initial batch of data. The path to be traced by the leader is predefined. The followers path will depend on the CTD data. More precisely, during each resurfacing of the AUVs (which is done in a coordinated fashion), every follower AUV receives the GMM hypothesis of the leader and computes a distance error between its own GMM and the received one. This error, that provides a notion of how different is the CTD data of each follower from the leader, is used to reconfigure the formation by scaling the distance between the AUVs in the formation (making a zoom-in and zoom-out), in order to improve the efficiency of the CTD data acquisition in a given region. 92 pp. Englisch.
This item is printed on demand - Print on Demand Neuware - This book addresses the problem of real-time adaptive sampling using a coordinated fleet of Autonomous Underwater Vehicles (AUVs). The system setup consists of one leader AUV and one or more follower AUV(s), all equipped with conductivity, temperature and depth (CTD) sensor devices and capable of running an on-line unsupervised learning of Gaussian Mixture Models (GMMs) algorithm. The proposed multi-hypothesis adaptive algorithm continuously updates the number of components and estimates the GMM parameters in real-time, without any initial batch of data. The path to be traced by the leader is predefined. The followers path will depend on the CTD data. More precisely, during each resurfacing of the AUVs (which is done in a coordinated fashion), every follower AUV receives the GMM hypothesis of the leader and computes a distance error between its own GMM and the received one. This error, that provides a notion of how different is the CTD data of each follower from the leader, is used to reconfigure the formation by scaling the distance between the AUVs in the formation (making a zoom-in and zoom-out), in order to improve the efficiency of the CTD data acquisition in a given region. 92 pp. Englisch.
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Adaptive Sampling Using an Unsupervised Learning of Gmms (Paperback) (2015)
DE PB NW RP
ISBN: 9783639859768 bzw. 3639859766, in Deutsch, Omniscriptum Gmbh Co. Kg. Taschenbuch, neu, Nachdruck.
Von Händler/Antiquariat, The Book Depository EURO [60485773], London, United Kingdom.
Language: English Brand New Book ***** Print on Demand *****.This book addresses the problem of real-time adaptive sampling using a coordinated fleet of Autonomous Underwater Vehicles (AUVs). The system setup consists of one leader AUV and one or more follower AUV(s), all equipped with conductivity, temperature and depth (CTD) sensor devices and capable of running an on-line unsupervised learning of Gaussian Mixture Models (GMMs) algorithm. The proposed multi-hypothesis adaptive algorithm continuously updates the number of components and estimates the GMM parameters in real-time, without any initial batch of data. The path to be traced by the leader is predefined. The followers path will depend on the CTD data. More precisely, during each resurfacing of the AUVs (which is done in a coordinated fashion), every follower AUV receives the GMM hypothesis of the leader and computes a distance error between its own GMM and the received one. This error, that provides a notion of how different is the CTD data of each follower from the leader, is used to reconfigure the formation by scaling the distance between the AUVs in the formation (making a zoom-in and zoom-out), in order to improve the efficiency of the CTD data acquisition in a given region.
Language: English Brand New Book ***** Print on Demand *****.This book addresses the problem of real-time adaptive sampling using a coordinated fleet of Autonomous Underwater Vehicles (AUVs). The system setup consists of one leader AUV and one or more follower AUV(s), all equipped with conductivity, temperature and depth (CTD) sensor devices and capable of running an on-line unsupervised learning of Gaussian Mixture Models (GMMs) algorithm. The proposed multi-hypothesis adaptive algorithm continuously updates the number of components and estimates the GMM parameters in real-time, without any initial batch of data. The path to be traced by the leader is predefined. The followers path will depend on the CTD data. More precisely, during each resurfacing of the AUVs (which is done in a coordinated fashion), every follower AUV receives the GMM hypothesis of the leader and computes a distance error between its own GMM and the received one. This error, that provides a notion of how different is the CTD data of each follower from the leader, is used to reconfigure the formation by scaling the distance between the AUVs in the formation (making a zoom-in and zoom-out), in order to improve the efficiency of the CTD data acquisition in a given region.
3
Adaptive Sampling Using an Unsupervised Learning of GMMs
DE NW
ISBN: 9783639859768 bzw. 3639859766, in Deutsch, VDM Verlag Dr. Müller, Saarbrücken, Deutschland, neu.
Lieferung aus: Deutschland, zzgl. Versandkosten.
This book addresses the problem of real-time adaptive sampling using a coordinated fleet of Autonomous Underwater Vehicles (AUVs). The system setup consists of one leader AUV and one or more follower AUV(s), all equipped with conductivity, temperature and depth (CTD) sensor devices and capable of running an on-line unsupervised learning of Gaussian Mixture Models (GMMs) algorithm. The proposed multi-hypothesis adaptive algorithm continuously updates the number of components and estimates the GMM parameters in real-time, without any initial batch of data. The path to be traced by the leader is predefined. The followers path will depend on the CTD data. More precisely, during each resurfacing of the AUVs (which is done in a coordinated fashion), every follower AUV receives the GMM hypothesis of the leader and computes a distance error between its own GMM and the received one. This error, that provides a notion of how different is the CTD data of each follower from the leader, is used to reconfigure the formation by scaling the distance between the AUVs in the formation (making a zoom-in and zoom-out), in order to improve the efficiency of the CTD data acquisition in a given region.
This book addresses the problem of real-time adaptive sampling using a coordinated fleet of Autonomous Underwater Vehicles (AUVs). The system setup consists of one leader AUV and one or more follower AUV(s), all equipped with conductivity, temperature and depth (CTD) sensor devices and capable of running an on-line unsupervised learning of Gaussian Mixture Models (GMMs) algorithm. The proposed multi-hypothesis adaptive algorithm continuously updates the number of components and estimates the GMM parameters in real-time, without any initial batch of data. The path to be traced by the leader is predefined. The followers path will depend on the CTD data. More precisely, during each resurfacing of the AUVs (which is done in a coordinated fashion), every follower AUV receives the GMM hypothesis of the leader and computes a distance error between its own GMM and the received one. This error, that provides a notion of how different is the CTD data of each follower from the leader, is used to reconfigure the formation by scaling the distance between the AUVs in the formation (making a zoom-in and zoom-out), in order to improve the efficiency of the CTD data acquisition in a given region.
4
Adaptive Sampling Using an Unsupervised Learning of GMMs: A Real-Time Multi-Hypothesis Algorithm Applied to a Fleet of AUVs with CTD Measurements (2015)
EN PB NW
ISBN: 9783639859768 bzw. 3639859766, in Englisch, 92 Seiten, Scholars' Press, Taschenbuch, neu.
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Von Händler/Antiquariat, Book Depository US.
This book addresses the problem of real-time adaptive sampling using a coordinated fleet of Autonomous Underwater Vehicles (AUVs). The system setup consists of one leader AUV and one or more follower AUV(s), all equipped with conductivity, temperature and depth (CTD) sensor devices and capable of running an on-line unsupervised learning of Gaussian Mixture Models (GMMs) algorithm. The proposed multi-hypothesis adaptive algorithm continuously updates the number of components and estimates the GMM parameters in real-time, without any initial batch of data. The path to be traced by the leader is predefined. The followers path will depend on the CTD data. More precisely, during each resurfacing of the AUVs (which is done in a coordinated fashion), every follower AUV receives the GMM hypothesis of the leader and computes a distance error between its own GMM and the received one. This error, that provides a notion of how different is the CTD data of each follower from the leader, is used to reconfigure the formation by scaling the distance between the AUVs in the formation (making a zoom-in and zoom-out), in order to improve the efficiency of the CTD data acquisition in a given region. Paperback, Label: Scholars' Press, Scholars' Press, Produktgruppe: Book, Publiziert: 2015-10-14, Freigegeben: 2015-10-14, Studio: Scholars' Press.
Von Händler/Antiquariat, Book Depository US.
This book addresses the problem of real-time adaptive sampling using a coordinated fleet of Autonomous Underwater Vehicles (AUVs). The system setup consists of one leader AUV and one or more follower AUV(s), all equipped with conductivity, temperature and depth (CTD) sensor devices and capable of running an on-line unsupervised learning of Gaussian Mixture Models (GMMs) algorithm. The proposed multi-hypothesis adaptive algorithm continuously updates the number of components and estimates the GMM parameters in real-time, without any initial batch of data. The path to be traced by the leader is predefined. The followers path will depend on the CTD data. More precisely, during each resurfacing of the AUVs (which is done in a coordinated fashion), every follower AUV receives the GMM hypothesis of the leader and computes a distance error between its own GMM and the received one. This error, that provides a notion of how different is the CTD data of each follower from the leader, is used to reconfigure the formation by scaling the distance between the AUVs in the formation (making a zoom-in and zoom-out), in order to improve the efficiency of the CTD data acquisition in a given region. Paperback, Label: Scholars' Press, Scholars' Press, Produktgruppe: Book, Publiziert: 2015-10-14, Freigegeben: 2015-10-14, Studio: Scholars' Press.
5
Adaptive Sampling Using an Unsupervised Learn . 9783639859768 | dpd Versand
DE NW
ISBN: 9783639859768 bzw. 3639859766, in Deutsch, VDM Verlag Dr. Müller, Saarbrücken, Deutschland, neu.
Lieferung aus: Deutschland, Lieferart: Flat, Lieferung: Weltweit, Artikelstandort: 37574 Deutschland.
Von Händler/Antiquariat, aha-buch - AHA-BUCH.
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Von Händler/Antiquariat, aha-buch - AHA-BUCH.
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