Moving Source Identiication in an Uncertain Marine Flow: Mediterranean Sea Application

Identifying marine pollutant sources is essential in order to assess, contain and minimize their risk. We propose a Lagrangian Particle Tracking algorithm (LPT) to study the transport of passive tracers continuously released from fixed and moving sources and to identify their source in a backwar...

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Main Author: Hammoud, Mohamad Abed ElRahman
Other Authors: Knio, Omar
Language:en
Published: 2020
Subjects:
Online Access:Hammoud, M. A. E. R. (2020). Moving Source Identiication in an Uncertain Marine Flow: Mediterranean Sea Application. KAUST Research Repository. https://doi.org/10.25781/KAUST-U5V1U
http://hdl.handle.net/10754/662684
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spelling ndltd-kaust.edu.sa-oai-repository.kaust.edu.sa-10754-6626842021-02-21T05:08:27Z Moving Source Identiication in an Uncertain Marine Flow: Mediterranean Sea Application Hammoud, Mohamad Abed ElRahman Knio, Omar Physical Science and Engineering (PSE) Division Hoteit, Ibrahim Im, Hong G. Lagrangian tracking moving source source identification Stochastic flow field Identifying marine pollutant sources is essential in order to assess, contain and minimize their risk. We propose a Lagrangian Particle Tracking algorithm (LPT) to study the transport of passive tracers continuously released from fixed and moving sources and to identify their source in a backward mode. The LPT is designed to operate with uncertain flow fi elds, described by an ensemble of realizations of the sea currents. Starting from a region of high probability, re- verse tracking is used to generate inverse maps. A probability-weighted distance between the resulting inverse maps and the source trajectory is then minimized to identify the likely source of pollution. We conduct realistic simulations to demonstrate the efficiency of the proposed algorithm in the Mediterranean Sea using ocean data available from Copernicus Marine Environment Monitoring Services. Passive tracers are released along the path of a ship and propagated with an ensemble of flow fi elds forward in time to generate a probability map, which is then used for the inverse problem of source identi fication. Our experiments suggest that the algorithm is able to efficiently capture the release time and source, with some test cases successfully pinpointing the release time and source up to two weeks back in time. 2020-04-29T13:33:20Z 2020-04-29T13:33:20Z 2020-03 Thesis Hammoud, M. A. E. R. (2020). Moving Source Identiication in an Uncertain Marine Flow: Mediterranean Sea Application. KAUST Research Repository. https://doi.org/10.25781/KAUST-U5V1U 10.25781/KAUST-U5V1U http://hdl.handle.net/10754/662684 en 2021-04-27 At the time of archiving, the student author of this thesis opted to temporarily restrict access to it. The full text of this thesis will become available to the public after the expiration of the embargo on 2021-04-27.
collection NDLTD
language en
sources NDLTD
topic Lagrangian tracking
moving source
source identification
Stochastic flow field
spellingShingle Lagrangian tracking
moving source
source identification
Stochastic flow field
Hammoud, Mohamad Abed ElRahman
Moving Source Identiication in an Uncertain Marine Flow: Mediterranean Sea Application
description Identifying marine pollutant sources is essential in order to assess, contain and minimize their risk. We propose a Lagrangian Particle Tracking algorithm (LPT) to study the transport of passive tracers continuously released from fixed and moving sources and to identify their source in a backward mode. The LPT is designed to operate with uncertain flow fi elds, described by an ensemble of realizations of the sea currents. Starting from a region of high probability, re- verse tracking is used to generate inverse maps. A probability-weighted distance between the resulting inverse maps and the source trajectory is then minimized to identify the likely source of pollution. We conduct realistic simulations to demonstrate the efficiency of the proposed algorithm in the Mediterranean Sea using ocean data available from Copernicus Marine Environment Monitoring Services. Passive tracers are released along the path of a ship and propagated with an ensemble of flow fi elds forward in time to generate a probability map, which is then used for the inverse problem of source identi fication. Our experiments suggest that the algorithm is able to efficiently capture the release time and source, with some test cases successfully pinpointing the release time and source up to two weeks back in time.
author2 Knio, Omar
author_facet Knio, Omar
Hammoud, Mohamad Abed ElRahman
author Hammoud, Mohamad Abed ElRahman
author_sort Hammoud, Mohamad Abed ElRahman
title Moving Source Identiication in an Uncertain Marine Flow: Mediterranean Sea Application
title_short Moving Source Identiication in an Uncertain Marine Flow: Mediterranean Sea Application
title_full Moving Source Identiication in an Uncertain Marine Flow: Mediterranean Sea Application
title_fullStr Moving Source Identiication in an Uncertain Marine Flow: Mediterranean Sea Application
title_full_unstemmed Moving Source Identiication in an Uncertain Marine Flow: Mediterranean Sea Application
title_sort moving source identiication in an uncertain marine flow: mediterranean sea application
publishDate 2020
url Hammoud, M. A. E. R. (2020). Moving Source Identiication in an Uncertain Marine Flow: Mediterranean Sea Application. KAUST Research Repository. https://doi.org/10.25781/KAUST-U5V1U
http://hdl.handle.net/10754/662684
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