Design of Real—Time Sampling Strategies for Submerged Oil Based on Probabilistic Model Predictions

Locating and tracking submerged oil in the mid depths of the ocean is challenging during an oil spill response, due to the deep, wide-spread and long-lasting distributions of submerged oil. Due to the limited area that a ship or AUV can visit, efficient sampling methods are needed to reveal the real...

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Main Authors: Chao Ji, James D. Englehardt, Cynthia Juyne Beegle-Krause
Format: Article
Language:English
Published: MDPI AG 2020-12-01
Series:Journal of Marine Science and Engineering
Subjects:
Online Access:https://www.mdpi.com/2077-1312/8/12/984
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spelling doaj-529260157d19454ab34b7ef24100a5e52021-04-02T16:26:52ZengMDPI AGJournal of Marine Science and Engineering2077-13122020-12-01898498410.3390/jmse8120984Design of Real—Time Sampling Strategies for Submerged Oil Based on Probabilistic Model PredictionsChao Ji0James D. Englehardt1Cynthia Juyne Beegle-Krause2College of Engineering, University of Miami, Coral Gables, FL 33146, USACollege of Engineering, University of Miami, Coral Gables, FL 33146, USAEnvironment and New Resources Department, SINTEF Ocean, NO 7465 Trondheim, NorwayLocating and tracking submerged oil in the mid depths of the ocean is challenging during an oil spill response, due to the deep, wide-spread and long-lasting distributions of submerged oil. Due to the limited area that a ship or AUV can visit, efficient sampling methods are needed to reveal the real distributions of submerged oil. In this paper, several sampling plans are developed for collecting submerged oil samples using different sampling methods combined with forecasts by a submerged oil model, SOSim (Subsurface Oil Simulator). SOSim is a Bayesian probabilistic model that uses real time field oil concentration data as input to locate and forecast the movement of submerged oil. Sampling plans comprise two phases: the first phase for initial field data collection prior to SOSim assessments, and the second phase based on the SOSim assessments. Several environmental sampling techniques including the systematic random, modified station plans as well zig-zag patterns are evaluated for the first phase. The data using the first phase sampling plan are then input to SOSim to produce submerged oil distributions in time. The second phase sampling methods (systematic random combined with the kriging-based sampling method and naive zig-zag sampling method) are applied to design the sampling plans within the submerged oil area predicted by SOSim. The sampled data obtained using the second phase sampling methods are input to SOSim to update the model’s assessments. The performance of the sampling methods is evaluated by comparing SOSim predictions using the sampled data from the proposed sampling methods with simulated submerged oil distributions during the Deepwater Horizon spill by the OSCAR (oil spill contingency and response) oil spill model. The proposed sampling methods, coupled with the use of the SOSim model, are shown to provide an efficient approach to guide oil spill response efforts.https://www.mdpi.com/2077-1312/8/12/984submerged oilenvironmental samplinggeospatial samplingprobabilistic model
collection DOAJ
language English
format Article
sources DOAJ
author Chao Ji
James D. Englehardt
Cynthia Juyne Beegle-Krause
spellingShingle Chao Ji
James D. Englehardt
Cynthia Juyne Beegle-Krause
Design of Real—Time Sampling Strategies for Submerged Oil Based on Probabilistic Model Predictions
Journal of Marine Science and Engineering
submerged oil
environmental sampling
geospatial sampling
probabilistic model
author_facet Chao Ji
James D. Englehardt
Cynthia Juyne Beegle-Krause
author_sort Chao Ji
title Design of Real—Time Sampling Strategies for Submerged Oil Based on Probabilistic Model Predictions
title_short Design of Real—Time Sampling Strategies for Submerged Oil Based on Probabilistic Model Predictions
title_full Design of Real—Time Sampling Strategies for Submerged Oil Based on Probabilistic Model Predictions
title_fullStr Design of Real—Time Sampling Strategies for Submerged Oil Based on Probabilistic Model Predictions
title_full_unstemmed Design of Real—Time Sampling Strategies for Submerged Oil Based on Probabilistic Model Predictions
title_sort design of real—time sampling strategies for submerged oil based on probabilistic model predictions
publisher MDPI AG
series Journal of Marine Science and Engineering
issn 2077-1312
publishDate 2020-12-01
description Locating and tracking submerged oil in the mid depths of the ocean is challenging during an oil spill response, due to the deep, wide-spread and long-lasting distributions of submerged oil. Due to the limited area that a ship or AUV can visit, efficient sampling methods are needed to reveal the real distributions of submerged oil. In this paper, several sampling plans are developed for collecting submerged oil samples using different sampling methods combined with forecasts by a submerged oil model, SOSim (Subsurface Oil Simulator). SOSim is a Bayesian probabilistic model that uses real time field oil concentration data as input to locate and forecast the movement of submerged oil. Sampling plans comprise two phases: the first phase for initial field data collection prior to SOSim assessments, and the second phase based on the SOSim assessments. Several environmental sampling techniques including the systematic random, modified station plans as well zig-zag patterns are evaluated for the first phase. The data using the first phase sampling plan are then input to SOSim to produce submerged oil distributions in time. The second phase sampling methods (systematic random combined with the kriging-based sampling method and naive zig-zag sampling method) are applied to design the sampling plans within the submerged oil area predicted by SOSim. The sampled data obtained using the second phase sampling methods are input to SOSim to update the model’s assessments. The performance of the sampling methods is evaluated by comparing SOSim predictions using the sampled data from the proposed sampling methods with simulated submerged oil distributions during the Deepwater Horizon spill by the OSCAR (oil spill contingency and response) oil spill model. The proposed sampling methods, coupled with the use of the SOSim model, are shown to provide an efficient approach to guide oil spill response efforts.
topic submerged oil
environmental sampling
geospatial sampling
probabilistic model
url https://www.mdpi.com/2077-1312/8/12/984
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AT jamesdenglehardt designofrealtimesamplingstrategiesforsubmergedoilbasedonprobabilisticmodelpredictions
AT cynthiajuynebeeglekrause designofrealtimesamplingstrategiesforsubmergedoilbasedonprobabilisticmodelpredictions
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