scholarly journals Optimization on Emergency Materials Dispatching Considering the Characteristics of Integrated Emergency Response for Large-Scale Marine Oil Spills

2019 ◽  
Vol 7 (7) ◽  
pp. 214 ◽  
Author(s):  
Song Li ◽  
Manel Grifoll ◽  
Miquel Estrada ◽  
Pengjun Zheng ◽  
Hongxiang Feng

Many governments have been strengthening the construction of hardware facilities and equipment to prevent and control marine oil spills. However, in order to deal with large-scale marine oil spills more efficiently, emergency materials dispatching algorithm still needs further optimization. The present study presents a methodology for emergency materials dispatching optimization based on four steps, combined with the construction of Chinese oil spill response capacity. First, the present emergency response procedure for large-scale marine oil spills should be analyzed. Second, in accordance with different grade accidents, the demands of all kinds of emergency materials are replaced by an equivalent volume that can unify the units. Third, constraint conditions of the emergency materials dispatching optimization model should be presented, and the objective function of the model should be postulated with the purpose of minimizing the largest sailing time of all oil spill emergency disposal vessels, and the difference in sailing time among vessels that belong to the same emergency materials collection and distribution point. Finally, the present study applies a toolbox and optimization solver to optimize the emergency materials dispatching problem. A calculation example is presented, highlighting the sensibility of the results at different grades of oil spills. The present research would be helpful for emergency managers in tackling an efficient materials dispatching scheme, while considering the integrated emergency response procedure.

1987 ◽  
Vol 1987 (1) ◽  
pp. 547-551 ◽  
Author(s):  
R. Glenn Ford ◽  
Gary W. Page ◽  
Harry R. Carter

ABSTRACT From an aesthetic and damage assessment standpoint, the loss of seabirds may be one of the more important results of a marine oil spill. Assessment of the actual numbers of seabirds killed is difficult because the bodies of dead or incapacitated seabirds are often never found or recorded. We present a computer methodology that estimates the number of birds that come in contact with an oil spill and partitions these birds among four possible fates: (1) swimming or flying ashore under their own power; (2) carried out to sea by winds and currents; (3) carried inshore, but lost before being beached; and (4) beached by winds and currents. Beached birds are further divided into those that are recovered and those that are not. The accuracy of the methodology is examined using data for two recent spills in central California, each of which resulted in the beachings of large numbers of birds. The methodology also has potential application to real-time emergency response by predicting when and where the greatest numbers of bird beachings will occur.


Author(s):  
Elise G. DeCola ◽  
Andrew Dumbrille ◽  
Steve Diggon

ABSTRACT Indigenous communities often bear disproportionate risks from marine oil spills because of their close connections to and reliance on marine ecosystems. The impacts of an oil spill on Indigenous people and communities can be far-reaching, even for incidents that might be considered “small” from the perspective of the response community. Building community capacity for oil spill preparedness and response is a critical component to creating resilience within Indigenous communities. While the fundamental elements of capacity are the same for Indigenous communities as for any other coastal community, the approach requires an understanding and respect for Traditional Knowledge, Indigenous governance structures, and existing stewardship networks. Oil spill preparedness and response traditionally follows a top-down approach within both government and industry, because marine oil spills are low frequency, high consequence, highly complex incidents where multiple organizations and jurisdictions must work together. While this reality applies regardless of whether an oil spill impacts Indigenous communities, a top-down approach can be experienced as a threat to self-governance and compromise the effectiveness of capacity-building efforts. There is a significant body of research in support of the concept that resilience to emergencies and disasters among Indigenous people must build upon existing social, cultural, and familial structures in order to be effective. This requires a fundamentally different approach that builds from the ground up with the goal of ultimately meshing with the existing preparedness and response framework. Peer-to-peer learning and knowledge transfer is an approach that has been used in support of a range of initiatives among Indigenous communities, such as human health initiatives. The same approach may provide a mechanism to empower Indigenous communities to enhance both capacity and resilience. This paper presents a case study from ongoing work to connect Indigenous communities from Canada's High Arctic and Pacific Coast in support of marine oil spill preparedness and response.


2021 ◽  
Vol 14 (1) ◽  
pp. 157
Author(s):  
Zongchen Jiang ◽  
Jie Zhang ◽  
Yi Ma ◽  
Xingpeng Mao

Marine oil spills can damage marine ecosystems, economic development, and human health. It is important to accurately identify the type of oil spills and detect the thickness of oil films on the sea surface to obtain the amount of oil spill for on-site emergency responses and scientific decision-making. Optical remote sensing is an important method for marine oil-spill detection and identification. In this study, hyperspectral images of five types of oil spills were obtained using unmanned aerial vehicles (UAV). To address the poor spectral separability between different types of light oils and weak spectral differences in heavy oils with different thicknesses, we propose the adaptive long-term moment estimation (ALTME) optimizer, which cumulatively learns the spectral characteristics and then builds a marine oil-spill detection model based on a one-dimensional convolutional neural network. The results of the detection experiment show that the ALTME optimizer can store in memory multiple batches of long-term oil-spill spectral information, accurately identify the type of oil spills, and detect different thicknesses of oil films. The overall detection accuracy is larger than 98.09%, and the Kappa coefficient is larger than 0.970. The F1-score for the recognition of light-oil types is larger than 0.971, and the F1-score for detecting films of heavy oils with different film thicknesses is larger than 0.980. The proposed optimizer also performs well on a public hyperspectral dataset. We further carried out a feasibility study on oil-spill detection using UAV thermal infrared remote sensing technology, and the results show its potential for oil-spill detection in strong sunlight.


2021 ◽  
Vol 13 (16) ◽  
pp. 3174
Author(s):  
Yonglei Fan ◽  
Xiaoping Rui ◽  
Guangyuan Zhang ◽  
Tian Yu ◽  
Xijie Xu ◽  
...  

The frequency of marine oil spills has increased in recent years. The growing exploitation of marine oil and continuous increase in marine crude oil transportation has caused tremendous damage to the marine ecological environment. Using synthetic aperture radar (SAR) images to monitor marine oil spills can help control the spread of oil spill pollution over time and reduce the economic losses and environmental pollution caused by such spills. However, it is a significant challenge to distinguish between oil-spilled areas and oil-spill-like in SAR images. Semantic segmentation models based on deep learning have been used in this field to address this issue. In addition, this study is dedicated to improving the accuracy of the U-Shape Network (UNet) model in identifying oil spill areas and oil-spill-like areas and alleviating the overfitting problem of the model; a feature merge network (FMNet) is proposed for image segmentation. The global features of SAR image, which are high-frequency component in the frequency domain and represents the boundary between categories, are obtained by a threshold segmentation method. This can weaken the impact of spot noise in SAR image. Then high-dimensional features are extracted from the threshold segmentation results using convolution operation. These features are superimposed with to the down sampling and combined with the high-dimensional features of original image. The proposed model obtains more features, which allows the model to make more accurate decisions. The overall accuracy of the proposed method increased by 1.82% and reached 61.90% compared with the UNet. The recognition accuracy of oil spill areas and oil-spill-like areas increased by approximately 3% and reached 56.33%. The method proposed in this paper not only improves the recognition accuracy of the original model, but also alleviates the overfitting problem of the original model and provides a more effective monitoring method for marine oil spill monitoring. More importantly, the proposed method provides a design principle that opens up new development ideas for the optimization of other deep learning network models.


2010 ◽  
Vol 67 (6) ◽  
pp. 1105-1118 ◽  
Author(s):  
C. Martínez-Gómez ◽  
A. D. Vethaak ◽  
K. Hylland ◽  
T. Burgeot ◽  
A. Köhler ◽  
...  

Abstract Martínez-Gómez, C., Vethaak, A. D., Hylland, K., Burgeot, T., Köhler, A., Lyons, B. P., Thain, J., Gubbins, M. J., and Davies, I. M. 2010. A guide to toxicity assessment and monitoring effects at lower levels of biological organization following marine oil spills in European waters. – ICES Journal of Marine Science, 67: 1105–1118. The usefulness of applying biological-effects techniques (bioassays and biomarkers) as tools to assist in evaluating damage to the health of marine ecosystems produced by oil spills has been demonstrated clearly during recent decades. Guidelines are provided for the use of biological-effects techniques in oil spill pollution monitoring for the NE Atlantic coasts and the NW Mediterranean Sea. The emphasis is on fish and invertebrates and on methods at lower levels of organization (in vitro, suborganismal, and individual). Guidance is provided to researchers and environmental managers on: hazard identification of the fuel oil released; selection of appropriate bioassays and biomarkers for environmental risk assessment; selection of sentinel species; the design of spatial and temporal surveys; and the control of potential confounding factors in the sampling and interpretation of biological-effects data. It is proposed that after an oil spill incident, a monitoring programme using integrated chemical and biological techniques be initiated as soon as possible for ecological risk assessment, pollution control, and monitoring the efficacy of remediation. This can be done by developing new biomonitoring programmes or by adding appropriate biological-effects methods to the existing monitoring programmes.


2001 ◽  
Vol 2001 (1) ◽  
pp. 693-697
Author(s):  
Tina M. Toriello ◽  
Jan Thorman ◽  
Pamela Bergmann ◽  
Richard Waldbauer

ABSTRACT This paper focuses on industry and government roles for addressing historic properties during oil spill response. In 1997, the National Response Team (NRT) developed a Programmatic Agreement on Protection of Historic Properties during Emergency Response under the National Oil and Hazardous Substances Pollution Contingency Plan (PA) (National Response Team, 1997). At the 1999 International Oil Spill Conference (IOSC), U.S. Department of the Interior (DOI) representatives discussed the development and implementation of the PA, which is intended to ensure that historic properties are appropriately taken into account during the planning for and conducting of emergency response to oil spills and hazardous substance releases. Following the 1999 IOSC, DOI and Chevron representatives began a dialog regarding industry and government roles under the PA. Chevron invited the DOI representatives to participate in an October 1999 large-scale, industry-led spill exercise; a precedent-setting drill that included historic properties protection as a key objective. This 2001 paper focuses on how industry and government have worked together to protect historic properties, government roles in PA implementation, and lessons learned. As an example of what industry can do to support the protection of historic properties during planning and response activities, this paper describes Chevron's Historic Properties Program, a program managed under its emergency spill response environmental functional team (EFT). A discussion of lessons learned focuses on the need for clear definition of industry and government roles, and the benefits of building a foundation of cooperation between industry and government to protect historic properties. Of particular importance is the inclusion of historic properties in all aspects of oil spill preparedness and response, including planning, drills, training, and response organization structure and staffing. Experience from incident response in Alaska has shown that the PA assists Federal On-Scene Coordinators (FOSCs) and responsible parties, while also protecting historic properties, when the FOSC is prepared to implement the PA promptly and effectively.


2001 ◽  
Vol 2001 (2) ◽  
pp. 1281-1289 ◽  
Author(s):  
Dagmar Schmidt Etkin

ABSTRACT This study reviews three alternative oil spill response cost estimation methodologies as applied to hypothetical spill scenarios in the Gulf of Mexico and San Francisco Bay, California: (1) a model derived from historical data on various spill factors that drive overall cleanup costs; (2) a method using U.S. Area Contingency Plan (ACP) spill scenario plans to estimate costs for mechanical containment and recovery costs to be extrapolated to other hypothetical spill scenarios; and (3) a method that estimates the labor and equipment required for mechanical containment and recovery operations and the resulting costs. A method for estimating dispersant costs is also discussed. The easy-to-use model derived from historical data is shown to be a good cost estimation tool.


Author(s):  
Reshma Sunkur ◽  
Chandradeo Bokhoree

Marine oil spills are regarded as one of the most threatening environmental disasters that can have serious environmental and socio-economic impacts. For islands like Mauritius, such oil spills can have severe repercussions as island communities depend almost entirely on their coastal and marine resources. The MV Wakashio grounded on the coral reef on the south east coast of Mauritius on July 25th 2020, spilling 1000 tons of oil into its clear waters on August 06th 2020. It was the first time the island was faced with such a disaster and in this respect, this study aimed to use a GIS based approach to assess the environmental impacts of the Wakashio oil spill and demonstrate its usefulness in monitoring marine oil spills. SAR imagery was acquired from the Copernicus Platform and ArcGIS was used to process the images. An oil spill map was created using a SAR image dated August 10th 2020. GPS coordinates of the affected sites were recorded and overlaid on a terrain/road network map of Mauritius generated from layers of vector data obtained through the DIVA-GIS portal. The oil spill was mapped on the satellite image using ArcGIS and a vector map of the affected regions was created. From these maps, the short and long term impacts on the environments (marine waters, mangroves, coasts, biodiversity) were examined. This study concludes that GIS is an effective, inexpensive tool that coastal nations around the world, including Mauritius, can use to support management and decision making regarding oil spill preparedness and monitoring as well as disaster management


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