首页> 外文期刊>Journal of marine systems: journal of the European Association of Marine Sciences and Techniques >A simple rapid approach using coupled multivariate statistical methods, GIS and trajectory models to delineate areas of common oil spill risk
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A simple rapid approach using coupled multivariate statistical methods, GIS and trajectory models to delineate areas of common oil spill risk

机译:使用耦合多元统计方法,GIS和轨迹模型来描绘常见漏油风险区域的简单快速方法

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Currently, the Minerals Management Service uses the Oil Spill Risk Analysis model (OSRAM) to predict the movement of potential oil spills greater than 1000 bbl originating from offshore oil and gas facilities. OSRAM generates oil spill trajectories using meteorological and hydrological data input from either actual physical measurements or estimates generated from other hydrological models. OSRAM and many other models produce output matrices of average, maximum and minimum contact probabilities to specific landfall or target segments (columns) from oil spills at specific points (rows). Analysts and managers are often interested in identifying geographic areas or groups of facilities that pose similar risks to specific targets or groups of targets if a spill occurred. Unfortunately, due to the potentially large matrix generated by many spill models, this question is difficult to answer without the use of data reduction and visualization methods. In our study we utilized a multivariate statistical method called cluster analysis to group areas of similar risk based on potential distribution of landfall target trajectory probabilities. We also utilized ArcView(TM) GIS to display spill launch point groupings. The combination of GIS and multivariate statistical techniques in the post-processing of trajectory model output is a powerful tool for identifying and delineating areas of similar risk from multiple spill sources. We strongly encourage modelers, statistical and GIS software programmers to closely collaborate to produce a more seamless integration of these technologies and approaches to analyzing data. They are complimentary methods that strengthen the overall assessment of spill risks. (C) 2003 Elsevier B.V. All rights reserved.
机译:当前,矿产管理服务公司使用溢油风险分析模型(OSRAM)来预测源自海上石油和天然气设施的超过1000桶的潜在溢油运动。欧司朗使用从实际物理测量值或从其他水文模型生成的估计值输入的气象和水文数据输入漏油轨迹。欧司朗(OSRAM)和许多其他模型会根据特定点(行)的漏油事件,针对特定的着陆点或目标段(列)产生平均,最大和最小接触概率的输出矩阵。分析人员和管理人员通常对确定发生泄漏时与特定目标或目标组构成类似风险的地理区域或设施组感兴趣。不幸的是,由于许多泄漏模型可能会产生较大的矩阵,因此如果不使用数据缩减和可视化方法,就很难回答这个问题。在我们的研究中,我们使用了一种称为聚类分析的多元统计方法,根据着陆目标轨迹概率的潜在分布来对相似风险区域进行分组。我们还利用ArcView™GIS来显示溢出发射点分组。在轨迹模型输出的后处理中,将GIS和多元统计技术相结合是一种强大的工具,可以从多个泄漏源中识别和划定具有相似风险的区域。我们强烈鼓励建模人员,统计人员和GIS软件程序员密切合作,以实现这些技术和数据分析方法的更无缝集成。它们是补充方法,可加强对泄漏风险的整体评估。 (C)2003 Elsevier B.V.保留所有权利。

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