A Dynamic Remote Sensing Data-Driven Approach for Oil Spill Simulation in the Sea

Remote. Sens. Pub Date : 2015-05-29 DOI:10.3390/rs70607105
Jining Yan, Lizhe Wang, Lajiao Chen, Lingjun Zhao, Bormin Huang
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引用次数: 9

Abstract

In view of the fact that oil spill remote sensing could only generate the oil slick information at a specific time and that traditional oil spill simulation models were not designed to deal with dynamic conditions, a dynamic data-driven application system (DDDAS) was introduced. The DDDAS entails both the ability to incorporate additional data into an executing application and, in reverse, the ability of applications to dynamically steer the measurement process. Based on the DDDAS, combing a remote sensor system that detects oil spills with a numerical simulation, an integrated data processing, analysis, forecasting and emergency response system was established. Once an oil spill accident occurs, the DDDAS-based oil spill model receives information about the oil slick extracted from the dynamic remote sensor data in the simulation. Through comparison, information fusion and feedback updates, continuous and more precise oil spill simulation results can be obtained. Then, the simulation results can provide help for disaster control and clean-up. The Penglai, Xingang and Suizhong oil spill results showed our simulation model could increase the prediction accuracy and reduce the error caused by empirical parameters in existing simulation systems. Therefore, the DDDAS-based detection and simulation system can effectively improve oil spill simulation and diffusion forecasting, as well as provide decision-making information and technical support for emergency responses to oil spills.
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海洋溢油模拟的动态遥感数据驱动方法
针对溢油遥感只能生成特定时间的浮油信息以及传统溢油仿真模型不能处理动态情况的问题,提出了动态数据驱动应用系统(DDDAS)。DDDAS需要将附加数据合并到正在执行的应用程序中的能力,反过来,也需要应用程序动态地引导度量过程的能力。基于DDDAS,将溢油遥感检测系统与数值模拟相结合,建立了一个集数据处理、分析、预测和应急响应于一体的系统。一旦发生溢油事故,基于dddas的溢油模型接收仿真中动态遥感数据提取的浮油信息。通过对比、信息融合和反馈更新,可以得到连续的、更精确的溢油模拟结果。然后,模拟结果可以为灾害控制和清理提供帮助。蓬莱、新港和绥中三次溢油事故的模拟结果表明,该模型能够提高预测精度,减少现有模拟系统中经验参数带来的误差。因此,基于dddas的溢油探测与模拟系统可以有效地提高溢油模拟和扩散预测,为溢油应急响应提供决策信息和技术支持。
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