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A new hybrid model for filling gaps and forecast in sea level: application to the eastern English Channel and the North Atlantic Sea (western France)

机译:一种填补海平面缺口和海平面预报的新混合模型:在东部英吉利海峡和北大西洋(法国西部)的应用

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摘要

This research is carried out in the framework of the program Surface Water and Ocean Topography (SWOT) which is a partnership between NASA and CNES. Here, a new hybrid model is implemented for filling gaps and forecasting the hourly sea level variability by combining classical harmonic analyses to high statistical methods to reproduce the deterministic and stochastic processes, respectively. After simulating the mean trend sea level and astronomical tides, the nontidal residual surges are investigated using an autoregressive moving average (ARMA) methods by two ways: (1) applying a purely statistical approach and (2) introducing the SLP in ARMA as a main physical process driving the residual sea level. The new hybrid model is applied to the western Atlantic sea and the eastern English Channel. Using ARMA model and considering the SLP, results show that the hourly sea level observations of gauges with are well reproduced with a root mean square error (RMSE) ranging between 4.5 and 7 cm for 1 to 30 days of gaps and an explained variance more than 80 %. For larger gaps of months, the RMSE reaches 9 cm. The negative and the positive extreme values of sea levels are also well reproduced with a mean explained variance between 70 and 85 %. The statistical behavior of 1 -year modeled residual components shows good agreements with observations. The frequency analysis using the discrete wavelet transform illustrate strong correlations between observed and modeled energy spectrum and the bands of variability. Accordingly, the proposed model presents a coherent, simple, and easy tool to estimate the total sea level at timescales from days to months. The ARMA model seems to be more promising for filling gaps and estimating the sea level at larger scales of years by introducing more physical processes driving its stochastic variability.
机译:这项研究是在美国国家航空航天局(NASA)与法国国家空间研究中心(CNES)之间的伙伴关系“地表水和海洋地形(SWOT)”计划的框架内进行的。在这里,通过将经典谐波分析与高级统计方法相结合来分别再现确定性过程和随机过程,实现了一种新的混合模型,用于填补空白和预测每小时海平面变化。在模拟平均趋势海平面和天文潮之后,通过两种方式使用自回归移动平均(ARMA)方法研究非潮汐残留潮:(1)应用纯统计方法;(2)将SLP引入ARMA作为主要方法驱动剩余海平面的物理过程。新的混合模型将应用于西大西洋和​​英吉利海峡东部。使用ARMA模型并考虑SLP,结果表明,具有的规范的每小时海平面观测值得到了很好的再现,对于1至30天的间隙,均方根误差(RMSE)在4.5至7 cm之间,并且解释的方差大于80%。对于较大的间隙,RMSE达到9厘米。海平面的负极值和正极值也可以很好地再现,平均解释方差在70%和85%之间。 1年建模残留分量的统计行为与观察值显示出良好的一致性。使用离散小波变换的频率分析说明了观察到的和建模的能量谱与变异带之间的强相关性。因此,提出的模型提供了一种连贯,简单且容易的工具,可以在几天到几个月的时间范围内估算总海平面。通过引入更多物理过程来驱动其随机变异性,ARMA模型似乎更有望填补空白并在更大范围内估算海平面。

著录项

  • 来源
    《Ocean Dynamics》 |2015年第4期|509-521|共13页
  • 作者单位

    UMR CNRS 6143 Continental and Coastal Morphodynamics 'M2C' University of Rouen, 76821 Mont-Saint-Aignan Cedex, France;

    UMR CNRS 6143 Continental and Coastal Morphodynamics 'M2C' University of Rouen, 76821 Mont-Saint-Aignan Cedex, France;

    Department of Applied Physics, Universitat Politecnica de Catalunya-Barcelona Tech, Barcelona, Spain;

    UMR CNRS 6143 Continental and Coastal Morphodynamics 'M2C' University of Rouen, 76821 Mont-Saint-Aignan Cedex, France;

    University of Caen Low Normandy, Geophen UMR-CNRS LETG, 6554 Normandy, France;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Sea level forecast; Astronomical tides; Nontidal residual surges; ARMA; Sea level pressure;

    机译:海平面预报;天文潮;非潮汐残留激增;ARMA;海平面压力;

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