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首页> 外文期刊>Journal of Geodesy >Effect of the processing methodology on satellite altimetry-based global mean sea level rise over the Jason-1 operating period
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Effect of the processing methodology on satellite altimetry-based global mean sea level rise over the Jason-1 operating period

机译:处理方法对Jason-1作业期间基于卫星测高的全球平均海平面上升的影响

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摘要

Determining how the global mean sea level (GMSL) evolves with time is of primary importance to understand one of the main consequences of global warming and its potential impact on populations living near coasts or in low-lying islands. Five groups are routinely providing satellite altimetry-based estimates of the GMSL over the altimetry era (since late 1992). Because each group developed its own approach to compute the GMSL time series, this leads to some differences in the GMSL interannual variability and linear trend. While over the whole high-precision altimetry time span (1993-2012), good agreement is noticed for the computed GMSL linear trend (of 3.1 ± 0.4 mm/year), on shorter time spans (e.g., <10 years), trend differences are significantly larger than the 0.4 mm/year uncertainty. Here we investigate the sources of the trend differences, focusing on the averaging methods used to generate the GMSL. For that purpose, we consider outputs from two different groups: the Colorado University (CU) and Archiving, Validation and Interpretation of Satellite Oceanographic Data (AVISO) because associated processing of each group is largely representative of all other groups. For this investigation, we use the high-resolution MERCATOR ocean cir- culation model with data assimilation (version Glorys2-vl) and compute synthetic sea surface height (SSH) data by interpolating the model grids at the time and location of "true" along-track satellite altimetry measurements, focusing on the Jason-1 operating period (i.e., 2002-2009). These synthetic SSH data are then treated as "real" altimetry measurements, allowing us to test the different averaging methods used by the two processing groups for computing the GMSL: (1) averaging along-track altimetry data (as done by CU) or (2) gridding the along-track data into 2° × 2° meshes and then geographical averaging of the gridded data (as done by AVISO). We also investigate the effect of considering or not SSH data at shallow depths (<120 m) as well as the editing procedure. We find that the main difference comes from the averaging method with significant differences depending on latitude. In the tropics, the 2° × 2° gridding method used by AVISO overestimates by 11 % the GMSL trend. At high latitudes (above 60°N/S), both methods underestimate the GMSL trend. Our calculation shows that the CU method (along-track averaging) and AVISO gridding process underestimate the trend in high latitudes of the northern hemisphere by 0.9 and 1.2 mm/year, respectively. While we were able to attribute the AVISO trend overestimation in the tropics to grid cells with too few data, the cause of underestimation at high latitudes remains unclear and needs further investigation.
机译:确定全球平均海平面(GMSL)随时间变化的方式,对于理解全球变暖的主要后果之一及其对生活在沿海或低地岛上的居民的潜在影响至关重要。自1992年末以来,有五个小组定期提供基于卫星测高仪的GMSL估算值。因为每个小组都开发了自己的方法来计算GMSL时间序列,所以这导致GMSL的年际变化和线性趋势有所不同。在整个高精度测高时间跨度(1993年至2012年)中,对于计算得出的GMSL线性趋势(3.1±0.4毫米/年),在较短的时间跨度(例如,<10年),趋势差异方面发现了很好的一致性远大于0.4毫米/年的不确定度。在这里,我们研究趋势差异的来源,重点是用于生成GMSL的平均方法。为此,我们考虑两个不同组的输出:科罗拉多大学(CU)和卫星海洋学数据的存档,确认和解释(AVISO),因为每个组的关联处理在很大程度上代表了所有其他组。在本次调查中,我们将高分辨率MERCATOR海洋环流模型与数据同化(版本Glorys2-vl)结合使用,并通过在“真实”时间和位置插值模型网格来计算合成海面高度(SSH)数据跟踪卫星测高仪的测量,重点是Jason-1的运行周期(即2002-2009年)。然后将这些合成的SSH数据视为“真实”测高仪测量值,使我们能够测试两个处理组用于计算GMSL的不同平均方法:(1)平均沿轨测高仪数据(由CU完成)或( 2)将沿轨数据网格化为2°×2°网格,然后对网格化数据进行地理平均(由AVISO完成)。我们还研究了在浅深度(<120 m)考虑或不考虑SSH数据的影响以及编辑过程。我们发现主要差异来自平均方法,根据纬度的不同,差异也很大。在热带地区,AVIS使用的2°×2°网格方法高估了GMSL趋势的11%。在高纬度(高于60°N / S)下,两种方法都低估了GMSL趋势。我们的计算表明,CU方法(沿航迹平均)和AVISO网格化过程分别低估了北半球高纬度地区每年0.9和1.2 mm /年的趋势。虽然我们能够将热带地区的AVISO趋势高估归因于数据太少的网格单元,但高纬度地区低估的原因仍然不清楚,需要进一步研究。

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