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首页> 外文期刊>Journal of Geophysical Research, C. Oceans: JGR >Detection of linear trends in multisensor time series in the presence of autocorrelated noise: Application to the chlorophyll-a SeaWiFS and MERIS data sets and extrapolation to the incoming Sentinel 3-OLCI mission
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Detection of linear trends in multisensor time series in the presence of autocorrelated noise: Application to the chlorophyll-a SeaWiFS and MERIS data sets and extrapolation to the incoming Sentinel 3-OLCI mission

机译:在存在自相关噪声的情况下检测多传感器时间序列中的线性趋势:应用于叶绿素a SeaWiFS和MERIS数据集并外推到即将到来的Sentinel 3-OLCI任务

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摘要

The detection of long-term trends in geophysical time series is a key issue in climate change studies. This detection is affected by many factors: the size of the trend to be detected, the length of the available data sets, and the noise properties. Although the noise autocorrelation observed in geophysical time series does not bias the trend estimate, it affects the estimation of its uncertainty and consequently the ability to detect, or not, a significant trend. Ignoring the noise autocorrelation level typically leads to an overdetection of significant trends. Due to satellite lifetime, usually between 5 and 10 years, sea surface time series do not cover the same period and are acquired by different sensors with different characteristics. These differences lead to unknown level shifts (biases) between the data sets, which affect the trend detection. In this work, we develop a generic framework to detect and evaluate linear trends and level shifts in multisensor time series of satellite chlorophyll-a concentrations, as provided by the Medium Resolution Imaging Spectrometer instrument (MERIS) and sea-viewing wide field-of-view sensor (SeaWiFS) ocean-color missions. We also discuss the optimization of the observation networks, in terms of needed time overlap between successive time series to reduce the uncertainty on the detection of long-term trends. For the incoming Sentinel 3-Ocean and Land Color Instrument (3-OLCI) mission that should be launched at the end of 2014, we propose a global map of the number of months of observations to enhance the trend detection performed with the joint SeaWiFS-MERIS analysis.
机译:探测地球物理时间序列的长期趋势是气候变化研究中的关键问题。此检测受许多因素影响:要检测的趋势的大小,可用数据集的长度以及噪声属性。尽管在地球物理时间序列中观察到的噪声自相关不会使趋势估计值产生偏差,但会影响其不确定性的估计值,并因此影响检测或不检测重大趋势的能力。忽略噪声自相关级别通常会导致对重大趋势的过度检测。由于卫星的寿命通常在5至10年之间,因此海面时间序列无法涵盖同一时期,而是由具有不同特性的不同传感器获取的。这些差异会导致数据集之间未知的电平偏移(偏差),从而影响趋势检测。在这项工作中,我们开发了一个通用框架,以检测和评估卫星分辨率的多传感器时间序列中的线性趋势和水平变化,这是由中分辨率成像光谱仪(MERIS)和海景宽视野提供的。视图传感器(SeaWiFS)海洋色任务。我们还根据连续时间序列之间所需的时间重叠来讨论观测网络的优化,以减少长期趋势检测的不确定性。对于应在2014年底启动的即将到来的Sentinel 3海洋和陆地颜色仪器(3-OLCI)任务,我们提出了一个观测月数的全球地图,以增强联合SeaWiFS- MERIS分析。

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