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Lake surface water temperatures of European Alpine lakes (1989–2013) based on the Advanced Very High Resolution Radiometer (AVHRR) 1 km data set

机译:欧洲高山湖泊(1989-2013)的湖泊地表水温,基于1 km超高分辨率高分辨率辐射计(AVHRR)

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Lake water temperature (LWT) is an important driver of lake ecosystems and it has been identified as an indicator of climate change. Consequently, the Global Climate Observing System (GCOS) lists LWT as an essential climate variable. Although for some European lakes long in situ time series of LWT do exist, many lakes are not observed or only on a non-regular basis making these observations insufficient for climate monitoring. Satellite data can provide the information needed. However, only few satellite sensors offer the possibility to analyse time series which cover 25 years or more. The Advanced Very High Resolution Radiometer (AVHRR) is among these and has been flown as a heritage instrument for almost 35 years. It will be carried on for at least ten more years, offering a unique opportunity for satellite-based climate studies. Herein we present a satellite-based lake surface water temperature (LSWT) data set for European water bodies in or near the Alps based on the extensive AVHRR 1 km data record (1989–2013) of the Remote Sensing Research Group at the University of Bern. It has been compiled out of AVHRR/2 (NOAA-07, -09, -11, -14) and AVHRR/3 (NOAA-16, -17, -18, -19 and MetOp-A) data. The high accuracy needed for climate related studies requires careful pre-processing and consideration of the atmospheric state. The LSWT retrieval is based on a simulation-based scheme making use of the Radiative Transfer for TOVS (RTTOV) Version 10 together with ERA-interim reanalysis data from the European Centre for Medium-range Weather Forecasts. The resulting LSWTs were extensively compared with in situ measurements from lakes with various sizes between 14 and 580 km2 and the resulting biases and RMSEs were found to be within the range of ?0.5 to 0.6 K and 1.0 to 1.6 K, respectively. The upper limits of the reported errors could be rather attributed to uncertainties in the data comparison between in situ and satellite observations than inaccuracies of the satellite retrieval. An inter-comparison with the standard Moderate-resolution Imaging Spectroradiometer (MODIS) Land Surface Temperature product exhibits RMSEs and biases in therange of 0.6 to 0.9 and ?0.5 to 0.2 K, respectively. The cross-platformconsistency of the retrieval was found to be within ~ 0.3 K. For onelake, the satellite-derived trend was compared with the trend of in situmeasurements and both were found to be similar. Thus, orbital drift is notcausing artificial temperature trends in the data set. A comparison with LSWTderived through global sea surface temperature (SST) algorithms shows lowerRMSEs and biases for the simulation-based approach. A running project willapply the developed method to retrieve LSWT for all of Europe to derive theclimate signal of the last 30 years. The data are available athref="http://dx.doi.org/10.1594/PANGAEA.831007">doi:10.1594/PANGAEA.831007.
机译:湖泊水温(LWT)是湖泊生态系统的重要驱动力,已被确定为气候变化的指标。因此,全球气候观测系统(GCOS)将LWT列为基本气候变量。尽管对于某些欧洲湖泊而言,确实存在着长时程的轻小水量的时间序列,但没有观测到许多湖泊或仅在非常规基础上观测到了湖泊,这使得这些观测不足以进行气候监测。卫星数据可以提供所需的信息。但是,只有很少的卫星传感器提供了分析覆盖25年或更长时间的时间序列的可能性。其中包括高级超高分辨率辐射计(AVHRR),已经作为传承工具飞行了近35年。它将至少持续十年,为基于卫星的气候研究提供独特的机会。本文中,我们根据伯尔尼大学遥感研究小组的1英里广泛AVHRR数据记录(1989-2013年),为阿尔卑斯山内或附近的欧洲水体提供了基于卫星的湖面水温(LSWT)数据集。已根据AVHRR / 2(NOAA-07,-09,-11,-14)和AVHRR / 3(NOAA-16,-17,-18,-19和MetOp-A)数据进行编译。气候相关研究所需的高精度需要仔细的预处理和考虑大气状态。 LSWT检索基于基于模拟的方案,该方案利用了TOVS的辐射传递(RTTOV)版本10和来自欧洲中型天气预报中心的ERA临时再分析数据。将所产生的LSWT与来自14至580 km 2 的各种大小的湖泊的原位测量结果进行了广泛比较,发现所产生的偏差和RMSE在±0.5至0.6 K和1.0至1.0 K的范围内。分别为1.6K。所报告误差的上限可归因于原位和卫星观测数据比较中的不确定性,而不是卫星检索的不准确性。与标准中等分辨率成像光谱仪(MODIS)地表温度产品的比对显示出RMSE和偏差分别在0.6至0.9和±0.5至0.2 K的范围内。发现检索的跨平台一致性在〜0.3 K范围内。对于onelake,将卫星衍生的趋势与原位测量的趋势进行了比较,发现两者相似。因此,轨道漂移不会在数据集中造成人为的温度趋势。与通过全球海面温度(SST)算法得出的LSWT的比较显示,基于仿真的方法具有更低的RMSE和偏差。一个正在运行的项目将应用开发的方法来检索整个欧洲的LSWT,以得出最近30年的气候信号。数据可从href="http://dx.doi.org/10.1594/PANGAEA.831007"> doi:10.1594 / PANGAEA.831007 获得。

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