首页> 外文OA文献 >Retrieval of Melt Ponds on Arctic Multiyear Sea Ice in Summer from TerraSAR-X Dual-Polarization Data Using Machine Learning Approaches: A Case Study in the Chukchi Sea with Mid-Incidence Angle Data
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Retrieval of Melt Ponds on Arctic Multiyear Sea Ice in Summer from TerraSAR-X Dual-Polarization Data Using Machine Learning Approaches: A Case Study in the Chukchi Sea with Mid-Incidence Angle Data

机译:使用机器学习方法从TerraSAR-X双极化数据中提取夏季北极多年海冰上融化池塘的情况:以中入射角数据为例的楚科奇海为例

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摘要

Melt ponds, a common feature on Arctic sea ice, absorb most of the incoming solar radiation and have a large effect on the melting rate of sea ice, which significantly influences climate change. Therefore, it is very important to monitor melt ponds in order to better understand the sea ice-climate interaction. In this study, melt pond retrieval models were developed using the TerraSAR-X dual-polarization synthetic aperture radar (SAR) data with mid-incidence angle obtained in a summer multiyear sea ice area in the Chukchi Sea, the Western Arctic, based on two rule-based machine learning approachesdecision trees (DT) and random forest (RF)in order to derive melt pond statistics at high spatial resolution and to identify key polarimetric parameters for melt pond detection. Melt ponds, sea ice and open water were delineated from the airborne SAR images (0.3-m resolution), which were used as a reference dataset. A total of eight polarimetric parameters (HH and VV backscattering coefficients, co-polarization ratio, co-polarization phase difference, co-polarization correlation coefficient, alpha angle, entropy and anisotropy) were derived from the TerraSAR-X dual-polarization data and then used as input variables for the machine learning models. The DT and RF models could not effectively discriminate melt ponds from open water when using only the polarimetric parameters. This is because melt ponds showed similar polarimetric signatures to open water. The average and standard deviation of the polarimetric parameters based on a 15 x 15 pixel window were supplemented to the input variables in order to consider the difference between the spatial texture of melt ponds and open water. Both the DT and RF models using the polarimetric parameters and their texture features produced improved performance for the retrieval of melt ponds, and RF was superior to DT. The HH backscattering coefficient was identified as the variable contributing the most, and its spatial standard deviation was the next most contributing one to the classification of open water, sea ice and melt ponds in the RF model. The average of the co-polarization phase difference and the alpha angle in a mid-incidence angle were also identified as the important variables in the RF model. The melt pond fraction and sea ice concentration retrieved from the RF-derived melt pond map showed root mean square deviations of 2.4% and 4.9%, respectively, compared to those from the reference melt pond maps. This indicates that there is potential to accurately monitor melt ponds on multiyear sea ice in the summer season at a local scale using high-resolution dual-polarization SAR data.
机译:融化池塘是北极海冰上的一个共同特征,它吸收了大部分传入的太阳辐射,并对海冰的融化速率产生了很大影响,而融化率对气候变化有重大影响。因此,监测融化池以更好地了解海冰-气候相互作用非常重要。在这项研究中,基于两个方面,使用TerraSAR-X双极化合成孔径雷达(SAR)数据开发了融水池取回模型,该数据具有在西部北极楚科奇海的夏季多年海冰区域中获得的中入射角。基于规则的机器学习方法决策树(DT)和随机森林(RF),以便以高空间分辨率导出融化池统计信息并确定用于融化池检测的关键极化参数。从机载SAR图像(0.3米分辨率)描绘了融化的池塘,海冰和开放水域,将其用作参考数据集。从TerraSAR-X双极化数据中导出了总共八个极化参数(HH和VV后向散射系数,共极化比,共极化相位差,共极化相关系数,α角,熵和各向异性),然后,用作机器学习模型的输入变量。仅使用极化参数时,DT和RF模型无法有效地将熔池与开放水区分开。这是因为熔池对开放水显示出相似的极化特征。基于15 x 15像素窗口的极化参数的平均偏差和标准偏差被补充到输入变量中,以考虑熔池和开放水域的空间纹理之间的差异。使用极化参数的DT和RF模型及其纹理特征均提高了熔池回收性能,并且RF优于DT。 HH背向散射系数被认为是影响最大的变量,其空间标准偏差是RF模型中对开放水,海冰和融化池塘进行分类的第二大贡献因素。同极化相位差的平均值和中间入射角的α角也被确定为RF模型中的重要变量。与参考熔池图相比,从RF熔池图检索到的熔池分数和海冰浓度分别显示出均方根偏差为2.4%和4.9%。这表明有可能使用高分辨率双极化SAR数据在本地规模上准确监测夏季多年海冰上的融化池。

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