首页> 外文期刊>Remote Sensing >Arctic Sea Ice Thickness Estimation from CryoSat-2 Satellite Data Using Machine Learning-Based Lead Detection
【24h】

Arctic Sea Ice Thickness Estimation from CryoSat-2 Satellite Data Using Machine Learning-Based Lead Detection

机译:利用基于机器学习的铅检测技术从CryoSat-2卫星数据估算北极海冰厚度

获取原文
           

摘要

Satellite altimeters have been used to monitor Arctic sea ice thickness since the early 2000s. In order to estimate sea ice thickness from satellite altimeter data, leads (i.e., cracks between ice floes) should first be identified for the calculation of sea ice freeboard. In this study, we proposed novel approaches for lead detection using two machine learning algorithms: decision trees and random forest. CryoSat-2 satellite data collected in March and April of 2011–2014 over the Arctic region were used to extract waveform parameters that show the characteristics of leads, ice floes and ocean, including stack standard deviation, stack skewness, stack kurtosis, pulse peakiness and backscatter sigma-0. The parameters were used to identify leads in the machine learning models. Results show that the proposed approaches, with overall accuracy >90%, produced much better performance than existing lead detection methods based on simple thresholding approaches. Sea ice thickness estimated based on the machine learning-detected leads was compared to the averaged Airborne Electromagnetic (AEM)-bird data collected over two days during the CryoSat Validation experiment (CryoVex) field campaign in April 2011. This comparison showed that the proposed machine learning methods had better performance (up to r = 0.83 and Root Mean Square Error (RMSE) = 0.29 m) compared to thickness estimation based on existing lead detection methods (RMSE = 0.86–0.93 m). Sea ice thickness based on the machine learning approaches showed a consistent decline from 2011–2013 and rebounded in 2014.
机译:自2000年代初以来,卫星高度计就一直用于监测北极海冰的厚度。为了从卫星高度计数据估算海冰厚度,应首先确定铅(即浮冰之间的裂缝)以计算干冰高度。在这项研究中,我们提出了使用两种机器学习算法进行铅检测的新颖方法:决策树和随机森林。使用2011年3月和2011年4月在北极地区收集的CryoSat-2卫星数据提取波形参数,这些参数显示铅,浮冰和海洋的特征,包括烟囱标准偏差,烟囱偏度,烟囱峰度,脉冲峰值和反向散射sigma-0。这些参数用于识别机器学习模型中的线索。结果表明,与基于简单阈值方法的现有铅检测方法相比,所提出的方法的总体准确度> 90%,其性能要好得多。将根据机器学习检测到的导线估算的海冰厚度与2011年4月在CryoSat验证实验(CryoVex)野外活动期间两天内收集的平均机载电磁(AEM)鸟数据进行了比较。此比较表明,所建议的机器与基于现有铅检测方法的厚度估计(RMSE = 0.86-0.93 m)相比,学习方法具有更好的性能(最大r = 0.83,均方根误差(RMSE)= 0.29 m)。基于机器学习方法的海冰厚度在2011-2013年间持续下降,并在2014年反弹。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号