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An effective deep-learning prediction of Arctic sea-ice concentration based on the U-Net model
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作者 Yifan Xie Ke Fan +2 位作者 Hongqing Yang Yi Fan Shengping He 《Atmospheric and Oceanic Science Letters》 2026年第1期34-40,共7页
Current shipping,tourism,and resource development requirements call for more accurate predictions of the Arctic sea-ice concentration(SIC).However,due to the complex physical processes involved,predicting the spatiote... Current shipping,tourism,and resource development requirements call for more accurate predictions of the Arctic sea-ice concentration(SIC).However,due to the complex physical processes involved,predicting the spatiotemporal distribution of Arctic SIC is more challenging than predicting its total extent.In this study,spatiotemporal prediction models for monthly Arctic SIC at 1-to 3-month leads are developed based on U-Net-an effective convolutional deep-learning approach.Based on explicit Arctic sea-ice-atmosphere interactions,11 variables associated with Arctic sea-ice variations are selected as predictors,including observed Arctic SIC,atmospheric,oceanic,and heat flux variables at 1-to 3-month leads.The prediction skills for the monthly Arctic SIC of the test set(from January 2018 to December 2022)are evaluated by examining the mean absolute error(MAE)and binary accuracy(BA).Results showed that the U-Net model had lower MAE and higher BA for Arctic SIC compared to two dynamic climate prediction systems(CFSv2 and NorCPM).By analyzing the relative importance of each predictor,the prediction accuracy relies more on the SIC at the 1-month lead,but on the surface net solar radiation flux at 2-to 3-month leads.However,dynamic models show limited prediction skills for surface net solar radiation flux and other physical processes,especially in autumn.Therefore,the U-Net model can be used to capture the connections among these key physical processes associated with Arctic sea ice and thus offers a significant advantage in predicting Arctic SIC. 展开更多
关键词 Arctic sea-ice concentration Deep-learning prediction u-net model CFSv2 NorCPM
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基于Attention Gates和R2U-Net的遥感影像建筑物提取方法 被引量:11
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作者 于文玲 刘波 +4 位作者 刘华 杜梓维 邹时林 苏友能 刘娜娜 《地理与地理信息科学》 CSCD 北大核心 2022年第3期31-36,42,共7页
针对深度语义分割算法提取遥感影像建筑物时易产生建筑物边缘分割不明确、提取精度不高等问题,该文提出一种基于Attention Gates(AG)和R2U-Net的遥感影像建筑物提取方法(AGR2U-Net)。该方法将R2U-Net模型每一层输出的特征图与其相邻层... 针对深度语义分割算法提取遥感影像建筑物时易产生建筑物边缘分割不明确、提取精度不高等问题,该文提出一种基于Attention Gates(AG)和R2U-Net的遥感影像建筑物提取方法(AGR2U-Net)。该方法将R2U-Net模型每一层输出的特征图与其相邻层的特征图输入至改进的AG模型中,得到与输入影像大小一致的特征图,以提高R2U-Net模型的多尺度泛化能力,从而增强该模型对建筑物特征的响应及灵敏度,最终提升遥感影像建筑物提取精度。利用WHU卫星影像数据集和WHU航空影像数据集,对该方法与U-Net、Improved U-Net、SegU-Net和R2U-Net方法进行对比实验验证,结果表明,该方法的交并比、像素准确率和召回率均最高,且提取的建筑物边缘更准确、内部信息更完整、误检和漏检情况更少。 展开更多
关键词 遥感影像 Attention Gates R2u-net模型 agr2u-net模型 建筑物提取
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