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2018年日本北海道胆振东部M_(w)6.6地震运动学震源模型
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作者 吴双兰 李涵 +4 位作者 崔臻 野津厚 庄海洋 赵凯 陈国兴 《地球科学》 2026年第1期199-214,共16页
通过观测的地表波形反演震源机制以理解地震震源破裂过程是研究强震动特征非常有效的途径之一.主要针对强震动的产生机制,采用中小震作为经验格林函数,选取0.2~2.0 Hz频段的强震动速度波形进行波形反演2018年日本北海道M_(w)6.6地震的... 通过观测的地表波形反演震源机制以理解地震震源破裂过程是研究强震动特征非常有效的途径之一.主要针对强震动的产生机制,采用中小震作为经验格林函数,选取0.2~2.0 Hz频段的强震动速度波形进行波形反演2018年日本北海道M_(w)6.6地震的破裂过程,提出了该地震的震源模型.结果表明:该地震的主要最大滑移量区域集中在沿断层面西南部-东北部6 km范围、距离震源~12.0 km的浅层区域内,该区域内最大滑动量约3.5 m;识别出两个最大滑移速度分布区,分别位于断层西南6.0 km、东北4.0 km,距离震源~15.0 km的浅层区域内,最大滑动速度约2.0 m/s,破裂速度为2.0 km/s,该震源模型对应地震震级MW7.0.此外,通过多种组合的中小震记录作为经验的格林函数及近断层强震观测台站探讨了该震源模型的鲁棒性,进一步通过合成未参与反演的台站强震动波形,结果显示合成波形与观测波形的匹配度较高,表明模型的时空特征描述合理;最后,通过与其他已公开发表的震源模型的综合对比发现最大滑移分布相似,该系列对比充分验证了该震源模型是稳定可靠的,可为未来强震动模拟提供重要参考. 展开更多
关键词 2018年日本北海道胆振东部地震 运动学震源模型 波形反演 经验的格林函数 强震动波形 地震学
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The application of ResU-net and OBIA for landslide detection from multi-temporal Sentinel-2 images 被引量:1
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作者 Omid Ghorbanzadeh Khalil Gholamnia Pedram Ghamisi 《Big Earth Data》 EI CSCD 2023年第4期961-985,共25页
Landslide detection is a hot topic in the remote sensing community,particularly with the current rapid growth in volume(and variety)of Earth observation data and the substantial progress of computer vision.Deep learni... Landslide detection is a hot topic in the remote sensing community,particularly with the current rapid growth in volume(and variety)of Earth observation data and the substantial progress of computer vision.Deep learning algorithms,especially fully convolutional networks(FCNs),and variations like the ResU-Net have been used recently as rapid and automatic landslide detection approaches.Although FCNs have shown cutting-edge results in automatic landslide detection,accuracy can be improved by adding prior knowledge through possible frameworks.This study evaluates a rulebased object-based image analysis(OBIA)approach built on probabilities resulting from the ResU-Net model for landslide detection.We train the ResU-Net model using a landslide dataset comprising landslide inventories from various geographic regions,including our study area and test the testing area not used for training.In the OBIA stage,we frst calculate land cover and image difference indices for pre-and post-landslide multi-temporal images.Next,we use the generated indices and the resulting ResU-Net probabilities for image segmentation;the extracted landslide object candidates are then optimized using rule-based classification.In the result validation section,the landslide detection of the proposed integration of the ResU-Net with a rule-based classification of OBIA is compared with that of the ResU-Net alone.Our proposed approach improves the mean intersection-over-union of the resulting map from the ResU-Net by more than 22%. 展开更多
关键词 Deep learning(DL) Eastern iburi Japan European Space Agency(ESA) Fully Convolutional Networks(FCNs) object-based image analysis(OBIA) rapid landslide mapping ResUnet Sentinel-2
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