基于时序InSAR分析的高精度同震形变监测方法

合成孔径雷达干涉测量(InSAR)技术凭借全天时、全天候对地监测、高空间分辨率等特点,成为监测地表形变的重要手段,并广泛地应用到地震形变监测领域. 然而同震形变监测中最常用的D-InSAR技术在水域和植被覆盖严重等区域中容易受到时空失相关的影响,导致获取的同震形变场会受到严重的污染,此外还包含有大气延迟误差. 本文提出基于时序InSAR分析的高精度同震形变监测方法获取地震同震形变结果,主要是通过选择合适的干涉对和选择稳定点两步来提高形变场精度. 凭借充足的Sentinel-1A/B卫星SAR数据的支撑,利用大量震前和震后影像生成众多干涉图,按照一定标准挑选受误差影响较小的干涉图进行研究,减少大...

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Veröffentlicht in:地球与行星物理论评 2023-01, Vol.54 (6), p.612-621
Hauptverfasser: 吴雄骁, 冯光财, 贺礼家, 卢昊, Wu Xiongxiao, Feng Guangcai, He Lijia, Lu, Hao
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container_issue 6
container_start_page 612
container_title 地球与行星物理论评
container_volume 54
creator 吴雄骁
冯光财
贺礼家
卢昊
Wu Xiongxiao
Feng Guangcai
He Lijia
Lu, Hao
description 合成孔径雷达干涉测量(InSAR)技术凭借全天时、全天候对地监测、高空间分辨率等特点,成为监测地表形变的重要手段,并广泛地应用到地震形变监测领域. 然而同震形变监测中最常用的D-InSAR技术在水域和植被覆盖严重等区域中容易受到时空失相关的影响,导致获取的同震形变场会受到严重的污染,此外还包含有大气延迟误差. 本文提出基于时序InSAR分析的高精度同震形变监测方法获取地震同震形变结果,主要是通过选择合适的干涉对和选择稳定点两步来提高形变场精度. 凭借充足的Sentinel-1A/B卫星SAR数据的支撑,利用大量震前和震后影像生成众多干涉图,按照一定标准挑选受误差影响较小的干涉图进行研究,减少大气延迟误差造成的影响;同时对震前影像的幅度图进行统计分析,从幅度值、相干性和幅度离散指数等方面设置阈值选择稳定点目标,削弱噪声干扰,提高形变场精度. 本文以2018年中国台湾花莲MW6.4地震为例,详细地介绍了高精度同震形变监测方法的数据处理流程,并与传统D-InSAR方法的结果进行了精度比较,结果表明本文方法能削弱形变场中的噪声误差,提高同震形变的信噪比. 应用本文方法获取了14个不同震级和位置的地震形变,结果表明通过选择稳定点的方式能提高形变场精度,且对于获取不同地震的同震形变场具有普遍适用性.
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subjects Accuracy
Data processing
Earthquakes
Interferometry
Monitoring methods
Seismic activity
Time series
title 基于时序InSAR分析的高精度同震形变监测方法
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