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首页> 外文期刊>International journal of remote sensing >Detection of traces of pyroclastic flows and lahars with satellite synthetic aperture radars
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Detection of traces of pyroclastic flows and lahars with satellite synthetic aperture radars

机译:卫星合成孔径雷达探测火山碎屑流和火山泥的痕迹

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摘要

To assist volcanic hazard mitigation, detection of traces of pyroclastic flows and lahars were attempted by using satellite synthetic aperture radars (SAR). If such information can be obtained rapidly, it can help early warnings of the next pyroclastic flows and lahars because these flows often occur repeatedly at similar locations. Using three analytical approaches, two satellite SAR data, namely, the L-band SAR of the Japanese Earth Resource Satellite (JERS-1) and the C-band SAR of the European Remote Sensing Satellite (ERS-1), were tested. These approaches include subtraction of SAR backscatter coefficients, SAR coherence, and SAR interferometry (InSAR). These approaches were validated in the Unzen Volcano with digital elevation model (DEM) subtraction images created from aerial photographs. As a result, it was found that the coherence approach with JERS-1 SAR was highly capable of detecting the traces of the pyroclastic flows and lahars. The traces appeared as either one of two characteristics on the coherence images: low coherence caused by the new traces formed in between a pair of observations or high coherence caused by the recent traces formed before a pair of observations. In contrast, we could not validate applicability of the backscatter approach or the InSAR approach.
机译:为了帮助缓解火山灾害,尝试使用卫星合成孔径雷达(SAR)来检测火山碎屑流和Lahar的痕迹。如果能够迅速获得此类信息,则可以帮助对下一次火山碎屑流和震颤进行早期预警,因为这些流常常在相似的位置重复发生。使用三种分析方法,测试了两个卫星SAR数据,即日本地球资源卫星的L波段SAR(JERS-1)和欧洲遥感卫星的C波段SAR(ERS-1)。这些方法包括减除SAR反向散射系数,SAR相干性和SAR干涉测量法(InSAR)。这些方法已在Unzen火山中得到了验证,其中包括从航空照片创建的数字高程模型(DEM)减法图像。结果发现,采用JERS-1 SAR的相干方法能够检测出火山碎屑流和火山泥的痕迹。这些迹线显示为相干图像上的两个特征之一:由一对观测值之间形成的新迹线引起的低相干性,或由一对观测值之前形成的最新迹线引起的高相干性。相反,我们无法验证反向散射方法或InSAR方法的适用性。

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