首页> 外文期刊>Journal of geophysical research. Solid earth: JGR >Extracting the regional common-mode component of GPS station position time series from dense continuous network
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Extracting the regional common-mode component of GPS station position time series from dense continuous network

机译:从密集连续网络中提取GPS站位置时间序列的区域共模分量

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We develop a spatial filtering method to remove random noise and extract the spatially correlated transients (i.e., common-mode component (CMC)) that deviate from zero mean over the span of detrended position time series of a continuous Global Positioning System (CGPS) network. The technique utilizes a weighting scheme that incorporates two factorsdistances between neighboring sites and their correlations of long-term residual position time series. We use a grid search algorithm to find the optimal thresholds for deriving the CMC that minimizes the root-mean-square (RMS) of the filtered residual position time series. Comparing to the principal component analysis technique, our method achieves better (>13% on average) reduction of residual position scatters for the CGPS stations in western North America, eliminating regional transients of all spatial scales. It also has advantages in data manipulation: less intervention and applicable to a dense network of any spatial extent. Our method can also be used to detect CMC irrespective of its origins (i.e., tectonic or nontectonic), if such signals are of particular interests for further study. By varying the filtering distance range, the long-range CMC related to atmospheric disturbance can be filtered out, uncovering CMC associated with transient tectonic deformation. A correlation-based clustering algorithm is adopted to identify stations cluster that share the common regional transient characteristics.
机译:我们开发了一种空间滤波方法,以消除随机噪声并提取在连续全球定位系统(CGPS)网络的去趋势位置时间序列范围内偏离零均值的空间相关瞬变(即共模分量(CMC)) 。该技术利用了加权方案,该方案结合了两个因素之间的相邻站点之间的距离和长期残余位置时间序列的相关性。我们使用网格搜索算法来找到用于推导CMC的最佳阈值,该阈值可最小化已过滤残差位置时间序列的均方根(RMS)。与主成分分析技术相比,我们的方法可以更好地(平均> 13%)减少北美西部CGPS站的剩余位置散射,从而消除了所有空间尺度的区域瞬变。它还在数据处理方面具有优势:更少的干预并且适用于任何空间范围的密集网络。如果CMC的信号特别值得进一步研究,则无论其起源(即构造还是非构造),我们的方法也可用于检测CMC。通过改变过滤距离范围,可以滤除与大气干扰有关的远程CMC,从而发现与瞬时构造变形有关的CMC。采用基于相关性的聚类算法来识别具有共同区域瞬态特征的站点聚类。

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