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A data variance technique for automated despiking of magnetotelluric data with a remote reference

机译:一种使用远程参考自动派发大地电磁数据的数据方差技术

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摘要

The magnetotelluric method employs co-located surface measurements of electric and magnetic fields to infer the local electrical structure of the earth. The frequency dependent 'apparent resistivity' curves can be inaccurate at long periods if input data are contaminated - even when robust remote reference techniques are employed. Data despiking prior to processing can result in significantly more reliable estimates of long period apparent resistivities. This paper outlines a two-step method of automatic identification and replacement for spike-like contamination of magnetotelluric data; based on the simultaneity of natural electric and magnetic field variations at distant sites. This simultaneity is exploited both to identify windows in time when the array data are compromised as well as to generate synthetic data that replace observed transient noise spikes. In the first step windows in data time series that contain spikes are identified according to an intersite comparison of channel 'activity' - such as the variance of differenced data within each window. In the second step, plausible data for replacement of flagged windows are calculated by Wiener filtering coincident data in clean channels. The Wiener filters - which express the time-domain relationship between various array channels - are computed using an uncontaminated segment of array training data. Examples are shown where the algorithm is applied to artificially contaminated data and to real field data. In both cases all spikes are successfully identified. In the case of implanted artificial noise, the synthetic replacement time series are very similar to the original recording. In all cases, apparent resistivity and phase curves obtained by processing the despiked data are much improved over curves obtained from raw data.
机译:大地电磁方法采用电场和磁场的共地表面测量来推断地球的局部电结构。如果输入数据受到污染,即使在使用鲁棒的远程参考技术的情况下,与频率相关的“视电阻率”曲线在很长一段时间内也可能不准确。在处理之前发送的数据会导致长期视电阻率的估计更加可靠。本文概述了一种自动识别和替换大地电磁数据的尖峰样污染的两步方法。基于远处自然电场和磁场变化的同时性。利用这种同时性,既可以及时发现阵列数据受损时的窗口,又可以生成合成数据来替代观察到的瞬态噪声尖峰。在第一步中,根据通道“活动”的站点间比较(例如每个窗口内差异数据的方差),确定包含尖峰的数据时间序列中的窗口。在第二步中,通过维纳过滤干净通道中的重合数据来计算替换标记窗口的合理数据。使用阵列训练数据的未污染片段来计算表示各个阵列通道之间的时域关系的维纳滤波器。显示了将算法应用于人为污染的数据和实际数据的示例。在这两种情况下,所有峰值均已成功识别。在植入人工噪声的情况下,合成替换时间序列与原始记录非常相似。在所有情况下,与从原始数据获得的曲线相比,通过处理发送的数据获得的视在电阻率和相位曲线有了很大的改善。

著录项

  • 来源
    《Geophysical Prospecting》 |2012年第1期|p.179-191|共13页
  • 作者

    Karl N. Kappler;

  • 作者单位

    Lawrence Berkeley National Laboratory, Earth Sciences Division, 1 Cyclotron Road, Berkeley, CA, 94720, USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    despiking; time series;

    机译:pi时间序列;

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