Application of statistical models to geoelectric variations with a long electrode span to detect anomalous changes

Q4 Earth and Planetary Sciences
H. Takayama
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引用次数: 0

Abstract

We examined two techniques for eliminating components induced by variations of the geomagnetic field to accurately and quickly detect anomalous changes in the geoelectric field, which would enable us to identify crustal signals,. One method is based on a multiple regression model, where any geoelectric variation is presented as a linear combination of the past, present, and future values of geomagnetic variations. The induced geoelectric variation is estimated as a convolution of the geomagnetic variations and the parameters of the obtained regression model. The other method uses BAYTAP-G, by which the observed geoelectric data are separated into four components: 1) tidal, 2) electromagnetically induced, 3) trend, and 4) irregular components. Signals due to volcanic and/or seismic activity may be detected since the trend and the irregular component indicate variations of the self-potential of the crust and/or noise, provided that the amplitudes exceed that of the typical variation. The geomagnetic field at the Kakioka Magnetic Observatory was used as associated data for both methods. These methods were applied to geoelectric variations in the Numazu group, which are contaminated by artificial noise but show anomalous changes. The multiple regression method can apparently eliminate daily variations and telluric storms and can clarify anomalous changes that are not obvious in the original data. However, the gain and phase characteristics calculated from the estimated parameters of the model do not yield information on the underground resistivity structure since the estimated impulse responses do not correctly reflect relationships between the inducing geomagnetic field and the induced geoelectric field due to the presence of excessive artificial noise. BAYTAP-G separates daily variations due to artificial noise as the tidal component and the responses to geomagnetic variations. Anomalous changes are identified in the trend and the irregular component.We investigated the relationship of the tidal component of geoelectric variations estimated by BAYTAP-G with the tidal current and the tide. The correlation between the tidal component of geoelectric variations and tidal currents could not be clarified since simultaneous data of tidal currents with geoelectric variations were not available. Temporal variations of the amplitudes of geoelectric variations of KSM-MTO and tides at OAR for O1 and M2 constituents were not correlated despite their high coherencies.
统计模型在长电极跨度地电变化中的应用
我们研究了两种消除由地磁场变化引起的分量的技术,以准确、快速地探测地电场的异常变化,从而使我们能够识别地壳信号。一种方法是基于多元回归模型,其中任何地电变化都被表示为过去、现在和未来地磁变化值的线性组合。感应地电变化被估计为地磁变化和得到的回归模型参数的卷积。另一种方法使用BAYTAP-G,将观测到的地电数据分为4个分量:1)潮汐分量,2)电磁感应分量,3)趋势分量,4)不规则分量。由于火山和/或地震活动的信号可以被检测到,因为趋势和不规则成分表明地壳的自电位和/或噪声的变化,只要振幅超过典型的变化。Kakioka地磁观测站的地磁场被用作这两种方法的关联数据。这些方法应用于Numazu群的地电变化,该群受人工噪声污染,但表现出异常变化。多元回归方法能明显地消除日变化和大地风暴,并能澄清原始资料中不明显的异常变化。然而,由于存在过多的人工噪声,估计的脉冲响应不能正确反映感应地磁场和感应地电场之间的关系,因此,根据模型估计参数计算的增益和相位特性不能提供有关地下电阻率结构的信息。BAYTAP-G将人工噪声引起的日变化作为潮汐分量和对地磁变化的响应分开。在趋势和不规则分量中发现了异常变化。我们研究了BAYTAP-G估算的地电变化的潮汐分量与潮流和潮汐的关系。地电变化的潮汐分量与潮流之间的相关性尚不明确,因为没有潮汐与地电变化的同步数据。KSM-MTO的地电变化幅度与O1和M2组分在OAR的潮汐的时间变化不相关,尽管它们具有高相干性。
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来源期刊
Papers in Meteorology and Geophysics
Papers in Meteorology and Geophysics Earth and Planetary Sciences-Geophysics
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