Magnetotelluric data inversion with seismic data constraint

被引:0
|
作者
宋维琪
孙山
机构
[1] Earth Resource and Information Institute University of Petroleum Dongying Shandong 257061 China
[2] Earth Resource and Information Institute University of Petroleum Dongying Shandong 257061 China
关键词
magnetotelluric; model-matched method; iterative inversion; result analysis;
D O I
暂无
中图分类号
P315.72 [地震前兆与地震机理];
学科分类号
070801 ;
摘要
In the paper we present a new method to invert the interior structure in the basement or ancient hidden hill by us-ing magnetotelluric (MT) data with seismic data constraint. We first obtain the thickness and resistivity of each layer above the basement or buried hill by the inversion of seismic and log data and create a geoelectrical model for the layers above the basement or hidden hill. Then with the reference to the inversion of 1D MT data, a geoelectrical model for the layers below the basement or hidden hill is created. On the basis of the above initial model, we present an effective and practical forward method, i.e., a model-matched approach to conduct forward inversion arithmetic. Finally, by the method of conjugate gradient iteration, a forward and backward iterative cal-culation is made. Taking No. 618 profile of Shengli Oil Field as an example, we have found out that the tectonic information that is unreflective in the seismic data below the basement is better reflected in the inversion result.
引用
收藏
页码:678 / 685
页数:8
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