Sensitivity-based data reduction of large 3D DC/IP surveys

Sarah G. R. Devriese, R. Ellis, K. Witherly
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Abstract

Summary In this paper, we present an algorithm based on the sensitivity of the data to the model space to reduce the large amount of data commonly collected during 3D DC/IP surveys to only those most relevant and important to the model space. The sensitivity-based data reduction (SBDR) algorithm is demonstrated using both synthetic and field data examples. The results indicate that the SBDR recovered models are valid solutions to the full inversion problem but require a fraction of the computation time and resources, providing a geologic solution in a much shorter time than required to solve the full inversion problem.
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基于灵敏度的大型三维DC/IP勘探数据简化
在本文中,我们提出了一种基于数据对模型空间敏感性的算法,将3D DC/IP调查中通常收集的大量数据减少到与模型空间最相关和最重要的数据。基于灵敏度的数据约简(SBDR)算法通过综合和现场数据实例进行了验证。结果表明,SBDR恢复模型是解决全反演问题的有效方法,但只需要一小部分计算时间和资源,比解决全反演问题所需的时间短得多。
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