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Self-Potential Data Inversion for Environmental and Hydrogeological Investigations

机译:环境和水文地质调查的自我潜力数据反演

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In this paper, we present a robust 2-D self-potential (SP) inversion algorithm that has proven to be suitable for both environmental and hydrogeological applications. The work proposed here continues from the recent advances in theoretical and experimental aspects of the self-potential method by detecting the depth and the shape of shallow electrical current density sources using the least square subspace preconditioned (LSQR) method to compute (an approximation to) the standard-form Tikhonov solution. The preconditioner is based on the subspace defined by the columns of the Kernel matrix and the method adopted for choosing the fixed value of the regularization parameter is the generalized cross-validation. The decrease of resolution, due to the fact that the self-potential field decays quickly with the distance, is controlled by a depth weighting matrix. A laboratory experimental setup has been assembled for locating two buried ferro-metallic bodies of any size at different depths using the inversion of self-potential signals associated with the redox process. The inverse problem is solved by accounting for the electrical conductivity distribution and the self-potential data in order to recover the source current density vector field. Both synthetic and real simulations, performed on a sand model with anomalies included, provide low-error inverted models whereas anomalies are well-detected for position and shape. The inversion algorithm has been also applied to a field data set collected in the San Vittorino Plain, located in Central Italy, in order to identify the location of sinkholes and investigate the effects of different resistivity structure assumptions on the streaming potential inversion results.
机译:在本文中,我们提出了一种坚固的2-D自电(SP)反转算法,已被证明适用于环境和水文地质应用。通过使用最小二乘子空间预处理(LSQR)方法来计算(LSQR)方法来计算浅电流密度源的深度和形状,在此处提出的工作中提出的工作和实验方面的近期的进步。标准形式的Tikhonov解决方案。前提者基于由内核矩阵的列定义的子空间,并且用于选择正则化参数的固定值的方法是广义交叉验证。由于自我电位场衰减快速与距离衰减的事实,通过深度加权矩阵来控制,分辨率降低。使用与氧化还原过程相关的自势信号的反转,已经组装了实验室实验装置,用于在不同深度处定位任何大小的任何尺寸的任何尺寸的埋入铁金属体。通过算用于电导率分布和自势数据来解决逆问题,以恢复源电流密度矢量字段。合成和实际仿真既包括包含异常的砂模拟,提供低误差倒置模型,而异常被检测到位置和形状。反转算法也已应用于位于意大利中部的San Vittorino Plang的现场数据集,以识别下沉孔的位置,并研究不同电阻率结构假设对流潜在反演结果的影响。

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