Time Series Data Inversion and Monitoring Method for Cross-Hole ERT Based on an Improved Extended Kalman Filter

IF 1 4区 工程技术 Q4 ENGINEERING, GEOLOGICAL Journal of Environmental and Engineering Geophysics Pub Date : 2021-09-01 DOI:10.32389/jeeg20-051
Zhengyu Liu, Yongheng Zhang, Xinxin Zhang, Huaihong Wang, L. Nie, Xinji Xu, Ning Wang, Ningbo Li
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Abstract

In recent decades, the DC resistivity method has been applied to geophysical monitoring because of its sensitivity to hydrogeological properties. However, existing inversion algorithms cannot give a reasonable image if fluid migration is sudden and unpredictable. Additionally, systematic or measurement errors can severely interfere with accurate object location. To address these issues, we propose an improved time series inversion method for cross-hole electrical resistivity tomography (cross-hole ERT) based on the Extended Kalman Filter (EKF). Traditional EKF includes two steps to obtain the current model state: prediction and correction. We improved the prediction step by introducing the grey time series prediction method to create a new regular model sequence that can infer the potential trend of underground resistivity changes and provide a prior estimation state for reference during the next moment. To include more current information in the prior estimation state and decrease the non-uniqueness, the prediction model needs to be further updated by the least-squares method. For the correction step, we used single time-step multiple filtering to better deal with the case of sudden and rapid changes. We designed three different numerical tests simulating rapid changes in a fluid to validate the proposed method. The proposed method can capture rapid changes in the groundwater transport rate and direction of the groundwater movement for real-time imaging. Model and field experiments were performed. The inversion results of the model experiment were generally consistent with the results of dye tracing, and the groundwater behavior in the field experiment was consistent with the predicted groundwater evolution process.
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基于改进扩展卡尔曼滤波的跨孔ERT时间序列数据反演与监测方法
近几十年来,直流电阻率法因其对水文地质性质的敏感性而被广泛应用于地球物理监测。然而,当流体迁移具有突发性和不可预测性时,现有的反演算法无法给出合理的图像。此外,系统或测量误差会严重干扰精确的目标定位。为了解决这些问题,我们提出了一种改进的基于扩展卡尔曼滤波(EKF)的跨井电阻率层析成像(cross-hole ERT)时间序列反演方法。传统的EKF包括预测和修正两个步骤来获得模型的当前状态。通过引入灰色时间序列预测方法,改进预测步骤,建立新的规则模型序列,可以推断地下电阻率变化的潜在趋势,并为下一时刻提供先验估计状态参考。为了在先验估计状态下包含更多的当前信息,降低预测模型的非唯一性,需要用最小二乘法进一步更新预测模型。对于校正步骤,我们使用单时间步长多重滤波,以更好地处理突然和快速变化的情况。我们设计了三个不同的数值测试来模拟流体的快速变化,以验证所提出的方法。该方法可以捕捉地下水运移速率和运动方向的快速变化,实现实时成像。进行了模型试验和现场试验。模型试验反演结果与染料示踪结果基本一致,现场试验中地下水行为与预测的地下水演化过程基本一致。
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来源期刊
Journal of Environmental and Engineering Geophysics
Journal of Environmental and Engineering Geophysics 地学-地球化学与地球物理
CiteScore
2.70
自引率
0.00%
发文量
13
审稿时长
6 months
期刊介绍: The JEEG (ISSN 1083-1363) is the peer-reviewed journal of the Environmental and Engineering Geophysical Society (EEGS). JEEG welcomes manuscripts on new developments in near-surface geophysics applied to environmental, engineering, and mining issues, as well as novel near-surface geophysics case histories and descriptions of new hardware aimed at the near-surface geophysics community.
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