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Automatic processing of time domain induced polarization data using supervised artificial neural networks

机译:使用监督人工神经网络自动处理时域感应极化数据

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摘要

Processing of geophysical data is a time consuming task involving many different steps. One approach for accelerating and automating processing of geophysical data is to look towards machine learning (ML). ML encompasses a wide range of tools, which can be used to automate complicated and/or tedious tasks. We present strategies for automating the processing of time-domain induced polarization (IP) data using ML. An IP data set from Grindsted in Denmark is used to investigate the applicability of neural networks for processing such data. The Grindsted data set consists of eight profiles, with approximately 2000 data curves per profile, on average. Each curve needs to be processed, which, using the manual approach, can take 1-2 hr per profile. Around 20 per cent of the curves were manually processed and used to train and validate an artificial neural network. Once trained, the network could process all curves, in 6-15 s for each profile. The accuracy of the neural network, when considering the manual processing as a reference, is 90.8 per cent. At first, the network could not detect outlier curves, that is where entire chargeability curves were significantly different from their spatial neighbours. Therefore, an outlier curve detection algorithm was developed and implemented to work in tandem with the network. The automatic processing approach developed here, involving the neural network and the outlier curve detection, leads to similar inversion results as the manual processing, with the two significant advantages of reduced processing times and enhanced processing consistency.
机译:地球物理数据的处理是涉及许多不同步骤的耗时任务。加速和自动化地球物理数据处理的一种方法是朝向机器学习(ML)。 ML包含各种工具,可用于自动化复杂和/或繁琐的任务。我们使用ML提供自动化时域感应极化(IP)数据的策略。从丹麦磨削的IP数据集用于调查神经网络处理此类数据的适用性。磨削数据集由八个配置文件组成,每个配置文件大约2000个数据曲线,平均。需要处理每条曲线,使用手动方法,每种概况可能需要1-2小时。手动处理约20%的曲线并用于培训和验证人工神经网络。一旦培训,网络可以在6-15秒内处理所有曲线,用于每个配置文件。在考虑手动处理作为参考时,神经网络的准确性为90.8%。首先,网络无法检测到异常曲线,即整个充电能力曲线与其空间邻居显着不同。因此,开发并实施了异常曲线检测算法并实现与网络的串联工作。此处开发的自动处理方法,涉及神经网络和异常曲线检测,导致与手动处理相似的反转结果,具有减少的处理时间和增强的处理一致性的两个显着优点。

著录项

  • 来源
    《Geophysical Journal International》 |2020年第1期|312-325|共14页
  • 作者单位

    Aarhus Univ Dept Engn Geophys Instrumentat & Signal Proc DK-8200 Aarhus Denmark|Aarhus Univ Ctr Water Technol WATEC Ny Munkegade 114-166 DK-8000 Aarhus Denmark;

    Aarhus Univ Ctr Water Technol WATEC Ny Munkegade 114-166 DK-8000 Aarhus Denmark|Aarhus Univ HydroGeophys Grp Dept Geosci DK-8000 Aarhus Denmark;

    Aarhus Univ Dept Engn Geophys Instrumentat & Signal Proc DK-8200 Aarhus Denmark|Aarhus Univ Ctr Water Technol WATEC Ny Munkegade 114-166 DK-8000 Aarhus Denmark;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Hydrogeophysics; Electrical resistivity tomography (ER6); Neural networks, fuzzy logic;

    机译:水电站;电阻率断层扫描(ER6);神经网络;模糊逻辑;

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