Joint inversion of ERT and ambient noise surface wave data with DPC-guided fuzzy c-means clustering for near-surface imaging

IF 2.8 3区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS
Zhanjie Shi, Chao Wang
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Abstract

Summary We present a novel strategy for performing joint inversion with guided fuzzy c-means (GFCM) clustering coupling and apply it to electrical resistivity tomography (ERT) and ambient noise surface wave (ANSW) data. To accurately extract a priori clustering information, we use density peak clustering (DPC) rather than fuzzy c-means (FCM). The number and centres of resistivity and shear-wave velocity a priori clusters are extracted by DPC and then used to guide the joint inversion with the GFCM clustering coupling of ERT and ANSW data. Synthetic and field data are used to evaluate the flow and algorithm of DPC-GFCM clustering joint inversion. The results of synthetic examples show that the models recovered by the DPC-GFCM clustering joint inversion are nearly the same as the true models and are more accurate than those inverted using individual inversion and FCM-GFCM clustering joint inversion. In the field case, the depths of the stratigraphic interfaces shown in the resistivity and shear-wave velocity models inverted by DPC-GFCM clustering joint inversion are nearly consistent with those from the drilling data. In contrast, the strata recovered by the individual inversion and FCM-GFCM clustering joint inversion significantly differ from the drilling results. Both the synthetic and field examples verify the effectiveness of the DPC-GFCM clustering coupling method used for the joint inversion of ERT and ANSW data acquired from the near surface with strong heterogeneity. This novel approach can also be applied to other types of geophysical data.
利用 DPC 引导的模糊 c-means 聚类联合反演 ERT 和环境噪声面波数据,用于近地表成像
摘要 我们提出了一种利用引导模糊均值(GFCM)聚类耦合进行联合反演的新策略,并将其应用于电阻率层析成像(ERT)和环境噪声面波(ANSW)数据。为了准确提取先验聚类信息,我们使用了密度峰聚类(DPC)而不是模糊均值聚类(FCM)。通过 DPC 提取电阻率和剪切波速度先验聚类的数量和中心,然后用于指导 ERT 和 ANSW 数据的 GFCM 聚类耦合联合反演。合成数据和野外数据用于评估 DPC-GFCM 聚类联合反演的流程和算法。合成实例的结果表明,DPC-GFCM 聚类联合反演恢复的模型与真实模型基本一致,比单独反演和 FCM-GFCM 聚类联合反演的模型更加精确。在野外案例中,DPC-GFCM 聚类联合反演所反演的电阻率和剪切波速度模型所显示的地层界面深度与钻井数据几乎一致。相比之下,单独反演和 FCM-GFCM 聚类联合反演恢复的地层与钻探结果有很大差异。合成实例和现场实例都验证了 DPC-GFCM 聚类耦合方法在对从近地表获取的具有强异质性的 ERT 和 ANSW 数据进行联合反演时的有效性。这种新方法也可应用于其他类型的地球物理数据。
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来源期刊
Geophysical Journal International
Geophysical Journal International 地学-地球化学与地球物理
CiteScore
5.40
自引率
10.70%
发文量
436
审稿时长
3.3 months
期刊介绍: Geophysical Journal International publishes top quality research papers, express letters, invited review papers and book reviews on all aspects of theoretical, computational, applied and observational geophysics.
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