核磁共振水力导率与不同水力测试方法的比较。

IF 2 4区 地球科学 Q3 GEOSCIENCES, MULTIDISCIPLINARY
Groundwater Pub Date : 2025-09-07 DOI:10.1111/gwat.70016
Chenxi Wang, Colby M. Steelman, Zeren Ning, David O. Walsh, Walter A. Illman
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引用次数: 0

摘要

钻孔核磁共振(NMR)可用于估算松散材料的水力导率(K)。人们开发了各种岩石物理模型来预测基于核磁共振响应的K,并在优化特定位点常数方面做了大量工作。在这项研究中,我们评估了核磁共振测井在高度非均质冰川河流沉积中估计钾的效用,将其与三种同址水力测试方法的钾测量结果进行比较,包括渗透率仪、多级段塞流和直接推入水力剖面工具(HPT)测井测试。采用Schlumberger-Doll Research (SDR)、Seevers、Sum-of-Echoes (SOE)和Kozeny-Godefroy (KGM) 4种核磁共振模型在4个地点构建K剖面,并利用基于渗透率的K优化模型常数,得到了适合冰川河流沉积的模型常数。结果表明,核磁共振测井可以为砂/砾石、粉砂和粘土互层提供可靠的K估计。通过核磁共振得出的钾剖面的孔间比较,可以很容易地绘制出含水层/含水层的钾变化趋势和大小。定量地说,核磁共振得出的K与水力试验K一致,最优模型拟合在一个数量级以内。我们注意到(1)Seevers在预测渗透率和段塞流测试数据方面的表现与SDR相似,但并不优于SDR;(2) SOE的预测结果略好于SDR;(3) SDR中孔隙度的去除并未影响其预测结果,优化后的SDR常数与冰川沉积物的文献值相似;(4) KGM与基于段塞液的K的拟合最优,证明了其可靠的性能。最后,对选择合适的岩石物理模型提出了建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Comparison of NMR-Derived Hydraulic Conductivity with Various Hydraulic Testing Methods

Comparison of NMR-Derived Hydraulic Conductivity with Various Hydraulic Testing Methods

Comparison of NMR-Derived Hydraulic Conductivity with Various Hydraulic Testing Methods

Comparison of NMR-Derived Hydraulic Conductivity with Various Hydraulic Testing Methods

Comparison of NMR-Derived Hydraulic Conductivity with Various Hydraulic Testing Methods

Borehole nuclear magnetic resonance (NMR) can be used to estimate the hydraulic conductivity (K) of unconsolidated materials. Various petrophysical models have been developed to predict K based on NMR response, with considerable efforts on optimizing site-specific constants. In this study, we assessed the utility of NMR logs to estimate K within highly heterogeneous glaciofluvial deposits by comparing them with K measurements from three types of co-located hydraulic testing methods, including permeameter, multi-level slug, and direct-push hydraulic profiling tool (HPT) logging tests. Four NMR models, including Schlumberger-Doll Research (SDR), Seevers, Sum-of-Echoes (SOE), and Kozeny-Godefroy (KGM), were applied to construct K profiles at four locations with model constants optimized using permeameter-based K. Model constants suitable for glaciofluvial deposits were provided. Results showed that NMR logging can provide reliable K estimates for interbedded layers of sand/gravel, silt, and clay. Through cross-hole comparison of NMR-derived K profiles, the trends and magnitudes of K for aquifers/aquitards were readily mapped. Quantitatively, the NMR-derived K coincided with hydraulic-testing K, with optimal model fits within one order of magnitude. We noticed that (1) Seevers performed similarly but no better than SDR in predicting permeameter and slug testing measurements; (2) SOE yielded slightly better predictions than SDR; (3) the removal of porosity in SDR did not deteriorate its prediction, and the optimized SDR constant resembled the literature-based values for glacial deposits; and (4) KGM yielded the optimal fits with slug-based K, demonstrating its reliable performance. Lastly, we made recommendations on selecting suitable petrophysical models.

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来源期刊
Groundwater
Groundwater 环境科学-地球科学综合
CiteScore
4.80
自引率
3.80%
发文量
0
审稿时长
12-24 weeks
期刊介绍: Ground Water is the leading international journal focused exclusively on ground water. Since 1963, Ground Water has published a dynamic mix of papers on topics related to ground water including ground water flow and well hydraulics, hydrogeochemistry and contaminant hydrogeology, application of geophysics, groundwater management and policy, and history of ground water hydrology. This is the journal you can count on to bring you the practical applications in ground water hydrology.
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