随钻深度方位角电阻率随机反演是实现地质导向服务效率标准化的重要一步

M. Sviridov, A. Mosin, Sergey Lebedev, Ron D. Thompson
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引用次数: 0

摘要

在主动地质导向时,采用特殊的反演算法实时处理随钻测井电阻率工具的读数,为油田运营商提供地层模型,以做出明智的导向决策。目前,由于主要的工具供应商开发了他们自己的特定于设备的算法并在内部使用,因此没有针对反演交付物和相应质量指标的行业标准。本文首次实现了适用于任何感应电阻率工具的供应商中立反演方法,使作业者能够标准化各种地质导向服务的效率。这种通用反演方法的必要性受到了2016年由SPWLA电阻率特别兴趣小组发起的LWD深部方位电阻率服务标准化工作组活动的启发。所提出的反演算法利用一维层饼地层模型,逐层进行反演。可以确定以下模型参数:每层的水平电阻率和垂直电阻率、层边界位置和地层倾角。反演可以支持任意深方位感应电阻率工具,采用同轴、倾斜或正交发射和接收天线。反转完全是数据驱动的;它在自动模式下工作,仅从工具读数获得完全无偏的结果。该算法基于统计可逆跳马尔可夫链蒙特卡罗方法,该方法不需要任何关于地层结构的预先假设,即使模型中的层数未知,也可以搜索解释数据的模型。为了实现全局搜索,该算法运行多个能够相互交换状态的马尔可夫链,从局部最小值附近移动到模型参数空间的更透视图域。在执行过程中,反演保留了所处理的所有模型,以估计地层参数的分辨率精度,并生成若干质量指标。最终,这些指标与恢复的电阻率模型一起交付,以帮助操作人员评估反演结果的可靠性。为了保证反演的高性能,采用快速、准确的半解析正演求解器计算特定几何形状的工具及其导数对多层模型任意参数的响应要求。此外,该算法依赖于多个马尔可夫链的同时演化,使得该算法适合并行执行,大大减少了计算时间。在一系列综合实例和现场案例研究中,例如沿着油藏顶板或油砂中油水接触面附近的井导航,展示了所提出的反演方法的应用。所有场景的反演结果都证实了该算法能够在合理的计算时间内成功评估地层模型复杂性,恢复模型参数,并量化其不确定性。提出了一种与供应商无关的随机数据处理方法,实现了反演输出的标准化,包括电阻率模型及其质量指标,这有助于作业者更好地了解不同供应商的工具的能力,并最终做出更有信心的地质导向决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VENDOR-NEUTRAL STOCHASTIC INVERSION OF LWD DEEP AZIMUTHAL RESISTIVITY DATA AS A STEP TOWARD EFFICIENCY STANDARDIZATION OF GEOSTEERING SERVICES
While proactive geosteering, special inversion algorithms are used to process the readings of logging-while-drilling resistivity tools in real-time and provide oil field operators with formation models to make informed steering decisions. Currently, there is no industry standard for inversion deliverables and corresponding quality indicators because major tool vendors develop their own device-specific algorithms and use them internally. This paper presents the first implementation of vendor-neutral inversion approach applicable for any induction resistivity tool and enabling operators to standardize the efficiency of various geosteering services. The necessity of such universal inversion approach was inspired by the activity of LWD Deep Azimuthal Resistivity Services Standardization Workgroup initiated by SPWLA Resistivity Special Interest Group in 2016. Proposed inversion algorithm utilizes a 1D layer-cake formation model and is performed interval-by-interval. The following model parameters can be determined: horizontal and vertical resistivities of each layer, positions of layer boundaries, and formation dip. The inversion can support arbitrary deep azimuthal induction resistivity tool with coaxial, tilted, or orthogonal transmitting and receiving antennas. The inversion is purely data-driven; it works in automatic mode and provides fully unbiased results obtained from tool readings only. The algorithm is based on statistical reversible-jump Markov chain Monte Carlo method that does not require any predefined assumptions about the formation structure and enables searching of models explaining the data even if the number of layers in the model is unknown. To globalize search, the algorithm runs several Markov chains capable of exchanging their states between one another to move from the vicinity of local minimum to more perspective domain of model parameter space. While execution, the inversion keeps all models it is dealing with to estimate the resolution accuracy of formation parameters and generate several quality indicators. Eventually, these indicators are delivered together with recovered resistivity models to help operators with the evaluation of inversion results reliability. To ensure high performance of the inversion, a fast and accurate semi-analytical forward solver is employed to compute required responses of a tool with specific geometry and their derivatives with respect to any parameter of multi-layered model. Moreover, the reliance on the simultaneous evolution of multiple Markov chains makes the algorithm suitable for parallel execution that significantly decreases the computational time. Application of the proposed inversion is shown on a series of synthetic examples and field case studies such as navigating the well along the reservoir roof or near the oil-water-contact in oil sands. Inversion results for all scenarios confirm that the proposed algorithm can successfully evaluate formation model complexity, recover model parameters, and quantify their uncertainty within a reasonable computational time. Presented vendor-neutral stochastic approach to data processing leads to the standardization of the inversion output including the resistivity model and its quality indicators that helps operators to better understand capabilities of tools from different vendors and eventually make more confident geosteering decisions.
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