Matt Walker, Alistair Crosby, Angus Lomas, Eric Kazlauskas, Reetam Biswas, Pedro Paramo, Kevin Wolf, Madhav Vyas
{"title":"Novel approaches to uncertainty estimation in seismic subsurface characterization","authors":"Matt Walker, Alistair Crosby, Angus Lomas, Eric Kazlauskas, Reetam Biswas, Pedro Paramo, Kevin Wolf, Madhav Vyas","doi":"10.1190/tle43060347.1","DOIUrl":null,"url":null,"abstract":"Uncertainty estimation in subsurface characterization workflows is an important input to decision-making in earth science-related problems. We present three methods to characterize seismic-related uncertainty, each of which includes a real data case study. Two of these methods are designed to characterize depth uncertainty in positioning of migrated reflectors. Such estimates may be used in derisking well depth prognoses, analysis of well misties, and for estimating ranges on resource volume. The first method derives rapid and robust estimates of depth uncertainty around an existing velocity model using traditional velocity analysis to constrain the solution space while limiting a-priori constraints, consistent with a frequentist approach to uncertainty characterization. The second method characterizes depth uncertainty more rigorously in respect to the physics and prior information available by performing full-waveform inversion in a Bayesian framework. This method produces similar uncertainty estimates to the first in the case of simple velocity models but is more accurate where the overburden is complex; however, it requires significantly greater computational expense, thus limiting current practical applications. The third method is an amplitude variation with angle (AVA) inversion for reservoir properties designed to output uncertainty products for interpreters, utilizing the Bayesian framework and Zoeppritz equations to define the forward physics. Application to an offshore Egypt field demonstrates that it can generate reliable estimates of reservoir properties (e.g., lithofluid type or shale volume) including uncertainty, useful in various parts of subsurface characterization. These results also show that the method could provide improved point estimates of reservoir properties compared to conventional deterministic AVA inversion approaches. There is usually a trade-off between increasing the accuracy of subsurface characterization versus creating faster, less expensive, and more readily understood workflows for practitioners. We discuss how the relative importance of these competing factors should be considered within the context of how the outputs will be used.","PeriodicalId":507626,"journal":{"name":"The Leading Edge","volume":"38 21","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-06-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"The Leading Edge","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1190/tle43060347.1","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Uncertainty estimation in subsurface characterization workflows is an important input to decision-making in earth science-related problems. We present three methods to characterize seismic-related uncertainty, each of which includes a real data case study. Two of these methods are designed to characterize depth uncertainty in positioning of migrated reflectors. Such estimates may be used in derisking well depth prognoses, analysis of well misties, and for estimating ranges on resource volume. The first method derives rapid and robust estimates of depth uncertainty around an existing velocity model using traditional velocity analysis to constrain the solution space while limiting a-priori constraints, consistent with a frequentist approach to uncertainty characterization. The second method characterizes depth uncertainty more rigorously in respect to the physics and prior information available by performing full-waveform inversion in a Bayesian framework. This method produces similar uncertainty estimates to the first in the case of simple velocity models but is more accurate where the overburden is complex; however, it requires significantly greater computational expense, thus limiting current practical applications. The third method is an amplitude variation with angle (AVA) inversion for reservoir properties designed to output uncertainty products for interpreters, utilizing the Bayesian framework and Zoeppritz equations to define the forward physics. Application to an offshore Egypt field demonstrates that it can generate reliable estimates of reservoir properties (e.g., lithofluid type or shale volume) including uncertainty, useful in various parts of subsurface characterization. These results also show that the method could provide improved point estimates of reservoir properties compared to conventional deterministic AVA inversion approaches. There is usually a trade-off between increasing the accuracy of subsurface characterization versus creating faster, less expensive, and more readily understood workflows for practitioners. We discuss how the relative importance of these competing factors should be considered within the context of how the outputs will be used.
地下表层特征描述工作流程中的不确定性估计是地球科学相关问题决策的重要输入。我们介绍了三种表征地震相关不确定性的方法,每种方法都包含一个真实数据案例研究。其中两种方法旨在描述迁移反射体定位深度的不确定性。这些估计值可用于油井深度预报的除险、油井误差分析以及资源量范围估计。第一种方法利用传统的速度分析方法,对现有速度模型周围的深度不确定性进行快速、稳健的估算,在限制先验约束的同时约束求解空间,符合不确定性特征描述的频数主义方法。第二种方法通过在贝叶斯框架下进行全波形反演,根据现有的物理和先验信息,更严格地确定深度不确定性的特征。在简单速度模型的情况下,这种方法产生的不确定性估计值与第一种方法相似,但在覆盖层复杂的情况下,这种方法更为精确;不过,它需要的计算费用要高得多,因此限制了目前的实际应用。第三种方法是利用贝叶斯框架和 Zoeppritz 方程定义前向物理,对储层属性进行振幅随角度变化(AVA)反演,旨在为解释人员输出不确定性产品。该方法在埃及近海油田的应用表明,它可以生成包括不确定性在内的储层属性(如岩石流体类型或页岩体积)的可靠估计值,在地下特征描述的各个部分都很有用。这些结果还表明,与传统的确定性 AVA 反演方法相比,该方法可以提供更好的储层属性点估算。在提高地下表层特征描述精度与为从业人员创建更快、更便宜、更易于理解的工作流程之间,通常需要权衡利弊。我们将讨论如何根据输出结果的用途来考虑这些竞争因素的相对重要性。