Alexander M. Mitkus, Timothy Gee, Tannor Ziehm, Andrew Paré, Kenneth McCarthy, Paul Reynerson, Marc E. Willerth
{"title":"贝叶斯方法如何克服自动地质导向中的数据噪声和解释歧义","authors":"Alexander M. Mitkus, Timothy Gee, Tannor Ziehm, Andrew Paré, Kenneth McCarthy, Paul Reynerson, Marc E. Willerth","doi":"10.2118/212544-ms","DOIUrl":null,"url":null,"abstract":"\n Geosteering solves for a drill bit's stratigraphic location to optimally guide a wellbore through a target formation. Geosteering solutions focus on correlating a subject well's real-time measurements to a type log representative of the stratigraphic column. Traditionally, this is done by matching localized sections of each log with a combination of shifts and stretches applied. This is a single-solution-at-a-time approach where only the best correlation is represented, as determined subjectively by a human or via algorithmic minimization of differences between measurements (Maus et al 2020). A method that considers the full space of possible stratigraphic interpretations and assigns a complexity-related correctness likelihood to each would give geosteerers greater confidence in selecting the correct interpretation. This would be a prohibitively large space to explore via traditional optimization and inversion methods, but it is possible through application of a Viterbi algorithm to a Bayesian state space matrix.\n A set of 1440 synthetic geosteering trials was generated by producing a geologically realistic layer cake, passing a well trajectory through it, and simulating realistically corrupted gamma measurements (reflecting sampling rate, calibration error, and measurement noise). This gives a true solution for accuracy comparison, and a realistic log that can be interpreted as follows: a Bayesian state space matrix is constructed which captures the likelihood of correlation between subject well and type log measurements. Prior knowledge is used to inform a state-transition probability matrix. The Viterbi algorithm is then applied to the state space matrix and state-transition probability matrix to determine the highest likelihood interpretation.\n The trial data was split 80/20 into training and test sets. For the training data, three metrics were used to tune the algorithm: mean distance from true solution; misfit ratio against true solution, and algorithm runtime. On the remaining test data, highest-likelihood paths were compared to the interpretations generated by an existing residual-minimizing automated geosteering algorithm (Gee et al 2019). Performance was analyzed separately in the vertical, curve, and lateral, and solutions were spot-checked for reasonable behavior.\n Compared to the existing automated method, the Bayesian method produced interpretations with comparable performance in 59% of laterals, and significantly improved performance in 34% of laterals. It also returned results 30 times faster. These results held over several sets of tuning parameters suggesting robustness. A well-tuned Bayesian algorithm has been shown to outperform existing automated methods on performance and accuracy, signifying a potential step change in the space of automated geosteering.\n Viterbi is an established algorithm with many applications, but the splitting of stratigraphic mappings into a Bayesian state space and application of Viterbi is novel and allows for efficient, probabilistic solution-finding. The whole space of possible solutions can be considered, and implicitly gives solution likelihoods. The technique also accounts for the complexity of produced solutions.","PeriodicalId":255336,"journal":{"name":"Day 3 Thu, March 09, 2023","volume":"38 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-03-07","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"How a Bayesian Approach Can Overcome Noisy Data and Interpretation Ambiguity in Automated Geosteering\",\"authors\":\"Alexander M. Mitkus, Timothy Gee, Tannor Ziehm, Andrew Paré, Kenneth McCarthy, Paul Reynerson, Marc E. Willerth\",\"doi\":\"10.2118/212544-ms\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"\\n Geosteering solves for a drill bit's stratigraphic location to optimally guide a wellbore through a target formation. Geosteering solutions focus on correlating a subject well's real-time measurements to a type log representative of the stratigraphic column. Traditionally, this is done by matching localized sections of each log with a combination of shifts and stretches applied. This is a single-solution-at-a-time approach where only the best correlation is represented, as determined subjectively by a human or via algorithmic minimization of differences between measurements (Maus et al 2020). A method that considers the full space of possible stratigraphic interpretations and assigns a complexity-related correctness likelihood to each would give geosteerers greater confidence in selecting the correct interpretation. This would be a prohibitively large space to explore via traditional optimization and inversion methods, but it is possible through application of a Viterbi algorithm to a Bayesian state space matrix.\\n A set of 1440 synthetic geosteering trials was generated by producing a geologically realistic layer cake, passing a well trajectory through it, and simulating realistically corrupted gamma measurements (reflecting sampling rate, calibration error, and measurement noise). This gives a true solution for accuracy comparison, and a realistic log that can be interpreted as follows: a Bayesian state space matrix is constructed which captures the likelihood of correlation between subject well and type log measurements. Prior knowledge is used to inform a state-transition probability matrix. The Viterbi algorithm is then applied to the state space matrix and state-transition probability matrix to determine the highest likelihood interpretation.\\n The trial data was split 80/20 into training and test sets. For the training data, three metrics were used to tune the algorithm: mean distance from true solution; misfit ratio against true solution, and algorithm runtime. On the remaining test data, highest-likelihood paths were compared to the interpretations generated by an existing residual-minimizing automated geosteering algorithm (Gee et al 2019). Performance was analyzed separately in the vertical, curve, and lateral, and solutions were spot-checked for reasonable behavior.\\n Compared to the existing automated method, the Bayesian method produced interpretations with comparable performance in 59% of laterals, and significantly improved performance in 34% of laterals. It also returned results 30 times faster. These results held over several sets of tuning parameters suggesting robustness. A well-tuned Bayesian algorithm has been shown to outperform existing automated methods on performance and accuracy, signifying a potential step change in the space of automated geosteering.\\n Viterbi is an established algorithm with many applications, but the splitting of stratigraphic mappings into a Bayesian state space and application of Viterbi is novel and allows for efficient, probabilistic solution-finding. The whole space of possible solutions can be considered, and implicitly gives solution likelihoods. 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引用次数: 0
摘要
地质导向解决了钻头的地层位置问题,以最佳方式引导井眼穿过目标地层。地质导向解决方案的重点是将目标井的实时测量数据与具有代表性的地层柱类型测井数据相关联。传统上,这是通过将每个原木的局部部分与移位和拉伸相匹配来完成的。这是一种一次单一解决方案的方法,其中仅表示最佳相关性,由人类主观确定或通过算法最小化测量之间的差异(Maus等,2020)。如果一种方法考虑了所有可能的地层解释,并为每种解释分配了与复杂性相关的正确可能性,那么地质导向员在选择正确解释时就会有更大的信心。通过传统的优化和反演方法,这将是一个令人望而却步的大空间,但通过将Viterbi算法应用于贝叶斯状态空间矩阵,这是可能的。通过制作地质上真实的层饼,通过井眼轨迹,模拟真实损坏的伽马测量(反映采样率、校准误差和测量噪声),生成了1440组合成地质导向试验。这为精度比较提供了一个真正的解决方案,并且可以解释如下的现实日志:构建贝叶斯状态空间矩阵,该矩阵捕获主题井和类型日志测量之间的相关性的可能性。使用先验知识来通知状态转移概率矩阵。然后将Viterbi算法应用于状态空间矩阵和状态转移概率矩阵,确定最高似然解释。试验数据按80/20分成训练集和测试集。对于训练数据,使用三个指标来调整算法:与真解的平均距离;与真解的不匹配比率,以及算法运行时间。在剩余的测试数据上,将最高似然路径与现有残差最小化自动地质导向算法生成的解释进行比较(Gee et al, 2019)。分别分析了垂直、曲线和水平段的性能,并对解决方案进行了抽查,以确定其合理性能。与现有的自动化方法相比,贝叶斯方法在59%的分支井的解释效果相当,在34%的分支井的解释效果显著提高。它的返回速度也快了30倍。这些结果适用于几组调优参数,表明鲁棒性。经过优化的贝叶斯算法在性能和精度上都优于现有的自动化方法,这标志着自动地质导向领域的潜在变化。Viterbi是一种已建立的算法,有许多应用,但将地层映射分解为贝叶斯状态空间和Viterbi的应用是新颖的,可以实现高效、概率的解查找。可以考虑整个可能解的空间,并隐式给出解的似然。该技术还解释了生成的解决方案的复杂性。
How a Bayesian Approach Can Overcome Noisy Data and Interpretation Ambiguity in Automated Geosteering
Geosteering solves for a drill bit's stratigraphic location to optimally guide a wellbore through a target formation. Geosteering solutions focus on correlating a subject well's real-time measurements to a type log representative of the stratigraphic column. Traditionally, this is done by matching localized sections of each log with a combination of shifts and stretches applied. This is a single-solution-at-a-time approach where only the best correlation is represented, as determined subjectively by a human or via algorithmic minimization of differences between measurements (Maus et al 2020). A method that considers the full space of possible stratigraphic interpretations and assigns a complexity-related correctness likelihood to each would give geosteerers greater confidence in selecting the correct interpretation. This would be a prohibitively large space to explore via traditional optimization and inversion methods, but it is possible through application of a Viterbi algorithm to a Bayesian state space matrix.
A set of 1440 synthetic geosteering trials was generated by producing a geologically realistic layer cake, passing a well trajectory through it, and simulating realistically corrupted gamma measurements (reflecting sampling rate, calibration error, and measurement noise). This gives a true solution for accuracy comparison, and a realistic log that can be interpreted as follows: a Bayesian state space matrix is constructed which captures the likelihood of correlation between subject well and type log measurements. Prior knowledge is used to inform a state-transition probability matrix. The Viterbi algorithm is then applied to the state space matrix and state-transition probability matrix to determine the highest likelihood interpretation.
The trial data was split 80/20 into training and test sets. For the training data, three metrics were used to tune the algorithm: mean distance from true solution; misfit ratio against true solution, and algorithm runtime. On the remaining test data, highest-likelihood paths were compared to the interpretations generated by an existing residual-minimizing automated geosteering algorithm (Gee et al 2019). Performance was analyzed separately in the vertical, curve, and lateral, and solutions were spot-checked for reasonable behavior.
Compared to the existing automated method, the Bayesian method produced interpretations with comparable performance in 59% of laterals, and significantly improved performance in 34% of laterals. It also returned results 30 times faster. These results held over several sets of tuning parameters suggesting robustness. A well-tuned Bayesian algorithm has been shown to outperform existing automated methods on performance and accuracy, signifying a potential step change in the space of automated geosteering.
Viterbi is an established algorithm with many applications, but the splitting of stratigraphic mappings into a Bayesian state space and application of Viterbi is novel and allows for efficient, probabilistic solution-finding. The whole space of possible solutions can be considered, and implicitly gives solution likelihoods. The technique also accounts for the complexity of produced solutions.