使用可解释贝叶斯优化集合学习算法的自动迷失循环严重程度分类和缓解系统

IF 2.4 4区 工程技术 Q3 ENERGY & FUELS
Haytham Elmousalami, Ibrahim Sakr
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引用次数: 0

摘要

在极端压力和温度条件下,循环损失和泥浆损失占钻井作业成本的 10%至 20%。因此,本研究引入了一个自动循环损失严重程度分类和缓解系统(ALCSCMS)的集成系统。该系统允许决策者在开始钻井作业之前,根据一些钻井驱动因素可靠地预测循环损失严重程度(LCS)。提议的系统基于收集到的 65,377 个观测数据,开发并比较了总共 11 个集合机器学习(EML)。对于生成的每种算法,拟议系统都进行了贝叶斯优化,以获得最佳结果。结果,根据测试数据集,优化后的随机森林(RF)模型算法是分类的最佳模型,分类准确率达到 100%。系统采用了基于遗传算法的缓解优化模型,将高严重等级转化为可接受的循环损失等级。该系统将 LCS 分为 5 级,其中 2 至 4 级被转换为 0 级或 1 级,以通过优化输入参数将循环损失严重程度降至最低。因此,所提出的模型在预测和减轻钻井作业中的循环损失方面是可靠的。使用 SHapley Additive exPlanations(SHAP)方法解释了作为 LCS 输入的主要驱动因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automated lost circulation severity classification and mitigation system using explainable Bayesian optimized ensemble learning algorithms

Automated lost circulation severity classification and mitigation system using explainable Bayesian optimized ensemble learning algorithms

Lost circulation and mud losses cause 10 to 20% of the cost of drilling operations under extreme pressure and temperature conditions. Therefore, this research introduces an integrated system for an automated lost circulation severity classification and mitigation system (ALCSCMS). This proposed system allows decision makers to reliability predict lost circulation severity (LCS) based on a few drilling drivers before starting drilling operations. The proposed system developed and compared a total of 11 ensemble machine learning (EML) based on collection 65,377 observations, the data was pre-processed, cleaned, and normalized to be filtered using factor analysis. For each generated algorithm, the proposed system performed Bayesian optimization to acquire the best possible results. As a result, the optimized random forests (RF) model algorithm was the optimal model for classification at 100% classification accuracy based on testing data set. Mitigation optimization model based on genetic algorithm has been incorporated to convert high severe classes into acceptable classes of lost circulation. The system classifies the LCS into 5 classes where the classes from 2 to 4 are converted to be class 0 or 1 to minimize lost circulation severity by optimizing the input parameters. Therefore, the proposed model is reliable to predict and mitigate lost circulation during drilling operations. The main drivers that served as LCS inputs were explained using the SHapley Additive exPlanations (SHAP) approach.

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来源期刊
CiteScore
5.90
自引率
4.50%
发文量
151
审稿时长
13 weeks
期刊介绍: The Journal of Petroleum Exploration and Production Technology is an international open access journal that publishes original and review articles as well as book reviews on leading edge studies in the field of petroleum engineering, petroleum geology and exploration geophysics and the implementation of related technologies to the development and management of oil and gas reservoirs from their discovery through their entire production cycle. Focusing on: Reservoir characterization and modeling Unconventional oil and gas reservoirs Geophysics: Acquisition and near surface Geophysics Modeling and Imaging Geophysics: Interpretation Geophysics: Processing Production Engineering Formation Evaluation Reservoir Management Petroleum Geology Enhanced Recovery Geomechanics Drilling Completions The Journal of Petroleum Exploration and Production Technology is committed to upholding the integrity of the scientific record. As a member of the Committee on Publication Ethics (COPE) the journal will follow the COPE guidelines on how to deal with potential acts of misconduct. Authors should refrain from misrepresenting research results which could damage the trust in the journal and ultimately the entire scientific endeavor. Maintaining integrity of the research and its presentation can be achieved by following the rules of good scientific practice as detailed here: https://www.springer.com/us/editorial-policies
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