W. Tolioe, L. Hanalim, Joely Bt A Ghafar, T. S. Murugesu
{"title":"Integrated Advance Petrophysical Evaluation for Heterolithic Clastics Reservoir Characterization Optimization in Malay Basin","authors":"W. Tolioe, L. Hanalim, Joely Bt A Ghafar, T. S. Murugesu","doi":"10.4043/31452-ms","DOIUrl":null,"url":null,"abstract":"\n In an oil producing S-field within Malay basin, the existence of heterolithic and thinly laminated reservoirs are common. Standard resolution logging tools are incapable to separate inter-bedded sand-shale layers due to their low vertical resolutions and the conventional petrophysical workflow was not robust enough in capturing the actual properties of the laminated sand shale (LSS) reservoirs in S-field. As a result, the estimated permeability did not match the core permeability and required a significantly high multipliers in the dynamic model and the calculated saturation failed to match the Dean-Stark saturation. This paper explains the limitation of the conventional analysis in LSS reservoir and highlights the use of PETRONAS Thin Bed Analysis (TBA) module to estimate the actual reservoir properties in S-field.\n The case study in this paper shows the best practice to construct the robust fieldwide evaluation of reservoir properties, integrating core to production data and advance logs information, to determine reservoir properties. In LSS reservoirs, the conventional petrophysics outputs are often pessimistic compared to core data. Reservoir Enhancement Modeling and Reservoir Fraction Modeling (REM-RFM) is an in-house PETRONAS TBA methodology for evaluating LSS reservoirs. REM-RFM workflow is designed to obtain the net sand fraction and the actual reservoir properties to describe the reservoirs storage and flow capacity. Sand-shale lamination was quantified by digital core analysis, core UV light binning against the borehole image logs. The triaxial resistivity logs were used as inputs for the Thomas-Stieber method to determine the net sand fraction and the hydrocarbon saturation. Nuclear Magnetic Resonance (NMR) data was also incorporated to confirm the hydrocarbon pore volume on well level.\n The REM-RFM workflow resulted in the improved reservoir properties compared to the conventional evaluation and were better matched to the core. In the laminated sands, the enhanced shale volume was comparable to the sand streaks seen in UV fluorescence core photo and image logs data, as well the enhanced porosity and permeability were matching well with the core data. Moreover, the water saturation was matching to the saturation from dean-stark core analysis result, comparable to saturation height function model and NMR data, and REM-RFM output were comparable to Thomas-Stieber results. Once the REM-RFM was calibrated in the key wells, the parameters were then applied to the whole field.\n The in-house REM-RFM module discussed in this paper is an excellent addition to other industry methodologies. This module is basically a continuation of the innovative effort to characterize the conventional clastic reservoirs model performed earlier. It has been proven by applying robust evaluation, the conventional outputs are significantly improved that led to the optimizes the obvious volume of hydrocarbon estimated. In addition to that, the results can be used for reducing the risks in monetizing the opportunities from the heterolithics and laminated sands.","PeriodicalId":11011,"journal":{"name":"Day 3 Thu, March 24, 2022","volume":"10 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2022-03-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Day 3 Thu, March 24, 2022","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.4043/31452-ms","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 1
Abstract
In an oil producing S-field within Malay basin, the existence of heterolithic and thinly laminated reservoirs are common. Standard resolution logging tools are incapable to separate inter-bedded sand-shale layers due to their low vertical resolutions and the conventional petrophysical workflow was not robust enough in capturing the actual properties of the laminated sand shale (LSS) reservoirs in S-field. As a result, the estimated permeability did not match the core permeability and required a significantly high multipliers in the dynamic model and the calculated saturation failed to match the Dean-Stark saturation. This paper explains the limitation of the conventional analysis in LSS reservoir and highlights the use of PETRONAS Thin Bed Analysis (TBA) module to estimate the actual reservoir properties in S-field.
The case study in this paper shows the best practice to construct the robust fieldwide evaluation of reservoir properties, integrating core to production data and advance logs information, to determine reservoir properties. In LSS reservoirs, the conventional petrophysics outputs are often pessimistic compared to core data. Reservoir Enhancement Modeling and Reservoir Fraction Modeling (REM-RFM) is an in-house PETRONAS TBA methodology for evaluating LSS reservoirs. REM-RFM workflow is designed to obtain the net sand fraction and the actual reservoir properties to describe the reservoirs storage and flow capacity. Sand-shale lamination was quantified by digital core analysis, core UV light binning against the borehole image logs. The triaxial resistivity logs were used as inputs for the Thomas-Stieber method to determine the net sand fraction and the hydrocarbon saturation. Nuclear Magnetic Resonance (NMR) data was also incorporated to confirm the hydrocarbon pore volume on well level.
The REM-RFM workflow resulted in the improved reservoir properties compared to the conventional evaluation and were better matched to the core. In the laminated sands, the enhanced shale volume was comparable to the sand streaks seen in UV fluorescence core photo and image logs data, as well the enhanced porosity and permeability were matching well with the core data. Moreover, the water saturation was matching to the saturation from dean-stark core analysis result, comparable to saturation height function model and NMR data, and REM-RFM output were comparable to Thomas-Stieber results. Once the REM-RFM was calibrated in the key wells, the parameters were then applied to the whole field.
The in-house REM-RFM module discussed in this paper is an excellent addition to other industry methodologies. This module is basically a continuation of the innovative effort to characterize the conventional clastic reservoirs model performed earlier. It has been proven by applying robust evaluation, the conventional outputs are significantly improved that led to the optimizes the obvious volume of hydrocarbon estimated. In addition to that, the results can be used for reducing the risks in monetizing the opportunities from the heterolithics and laminated sands.
马来盆地某产油油田,普遍存在异质层状薄层储层。由于标准分辨率测井工具的垂向分辨率较低,无法分离层间砂页岩层,而且常规的岩石物理工作流程在捕捉s油田层状砂页岩(LSS)储层的实际属性方面不够强大。因此,估计的渗透率与岩心渗透率不匹配,在动态模型中需要很高的乘数,计算的饱和度与Dean-Stark饱和度不匹配。本文解释了LSS油藏常规分析的局限性,并重点介绍了使用PETRONAS Thin Bed analysis (TBA)模块来估计s油田的实际储层性质。本文的案例研究展示了构建可靠的全油田储层物性评价的最佳实践,将岩心、生产数据和超前的测井信息相结合,以确定储层物性。在LSS油藏中,与岩心数据相比,常规岩石物理输出往往是悲观的。储层增强建模和储层分数建模(REM-RFM)是马来西亚国家石油公司内部用于评估LSS储层的TBA方法。REM-RFM工作流旨在获得净含砂率和实际储层性质,以描述储层的储存量和流量。通过数字岩心分析、岩心紫外线与井眼图像测井对比,对砂页岩层状进行了量化。三轴电阻率测井数据作为Thomas-Stieber方法的输入,用于确定净砂率和油气饱和度。同时利用核磁共振(NMR)数据确定了井面上的油气孔隙体积。与常规评价相比,REM-RFM工作流程改善了储层性质,并更好地与岩心匹配。在层状砂岩中,增强的页岩体积与紫外荧光岩心照片和图像测井数据中的砂纹相当,并且增强的孔隙度和渗透率与岩心数据匹配良好。水饱和度与dean-stark岩心分析结果相匹配,与饱和高度函数模型和核磁共振数据相匹配,REM-RFM输出与Thomas-Stieber结果相匹配。一旦在关键井中对REM-RFM进行了校准,这些参数就会应用到整个油田。本文中讨论的内部REM-RFM模块是对其他行业方法的极好补充。该模块基本上是对之前进行的常规碎屑储层模型特征描述的创新工作的延续。应用鲁棒性评价结果表明,常规产量得到显著提高,油气表观体积估计得到优化。除此之外,研究结果还可以用于降低从异质岩和层状砂中获利的风险。