低矿化度和聚合物驱单井化学示踪剂的改进解释

A. K. N. Korrani, G. Jerauld, A. Al-Qattan
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引用次数: 3

摘要

我们对在Greater Burgan井进行的高矿化度水驱、低矿化度水驱和随后的聚合物驱进行了一系列单井化学示踪测试(swctt),以估计残余油(SORW)。对这些测试的解释需要对分割示踪剂和非分割示踪剂的回产进行历史匹配,这些示踪剂受不同数量的不可逆流体、不同数量的分散以及残余油的影响。我们使用了最先进的化学油藏模拟器(UTCHEM)和辅助历史匹配工具(BP的自上而下油藏建模)来解释测试结果,并准确量化高矿化度、低矿化度和聚合物驱后剩余油饱和度的不确定性。采用遗传算法(GA)和粒子群优化(PSO)-网格自适应-直接搜索(MADS)两种优化算法更好地解决了不确定性。我们的研究结果表明,低盐度后,SORW的饱和度降低了6个单位,而SORW后的聚合物没有变化。这与我们的预期一致——我们预计SORW后聚合物不会发生变化,因为在测试中使用的是传统的HPAM,它不表现出粘弹性行为。通过显示三层或四层模拟模型假设不会改变估计的SORW,我们证明了匹配反向产生的示踪剂剖面的历史是估计SORW的稳健方法。我们在不确定性估计中考虑了分区系数的不确定性。我们提出了几项创新,以改善历史匹配回产示踪剂剖面;因此,更好的SORW估计(例如,对各个模拟层使用不同的色散水平来解释不同的异质性水平,而不是假设所有层都是单一的色散)。我们通过寻找一系列与测量数据一致的可选历史匹配来生成更可靠的不确定性估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Interpretation of Single-Well-Chemical-Tracer for Low Salinity and Polymer Flooding
We interpreted a series of single-well-chemical-tracer-tests (SWCTTs) estimating residual oil (SORW) to base high salinity waterflood, low salinity waterflood and subsequent polymer flood conducted on a Greater Burgan well. Interpretation of the tests requires history matching of the back-production of partitioning and non-partitioning tracers which is impacted by differing amounts of irreversible flow and differing amounts of dispersion as well as the amount of residual oil. We applied the state-of-the-art chemical reservoir simulator (UTCHEM) and an assisted history matching tool (BP’s Top-Down-Reservoir-Modeling) to interpret the tests and accurately quantify uncertainty in residual oil saturations post high salinity, low salinity, and polymer floods. Two optimization algorithms (i.e., Genetic algorithm (GA) and Particle-Swarm-Optimization (PSO)-Mesh-Adaptive-Direct-Search (MADS) algorithms) were applied to better address the uncertainty. Our results show a six saturation unit decrease in SORW post low salinity with no change to the SORW post polymer. This is in-line with our expectations - we expect no change in SORW post-polymer as the conventional HPAM, which does not exhibit visco-elastic behavior, was used in the test. We demonstrate that history matching the back-produced tracer profiles is a robust approach to estimate the SORW by showing that three-or four-layer simulation model assumption does not change the SORW estimated. We accounted for the uncertainty in partition-coefficient in our uncertainty estimates. We present several innovations that improve history matching back-produced tracer profiles; hence, better SORW estimations (e.g., different level of dispersivity for individual simulation layers to account for different heterogeneity level as opposed to assuming a single dispersion for all layers). We generate more robust estimates of uncertainty by finding a range of alternative history matches all of which are consistent with the measured data.
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