Enhancing Reservoir Management Quality and Efficiency of Thermal Assets with Data-Driven Models

Tae Hyung Kim
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Abstract

Temperature monitoring is the most important surveillance in thermal assets, but temperature logging is limited in frequencies and locations. In addition, it is extremely difficult to review all the measured temperature and injection data manually since there are 10,000+ wells in Kern River field. To overcome the limitations, data-driven reservoir temperature models are presented that are built using past temperature logs and steam injection rates of the Kern River field, California. Based on the physics and geologic understanding the reservoir, adequate input features were selected and queried. Data cleanup was conducted to remove erroneous data or fix data errors using statistical tools such as multivariate Gaussian distribution. Voronoi diagram based dynamic injector selection algorithm (DISA) was developed to correctly capture the injectors which impact on temperature changes of a temperature observation well. Based on geologic characteristics of the Kern River, reservoir was divided into two sub-reservoirs, North-East and South-West. Two full field models were developed for predicting maximum and mean temperatures of a heated zone with multi-layer perceptron for both sub-reservoirs using about 120,000 data points from over 25,000 temperature curves measured at 700+ temperature observation wells. To estimate proper model update frequencies and verify the process, three yearly models (models 2015, 2016, and 2017) were built and validated by using one-year future temperature predictions in 2016, 2017, and 2018. For instance, model 2015 was trained with data until the end of 2015 and validated against 2016 data. Maximum temperature prediction r2 of 2017 South-West and North-East models were 0.96 and 0.98, respectively. Model 2017 has been deployed for alerting exception cases automatically and flagging abnormal temperature measurements. Also, the models improve the quality of heat injection design by providing temperature predictions based on planned heat injection rates. This novel automated workflow with data-driven models enhances reservoir management efficiency by reducing engineers’ unproductive time such as data manipulation and allowing them to focus on value-added works like analysis and optimization.
利用数据驱动模型提高热储管理质量和效率
温度监测是热资产中最重要的监测,但温度测井在频率和位置上受到限制。此外,由于Kern River油田有1万多口井,因此手工查看所有测量的温度和注入数据非常困难。为了克服局限性,提出了基于数据驱动的储层温度模型,该模型是根据加利福尼亚州Kern River油田过去的温度测井曲线和蒸汽注入速率建立的。基于对储层的物理和地质认识,选择并查询合适的输入特征。使用多变量高斯分布等统计工具进行数据清理以删除错误数据或修复数据错误。提出了基于Voronoi图的动态注入器选择算法(DISA),以正确捕获影响温度观测井温度变化的注入器。根据克恩河的地质特征,将库区划分为东北和西南两个子库区。利用700多口温度观测井测得的2.5万多条温度曲线中的约12万个数据点,利用多层感知器开发了两个全油田模型,用于预测加热区的最高温度和平均温度。为了估计适当的模型更新频率并验证过程,构建了三个年度模型(模型2015、2016和2017),并通过使用2016、2017和2018年一年的未来温度预测进行了验证。例如,2015年模型使用数据进行训练,直到2015年底,并根据2016年的数据进行验证。西南模式和东北模式2017年最高气温预测r2分别为0.96和0.98。2017型已部署用于自动警报异常情况并标记异常温度测量。此外,该模型通过提供基于计划热注入速率的温度预测,提高了热注入设计的质量。这种具有数据驱动模型的新型自动化工作流程通过减少工程师的非生产性时间(如数据操作),使他们能够专注于分析和优化等增值工作,从而提高了油藏管理效率。
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