Cost-Engineering Waterflooding Management Methods

M. Naugolnov, N. Teplyakov, M. Bolshakov
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Abstract

Optimization of the operation costs of Oil Companies in Western Siberia is the most important task of monitoring the development of oil fields. This is due to both: a decline in oil prices and an increase in the water cut in the production. Companies are forced to have large expenses associated with the organization of injection of the working agent to the reservoir pressure maintenance system, fluid lifting to the surface and operations on fluid dehydration. Often, the total value of operation costs forces companies to abandon the operation of wells, which negatively affects both the company's income and the level of oil production. The development of modeling tools opens up opportunities for companies to optimize key technologic and economic indicators of field development. This is especially relevant for old fields that are at the final stage of development, when the achievement of cost-effectiveness is impossible without constant optimization workovers. However, the geological uncertainties and the complexity of the correct evaluation of the reservoir simulation connection between the injection and production wells do not allow oil companies to receive a confident answer to the question of the efficiency of the current waterflooding system and individual injection wells. Unfortunately, the complexity of creating a permanent simulation model, which is connected both with the unreliability of input data, and with high labor and computational costs, does not allow to fully meet the requirements for optimizing the waterflooding system. At the same time, analytical methods, for instance, block-factor analysis (BFA) [1] despite its simplicity and flexibility, is not popular among reservoir engineers due to low prediction ability. In this regard, there is a need to create a new engineering tool, which would simultaneously have a good predictive ability and would be rapid in use. Tools that meet these requirements include, for instance, analytical models that use database mining (data-driven methods). The use of these models allow estimate the value of the hydrodynamic connection between the producing and injection wells, make a retrospective analysis of the waterflooding system and make a reliable forecast of the production change when the injection changes using and tuning on history of operation modes of the wells. The paper considers a hybrid reservoir simulation model based on the capacitance-resistive model (CM / capacitance-resistive model, CRM). The use of this model is based on training on history data, then testing the quality of training on test history data and subsequent forecasting development parameters. Based on physical processes, a simplified model of material balance with a minimum number of unknowns makes it possible to effectively predict the effect of injection wells parameters change. Also, this method allows, indirectly, qualitatively identify injectivity wells with unproductive withdrawal and, as a consequence, with a low production effect. The approach described in the paper, called the cost-BFA, is integration of the CR method and the economic model that allows to predict additional production, to minimize operation costs and to maximize net present value (NPV) taken into consideration the operational costs of the Company.
成本工程注水管理方法
西西伯利亚地区石油公司运营成本的优化是油田开发监测的重要任务。这是由于两方面的原因:油价下跌和生产中含水率的增加。公司不得不在向储层压力维持系统注入工作剂、将流体提至地面以及进行流体脱水操作等方面投入大量费用。通常,作业成本的总价值迫使公司放弃油井的作业,这对公司的收入和石油生产水平都产生了负面影响。建模工具的发展为公司优化油田开发的关键技术和经济指标提供了机会。这对于处于开发最后阶段的老油田尤其重要,如果没有不断优化的修井作业,就不可能实现成本效益。然而,由于地质的不确定性以及对注采井之间的油藏模拟连接进行正确评价的复杂性,石油公司无法对当前注水系统和单口注水井的效率问题给出一个可靠的答案。不幸的是,建立永久性仿真模型的复杂性,与输入数据的不可靠性以及高昂的人工和计算成本有关,并不能完全满足优化水驱系统的要求。与此同时,区块因子分析(BFA)[1]等分析方法虽然简单、灵活,但由于预测能力较低,不受油藏工程师的欢迎。在这方面,有必要创造一种新的工程工具,它将同时具有良好的预测能力和快速的使用。满足这些需求的工具包括,例如,使用数据库挖掘的分析模型(数据驱动的方法)。利用这些模型,可以估计生产井和注水井之间的水动力连接值,对水驱系统进行回顾性分析,并根据井的历史操作模式进行调整,对注入变化时的产量变化进行可靠的预测。本文考虑了一种基于电容-电阻模型的混合油藏模拟模型(CM /电容-电阻模型,CRM)。该模型的使用是基于对历史数据的训练,然后对测试历史数据的训练质量进行测试,并随后预测开发参数。基于物理过程,简化的物质平衡模型具有最少的未知量,可以有效地预测注水井参数变化的影响。此外,该方法还可以间接地定性地识别出非生产性回采井,从而导致生产效果较低。本文中描述的方法,称为成本- bfa,是CR方法和经济模型的集成,可以预测额外的产量,最小化运营成本,最大化考虑公司运营成本的净现值(NPV)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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