Using Deconvolution to Estimate Unknown Well Production from Scarce Wellhead Pressure Data

L. Aluko, J. Cumming, A. Gringarten
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引用次数: 1

Abstract

Well test analysis requires the knowledge of bottomhole pressure and rates from the well of interest, and from any other well involved in the case of interferences. Sometimes, bottomhole pressures are not available and must be estimated from wellhead pressures, which usually are of lower quality, due to multiphase flow and possible tubing leaks. Converting flowing wellhead pressures to bottomhole pressures can be performed with a number of models, all of which assumes knowledge of the well production rate, which is usually determined with flowmeters or separators at the surface. In some cases, for instance when there is a blow out, production rate information is not available. The question is then how to determine well production rate in the absence of rate measurements when only wellhead pressures are available.In this paper, we use an iterative process based on well test deconvolution (von Schroeter et al. 2001-2004) to estimate unknown well production from wellhead pressure data. The procedure is as follows: (1) we assume a constant unit production rate and apply deconvolution to wellhead pressures: this yields a deconvolved wellhead pressure derivative and corrects the rates to make them compatible with the wellhead pressures; (2) we calibrate the rates with permeability from a trusted source e.g. core measurements or sampling wireline formation test analysis; (3) we use the calibrated deconvolved rates to convert wellhead pressures into bottomhole pressures; (4) we again assume a constant unit production rate and apply deconvolution to calculated bottomhole pressures: this yields a deconvolved bottomhole pressure derivative and corrects the rates to make them compatible with the calculated bottomhole pressures; and (5) we calibrate the calculated rates with trusted permeability information.We have applied the procedure described above to DST data from an oil well for which a complete data set is available, including permeabilities from cores, wellhead pressures, production rates, bottomhole pressures and well test analysis results. For the purpose of this study, we assume that we only know wellhead pressures, and we compare calculated results with measurements, i.e. calculated vs. measured bottomhole pressures, calculated vs. measured rates, and calculated vs. measured cumulative production.We assess the uncertainty in the results by applying a Bayesian approach to deconvolution (Cumming et al. 2020) which accounts for uncertainties in all input parameters, including permeability from different sources, and also uncertainty in deconvolution. In all cases, good to excellent agreement is reached between calculated results and measured data, thus validating the approach and providing confidence in the validity of the results.The procedure described in this paper provides a very good estimate of production rates from only wellhead measurements and permeability estimates: rather than using a welltest to determine reservoir properties knowing the rates and pressures, we do the inverse i.e. we use known reservoir properties and pressures to determine the rates. This approach can be used with confidence when measured rates are not available.
基于稀缺井口压力数据的反褶积估算未知油井产量
试井分析需要了解感兴趣井的井底压力和速率,以及其他受干扰井的井底压力和速率。有时,由于多相流和可能的油管泄漏,井口压力通常质量较低,无法获得井底压力,必须根据井口压力进行估算。将井口压力转换为井底压力可以通过多种模型来实现,所有模型都假设知道油井产量,而产量通常是通过地面的流量计或分离器确定的。在某些情况下,例如发生井喷时,无法获得产量信息。接下来的问题是,在没有产量测量的情况下,如何在只有井口压力可用的情况下确定油井的产量。在本文中,我们使用了基于试井反卷积(von Schroeter et al. 2001-2004)的迭代过程,从井口压力数据中估计未知的油井产量。步骤如下:(1)假设单位产量恒定,对井口压力进行反褶积,得到反褶积的井口压力导数,并对速率进行校正,使其与井口压力相适应;(2)通过可靠来源(例如岩心测量或取样电缆地层测试分析)的渗透率来校准速率;(3)利用校正后的反卷积速率将井口压力转化为井底压力;(4)我们再次假设单位产量恒定,并对计算出的井底压力进行反卷积,得到反卷积的井底压力导数,并对速率进行校正,使其与计算出的井底压力相一致;(5)利用可信渗透率信息对计算速率进行校正。我们已经将上述程序应用于一口油井的DST数据,该油井拥有完整的数据集,包括岩心渗透率、井口压力、产量、井底压力和试井分析结果。在本研究中,我们假设只知道井口压力,并将计算结果与测量结果进行比较,即计算的井底压力与测量的井底压力、计算的产量与测量的产量、计算的累积产量与测量的累积产量。我们通过应用贝叶斯方法来评估结果的不确定性(Cumming等人,2020),该方法考虑了所有输入参数的不确定性,包括来自不同来源的渗透率,以及反褶积的不确定性。在所有情况下,计算结果和测量数据之间都达到了良好到优异的一致性,从而验证了方法并对结果的有效性提供了信心。本文描述的方法仅通过井口测量和渗透率估算就能很好地估计产量:我们不是通过试井来确定已知速率和压力的储层特性,而是相反,即我们使用已知的储层特性和压力来确定速率。当无法获得测量速率时,可以放心地使用这种方法。
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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