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A Comparative Study of Recent Robust Deconvolution Algorithms for Well-Test and Production-Data Analysis

机译:近期测试和生产数据分析近期鲁棒折叠算法的比较研究

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In this work, we provide a comparative study of recently proposed deconvolution algorithms which were designed to function in the presence of reasonable levels of noise in both the rate and pressure input data. The algorithms considered for comparison are those presented by von Schroeter et al.,1,2 Levitan,3,4 and Ilk et al.5,6 These works offer robust solution algorithms to the long-standing deconvolution problem and make deconvolution a viable tool to well-test and production data analysis. However, there exists no comparative study revealing and discussing specific features associated with the use of each algorithm in a unified manner. We have independently reproduced the von Schroeter et al. and Levitan algorithms to assess the specific advantages and limitations of each method (as well as the Ilk et al. method), and we provide a comparative study of these algorithms using synthetic and field case examples. Our results identify the key issues regarding the successful and practical application of each algorithm. In addition, we show that with proper care and attention in applying these methods, deconvolution can be used as an important tool for the analysis and interpretation of variable rate/pressure reservoir performance data.
机译:在这项工作中,我们提供了对最近提出的解卷积算法的比较研究,该算法被设计成在速率和压力输入数据的合理噪声水平存在下起作用。考虑比较的算法是von schroeter等,1,2列维坦,3,4和ilk等.5,6这些作品为长期的碎屑问题提供了强大的解决方案算法,并使解卷积成为可行的工具到测试和生产数据分析。然而,没有以统一的方式揭示和讨论与每种算法的使用相关的具体特征。我们独立地复制了冯·斯普勒特等人。和Levitan算法评估每种方法的特定优点和限制(以及Ilk等人的方法),我们提供了使用合成和现场案例的这些算法的比较研究。我们的结果确定了关于每种算法的成功和实际应用的关键问题。此外,我们表明,在应用这些方法方面,在应用这些方法方面,可以用作分析和解释可变速率/压力储层性能数据的重要工具。

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