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Robust Derivative Estimation for Decline Analysis from Noisy Production Data

机译:噪声生产数据衰落分析的鲁棒衍生估计

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Efficient reservoir management requires regular analysis of large amounts of data to provide insights for decision making in a timely fashion. Well testing provides a key source of data for production surveillance and optimization by estimating oil, water and gas rates at irregularly sampled testing times. Although a significant amount of effort is spent on ensuring the quality of these well tests, the acquired data is still likely to have large uncertainties due to the complexity of flow dynamics, and challenges in multiphase flow separation and measurement. The resulting production history measurement for a well is therefore a noisy, unevenly sampled time series with potential significant outliers. A key point of interest is to perform decline analysis, which involves monitoring production trends (the derivative of the production time series) to ensure optimal well and reservoir performance. In addition to noise, the estimation of production trends is complicated by the effect of improved/enhanced recovery mechanisms (such as water flooding, steam injection etc.), well stimulation, and communication between wells, all of which may cause the production to deviate from expected parametric decline curves. As a result of this complexity, decline analysis typically requires significant manual effort in cleaning and segmenting the data and then fitting parametric curves to the extracted segments; this is challenging to do on a regular basis for all the wells. A robust and automated method to estimate production trends will enable continuous production surveillance and optimization in fields with hundreds to thousands of wells. In this paper, we report an effective method to address this challenge using a non-parametric approach based on robust regression for joint time series modeling and derivative estimation. Some key advantages of this approach over a conventional approach are a) it does not require manual data segmentation b) it is tolerant to a high amount of noise including some bad outliers c) it does not require manual choice of parametric decline curves. We compare results with conventional approaches and demonstrate benefits on synthetic production data.
机译:高效的水库管理需要定期分析大量数据,以及时的方式提供决策的见解。良好的测试通过在不规则采样测试时间估计油,水和汽油率来提供生产监测和优化的关键数据来源。尽管在确保这些井测试的质量上花费了大量的努力,但由于流动动态的复杂性和多相流动分离和测量中的挑战,所获得的数据仍可能具有很大的不确定性。因此,由此产生的生产历史测量是一种嘈杂的,不均匀的采样时间序列,具有潜在的显着异常值。一个关键点是执行衰落分析,涉及监测生产趋势(生产时间序列的衍生物),以确保最佳的井和储层性能。除了噪音之外,通过改进/增强恢复机制(如漏水,蒸汽喷射等),井刺激和井之间的沟通,所有这些都可能使生产偏差的估计变得复杂化。从预期的参数下降曲线。由于这种复杂性,拒绝分析通常需要在清洁和分割数据然后将参数曲线施加到提取的段中的重大手动努力;这对所有井定期进行了挑战。估计生产趋势的强大和自动化方法将使在数百到数千孔的领域中持续生产监控和优化。在本文中,我们通过基于联合时间序列建模和衍生估计的强大回归来报告一种有效的方法来解决这种挑战,以解决基于强大的回归和衍生估计的非参数方法。通过传统方法的这种方法的一些关键优势是a)它不需要手动数据分段b)它可以容忍高量的噪声,包括一些不良异常值c)它不需要手动选择参数下降曲线。我们将结果与常规方法进行比较,并展示了合成生产数据的益处。

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