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首页> 外文期刊>Journal of Petroleum Science & Engineering >Comparison of Kalman filter-based approaches for permanent downhole gauge pressure estimation in offshore oil production
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Comparison of Kalman filter-based approaches for permanent downhole gauge pressure estimation in offshore oil production

机译:基于卡尔曼滤波器的永久井下规压估计方法的比较

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摘要

The permanent downhole gauge (PDG) pressure is the most important variable to describe the dynamics of an offshore oil well. Unfortunately, this measurement is often unavailable due to premature sensor failure and the considerable price for its replacement. An alternative to dealing with the lack of the PDG pressure measurement is its estimation. For this, Kalman filters are common tools, with which two distinct state estimators (extended and unscented Kalman filters) were proposed in the literature. These approaches have disadvantages related to the requirement for system linearization and the high computational cost, bringing the necessity for new techniques. In this work, five different Kalman filter-based approaches are tested and compared for the PDG pressure estimation. Through simulated and industrial data, the advantages and disadvantages of each filter are pointed. The results broadly show that the cubature Kalman filter returns the best estimation in the industrial case study, in which the model was properly adjusted. Meanwhile, the extended filters have the best performance in the simulated scenarios, considering that the model was not properly adjusted. In addition, the estimation using a single measurement that is highly correlated to the PDG pressure is enough for its estimation.
机译:永久井下计(PDG)压力是描述海上油井动态的最重要变量。不幸的是,由于过早的传感器故障和相当大的价格,这种测量往往是不可用的。处理缺乏PDG压力测量的替代方案是其估计。为此,卡尔曼滤波器是普通工具,其中提出了在文献中提出了两个不同的状态估计(扩展和未加注的卡尔曼滤波器)。这些方法具有与系统线性化的要求和高计算成本的要求有关,带来了新技术的必要性。在这项工作中,测试并比较了五种不同的卡尔曼基于卡尔曼基于滤波器的方法,并比较了PDG压力估计。通过模拟和工业数据,指向每个过滤器的优点和缺点。结果广泛地表明,Cubature Kalman滤波器返回工业案例研究中的最佳估计,其中模型进行了适当调整。同时,考虑到模型未正确调整模型,扩展过滤器具有最佳性能。另外,使用与PDG压力高度相关的单个测量的估计足以估计。

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