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A regression model for estimation of dew point pressure from down-hole fluid analyzer data

机译:根据井体分析仪数据估算露点压力的回归模型

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AbstractAccurate knowledge of dew point pressure is important in understanding and managing gas condensate reservoirs. Without a correct assessment of dew point pressure, an accurate description of phase changes and phase behavior cannot be achieved. Numerous models for predicting gas condensate dew point pressure from surface fluid data have been proposed in the literature. Some of these require knowledge of the full composition of the reservoir fluid (based on laboratory experiments), while others only need field parameters that are relatively easy to obtain. This paper presents a new model for predicting the dew point pressure from down-hole fluid analyzer data. Such data are now measured (usually in real time) while obtaining down-hole fluid samples. The new model predictions give a quick estimation of dew point pressure for wet gas and gas condensate reservoirs. Since it relies only on down-hole measured data, the model provides an estimate of dew point pressure without the need for laboratory analyses. During down-hole fluid sampling, the model can be used to ensure whether the sample is still in single phase, or whether the dew point was crossed during the sampling operation. An early estimate of dew point pressure is also valuable in designing further tests for gas condensate wells. The new model, constructed using a fluid database of nearly 700 gas condensate samples, was devised using sophisticated statistical/machine learning methods, and attained a mean absolute relative error value of 2 for predicting the logarithm of pressure. In comparison with other dew point estimation models (that use surface fluid data), the chosen model was found to attain a similar level of accuracy when tested on samples not used in the model building phase.
机译:摘要准确了解露点压力对于了解和管理凝析油储层具有重要意义。如果不能正确评估露点压力,就无法准确描述相变和相行为。文献中提出了许多基于地表流体数据预测气体凝析水露点压力的模型。其中一些需要了解储层流体的全部成分(基于实验室实验),而另一些只需要相对容易获得的现场参数。本文提出了一种基于井体分析仪数据预测露点压力的新模型。现在,在获取井体样本时,可以测量这些数据(通常是实时的)。新模型预测可以快速估计湿气和凝析油储层的露点压力。由于该模型仅依赖于井下测量数据,因此无需进行实验室分析即可提供露点压力的估计值。在井体取样过程中,该模型可用于确保样品是否仍处于单相状态,或者在取样操作过程中是否越过了露点。露点压力的早期估计对于设计天然气凝析井的进一步测试也很有价值。新模型使用包含近700个凝析气体样品的流体数据库构建,采用复杂的统计/机器学习方法设计,并达到2%的平均绝对相对误差值,用于预测压力对数。与其他露点估计模型(使用表面流体数据)相比,发现所选模型在模型构建阶段未使用的样品上测试时达到了相似的精度水平。

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