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Error models for reducing history match bias

机译:减少历史匹配偏差的误差模型

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Successful reservoir prediction requires an accurate estimation of parameters to be used in the reservoir model. This research focuses on developing error models for flow simulation error within the petroleum industry, enabling accurate parameter estimation. The standard approach in the oil industry to parameter estimation in a Bayesian framework includes inappropriate assumptions about the error data. This leads to the parameter estimations being biased and overconfident. An error model is designed to significantly reduce the bias effect and to estimate an accurate range of spread. A 2D viscous fingering example problem will be used to demonstrate both construction of the error model, and the benefits gained in doing so.
机译:成功的储层预测需要对储层模型中使用的参数进行准确的估算。这项研究的重点是为石油行业内的流量模拟误差开发误差模型,从而实现准确的参数估计。在贝叶斯框架中,石油工业中用于参数估计的标准方法包括有关误差数据的不适当假设。这导致参数估计有偏差并且过于自信。设计误差模型以显着降低偏差影响并估计准确的扩展范围。 2D粘性指法示例问题将用于演示误差模型的构建以及这样做的好处。

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