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WEAR-FACTOR PREDICTION BASED ON DATA-DRIVEN INVERSION TECHNIQUE FOR CASING WEAR ESTIMATION

机译:基于数据驱动反转技术进行套管磨损估计的磨损因子预测

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Wear factor is an important parameter for estimating casing wear, yet the industry lacks a sufficient data-driven wear-factor prediction model based on previous data. Inversion technique is a data-driven method for evaluating model parameters for a setting wherein the input and output values for the physical model/equation are known. For this case, the physical equation to calculate wear volume has wear factor, side force, RPM, tool-joint diameter, and time for a particular operation (i.e., rotating on bottom, rotating off bottom, sliding, back reaming, etc.) as inputs. Except for wear factor, these values are either available or can be calculated using another physical model (wear-volume output is available from the drilling log). Wear factor is considered the model parameter and is estimated using the inversion technique method. The preceding analysis was performed using soft-string and stiff-string models for side-force calculations and by considering linear and nonlinear wear-factor models. An iterative approach was necessary for the nonlinear wear-factor model because of its complexity. Log data provide the remaining thickness of the casing, which was converted into wear volume using standard geometric calculations. A paper [1] was presented in OMC 2019 discussing a method for bridging the gap. A study was conducted in this paper for a real well based on the new method, and successful results were discussed. The current paper extends that study to another real well casing wear prediction with this novel approach. Some methods discussed are already included in the mentioned paper.
机译:磨损因子是用于估算套管磨损的重要参数,但该行业基于先前的数据缺乏足够的数据驱动磨损因子预测模型。反演技术是用于评估用于设置的模型参数的数据驱动方法,其中物理模型/方程的输入和输出值是已知的。对于这种情况,计算磨损体积的物理方程具有磨损因子,侧力,RPM,工具 - 关节直径和特定操作的时间(即,底部旋转,旋转底部,滑动,背部铰孔等)作为输入。除磨损因素外,这些值可用,也可以使用另一个物理模型(钻孔原木中获得磨损量输出)。磨损因子被认为是模型参数,并使用反转技术方法估算。使用软串和刚性串模型进行前一分析,用于考虑线性和非线性磨损因子模型。由于其复杂性,非线性磨损因子模型需要迭代方法。日志数据提供壳体的剩余厚度,使用标准的几何计算将其转换成磨损体积。纸张[1]在OMC 2019中展示了一种弥合差距的方法。本文在本文中进行了一项研究,以基于新方法,讨论了成功的结果。目前纸张延伸到与这种新方法的另一个真实井套管预测。讨论的一些方法已经包含在提到的纸中。

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