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Rate of penetration optimization for wellbores using machine learning

机译:使用机器学习的井眼渗透率优化

摘要

A system and method for controlling a drilling tool inside a wellbore makes use of projection of optimal rate of penetration (ROP) and optimal controllable parameters such as weight-on-bit (WOB), and rotations-per-minute (RPM) for drilling operations. Optimum controllable parameters for drilling optimization can be predicted using a data generation model to produced synthesized data based on model physics, an ROP model, and stochastic optimization. The synthetic data can be combined with real-time data to extrapolate the data across the WOB and RPM space. The values for WOB an RPM can be controlled to steer a drilling tool. Examples of models used include a non-linear model, a linear model, a recurrent generative adversarial network (RGAN) model, and a deep neural network model.
机译:一种用于控制井眼内的钻井工具的系统和方法,其利用最佳钻速(ROP)和最佳可控参数(例如钻压(WOB)和每分钟转数(RPM))的投影操作。可以使用数据生成模型来预测钻井优化的最佳可控参数,以基于模型物理,ROP模型和随机优化来生成综合数据。可以将合成数据与实时数据结合,以在WOB和RPM空间中外推数据。可以控制WOB和RPM的值来操纵钻孔工具。使用的模型的示例包括非线性模型,线性模型,递归生成对抗网络(RGAN)模型和深度神经网络模型。

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