Real-time optimization of rate of penetration during drilling operation

D. Sui, Roar Nybø, V. Azizi
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引用次数: 19

Abstract

The increase of drilling safety and the reduction of drilling operation costs, especially the improvement of drilling efficiency, are two important considerations. In general the rate of penetration (ROP) optimization means that the drilling parameters such as weight on bit (WOB) and rotary speed (RPM) are adjusted to drill the present formation most efficiently. In this paper, the Bourgoyne and Young ROP model had been selected to study the effects of several parameters during drilling operation. We present an advanced method for the ROP calculation and its optimization. A moving-horizon multiple regression method is proposed, which reduces the estimation error of the existing ROP models by continuously calibrating the model coefficients based on real-time data. Furthermore, a model predictive control (MPC) strategy is applied to achieve the ROP optimization to satisfy drilling requirements. The performance of the methodology is demonstrated by using realworld data from a North Sea well.
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钻进过程中钻进速度的实时优化
提高钻井安全性和降低钻井作业成本,特别是提高钻井效率是两个重要的考虑因素。一般来说,优化钻速(ROP)意味着调整钻压(WOB)和转速(RPM)等钻井参数,以最有效地钻进当前地层。本文选择Bourgoyne和Young ROP模型,研究钻井过程中几个参数的影响。提出了一种先进的机械钻速计算及优化方法。提出了一种移动水平多元回归方法,通过基于实时数据对模型系数进行连续校正,降低了现有ROP模型的估计误差。此外,采用模型预测控制(MPC)策略实现ROP优化,以满足钻井要求。通过北海一口井的实际数据验证了该方法的性能。
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