刘伟吉,张家辉,祝效华. 多目标优化算法在机械比能与机械钻速耦合优化中的应用[J]. 石油钻采工艺,2025,47(3):265-276. DOI: 10.13639/j.odpt.202503036
引用本文: 刘伟吉,张家辉,祝效华. 多目标优化算法在机械比能与机械钻速耦合优化中的应用[J]. 石油钻采工艺,2025,47(3):265-276. DOI: 10.13639/j.odpt.202503036
LIU Weiji, ZHANG Jiahui, ZHU Xiaohua. Application of multi-objective optimization algorithm in coupling optimization of mechanical specific energy and rate of penetration[J]. Oil Drilling & Production Technology, 2025, 47(3): 265-276. DOI: 10.13639/j.odpt.202503036
Citation: LIU Weiji, ZHANG Jiahui, ZHU Xiaohua. Application of multi-objective optimization algorithm in coupling optimization of mechanical specific energy and rate of penetration[J]. Oil Drilling & Production Technology, 2025, 47(3): 265-276. DOI: 10.13639/j.odpt.202503036

多目标优化算法在机械比能与机械钻速耦合优化中的应用

Application of multi-objective optimization algorithm in coupling optimization of mechanical specific energy and rate of penetration

  • 摘要: 提高钻井效率对于降低成本和提升能源开采速度至关重要。建立了以机械比能MSE和机械钻速 ROP为目标函数的多目标耦合优化模型,旨在通过深度学习预测和智能算法优化,提升钻井效率。首先,评估了多种深度学习架构,选定融合卷积神经网络CNN、双向门控循环单元BiGRU与注意力机制Attention的CNN-BiGRU-Attention模型对MSE和ROP进行预测。随后,构建了上述多目标耦合优化模型,并采用非支配排序遗传算法Ⅱ(NSGA-Ⅱ)、强度Pareto进化算法2(SPEA2)和参考向量引导进化算RVEA共3种优化算法来求解模型。在限定ROP最小值分别为当前深度下原始ROP值的50%、70%、90%以及原始ROP值的不同条件下,对比分析了3种算法的优化性能,结果显示RVEA算法表现最佳。为了更贴近工程实际,进一步引入扭矩约束并建立相应的深度学习模型,考察转速和钻压调整对扭矩的影响。实验结果表明,即使加入扭矩约束,RVEA算法仍能有效优化MSE和ROP。所提出的方法不仅确定了不同ROP限定条件下的最优MSE降低与ROP增加策略,还为钻井工程参数优化提供了实用的理论依据和决策支持。

     

    Abstract: Enhancing drilling efficiency is crucial for reducing costs and accelerating energy extraction. This study proposes a multi-objective coupling optimization model based on such objective functions as mechanical specific energy (MSE) and rate of penetration (ROP), aiming to improve the drilling efficiency through deep learning prediction and intelligent algorithm optimization. Initially, various deep learning architectures were evaluated, thereby, CNN-BiGRU-Attention model was selected to predict MSE and ROP, which combines Convolutional Neural Network(CNN), Bidirectional Gated Recurrent Unit(BigRU), and Attention mechanism. Subsequently, a multi-objective coupling optimization model was established, and three optimization algorithms including NSGA-II (Non-dominated Sorting Genetic Algorithm II), SPEA2 (Strength Pareto Evolutionary Algorithm 2), and RVEA (Reference Vector-guided Evolutionary Algorithm) were employed to solve the model. The optimization performance of the three algorithms was comparatively analyzed under different conditions of minimum ROP limits, corresponding to 50%, 70%, 90%, and initial ROP value at the current depth. The results indicated that the RVEA algorithm performed the best in the multi-objective coupling optimization of MSE and ROP. To align more closely with practical applications, torque constraint was introduced, and a corresponding deep learning model was established to investigate the impact of adjustments in rotational speed and drilling pressure on torque. The experimental results demonstrated that the RVEA algorithm could still effectively optimize MSE and ROP even after incorporating torque. This study does not only identify optimal strategies for reducing MSE and increasing ROP under various ROP constraints, but also provides practical theoretical guidance and optimization solutions for drilling engineering parameters.

     

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