A ROP Optimization Approach Based on Well Log Data Analysis using Deep Learning Network and PSO

Jinan Duan, Chuanshu Yang, Jiang He
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引用次数: 1

Abstract

One of the key aspects of a successful drilling is effective optimization of ROP (Rate of Penetration). Because of the complexity and heterogeneity of formation permeability, the traditional ROP analysis method are limited by drilling prediction. With the accumulation of geological data and drilling records, new methods such as artificial neural network and particle swarm optimization have become powerful tools for obtaining optimization parameters. A ROP optimization method based on deep learning neural network and particle swarm optimization is proposed. Firstly, the prediction model of target wells is established from well logging data by using deep learning neural network. Secondly, the optimized wellbore operation parameters are obtained by using PSO algorithm. At last, the RNN learning algorithm is updated by introducing recovery factor. And also, for the sake of the realization of constraints, a penalty function is introduced. After analyzed logging data of a group of wells in Shunbei area, the experimental results showed that this method can effectively use engineering data to predict drilling rate and optimize drilling parameters.
基于深度学习网络和粒子群算法的测井数据分析ROP优化方法
成功钻井的关键之一是有效优化ROP(钻速)。由于地层渗透率的复杂性和非均质性,传统的机械钻速分析方法受到钻井预测的限制。随着地质资料和钻井记录的积累,人工神经网络、粒子群优化等新方法已成为获取优化参数的有力工具。提出了一种基于深度学习神经网络和粒子群优化的机械钻速优化方法。首先,利用深度学习神经网络,根据测井资料建立目标井预测模型;其次,利用粒子群算法得到优化后的井筒作业参数;最后,通过引入恢复因子对RNN学习算法进行了更新。同时,为了实现约束条件,引入了罚函数。通过对顺北地区一组井的测井资料分析,实验结果表明,该方法可以有效地利用工程数据预测钻井速度,优化钻井参数。
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