基于代理模型和深度强化学习的自动试井解释方法

Peng Dong, X. Liao, Zhiming Chen, Hongyan Zhao
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引用次数: 0

摘要

人工试井解释是参数评价、性能预测和策略设计的好工具。然而,非唯一解和计算效率低下是实际解释的障碍,特别是在考虑人工裂缝时。针对这种情况,提出了一种基于深度强化学习(DRL)的垂直裂缝试井解释曲线自动匹配方法。该方法基于深度确定性策略梯度(DDPG)算法,成功地应用于试井曲线的自动匹配。此外,为了提高训练效率,建立了基于LSTM神经网络的垂直裂缝试井模型代理模型。通过情景训练,agent与代理模型相互作用,最终收敛到垂直裂缝试井模型的最优曲线匹配策略。结果表明,曲线参数解释的平均相对误差小于6%。此外,实例研究结果表明,所提出的DRL方法具有较高的计算速度,平均计算时间为0.44秒。该方法在现场实例中也具有较高的精度,平均相对误差为7.15%,表明了该方法的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Approach for Automatic Well-Testing Interpretation Based on Surrogate Model and Deep Reinforcement Learning
The artificial well-testing interpretation is a good tool for parameter evaluations, performance predictions, and strategy designs. However, non-unique solutions and computational inefficiencies are obstacles to practical interpretation, especially when artificial fractures are considered. Under this situation, a new deep reinforcement learning (DRL) based approach is proposed for automatic curve matching on vertically fractured well-testing interpretation. Based on deep deterministic policy gradient (DDPG) algorithm, the proposed DRL approach is successfully applied to automatic matching of well test curves. In addition, to improve the training efficiency, a surrogate model of the vertically fractured well test model based on LSTM neural network was established. Through episodic training, the agent finally converged to an optimal curve matching policy on vertically fractured well-testing model through interaction with the surrogate model. The results show that the average relative error of the curve parameter interpretation is less than 6%. Additionally, the results from the case studies show that the proposed DRL approach has a high calculation speed, and the average computing time was 0.44 seconds. The proposed DRL approach also has high accuracy in field cases, and the average relative error was 7.15%, which show the reliability of the proposed DRL method.
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