A Physics-Constrained Data-Driven Workflow for Predicting Coalbed Methane Well Production Using A Combined Gated Recurrent Unit and Multi-Layer Perception Neural Network Model

Ruiyue Yang, Wei Liu, Xiaozhou Qin, Zhongwei Huang, Yuanyuan Shi, Zhaoyu Pang, Yiqun Zhang, Jingbin Li, Tianyu Wang
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引用次数: 1

Abstract

Coalbed methane (CBM) has emerged as one of the clean unconventional resources to supplement the rising demand of conventional hydrocarbons. Analyzing and predicting CBM production performance is critical in choosing the optimal completion methods and parameters. However, the conventional numerical simulation has challenges of complicated gridding issues and expensive computational costs. The huge amount of available production data that has been collected in the field site opens up a new opportunity to develop data-driven approaches in predicting the production rate. Here, we proposed a novel physics-constrained data-driven workflow to effectively forecast the CBM productivity based on a Gated Recurrent Unit (GRU) and Multi-Layer Perceptron (MLP) combined neural network (GRU-MLP model). The model architecture is optimized by the multiobjective algorithm: nondominated sorting genetic algorithm Ⅱ (NSGA Ⅱ). The proposed framework was used to predict synthetic cases with various fracture-network-complexities and two multistage-fractured wells in field sites located at Qinshui basin and Ordos basin, China. The results indicated that the proposed GRU-MLP combined neural network was able to accurately and stably predict the production performance of multi-fractured horizontal CBM wells in a fast manner. Compared with Simple Recurrent Neural Network (RNN), Gated Recurrent Unit (GRU) and Long Short-Term Memory (LSTM), the proposed GRU-MLP had the highest accuracy and stability especially for gas production in late-time. Consequently, a physics-constrained data-driven approach performed better than a pure data-driven method. Moreover, the optimum GRU-MLP model architecture was a group of optimized solutions, rather than a single solution. Engineers can evaluate the tradeoffs within this set according to the field-site requirements. This study provides a novel machine learning approach based on a GRU-MLP combined neural network model to estimate production performances in CBM wells. The method is simple and gridless, but is capable of predicting the productivity in a computational cost-effective way. The key findings of this work are expected to provide a theoretical guidance for the intelligent development in oil and gas industry.
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结合门控循环单元和多层感知神经网络模型预测煤层气井产量的物理约束数据驱动工作流
煤层气(CBM)已成为一种清洁的非常规资源,以补充日益增长的常规碳氢化合物需求。分析和预测煤层气生产动态是选择最佳完井方法和参数的关键。然而,传统的数值模拟存在网格问题复杂、计算成本高的问题。在油田现场收集的大量可用生产数据为开发数据驱动的方法来预测产量提供了新的机会。本文提出了一种基于门控循环单元(GRU)和多层感知器(MLP)组合神经网络(GRU-MLP模型)的基于物理约束的数据驱动工作流来有效地预测CBM生产率。采用非支配排序遗传算法Ⅱ(NSGAⅡ)对模型结构进行优化,并在沁水盆地和鄂尔多斯盆地的2口多段压裂井现场对不同裂缝网络复杂度的综合案例进行了预测。结果表明,所提出的GRU-MLP联合神经网络能够快速、准确、稳定地预测多缝水平井的生产动态。与简单递归神经网络(RNN)、门控递归单元(GRU)和长短期记忆(LSTM)相比,所提出的GRU- mlp具有最高的精度和稳定性,特别是在后期产气方面。因此,物理约束的数据驱动方法比纯数据驱动方法执行得更好。此外,最优的GRU-MLP模型体系结构是一组优化解,而不是单个解。工程师可以根据现场需求评估该集合中的权衡。该研究提供了一种基于GRU-MLP组合神经网络模型的新型机器学习方法来估计煤层气井的生产动态。该方法简单,无网格,但能够以计算经济的方式预测生产率。本文的主要研究成果有望为油气工业智能化发展提供理论指导。
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