基于人工智能算法的页岩气压裂参数优化

Shihao Qian , Zhenzhen Dong , Qianqian Shi , Wei Guo , Xiaowei Zhang , Zhaoxia Liu , Lingjun Wang , Lei Wu , Tianyang Zhang , Weirong Li
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引用次数: 0

摘要

资源丰富的页岩气在新能源类型中发挥着举足轻重的作用。科学高效开发页岩气田的关键是明确影响页岩气井生产的主要因素。根据涪陵海相龙马溪组页岩气储层特征,利用储层数值模拟软件CMG建立了单井地质模型。然后,使用蒙特卡罗方法,针对不同的地层物理参数、完井参数和压裂参数,随机生成10000个不同的储层模型,并对这10000个模型进行了数值模拟。机器学习模型使用10000个不同地质、完井和压裂参数的数据集作为输入,10000条生产曲线作为输出。使用多种机器学习回归方法对数据集进行训练和测试,并选择最优方法(GBDT算法),GBDT预测模型测试集的准确度R2为0.96。将产量预测模型与粒子群优化算法相结合,构建了压裂参数优化工作流程。该工艺可以针对不同地质条件下的累计产气量,快速优化压裂参数,预测每次的产量。优化参数为裂缝间距、裂缝宽度、本征渗透率、裂缝半长、朗缪尔压力和朗缪尔体积。初始预测的累计天然气产量为4.59×108m3,优化为4.90×108m3。所提出的PSO-GBDT代理模型可以即时预测页岩气井的产量,具有相当高的准确性、可靠性和效率,是优化裂缝设计的重要工具。该研究为非常规气藏产量预测和参数优化提供了坚实的基础。
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Optimization of shale gas fracturing parameters based on artificial intelligence algorithm

Resource-rich shale gas plays a pivotal role in new energy types. The key to scientifically and efficiently developing shale gas fields is to clarify the main factors that affect the production of shale gas wells. In this paper, according to the shale gas reservoir characteristic of the Fuling marine Longmaxi Formation, a single-well geological model was established using the reservoir numerical simulation software CMG. Then, 10,000 different reservoir models were randomly generated for different formation physical parameters, completion parameters, and fracturing parameters using the Monte Carlo method, and these 10,000 models were simulated numerically. The machine learning model uses a dataset of 10,000 different geological, completion, and fracturing parameters as input and 10,000 production curves as output. Multiple machine learning regression methods were used to train and test the dataset, and the optimal method (GBDT algorithm) was selected, and the accuracy R2 of the test set of the GBDT prediction model is 0.96. A fracturing parameter optimization workflow was constructed by combining a production prediction model with a particle swarm optimizer (PSO). The process can quickly optimize the fracturing parameters and predict the production for each time by targeting the cumulative gas production under different geological conditions. The optimized parameters are Fracture Spacing, Fracture Width, Intrinsic Permeability, Fracture Half-length, Langmuir Pressure, and Langmuir Volume. The initial predicted cumulative gas production was 4.59 × 108 m3, which was optimized to 4.90 × 108 m3. The proposed PSO-GBDT proxy model can instantly predict the production of shale gas wells with considerable accuracy, reliability, and efficiency, which is a vital tool for optimizing fracture design. This investigation provides a solid foundation for predicting the production of unconventional gas reservoirs and for parameter optimization.

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