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Lithologic Identification of Complex Reservoir Based on PSO-LSTM-FCN Algorithm

Energies(2023)SCI 4区

Xian Shiyou Univ

Cited 4|Views24
Abstract
Reservoir lithology identification is the basis for the exploration and development of complex lithological reservoirs. Efficient processing of well-logging data is the key to lithology identification. However, reservoir lithology identification through well-logging is still a challenge with conventional machine learning methods, such as Convolutional Neural Networks (CNN), and Long Short-term Memory (LSTM). To address this issue, a fully connected network (FCN) and LSTM were coupled for predicting reservoir lithology. The proposed algorithm (LSTM-FCN) is composed of two sections. One section uses FCN to extract the spatial properties, the other one captures feature selections by LSTM. Well-logging data from Hugoton Field is used to evaluate the performance. In this study, well-logging data, including Gamma-ray (GR), Resistivity (ILD_log10), Neutron-density porosity difference (DeltaPHI), Average neutron-density porosity(PHIND), and (Photoelectric effect) PE, are used for training and identifying lithology. For comparison, seven conventional methods are also proposed and trained, such as support vector machines (SVM), and random forest classifiers (RFC). The accuracy results indicate that the proposed architecture obtains better performance. After that, particle swarm optimization (PSO) is proposed to optimize hyper-parameters of LSTM-FCN. The investigation indicates the proposed PSO-LSTM-FCN model can enhance the performance of machine learning algorithms on identify the lithology of complex reservoirs.
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complex reservoir,lithology identification,machine learning,LSTM-FCN,PSO optimization
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要点】:提出了一种基于PSO-LSTM-FCN算法的复杂储层岩性识别方法,通过优化传统机器学习算法,提高了岩性识别的准确性。

方法】:将长短期记忆网络(LSTM)与全连接网络(FCN)结合,利用FCN提取空间属性,LSTM进行特征选择,并通过粒子群优化算法(PSO)优化LSTM-FCN的超参数。

实验】:使用Hugoton Field的测井数据(包括伽马射线(GR)、电阻率(ILD_log10)、中子密度孔隙度差(DeltaPHI)、平均中子密度孔隙度(PHIND)和光电效应(PE))进行模型训练和岩性识别,与传统方法(如支持向量机(SVM)、随机森林分类器(RFC))相比,PSO-LSTM-FCN模型准确性更高。