致密油储层甜点地震预测.docx

上传人:鲁** 文档编号:558334028 上传时间:2023-08-25 格式:DOCX 页数:7 大小:38.87KB
返回 下载 相关 举报
致密油储层甜点地震预测.docx_第1页
第1页 / 共7页
致密油储层甜点地震预测.docx_第2页
第2页 / 共7页
致密油储层甜点地震预测.docx_第3页
第3页 / 共7页
致密油储层甜点地震预测.docx_第4页
第4页 / 共7页
致密油储层甜点地震预测.docx_第5页
第5页 / 共7页
点击查看更多>>
资源描述

《致密油储层甜点地震预测.docx》由会员分享,可在线阅读,更多相关《致密油储层甜点地震预测.docx(7页珍藏版)》请在金锄头文库上搜索。

1、致密油储层甜点地震预测AbstractIn this paper, we propose a comprehensive method for predicting sweet spots in tight oil reservoirs using seismic data. The proposed method utilizes advanced seismic processing techniques, including amplitude variation with offset (AVO) analysis, normalized impedance inversion (NI

2、I), and spectral decomposition, to identify the seismic attributes that are most indicative of the sweet spots. Based on these attributes, we train a machine learning algorithm to predict sweet spots in the target reservoir with high accuracy. To verify the effectiveness of our method, we conduct a

3、case study using a dataset from a tight oil reservoir in Western Canada. Our results show that our method can accurately predict sweet spots and provide valuable insights for reservoir management and optimization.IntroductionTight oil reservoirs are a type of unconventional reservoir with low permea

4、bility and porosity, making it challenging to extract hydrocarbons from these reservoirs. In recent years, exploration and development activities in tight oil reservoirs have increased due to the depletion of conventional oil reserves. However, it is crucial to identify the sweet spots in these rese

5、rvoirs to optimize production and recovery. Seismic data has been used to infer the geologic characteristics of these reservoirs, but traditional seismic interpretation techniques have limited effectiveness in predicting sweet spots. Therefore, it is necessary to develop a more advanced prediction m

6、ethod to identify sweet spots in tight oil reservoirs effectively.MethodologyOur proposed method consists of three main steps: seismic data processing, feature selection, and machine learning modeling.Seismic Data ProcessingWe start by processing the seismic data to enhance the detectability of the

7、sweet spots. We use AVO analysis to identify the acoustic impedance contrast between the reservoir and the surrounding rocks. We also apply NII to extract the seismic attributes that are most indicative of the sweet spots. Lastly, we use spectral decomposition to identify the frequency band that cor

8、responds to the sweet spots.Feature SelectionNext, we use feature selection techniques to identify the most essential seismic attributes that are most indicative of the sweet spots. We use a combination of statistical analysis and machine learning algorithms to select the features that have the high

9、est correlation with the sweet spots.Machine Learning ModelingFinally, we use a machine learning algorithm to predict sweet spots in the target reservoir. We use a supervised learning approach and train a model using the selected seismic attributes as input and sweet spots as the output. We use a ra

10、ndom forest algorithm due to its ability to handle complex, non-linear relationships between different features.Case StudyTo verify the effectiveness of our proposed method, we conduct a case study using a dataset from a tight oil reservoir in Western Canada. We use well logs and production data to

11、identify the locations of the sweet spots and compare them with the locations predicted by our method.Our results show that our proposed method can predict sweet spots with high accuracy. The predicted sweet spots overlapped well with the actual sweet spots identified from the well logs and producti

12、on data. Our approach also provided additional insights into the reservoirs geology and provided valuable information for reservoir management and optimization.ConclusionWe propose a comprehensive method for predicting sweet spots in tight oil reservoirs using seismic data. Our approach uses advance

13、d seismic processing techniques, feature selection, and machine learning algorithms to identify the most indicative seismic attributes and predict sweet spots accurately. Our case study results show that our method is effective in identifying sweet spots and can provide valuable information for rese

14、rvoir management and optimization.In addition to the traditional seismic interpretation techniques, more advanced methods have been developed in recent years to identify and predict sweet spots in tight oil reservoirs. Some researchers have used machine learning algorithms to predict sweet spots, wh

15、ile others have developed workflows that combine different seismic attributes to identify sweet spots.The proposed method in this paper combines several advanced seismic processing techniques and machine learning algorithms to predict sweet spots in tight oil reservoirs. By using AVO analysis, NII,

16、and spectral decomposition, the seismic data are processed to enhance the detectability of the sweet spots. Feature selection techniques are then used to identify the most indicative seismic attributes, which are used to train a machine learning model to predict sweet spots.The case study conducted in this paper shows that the proposed method can predict sweet spots in tight oil reservoirs with high accuracy. The method p

展开阅读全文
相关资源
正为您匹配相似的精品文档
相关搜索

最新文档


当前位置:首页 > 学术论文 > 论文指导/设计

电脑版 |金锄头文库版权所有
经营许可证:蜀ICP备13022795号 | 川公网安备 51140202000112号