首页 | 官方网站   微博 | 高级检索  
     

改进的广义回归神经网络用于基于气相色谱法的原油密度定量分析
引用本文:梁海波,丁帅,魏琪,邹佳玲.改进的广义回归神经网络用于基于气相色谱法的原油密度定量分析[J].色谱,2022,40(5):488-495.
作者姓名:梁海波  丁帅  魏琪  邹佳玲
作者单位:西南石油大学机电工程学院, 四川 成都 610500
基金项目:中国石油-西南石油大学创新联合体项目(2020CX040302)
摘    要:在油气勘探开发领域,快速识别储集层原油性质对于工程技术人员有非常重要的指导意义.地球化学录井技术是用于判断储集层原油性质的常规手段,能为储集层综合评价提供专业认识.该文研究了地化录井中的岩石热解分析和气相色谱分析的原理,提出了一种利用色谱谱图对原油密度进行定量分析的新方法,再结合原油性质密度划分标准,可快速判断储集层原...

关 键 词:气相色谱  广义回归神经网络  麻雀搜索优化算法  原油密度
收稿时间:2021-12-01

Improved generalized regression neural network for quantitative analysis of crude oil density by gas chromatography
LIANG Haibo,DING Shuai,WEI Qi,ZOU Jialing.Improved generalized regression neural network for quantitative analysis of crude oil density by gas chromatography[J].Chinese Journal of Chromatography,2022,40(5):488-495.
Authors:LIANG Haibo  DING Shuai  WEI Qi  ZOU Jialing
Affiliation:School of Mechatronic Engineering, Southwest Petroleum University, Chengdu 610500, China
Abstract:In the field of oil and gas exploration and development, the quick identification of reservoir crude oil properties has a guiding significance for engineers and technicians. Geochemical logging technology is a conventional method to evaluate the properties of crude oil in reservoirs, and it can provide professional knowledge for comprehensive evaluation of reservoirs. In this study, the principles of rock pyrolysis and gas chromatographic analyses in geochemical logging are studied. Moreover, a new method for quantitative analysis of crude oil density by chromatogram is proposed. Combined with the division standard of crude oil property density, the properties of reservoir crude oil can be quickly evaluated. In the experiment, first, the chromatogram was standardized and normalized using computer image processing software. The curve characteristic law of rock pyrolysis gas chromatogram was analyzed, and the corresponding characteristic parameter extraction method was proposed. The chromatogram was converted into a characteristic parameter matrix. Second, three types of artificial intelligence prediction and classification models were studied. The latest meta-heuristic optimization algorithm (sparrow search optimization algorithm) was used to optimize the hyperparameters of the generalized regression neural network, and the accuracy and convergence speed of the model were improved. To study the influence of different positions of rock samples on the experimental results, two groups of samples were utilized: cuttings samples and wall core samples. Based on a comprehensive comparison of the prediction results of the three models, it was found that the generalized regression neural network prediction model optimized by sparrow search algorithm provided the best effect, being a stable model, with small prediction density error, and strong generalization ability. The prediction error coincidence rate (absolute error < 0.02) of this model for cuttings and wall core samples was 95% and 100%, respectively. The root mean square errors were 0.0079 and 0.0069 respectively. The classification accuracy of crude oil properties was 95%. The analysis of the two groups of parallel experimental data indicated that the rock samples from the wall center can more accurately reflect the crude oil properties of the reservoir. Therefore, the method proposed in this study can provide reliable data support for reservoir comprehensive evaluation and on-site construction.
Keywords:gas chromatogram (GC)  generalized regression neural network)  sparrow search optimization algorithm  crude oil density  
点击此处可从《色谱》浏览原始摘要信息
点击此处可从《色谱》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司    京ICP备09084417号-23

京公网安备 11010802026262号