全部 标题 作者
关键词 摘要

OALib Journal期刊
ISSN: 2333-9721
费用:99美元

查看量下载量

相关文章

更多...

海上油田多层砂岩定向井合采初期产能预测方法及应用——以渤中C油田为例
Prediction Method and Application of Initial Productivity in Combined Production of Multilayer Sandstone Directional Well in Offshore Oilfield—Taking Bozhong C Oilfield as an Example

DOI: 10.12677/AG.2024.142017, PP. 177-185

Keywords: 开发初期,产能评价,影响因素,预测方法,多层合采,机器学习
Early Stage of Development
, Productivity Evaluation, Influencing Factors, Prediction Method, Multilayer Mining, Machine Learning

Full-Text   Cite this paper   Add to My Lib

Abstract:

海上油田初期产能评价通常采用基于DST测试资料的比采油指数法,但由于储层物性和流体性质的变化,以及多层合采层间干扰等因素影响,取值具有人为性,造成初期产能预测评价准确性降低。根据海上油田定向井多层合采开发的特点,通过分析储层渗透率、渗透率变异系数、流体性质和层间干扰系数等对产能的影响,建立储层物性参数、渗透率变异系数等参数和比采油指数的关系,提出了综合产能指数法和利用定向井实际投产数据样本通过机器学习法预测评价定向井初期产能。对比分析不同预测方法适用性和预测效果,为海上油田定向井多层合采初期产能预测提供可靠方法,以提高新井初期产量评价预测的准确性。实例应用表明,基于生产井大数据样本应用机器学习法评价预测定向井初期产能,比传统的比采油指数法更加便捷、准确性也较高,具有良好的应用前景。
The specific oil recovery index method based on DST test data is usually used to evaluate the ini-tial productivity of offshore oil fields. However, due to the change in reservoir physical and fluid properties, as well as the interference between layers of multi-layer production, the value is ar-tificial, resulting in a decrease in the accuracy of the initial productivity prediction and evaluation. According to the characteristics of multi-layer combined production development of directional Wells in offshore oil fields, the relationship between reservoir physical property parameters, permeability variation coefficient, fluid properties and interlayer interference coefficient and specific oil recovery index is established by analyzing the effects of reservoir permeability, permeability variation coefficient, fluid properties and interlayer interference coefficient on productivity. The comprehensive productivity index method and machine learning method are proposed to predict and evaluate the initial productivity of directional Wells by using the actual production data samples. The applicability and prediction effect of different prediction methods are compared and analyzed to provide a reliable method for the initial productivity prediction of multi-zone combined production of oriented Wells in offshore oil fields, so as to improve the accuracy of the initial production evaluation and prediction of new Wells. The example application shows that the application of the machine learning method to evaluate and predict the initial productivity of directional Wells based on big data samples of production Wells is more convenient and accurate than the traditional specific oil recovery index method, and has a good application prospect.

References

[1]  周守为. 中国近海典型油田开发实践[M]. 北京: 石油工业出版社, 2009: 28-29.
[2]  周守为. 海上稠油高效开发新模式研究及应用[J]. 西南石油大学学报(自然科学版), 2007, 29(5): 1-4.
[3]  王德民. 分层开采理论研究[M]. 北京: 石油工业出版社, 1985.
[4]  王进财, 赵伦, 张祥忠, 等. 古潜山岩溶储集层特征及其对产能的控制作用[J]. 石油勘探与开发, 2015, 42(6): 779-786.
[5]  李隆新, 王梦雨, 胡勇, 等. 缝洞型碳酸盐岩地下储气库高速注采渗流特征及库容动用机理[J]. 天然气工业, 2023, 43(10): 73-82.
[6]  刘彦成, 罗宪薄, 康凯, 等. 陆相多层砂岩油藏渗透率表征与定向井初期产能预测——以蓬莱19-3油田为例[J]. 石油勘探与开发, 2017, 44(1): 97-103.
[7]  薛婷, 黄天镜, 成良丙, 等. 鄂尔多斯盆地庆城油田页岩油水平井产能主控因素及开发对策优化[J]. 天然气地球科学, 2021, 32(12): 1880-1888.
[8]  李波, 罗宪波, 刘英, 等. 海上稠油油田合理单井产能预测新方法[J]. 中国海上油气田, 2008, 20(4): 243-245.
[9]  李传亮. 油藏工程[M]. 北京: 石油工业出版社, 2005.
[10]  Breiman, L.E.O. (2001) Random Forests. Machine Learning, 45, 5-32.
https://doi.org/10.1023/A:1010933404324
[11]  李欣海. 随机森林模型在分类与回归分析中的应用[J]. 应用昆虫学报, 2013, 50(4): 1190-1197.
[12]  韩学婷, 杨刚, 何沛其, 等. 基于储层特征不确定性的产能分析——以古交区块为例[J]. 煤炭科学技术, 2021, 49(11): 157-168.
[13]  朱庆忠, 胡秋嘉, 杜海为, 等. 基于随机森林算法的煤层气直井产气量模型[J]. 煤炭学报, 2020, 45(8): 2846-2855.
[14]  赵军龙, 丁阳阳, 池佳玮, 等. 甘陕古河中段侏罗系延10油藏初产产能预测技术研究[J]. 地球物理学进展, 2021, 36(2): 723-729.
[15]  张瀚澎, 任大忠, 张荣军, 等. 苏里格致密砂岩气藏流体微观分布规律及影响因素[J]. 矿业科学学报, 2023, 8(6): 744-757.

Full-Text

comments powered by Disqus

Contact Us

service@oalib.com

QQ:3279437679

WhatsApp +8615387084133

WeChat 1538708413