油气藏评价与开发 ›› 2025, Vol. 15 ›› Issue (4): 605-612.doi: 10.13809/j.cnki.cn32-1825/te.2025.04.009

• 方法理论 • 上一篇    下一篇

注CO2剖面氧活化测井渡越时间ACO-NM混合优化计算方法

王争妍1(), 陈猛1(), 杨国锋1, 刘国权2, 裴阳3, 陈强2   

  1. 1.西南石油大学地球科学与技术学院,四川 成都 610500
    2.中国石油集团测井有限公司技术研究院,陕西 西安 710077
    3.中国石油集团测井有限公司长庆分公司,陕西 西安 710077
  • 收稿日期:2024-08-22 发布日期:2025-07-19 出版日期:2025-08-26
  • 通讯作者: 陈猛(1986—),男,博士后,副教授,主要从事生产测井与油气藏生产动态评价相关方法、原理和应用研究。地址:四川省成都市新都区新都大道8号,邮政编码:610500。E-mail:chenmengyzu@163.com
  • 作者简介:王争妍(2001—),女,在读硕士研究生,主要从事生产测井解释评价及多相流研究工作。地址:四川省成都市新都区新都大道8号,邮政编码:610500。E-mail:863493992@qq.com
  • 基金资助:
    国家自然科学基金项目“致密油储层孔隙尺度注水吞吐油水两相渗流机理研究”(41804141);四川省科技教育联合基金面上项目“非常规气藏水平井非连续介质耦合流动剖面反演模型研究”(2024NSFSC1998)

ACO-NM hybrid optimization calculation method for transit time of oxygen activation logging in CO2 injection profile

WANG Zhengyan1(), CHEN Meng1(), YANG Guofeng1, LIU Guoquan2, PEI Yang3, CHEN Qiang2   

  1. 1.School of Geoscience and Technology, Southwest Petroleum University, Chengdu, Sichuan 610500, China
    2.Logging Technology Research Institute, China National Logging Corporation, Xi’an, Shaanxi 710077, China
    3.Changqing Company, China National Logging Corporation, Xi’an, Shaanxi 710077, China
  • Received:2024-08-22 Online:2025-07-19 Published:2025-08-26

摘要:

非常规油气藏注入CO2驱油是提升油藏采收率的关键技术手段,脉冲中子氧活化测井是复杂管柱结构油气井监测注入CO2动态的有效方法,准确解析氧元素活化谱并计算渡越时间是明确CO2单层吸入量的重要基础。受活化γ射线计数率统计涨落误差、流体性质、多层管柱结构等因素影响,注CO2活化谱峰存在单峰拖尾、双峰重叠等现象,现有方法高精度解析活化谱存在局限性。为降低重叠峰分峰及活化谱峰边界选取给渡越时间计算带来的误差,详细剖析了不同因素影响下活化谱峰形态特征,引入了蚁群优化(ACO)算法对谱线进行初步寻优,再结合单纯形(Nelder-Mead,简称NM)算法完成活化谱峰的快速高精度拟合,实现了氧活化注入剖面测井渡越时间高精度定量计算,相较于传统的人工卡峰确定峰位边界再结合加权平均或高斯函数拟合法,具有拟合效率高、人为干预少、计算误差低等优点。结合注CO2剖面实测井资料处理解释对比分析,发现建立的ACO-NM最优化模型可有效实现油管和套管空间重叠峰双峰分离,通过自动卡峰拟合求取渡越时间,实现复杂管柱结构不同空间CO2流量定量计算。采用ACO-NM混合优化算法计算得到的注入流体流量与井口实际注入量相对误差小于5%,相较于传统的最小二乘法计算精度提高,满足矿场CO2注入动态监测评价需求。

关键词: 脉冲中子氧活化测井, 渡越时间, ACO-NM混合优化算法, 活化谱, 注CO2剖面

Abstract:

CO2 injection in unconventional oil and gas reservoirs is a key technology for enhancing oil and gas recovery while enabling CO2 storage. Its application is becoming increasingly prevalent in the development of such reservoirs within the context of “dual carbon” goals. Accurate monitoring and evaluation of CO2 uptake across different layers are essential for guiding the optimization and adjustment of oil and gas reservoir development schemes. Pulsed neutron oxygen activation logging is employed as a dynamic monitoring technology for oxygen-containing fluid injection in a complex string structure, reflecting the dynamic behavior of injected CO2 by recording variations in activated oxygen spectrum peaks. However, activation spectrum peaks in CO2 injection often exhibit single-peak tailing and double-peak overlapping, influenced by statistical fluctuations in activated gamma-ray count rates, fluid properties, multi-layer string structure, and other factors. As a result, accurately determining the transit time of activation spectra and evaluating the amount of CO2 uptake in each small layer becomes challenging.

To minimize errors in transit time calculation caused by overlapping peak separation and activation peak boundary selection, the morphological characteristics of activation peaks under varying influences were analyzed meticulously. The primary factors affecting oxygen activation logging data were string structure and flow rate differences. From a morphological perspective, peak types were classified into four categories: symmetric single peaks, asymmetric single peaks, partially overlapping double peaks, and severely overlapping double peaks. Asymmetric single peaks, characterized by tailing phenomena, occurred under conditions of significant fluid flow velocity differences and dispersed arrival times at the probe. Conversely, overlapping double peaks appeared when multiple flows from the tubing and the annulus produced superimposed signals, with similar flow rates and identical directions. Usually, the water flow was faster than that in the tubing-casing annulus, resulting in narrower and taller peaks for tubing flow.

Due to the randomness and uncertainty of neutron emission from neutron source, oxygen activation reactions, and the detector technology, the counting rate in the time spectrum under ideal conditions conformed to the normal distribution (also termed Gaussian distribution). Compared with the measured oxygen activation spectrum peak, the Gaussian function exhibited a high degree of morphological similarity. The Gaussian function was used to fit the oxygen activation spectrum peak, and the peak position, peak width, and peak height information were derived from its parameters, subsequently enabling the determination of the transit time. Furthermore, overlapping peaks generated by the tubing flow signal and the tubing-casing annulus flow signal could also be effectively separated using multiple Gaussian functions, enabling precise analysis of multiple downhole flow characteristics.

The spectral signal, characterized by multiple Gaussian peak functions, represented a typical nonlinear model. While the peak width and peak position of each characteristic peak exhibited nonlinear behavior, the peak height remained a linear parameter within this framework. Therefore, the Nelder-Mead (NM) algorithm was used to optimize the nonlinear parameters, with linear parameters being directly calculated by linear regression in each iteration. This approach reduced the dimension of the solution vector and enhanced operational efficiency. Despite the NM algorithm’s advantages of requiring no prior guidance and exhibiting rapid convergence, as a direct optimization algorithm, its results were greatly affected by the initial solution. To address this, the Ant Colony Optimization (ACO) algorithm was introduced. In ACO optimization, ants migrated towards spectral bands containing local maxima based on predefined movement rules, with iteration terminated once all ants halted. All ants were distributed within spectral bands containing local maxima. Through the preliminary optimization of the spectral lines, a reasonable initial solution was provided for the NM algorithm, thereby improving the stability of the transit time calculation results and enabling high-precision quantitative computation of the transit time in the oxygen activation injection profile logging. Compared with the traditional methods involving manual peak boundary determination combined with weighted average or Gaussian function fitting methods, this approach offered higher fitting efficiency, reduced human intervention, and lower calculation error.

Through a comparative analysis of pulse neutron oxygen activation data processing and interpretation in well X (CO2 injection well) of the M oilfield, the established ACO-NM optimization model could effectively realize the bimodal separation of overlapping peaks in tubing and casing spaces. Transit times were obtained via automatic peak fitting, enabling the quantitative calculation of CO2 flow in different spaces of the complex string structure. To validate the algorithm’s accuracy, comparative analysis was conducted between the ACO-NM hybrid optimization and the traditional least squares method. Taking surface metered injection volumes as the evaluation standard, relative errors were quantified. The least squares method exhibited errors of 9.59% (tubing) and 9.29% (annulus), while the ACO-NM hybrid optimization algorithm yielded relative errors of 1.87% and 3.31% in the tubing and annulus, respectively. Compared with the traditional least squares method, the calculation results of the optimization algorithm were closer to the surface metered injection volumes. A relative error below 5% was observed between the injected fluid flow calculated by the ACO-NM hybrid optimization algorithm and the actual injection volume at the wellhead. This indicated an improvement in calculation accuracy over the traditional least squares method, which met the needs of dynamic monitoring and evaluation of CO2 injection in the field. The proposed ACO-NM hybrid optimization calculation method in the dynamic monitoring of CO2 injection provides crucial technical support for oilfield development and carbon dioxide storage. The application of this method enables enhanced operational efficiency and economic viability of CO2 injection, improved oil and gas recovery, and more precise and efficient resource development.

Key words: pulsed neutron oxygen activation logging, transit time, ACO-NM hybrid optimization algorithm, activation spectrum, CO2 injection profile

中图分类号: 

  • TE341