Penetration rate prediction for drilling wells in the Oligocene formation

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Abstract

The main role of drilling optimization is a decrease in the drilling cost and non-productive time (NPT) for drilling operations. The penetration rate directly influences the overall cost and cost per foot of drilling operation. Thus, the penetration rate prediction and optimization for drilling wells is one of the most crucial parameters to enhance drilling efficiency. Normally, physics-based ROP modeling is widely used to predict bit response or investigate ROP by using nearby offset data. Due to the complexity and nonlinear of ROP, and the confidence level of ROP models with low R squares, data-driven modeling such as machine learning (ML) has become a more attractive study. This paper has been developed on ROP models using artificial neural network (ANN) and compares the results of physics-based ROP models such as the Maurer model, Bingham model, Warren model for perfect cleaning model, Warren model for imperfect cleaning model, and multiple regression based on the significant level of correlation coefficients of R square from models. Drilling Oligocene formations on 8-1/2’’ hole sections have been collected from six drilled wells in the continental shelf of offshore Vietnam. The ROP prediction results were obtained from the ANN model compared with physics-based models. This comparison has shown that the predictive ROP of the power ANN model with an R square confidence level is higher than that of physics-based models.
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渐新统地层钻井渗透率预测
钻井优化的主要作用是降低钻井作业的成本和非生产时间(NPT)。穿透率直接影响钻井作业的总成本和每英尺成本。因此,钻井的穿透率预测和优化是提高钻井效率的最关键参数之一。通常,基于物理的 ROP 建模被广泛用于预测钻头响应或利用附近偏移数据研究 ROP。由于 ROP 的复杂性和非线性,以及 R 平方较低的 ROP 模型置信度,以机器学习(ML)为代表的数据驱动建模已成为一项更具吸引力的研究。本文利用人工神经网络(ANN)开发了 ROP 模型,并根据模型 R 平方的相关系数的显著水平,比较了基于物理的 ROP 模型,如 Maurer 模型、Bingham 模型、完全清洁模型 Warren 模型、不完全清洁模型 Warren 模型和多元回归模型的结果。从越南近海大陆架的六口钻井中收集了 8-1/2''孔段上的渐新世地层钻井数据。ANN 模型与物理模型的 ROP 预测结果进行了比较。比较结果表明,在 R 平方置信水平下,功率 ANN 模型的 ROP 预测结果高于基于物理模型的预测结果。
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来源期刊
ARPN Journal of Engineering and Applied Sciences
ARPN Journal of Engineering and Applied Sciences Engineering-Engineering (all)
CiteScore
0.70
自引率
0.00%
发文量
7
期刊介绍: ARPN Journal of Engineering and Applied Sciences (ISSN 1819-6608) is an online peer-reviewed International research journal aiming at promoting and publishing original high quality research in all disciplines of engineering sciences and technology. All research articles submitted to ARPN-JEAS should be original in nature, never previously published in any journal or presented in a conference or undergoing such process across the globe. All the submissions will be peer-reviewed by the panel of experts associated with particular field. Submitted papers should meet the internationally accepted criteria and manuscripts should follow the style of the journal for the purpose of both reviewing and editing. Our mission is -In cooperation with our business partners, lower the world-wide cost of research publishing operations. -Provide an infrastructure that enriches the capacity for research facilitation and communication, among researchers, college and university teachers, students and other related stakeholders. -Reshape the means for dissemination and management of information and knowledge in ways that enhance opportunities for research and learning and improve access to scholarly resources. -Expand access to research publishing to the public. -Ensure high-quality, effective and efficient production and support good research and development activities that meet or exceed the expectations of research community. Scope of Journal of Engineering and Applied Sciences: -Engineering Mechanics -Construction Materials -Surveying -Fluid Mechanics & Hydraulics -Modeling & Simulations -Thermodynamics -Manufacturing Technologies -Refrigeration & Air-conditioning -Metallurgy -Automatic Control Systems -Electronic Communication Systems -Agricultural Machinery & Equipment -Mining & Minerals -Mechatronics -Applied Sciences -Public Health Engineering -Chemical Engineering -Hydrology -Tube Wells & Pumps -Structures
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