利用人工智能集成的生产数据实时预测咽喉健康状况

A. Alghamdi, O. Ayoola, Khalid Mulhem, Mutlaq Otaibi, A. Abdulraheem
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摘要

扼流圈是生产系统的重要组成部分,是面对高压液滴和固体侵蚀等恶劣条件的关键地面设备。通常通过分析节流口尺寸、压力和流量的关系来预测节流口健康状况。在大规模油田,这一过程需要使用常规技术花费大量时间和精力。本文提出了一种利用生产数据与人工智能分析相结合的实时主动检测节流管磨损的方法。收集了30多口气井的流动参数数据。这些井产的是高压高温油田的少量固体气体。此外,这些井还配备了多级节流系统。确定节流阀磨损的方法依赖于在一个数据集上训练人工智能模型,该数据集是通过比较节流阀的变化率与更平滑的产量斜率而构建的。如果变化率不在可容忍的偏离范围内,则检测到异常扼流圈行为。数据集分为70%用于训练,30%用于测试。人工神经网络(ANN)基于以下输入数据进行训练:气体比重、上下游压力和温度以及节流孔尺寸。该人工神经网络模型实现了高于0.9的相关系数,并对显示正常或异常阻塞行为的数据点进行了出色的预测。将此应用程序应用于大型油田(手工分析通常是不切实际的),可以节省大量工时,并显著降低成本。这种应用的改进领域取决于为人工神经网络配备长期生产剖面预测能力,例如产水量,这种分析依赖于文丘里仪表的准确读数,这通常是单相流的情况。人工智能驱动分析的应用为远程海上生产作业监控提供了巨大的改进。本文提出的新方法利用人工智能分析来估计主动检测阻塞健康状况。这种模型的优势在于,它利用人工智能分析来帮助运营商提高资产完整性和生产监控合规性。此外,由于节流阀磨损是出砂的一个重要因素,因此该方法可以扩展到估计出砂量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Prediction of Choke Health Using Production Data Integrated with AI
Chokes are an integral part of production systems and are crucial surface equipment that faces rough conditions such as high-pressure drops and erosion due to solids. Predicting choke health is usually achieved by analyzing the relationship of choke size, pressure, and flow rate. In large-scale fields, this process requires extensive-time and effort using the conventional techniques. This paper presents a real-time proactive approach to detect choke wear utilizing production data integrated with AI analytics. Flowing parameters data were collected for more than 30 gas wells. These wells are producing gas with slight solids production from a high-pressure high-temperature field. In addition, these wells are equipped with a multi-stage choke system. The approach of determining choke wear relies on training the AI model on a dataset constructed by comparison of the choke valve rate of change with respect to a smoother slope of the production rate. If the rate of change is not within a tolerated range of divergence, an abnormal choke behavior is detected. The data set was divided into 70% for training and 30% for testing. Artificial Neural Network (ANN) was trained on data that has the following inputs: gas specific gravity, upstream & downstream pressure and temperature, and choke size. This ANN model achieved a correlation coefficient above 0.9 with an excellent prediction on the data points exhibiting normal or abnormal choke behaviors. Piloting this application on large fields, where manual analysis is often impractical, saves a substantial man-hour and generates significant cost-avoidance. Areas for improvement in such an application depends on equipping the ANN network with long-term production profile prediction abilities, such as water production, and this analysis relies on having an accurate reading from the venturi meters, which is often the case in single-phase flow. The application of this AI-driven analytics provides tremendous improvement for remote offshore production operations surveillance. The novel approach presented in this paper capitalizes on the AI analytics for estimating proactively detecting choke health conditions. The advantages of such a model are that it harnesses AI analytics to help operators improve asset integrity and production monitoring compliance. In addition, this approach can be expanded to estimate sand production as choke wear is a strong function of sand production.
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