基于变压器的智能完井异常检测方法

IF 8 Q1 ENERGY & FUELS
Esteves Pedro ARANHA , Angelica Nara POLICARPO , Augusto Marcio SAMPAIO
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引用次数: 0

摘要

本研究引入了一种新的方法,并对多变量石油生产时间序列数据的异常检测进行了案例研究,利用监督变压器算法识别智能完井(IWC)中与间隔控制阀(icv)相关的虚假事件。Transformer算法在时间序列异常检测中表现出显著的优势,主要是因为它们能够有效地处理数据漂移和捕获复杂模式。它们的自关注机制允许这些模型适应数据分布随时间的变化,确保对时间序列数据中可能发生的变化具有弹性。此外,变形金刚擅长识别复杂的时间依赖性和远程交互,这对传统模型来说通常是具有挑战性的。在Santos盆地的超深水海底井中进行的现场测试进一步验证了该模型早期识别icv异常的能力,最大限度地减少了非生产时间,并保护了井的完整性。模型的准确率为0.954 4,平衡准确率为0.969 4,F1-Score为0.957 4,与以往文献模型相比有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Transformer-based approach for anomaly detection in intelligent well completions
This study introduces a novel methodology and makes case studies for anomaly detection in multivariate oil production time-series data, utilizing a supervised Transformer algorithm to identify spurious events related to interval control valves (ICVs) in intelligent well completions (IWC). Transformer algorithms present significant advantages in time-series anomaly detection, primarily due to their ability to handle data drift and capture complex patterns effectively. Their self-attention mechanism allows these models to adapt to shifts in data distribution over time, ensuring resilience against changes that can occur in time-series data. Additionally, Transformers excel at identifying intricate temporal dependencies and long-range interactions, which are often challenging for traditional models. Field tests conducted in the ultradeep water subsea wells of the Santos Basin further validate the model’s capability for early anomaly identification of ICVs, minimizing non-productive time and safeguarding well integrity. The model achieved an accuracy of 0.954 4, a balanced accuracy of 0.969 4 and an F1-Score of 0.957 4, representing significant improvements over previous literature models.
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来源期刊
CiteScore
11.50
自引率
0.00%
发文量
473
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