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A realistic and public dataset with rare undesirable real events in oil wells

机译:一个现实和公共数据集,油井中具有罕见的不良真实事件

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摘要

Detection of undesirable events in oil and gas wells can help prevent production losses, environmental accidents, and human casualties and reduce maintenance costs. The scarcity of measurements in such processes is a drawback due to the low reliability of instrumentation in such hostile environments. Another issue is the absence of adequately structured data related to events that should be detected. To contribute to providing a priori knowledge about undesirable events for diagnostic algorithms in offshore naturally flowing wells, this work presents an original and valuable dataset with instances of eight types of undesirable events characterized by eight process variables. Many hours of expert work were required to validate historical instances and to produce simulated and hand-drawn instances that can be useful to distinguish normal and abnormal actual events under different operating conditions. The choices made during this dataset's preparation are described and justified, and specific benchmarks that practitioners and researchers can use together with the published dataset are defined. This work has resulted in two relevant contributions. A challenging public dataset that can be used as a benchmark for the development of (i) machine learning techniques related to inherent difficulties of actual data, and (ii) methods for specific tasks associated with detecting and diagnosing undesirable events in offshore naturally flowing oil and gas wells. The other contribution is the proposal of the defined benchmarks.
机译:检测石油和天然气井中不良事件可以帮助防止生产损失,环境事故和人类伤亡,降低维护成本。由于这种敌对环境中的仪器的可靠性低,这些过程中测量的稀缺性是一种缺点。另一个问题是缺乏与应检测到的事件相关的充分结构化数据。有助于为海上自然流动井中的诊断算法提供有关不良事件的先验知识,这项工作提出了一个原始和有价值的数据集,其中具有八种类型的不良事件的实例,其特征在于八种过程变量。需要许多小时的专家工作来验证历史实例,并生成模拟和手绘实例,可以在不同的操作条件下区分正常和异常实际事件。描述了在此数据集准备期间所做的选择和合理的,以及从业者和研究人员可以定义与已发布的数据集一起使用的特定基准。这项工作导致了两个相关贡献。一个充满挑战的公共数据集,可以用作开发(i)机器学习技术的基准与实际数据的固有困难相关的基准,以及(ii)与检测和诊断海上天然流动的油的检测和诊断不良事件相关的特定任务的方法气井。其他贡献是确定基准的提案。

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