A FRAMEWORK FOR MANAGEMENT OF LEAKS AND EQUIPMENT FAILURE IN OIL WELLS

Dennis, T. L., A. V I E, Emmah, V. T.
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Abstract

Oil is a precious and critical natural energy resource that is used in numerous ways to drive various industries worldwide. The extraction of oil from underground reservoirs is a complex process that requires a lot of planning, careful execution, and risk management. In this paper, CNN is employed to extract relevant features from sensor primary data collected from various wells. Detecting undesirable events such as leaks and equipment failure in oil wells is crucial for preventing safety hazards, environmental damage and financial losses, making it challenging to identify issues in a timely and accurate manner. This dissertation describes a hybrid model for detecting undesirable events in oil and gas wells using a combination of Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) techniques. The CNN architecture enables effective information extraction by applying convolutional layers and pooling operations to identify patterns and spatial dependencies in the data. The extracted features are then fed into an LSTM network, which can capture temporal dependencies and learning long-term patterns. By utilizing LSTM, the model can effectively analyse the time series data and detect the occurrence of undesirable events, such as abnormal pressure, fluid leakage, or equipment malfunction, in oil and gas wells. The hybrid model leveraging CNN for feature extraction and LSTM for detecting undesirable events in the oil and gas industry presents a comprehensive approach to enhance well monitoring and prevent potential hazards. Achieving high accuracy rates of 99.8% for training and 99.78% for testing demonstrates the efficacy of the proposed model in accurately identifying and classifying undesirable events in oil and gas wells.
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油井泄漏和设备故障管理框架
石油是一种珍贵而关键的自然能源资源,被广泛用于推动全球各行各业的发展。从地下油藏开采石油是一个复杂的过程,需要大量的规划、谨慎的执行和风险管理。本文采用 CNN 从各种油井收集的传感器原始数据中提取相关特征。检测油井泄漏和设备故障等不良事件对于防止安全隐患、环境破坏和经济损失至关重要,因此及时准确地发现问题具有挑战性。本论文介绍了一种使用卷积神经网络(CNN)和长短期记忆(LSTM)技术的混合模型,用于检测油气井中的不良事件。CNN 架构通过应用卷积层和池化操作来识别数据中的模式和空间依赖关系,从而实现有效的信息提取。然后将提取的特征输入 LSTM 网络,该网络可捕捉时间依赖性并学习长期模式。通过利用 LSTM,该模型可以有效地分析时间序列数据,并检测油气井中发生的异常事件,如异常压力、流体泄漏或设备故障。该混合模型利用 CNN 进行特征提取,利用 LSTM 检测油气行业中的不良事件,为加强油井监测和预防潜在危险提供了一种综合方法。该模型的训练准确率和测试准确率分别高达 99.8%和 99.78%,证明了该模型在准确识别和分类油气井不良事件方面的功效。
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