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ESP Data Analytics: Use of Deep Autoencoders for Intelligent Surveillance of Electric Submersible Pumps

机译:ESP数据分析:利用深度自动控型进行电动潜水泵的智能监控

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Objectives/Scope: Electric Submersible Pump (ESP) account for over 60% of artificial lift methods used globally and contribute significantly to the CAPEX and OPEX of a project. They tend to be the least reliable component in the system with an average life-span of 2 years. This paper demonstrates how artificial intelligence was used to unlock insights from sensor data around an ESP to understand the operating conditions which lead to a trip and failure of these systems. Methods, Procedures, Process: Autoencoders were used for the detection of anomalous behavior in an ESP and the determination of the root cause of an anomalous event. Autoencoders are neural networks trained to reconstruct input data. They have an encoding and decoding section, the encoder compresses the input vector, while the decoder reconstructs the original input from the compressed vector. This process allows the network to understand the patterns in a dataset. We trained the network on stable operating data from a 2-years historical data dump of 97 sensors. This allowed the model to understand the patterns of stability in an ESP. Results, Observations, Conclusions: The autoencoder was developed using the Python programming language along with the Keras deep learning framework. It had 7 layers with the exponential linear unit as the activation function for training. During reconstruction, the autoencoder never produces a perfect reconstruction of input data, it, however, performs a good reconstruction on data similar to what it was trained on. In our case, the model reconstructs stable data well and struggles with unstable data. The reconstruction error is used to distinguish a normal event from an anomalous event because it increases prior to an event and reduces as the system returns to stability. During the historical time period, the ESP experienced 5 major trips, three of them were due to gas locks while the other two were due to electrical issues. The model was able to detect the gas locks on average 5 hrs in advance and electrical issues several days in advance before the actual events. The top ten sensors responsible for each event were determined based on the relative magnitude of the individual sensor reconstruction errors, the validity of this output was confirmed by the Subject Matter Expert. Novel/Additive Information: Autoencoders can make non-linear correlation between features in a dataset and have been used for anomaly detection in images and other fields, this paper demonstrates their usefulness in intelligent surveillance of ESPs. This solution is currently used for near real-time intelligent surveillance of ESPs with the ability to send out email notifications whenever any sensor strays away from stability.
机译:目标/范围:电动潜水泵(ESP)占全球使用的人工升降方法的60%以上,并对项目的资本资源部门和OPEX作出贡献。它们往往是系统中最低可靠的组件,平均寿命为2年。本文展示了人工智能如何用于从ESP周围的传感器数据解锁洞察,以了解导致这些系统的旅行和失败的操作条件。方法,程序,过程:自动额用于检测ESP中的异常行为,并确定异常事件的根本原因。 AutoEncoders是培训的神经网络以重建输入数据。它们具有编码和解码部分,编码器压缩输入向量,而解码器从压缩矢量重建原始输入。此过程允许网络了解数据集中的模式。我们从97个传感器的2年历史数据转储,我们在稳定的操作数据上培训了网络。这允许模型在ESP中理解稳定性的模式。结果,观察结论:AutoEncoder是使用Python编程语言开发的,以及Keras Deep学习框架。它具有7层,指数线性单元作为培训的激活功能。在重建期间,AutoEncoder从未产生完美的输入数据重建,然而,它对与培训的数据相似的数据进行了良好的重建。在我们的情况下,该模型重建了稳定的数据,并与不稳定的数据斗争。重建误差用于将正常事件与异常事件区分开,因为它在事件之前增加并随着系统返回稳定性而减少。在历史时期,ESP经历了5个主要旅行,其中三个是由于气锁,而另外两个是由于电气问题。该模型能够在实际事件之前提前5小时平均检测气体锁定和电气问题。基于各个传感器重建误差的相对幅度确定负责每个事件的前十个传感器,主题专家确认该输出的有效性。新颖/添加剂信息:自动编码可以使特征之间的非线性相关性的数据集,并已被用于在图像和其他领域的异常检测,本文表明他们在静电除尘器的智能监控有用性。该解决方案目前用于近实时的ESP的智能监控,能够在远离稳定性的传感器界阵时发送电子邮件通知。

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