Application of Artificial Neural Network Based Gas Path Diagnostics on Gas Pipeline Compressors

S. M. Suleiman, Yi-Guang Li
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Abstract

This paper presents the development of an artificial neural network (ANN) Gas Path Diagnostics (GPD) technique applied to pipeline compression system for fault detection and quantification. The work detailed the various degradation mechanisms and the effect of such degradations on the performance of natural gas compressors. The data used in demonstrating the ANN diagnostics is so derived using an advanced thermodynamic performance simulation model of integrated pipeline and compressor systems, which has embedded empirical compressor map data and pipeline resistance model. Implantation of faults within the model is in such a way to account for faults degradations caused by fouling, erosion and corrosion, of various degrees of severities, to obtain wide range of corresponding simulated “true” measurements. In order to account for uncertainties normally encountered in field measurements, Gaussian noise distribution was combined with simulated true measurements, which depends on the instrument’s tolerances. Furthermore, since judicious measurements selection are crucial in ensuring flawless GPD predictions, a sensitivity and correlation analysis of the available measurements revealed that discharge temperature, rotational speed and torque are the most effective measurements for the diagnostics with acceptable degrees of accuracies. The measurements observability technique is a novel approach in pipeline compressor diagnostics. Analytical case studies of the developed method show that, a selected ANN architecture can detect and quantify faults related to degradation in efficiency and flow capacities in the presence of instrument error, varied operational and environmental conditions.
基于人工神经网络的气路诊断在燃气管道压缩机中的应用
本文提出了一种应用于管道压缩系统的人工神经网络(ANN)气路诊断(GPD)技术,用于故障检测和量化。该工作详细介绍了各种降解机制以及这种降解对天然气压缩机性能的影响。用于演示人工神经网络诊断的数据是通过集成管道和压缩机系统的先进热力学性能模拟模型得出的,该模型嵌入了经验压缩机图数据和管道阻力模型。在模型中植入故障是为了考虑不同严重程度的污垢、侵蚀和腐蚀引起的故障退化,从而获得大范围的相应模拟“真”测量值。为了考虑在现场测量中经常遇到的不确定性,高斯噪声分布与模拟真实测量相结合,这取决于仪器的公差。此外,由于明智的测量选择对于确保完美的GPD预测至关重要,因此对可用测量的敏感性和相关性分析表明,放电温度、转速和扭矩是诊断的最有效测量,具有可接受的精度程度。测量可观测性技术是管道压缩机诊断的一种新方法。对所开发方法的分析案例研究表明,选定的人工神经网络架构可以在仪器误差、不同的操作和环境条件下检测和量化与效率和流量下降相关的故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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