State Estimation and Slug Control of the Subsea Multiphase Pipeline

Chao Yu, Chuanxu Wang, Xin Deng, Xueliang Zhang, Haifang Sun, Weiming Peng, Yupeng Liu
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Abstract

The simulation and control of the severe slugging flow in the subsea multiphase pipeline is the focus of research in the production and exploitation of oil companies. Severe slug flow results in severe fluctuations of pressure and flow rate at both the wells end and the receiving host processing facilities, causing safety and shutdown risks. To prevent the severe slugging flow regime in multiphase transport pipelines, an Ordinary Differential Equation (ODE) model is established by using the mass conservation law for individual phases in the pipeline and the riser sections. Then, the proposed model is compared to the results from the OLGA simulation. A comparative study of different slugging flow control solutions is conducted. Unscented Kalman Filter (UKF), Wavelet Neural Network (WNN) and UKF&WNN are used for state estimation and combined with PI controller. The UKF and WNN are good nonlinear filters. However, when the nominal choke opening is increased, they work unsatisfying. The UKF&WNN observer shows slightly better results than UKF and WNN when the system has high input disturbance.
海底多相管道状态估计与段塞流控制
海底多相管道严重段塞流的仿真与控制一直是石油公司生产开发中的研究热点。严重的段塞流会导致井端和接收主机处理设施的压力和流量剧烈波动,从而造成安全和关井风险。为了防止多相输送管道中出现严重的段塞流现象,利用质量守恒定律建立了管道中各相和隔水管段的常微分方程(ODE)模型。然后,将该模型与OLGA仿真结果进行了比较。对不同的段塞流控制方案进行了对比研究。采用无气味卡尔曼滤波(UKF)、小波神经网络(WNN)和UKF&WNN进行状态估计,并与PI控制器相结合。UKF和WNN都是很好的非线性滤波器。然而,当名义扼流圈开度增加时,它们的工作不令人满意。当系统具有高输入干扰时,UKF&WNN观测器的效果略好于UKF和WNN观测器。
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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