Neuro-fuzzy methods for slug detection and control in multi- phase flow based on differential pressure and electrical capacitance tomometry (ECTm)

Ru Yan, S. Mylvaganam
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Abstract

Avoidance of slug flow is of paramount importance in processes involving multi-phase flow. As one of many safety measures, modelling based prediction of flow regime and identifying inflow conditions favourable for slug flow is done in the chemical, process industries, and refineries and in the exploration for and production of oil and gas. These efforts are all meant to develop methods to deter any catastrophic run-away phenomena in these diverse processes. Multitude of parameters associated with the multi-phase flow can affect the results from such simulations. However, these algorithms are still not robust enough to tackle real time control of these processes. The end-user needs a timely indication of some critical parameters so as to control or shut down a process to avoid process calamities. This paper focuses on data fusion of sensor data from an array of capacitance transducers arranged on the surface of the pipe with multi-phase flow along with differential pressure (DP) sensors. The capacitance-based measurements are from a electrical capacitance tomometric module. By studying the time series of the capacitance values logged in continuously from this array of capacitive sensors and DP, slugs can be identified and their parameters quantified. Neural network using self-organising maps (SOM) is used to classify the slugs in a rapid manner giving a good overview of the slugs and their parameters. Important parameters such as slug size, frequency and velocity can be estimated using neuro-fuzzy techniques thus facilitating a model free approach (MFA) for the control of the complex process of multiphase flow.
基于差压和电容的多相流段塞检测与控制的神经模糊方法
在涉及多相流的过程中,避免段塞流是至关重要的。作为许多安全措施之一,基于流态预测和识别有利于段塞流的流入条件的建模在化工、加工工业、炼油厂以及石油和天然气的勘探和生产中都有应用。这些努力都是为了开发方法,以阻止在这些不同的过程中任何灾难性的失控现象。与多相流有关的众多参数会影响模拟结果。然而,这些算法仍然不够健壮,无法处理这些过程的实时控制。最终用户需要及时指示一些关键参数,以便控制或关闭过程,避免过程灾难。本文主要研究了在多相流管道表面布置电容式传感器阵列和差压传感器的传感器数据融合。基于电容的测量来自电容测量模块。通过研究从该电容传感器阵列和DP连续记录的电容值的时间序列,可以识别段塞并量化其参数。使用自组织图(SOM)的神经网络可以快速对段塞虫进行分类,从而对段塞虫及其参数进行良好的概述。利用神经模糊技术可以估计段塞尺寸、频率和速度等重要参数,从而为多相流复杂过程的控制提供了无模型方法(MFA)。
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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