Multisensor data fusion methods for petroleum engineering applications

A. Abdelgawad, Z. Merhi, M. Elgamel, M. Bayoumi
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引用次数: 6

Abstract

Small amount of sand in oil pipelines can result in significant erosion in a very short time period. This Produced sand is a serious problem in many production situations. Installation of a system to monitor and quantify sand production from a well would be valuable to assist in optimizing well productivity and to detect sand as early as possible. We present a multi-sensor framework for sand detection. Wireless acoustic sensors are applied in networked data fusion systems for sand detection. The framework is designed to collect real time data from oil pipeline using acoustic sensors and flow analyzer. Fusion was implemented using two methods; Fuzzy Art (FA) and Moving Average Filter (MAF). A test bed was established from ten acoustic sensors. The flow rate was monitored as well in order to collect the data with the same flow rate. For each acoustic sensor the average percentage error between the observed sand rate and the actual sand rate is very high and inconsistence. However, using the fusion methods, the result shows that the average percentage error of the fusion methods is decreased.
石油工程应用中的多传感器数据融合方法
石油管道中少量的沙子会在很短的时间内造成严重的侵蚀。这种出砂在许多生产情况下都是一个严重的问题。安装一个系统来监测和量化井的出砂量,对于帮助优化井的产能和尽早发现出砂是有价值的。我们提出了一个多传感器的砂粒检测框架。无线声传感器应用于网络数据融合系统中进行防砂检测。该框架利用声学传感器和流量分析仪对输油管道进行实时数据采集。采用两种方法实现融合;模糊艺术(FA)和移动平均滤波器(MAF)。用10个声传感器搭建了实验平台。为了收集相同流量下的数据,还对流量进行了监测。对于每个声波传感器,观测到的出砂率与实际出砂率之间的平均百分比误差非常大,而且不一致。结果表明,融合方法的平均百分比误差有所降低。
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