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Monitoring Severe Slugging in Pipeline-Riser System Using Accelerometers for Application in Early Recognition

机译:使用加速度计监测管道提升系统中的严重塞痕以用于早期识别

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摘要

The use of accelerometer signals for early recognition of severe slugging is investigated in a pipeline-riser system conveying an air–water two-phase flow, where six accelerometers are installed from the bottom to the top of the riser. Twelve different environmental conditions are produced by changing water and gas superficial velocities, of which three conditions are stable states and the other conditions are related to severe slugging. For online recognition, simple parameters using statistics and linear prediction coefficients are employed to extract useful features. Binary classification to recognize stable flow and severe slugging is performed using a support vector machine and a neural network. In multiclass classification, the neural network is adopted to identify four flow patterns of stable state, two types of severe slugging, and an irregular transition state between severe slugging and dual-frequency severe slugging. The performance is compared and analyzed according to the signal length for three cases of sensor location: six accelerometers, one accelerometer at the riser base, and one accelerometer at the top of the riser.
机译:在输送空气-水两相流的管道上升系统中,研究了使用加速度计信号来早期识别严重的塞,其中从立管的底部到顶部安装了六个加速度计。通过改变水和天然气的表面速度产生十二种不同的环境条件,其中三个条件是稳定状态,其他条件与严重拍击有关。对于在线识别,采用了使用统计数据和线性预测系数的简单参数来提取有用的特征。使用支持向量机和神经网络进行二进制分类以识别稳定的流量和严重的拍击。在多类分类中,采用神经网络来识别四种稳定状态的流型,两种类型的重击以及重击与双频重击之间的不规则过渡状态。根据三种传感器位置情况下的信号长度对性能进行比较和分析:六个加速度计,一个在立管底部的加速度计和一个在立管顶部的加速度计。

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