Abstract
In this paper, we experimentally investigate gas–liquid flows in a 1657 m long pipeline with an S-shaped riser. Boundaries of three different flow regimes and the transition velocities are determined and presented on the flow regime diagram. Differential pressure signals and pressure signal near the platform are firstly decomposed into six scales via a wavelet analysis, and then statistical parameters on each scale are extracted and further input into a decision tree classifier. For a sample duration of 18.6 s, the highest recognition rates of one signal, two-signal, and three-signal rise from 93.2%, 95.0%, to 96.8%. For one signal, two-signal, and three-signal, the shortest sample durations required for a satisfactory recognition rate of 95% obviously become shorter from 44 s, 28 s, to 2.3 s. On the premise of the highest recognition rate 94.5% to 95.0%, one achieves a dramatic dimension reduction of 81%-93% for statistical parameters via a principal component analysis.
| Original language | English |
|---|---|
| Article number | 116819 |
| Journal | Chemical Engineering Science |
| Volume | 244 |
| DOIs | |
| State | Published - 23 Nov 2021 |
Keywords
- Flow regime
- Gas-liquid flow
- Pipeline-riser
- Regime identification
- Severe slugging
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