Skip to main content

2014 | Buch

Nonlinear Analysis of Gas-Water/Oil-Water Two-Phase Flow in Complex Networks

verfasst von: Zhong-Ke Gao, Ning-De Jin, Wen-Xu Wang

Verlag: Springer Berlin Heidelberg

Buchreihe : SpringerBriefs in Applied Sciences and Technology

insite
SUCHEN

Über dieses Buch

Understanding the dynamics of multi-phase flows has been a challenge in the fields of nonlinear dynamics and fluid mechanics. This chapter reviews our work on two-phase flow dynamics in combination with complex network theory. We systematically carried out gas-water/oil-water two-phase flow experiments for measuring the time series of flow signals which is studied in terms of the mapping from time series to complex networks. Three network mapping methods were proposed for the analysis and identification of flow patterns, i.e. Flow Pattern Complex Network (FPCN), Fluid Dynamic Complex Network (FDCN) and Fluid Structure Complex Network (FSCN). Through detecting the community structure of FPCN based on K-means clustering, distinct flow patterns can be successfully distinguished and identified. A number of FDCN’s under different flow conditions were constructed in order to reveal the dynamical characteristics of two-phase flows. The FDCNs exhibit universal power-law degree distributions. The power-law exponent and the network information entropy are sensitive to the transition among different flow patterns, which can be used to characterize nonlinear dynamics of the two-phase flow. FSCNs were constructed in the phase space through a general approach that we introduced. The statistical properties of FSCN can provide quantitative insight into the fluid structure of two-phase flow. These interesting and significant findings suggest that complex networks can be a potentially powerful tool for uncovering the nonlinear dynamics of two-phase flows.

Inhaltsverzeichnis

Frontmatter
Chapter 1. Introduction
Abstract
Gas-water/oil-water two-phase flow is quite common in lubrication, spray processes, nuclear reactor cooling and well bores. The behaviors of two-phase flow under a wide range of flow conditions and inclination angles constitute an outstanding interdisciplinary problem with significant applications to the petroleum industry. Understanding the dynamics of flow patterns is a crucial issue. Due to the interplay among many complex factors such as fluid turbulence, phase interfacial interaction, and local relative movements between phases, two-phase flow exhibits highly irregular, random, and unsteady flow structure.
Zhong-Ke Gao, Ning-De Jin, Wen-Xu Wang
Chapter 2. Definition of Flow Patterns
Abstract
The vertical upward gas-water two-phase flow patterns in a pipe of inner diameter 125 mm can be categorized into five classes on the basis of the visual and video observations and still photography.
Zhong-Ke Gao, Ning-De Jin, Wen-Xu Wang
Chapter 3. The Experimental Flow Loop Facility and Data Acquisition
Abstract
The gas-water two-phase flow experiment in a 125 mm diameter vertical upward transparent Plexiglas pipe was carried out in the multiphase flow loop of Tianjin University. The experimental mediums are air and tap water.
Zhong-Ke Gao, Ning-De Jin, Wen-Xu Wang
Chapter 4. Community Detection in Flow Pattern Complex Network
Abstract
Flow Pattern Complex Network (FPCN) [1], extracted from the conductance fluctuating signals, is an abstract network, in which each flow condition is represented by a single node and the edge is determined by the strength of correlation between nodes. Flow condition refers to the flow behavior under different proportions of gas flow rate and water flow rate in the pipe. Since we configured 90 different proportions of gas flow rate and water flow rate to obtain 90 conductance fluctuating signals in the gas-water two-phase flow experiment, there are 90 different flow conditions (i.e., the number of nodes contained in FPCN is 90), in which each node corresponds to one of these 90 conductance fluctuating signals.
Zhong-Ke Gao, Ning-De Jin, Wen-Xu Wang
Chapter 5. Nonlinear Dynamics in Fluid Dynamic Complex Network
Abstract
To gain insight into the nonlinear dynamics of gas-water two-phase flow, we construct Fluid Dynamic Complex Network (FDCN) from one conductance fluctuating signal.
Zhong-Ke Gao, Ning-De Jin, Wen-Xu Wang
Chapter 6. Gas-Water Fluid Structure Complex Network
Abstract
In general, the traditional nonlinear time series analysis methods (chaotic attractor morphology, complexity measures and chaotic recurrence plot) cannot effectively reveal the complex fluid structure of two-phase flow.
Zhong-Ke Gao, Ning-De Jin, Wen-Xu Wang
Chapter 7. Oil-Water Fluid Structure Complex Network
Abstract
Due to the interplay among many complex factors such as liquid-liquid phase interfacial interaction and the existence of a gravitational component normal to the flow direction, an inclined oil-water flow exhibits highly irregular, random, and unsteady flow structure as compared with a vertical two-phase flow.
Zhong-Ke Gao, Ning-De Jin, Wen-Xu Wang
Chapter 8. Directed Weighted Complex Network for Characterizing Gas-Liquid Slug Flow
Abstract
Recently, we have proposed a framework for inferring a directed weighted complex network from a time series [1]. We here introduce the analytical framework as follows: we start from construction of the Directed weighted complex network (DWCN).
Zhong-Ke Gao, Ning-De Jin, Wen-Xu Wang
Chapter 9. Markov Transition Probability-Based Network for Characterizing Horizontal Gas-Liquid Two-Phase Flow
Abstract
More recently, we have employed a Markov transition probability-based network to characterize the flow behavior underlying horizontal gas-liquid two-phase flow [1]. We here introduce methodology and obtained results as follows: A Markov chain is a mathematical system that undergoes transitions from one state to another, between a finite or countable number of possible states.
Zhong-Ke Gao, Ning-De Jin, Wen-Xu Wang
Chapter 10. Recurrence Network for Characterizing Bubbly Oil-in-Water Flows
Abstract
More recently, we have used the recurrence network to characterize the flow behavior of bubbly oil-in-water flows [1]. We here introduce methodology and obtained results as follows: Mapping a time series into a complex network allows quantitatively characterizing the structural characteristics of complex systems that are composed of a large numbers of entities interacting with each other in a complex manner.
Zhong-Ke Gao, Ning-De Jin, Wen-Xu Wang
Chapter 11. Conclusions
Abstract
Despite tremendous knowledge about fluid flows, our understanding of nonlinear dynamics in two-phase flows is still quite limited. We have proposed a scheme based on complex network to investigate gas-water and oil-water two-phase flow and have obtained a series of fascinating results.
Zhong-Ke Gao, Ning-De Jin, Wen-Xu Wang
Metadaten
Titel
Nonlinear Analysis of Gas-Water/Oil-Water Two-Phase Flow in Complex Networks
verfasst von
Zhong-Ke Gao
Ning-De Jin
Wen-Xu Wang
Copyright-Jahr
2014
Verlag
Springer Berlin Heidelberg
Electronic ISBN
978-3-642-38373-1
Print ISBN
978-3-642-38372-4
DOI
https://doi.org/10.1007/978-3-642-38373-1

    Marktübersichten

    Die im Laufe eines Jahres in der „adhäsion“ veröffentlichten Marktübersichten helfen Anwendern verschiedenster Branchen, sich einen gezielten Überblick über Lieferantenangebote zu verschaffen.