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

Afbeeldingen

Artikel vergelijken

  • Engels
  • Paperback
  • 9783642383724
  • 14 januari 2014
  • 120 pagina's
Alle productspecificaties

Samenvatting

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. Flow Pattern Complex Network (FPCN), Fluid Dynamic Complex Network (FDCN) and Fluid Structure Complex Network (FSCN).

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.

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.

Productspecificaties

Inhoud

Taal
en
Bindwijze
Paperback
Oorspronkelijke releasedatum
14 januari 2014
Aantal pagina's
120
Illustraties
Nee

Betrokkenen

Hoofdauteur
Zhong-Ke Gao
Tweede Auteur
Ning-De Jin
Co Auteur
Wen-Xu Wang

Overige kenmerken

Editie
2014 ed.
Extra groot lettertype
Nee
Product breedte
152 mm
Product hoogte
13 mm
Product lengte
229 mm
Studieboek
Nee
Verpakking breedte
152 mm
Verpakking hoogte
13 mm
Verpakking lengte
229 mm
Verpakkingsgewicht
181 g

EAN

EAN
9783642383724
Nog geen reviews

Kies gewenste uitvoering

Prijsinformatie en bestellen

De prijs van dit product is 57 euro en 99 cent.
2 - 3 weken
Verkoop door bol
  • Prijs inclusief verzendkosten, verstuurd door bol
  • Ophalen bij een bol afhaalpunt mogelijk
  • 30 dagen bedenktijd en gratis retourneren
  • Dag en nacht klantenservice