12,994 research outputs found
A scale-based study of the Reynolds number scaling for the near-wall streamwise turbulence intensity in wall turbulence
Very recently, a defect model which depicts the growth tendency of the
near-wall peak of the streamwise turbulence intensity has been developed (Chen
Sreenivasan, J. Fluid Mech. (2021), vol.908, R3). Based on the finiteness
of the near-wall turbulence production, this model predicts that the magnitude
of the peak will approach a finite limit as the Reynolds number increases. In
the present study, we revisit the basic hypotheses of the model, such as the
balance between the turbulence production and the wall dissipation in the
region of peak production, the negligible effects of the logarithmic motions on
the wall dissipation, and the typical time-scale that the outer-layer flow
imposes on the inner layer. Our analyses show that some of them are not
consistent with the characteristics of the wall-bounded turbulence. Moreover,
based on the spectral stochastic estimation, we develop a framework to assess
the wall dissipation contributed by the energy-containing eddies populating the
logarithmic region, and uncover the linkage between its magnitude and the local
Reynolds number. Our results demonstrate that these multi-scale eddies make a
non-negligible contribution to the formation of the wall dissipation. Based on
these observations, we verify that the classical logarithmic model, which
suggests a logarithmic growth of the near-wall peak of the streamwise
turbulence intensity with regard to the friction Reynolds number, is more
physically consistent, and still holds even with the latest
high-Reynolds-number database.Comment: 21 pages, 6 figures, accepted by International Journal of Heat and
Fluid Flo
What Drives Workers to Learn Online during COVID 19 Pandemics?
One of the common practices during the COVID-19 pandemic is to work or study from home. This study aims to reexamine the factors affecting individual continuance intention of e-learning. During the pandemic, via a survey conducted in 2022, we assessed workersâ continuance intention of e-learning from different sectors in Taiwan. This research brought motivations as mediators in continuance intention to e-learning. Through the statistical analysis, we identified the mediation effect of motivations based on the self-determination theory. The results show that autonomous motivation facilitates the learnersâ computer self-efficacy, the quality of the system and content toward continuance intention; controlled motivation could mediate the monetary award in influencing the continuance intention. The internalization of motivation is also an effective mediator. The obtained results not only add new knowledge of what affected the continuance intention of e-learning during the pandemic but also provide guidance for employers to allocate resources to boost e-learning after the pandemic
Information Filtering on Coupled Social Networks
In this paper, based on the coupled social networks (CSN), we propose a
hybrid algorithm to nonlinearly integrate both social and behavior information
of online users. Filtering algorithm based on the coupled social networks,
which considers the effects of both social influence and personalized
preference. Experimental results on two real datasets, \emph{Epinions} and
\emph{Friendfeed}, show that hybrid pattern can not only provide more accurate
recommendations, but also can enlarge the recommendation coverage while
adopting global metric. Further empirical analyses demonstrate that the mutual
reinforcement and rich-club phenomenon can also be found in coupled social
networks where the identical individuals occupy the core position of the online
system. This work may shed some light on the in-depth understanding structure
and function of coupled social networks
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