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Development and application of low Reynolds number turbulence models for air-cooled electronics

Development and application of low Reynolds number turbulence models for air-cooled electronics

Dhinsa, Kulvir Kaur (2006) Development and application of low Reynolds number turbulence models for air-cooled electronics. PhD thesis, University of Greenwich.

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Abstract

Semiconductors are at the heart of electronic devices such as computers, mobile phones, avionics systems, telecommunication racks, etc. Power dissipation from semiconductor devices is continuing to increase due to the growth in the number of transistors on the silicon chip as predicted by Moore's Law. Thermal management techniques, used to dissipate this power, are becoming more and more challenging to design. Air cooling of electronic components is the preferred method for many designs where the air flow is characterised as being in the laminar-to-turbulent transitional region.

Over the last fifteen years there has been a dramatic take-up of Computational Fluid Dynamics (CFD) technology in the electronics industry to simulate the airflow and temperatures in electronic systems. These codes solve the Reynolds Averaged Navier-Stokes (RANS) equations for momentum and turbulence. RANS models are popular as they are much quicker to solve than time-dependent models such as Large Eddy Simulation (LES) or Direct Numerical Simulation (DNS).

At present the majority of thermal design engineers use the standard k-e model which is a high Reynolds number model. This is because there is limited knowledge on the benefit of using low Reynolds number models in the electronics cooling industry. This Ph.D. investigated and developed low Reynolds number models for use in electronics cooling CFD calculations. Nine turbulence models were implemented and validated in the in-house CFD code PHYSICA. This includes three
zero-equation, two single equation, and four zonal models. All of these models are described in the public literature except the following two models which were developed in this study:

AUTO_CAP: This zero-equation model automates the existing LVEL_CAP model available within the commercial CFD code FLOTHERM.

ke I kl: This zonal model uses a new approach to blend the k — l model used at the wall with the k-e model used to predict the bulk airflow.

Validation of these turbulence models was undertaken on eight different test cases. This included the detailed experimental work undertaken by Meinders. Results show that the ke I kl model provides the most accurate flow predictions. For prediction of temperature there was no clear favourite. This was probably due to the use of the universal log-law function in this study. A generalised wall function may be more appropriate.

Results from this research have been disseminated through a total of nine peer-reviewed conference and journal publications, evidence of the interest the topic of this investigation generates amongst electronic packaging engineers.

Item Type: Thesis (PhD)
Additional Information: This research programme has been carried out in collaboration with: Flomerics Ltd. and the Engineering and Physical Sciences Research Council (EPSRC)through the PRIME Faraday organisation as an Industrial Case Award.
Uncontrolled Keywords: mathematical modelling, computational fluid dynamics, CFD, turbulence models,
Subjects: Q Science > QA Mathematics
T Technology > T Technology (General)
Pre-2014 Departments: School of Computing & Mathematical Sciences
School of Computing & Mathematical Sciences > Centre for Numerical Modelling & Process Analysis
Last Modified: 14 Feb 2018 12:58
Selected for GREAT 2016: None
Selected for GREAT 2017: None
Selected for GREAT 2018: None
URI: http://gala.gre.ac.uk/id/eprint/8430

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