DocumentCode :
2505571
Title :
Estimation of turbulence closure coefficients for data centers using machine learning algorithms
Author :
Yarlanki, S. ; Rajendran, B. ; Hamann, H.
Author_Institution :
IBM Res., Yorktown Heights, NY, USA
fYear :
2012
fDate :
May 30 2012-June 1 2012
Firstpage :
38
Lastpage :
42
Abstract :
CFD models of data centers often use two equation turbulence models such as the k-ε model. These models are based on closure coefficients or turbulence model constants determined from a combination of scaling/dimensional analysis and experimental measurements of flows in simple configurations. The simple configurations used to derive the turbulence model constants are often two dimensional and do not have many of the complex flow characteristics found in engineering flows. Such models perform poorly, especially in flows with large pressure gradients, swirl and strong three dimensionality, as in the case of data centers. This study attempts to use machine learning algorithms to optimize the model constants of the k-ε turbulence model for a data center by comparing simulated data with experimentally measured temperature values. For a given set of turbulence constants, we determine the Root Mean Square `error´ in the model, defined as the difference between experimentally measured temperature from a data center test cell and CFD calculations using the k-ε model. An artificial neural network (ANN) based method for parameter identification is then used to find the optimal values for turbulence constants such that the error is minimized. The optimum turbulence model constants obtained by our study results in lowering the RMS error by 25% and absolute average error by 35% compared to the error obtained by using standard k-ε model constants.
Keywords :
computational fluid dynamics; computer centres; gradient methods; learning (artificial intelligence); mean square error methods; minimisation; neural nets; parameter estimation; turbulence; ANN based method; CFD calculations; CFD models; RMS error; absolute average error; artificial neural network; complex flow characteristics; data center test cell; data centers; dimensional analysis; engineering flows; equation turbulence models; error minimisation; experimental measurements; experimentally measured temperature; k-ε turbulence model; machine learning algorithms; optimal values; optimum turbulence model constants; parameter identification; pressure gradients; root mean square error; scaling analysis; simple configurations; simulated data; standard k-ε model constants; temperature values; turbulence closure coefficients estimation; turbulence constants; Artificial neural networks; Computational fluid dynamics; Data models; Equations; Mathematical model; Standards; Temperature measurement; CFD; artificial neural network; data center; k-ε model; non-linear constrained minimization; optimal model constants; turbulence;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Thermal and Thermomechanical Phenomena in Electronic Systems (ITherm), 2012 13th IEEE Intersociety Conference on
Conference_Location :
San Diego, CA
ISSN :
1087-9870
Print_ISBN :
978-1-4244-9533-7
Electronic_ISBN :
1087-9870
Type :
conf
DOI :
10.1109/ITHERM.2012.6231411
Filename :
6231411
Link To Document :
بازگشت