Neural Network-Based Prediction and Control of Air Flow in a Data Center

Author:

de Lorenzi Flavio1,Vömel Christof1

Affiliation:

1. Zurich University of Applied Sciences, ZHAW, CH-8401 Winterthur,Switzerland

Abstract

As modern data centers continue to grow in power, size, and numbers, there is an urgent need to reduce energy consumption by optimized cooling strategies. In this paper, we present a neural network-based prediction of air flow in a data center that is cooled through perforated floor tiles. With a significantly smaller execution time than computational fluid dynamics, it predicts in real-time server inlet temperatures and can detect whether prevalent air flow cools the servers sufficiently to guarantee safe operation. Combined with a cooling system model, we obtain a temperature and air flow control algorithm that is fast and accurate enough to find an optimal operating point of the data center cooling system in real-time. We also demonstrate the performance of our algorithm on a reference data center and show that energy consumption can be reduced by up to 30%.

Publisher

ASME International

Subject

Fluid Flow and Transfer Processes,General Engineering,Condensed Matter Physics,General Materials Science

Reference26 articles.

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3. Greenberg, S., Tschudi, B., Rumsey, P., and Myatt, B., 2006, “Best Practices for Data Centers: Lessons Learned From Benchmarking 22 Data Centers. ACEEE Summer Study on Energy Efficiency in Buildings,” Lawrence Berkeley National Laboratory, Technical Report.

4. Rasmussen, N. , 2006, “Electrical Efficiency Modeling for Data Centers,” American Power Conversion, Technical Report.

5. Tschudi, W., Mills, E., Greenberg, S., and Rumsey, P., 2006, “Data-Center Energy Use, Heating, Piping, Air-conditioning (HPAC) Engineering, Technical Report.

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