Optimization of cluster cooling performance for data centers

A software tool using a Genetic Algorithm (GA) has been developed to optimize the cooling performance of a cluster of equipment comprised of two approximately-equal-length rows of racks and coolers bounding a common hot-aisle. Such clusters are "room neutral" from a cooling-load perspective if most or all of the hot rack exhaust is captured locally by the coolers. A direct cooling-performance assessment relative to this design objective is provided on a rack-level basis by the Capture Index (CI) and on a room-level basis by the Total Escaped Power (TEP). Various prediction techniques can be used to compute these cooling performance metrics for a cluster in real time. In this study, a Neural-Network-based algorithm is used as the "cooling prediction engine" upon which the GA optimization functionality is built. Typically, optimization of cluster cooling performance is attempted by intuition or trial and error, and one has to rely on the designer's experience. In contrast, the GA-based optimization technique in combination with the NN calculator provides a systematic approach for finding an optimized cluster layout. This integrated tool can be used to find the best arrangement of a fixed inventory of racks and coolers. This approach can also be used to find the best distribution of total heat load among racks and to identify the best rack location to which extra heat load can be added. Examples are discussed to demonstrate the potential of the software tool.

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