Thermal-aware Workload Distribution for Data Centers with Demand Variations
Abstract
Thermal-aware workload distribution is a common approach in the literature
for power consumption optimization in data centers. However, data centers also
have other operational costs such as the cost of equipment maintenance and
replacement. It has been shown that server reliability depends on frequency of
their temperature variations, arising from workload transitions due to dynamic
demands. In this work, we formulate a nonlinear optimization problem that
considers the cost of workload transitions in addition to IT and cooling power
consumption. To approximate the solution, we first linearize the problem; the
result is a mixed integer programming problem. A modified heuristic is then
proposed to approximate the solution of the linear problem. Finally, a Model
Predictive Control (MPC) approach is integrated with the proposed heuristics
for automatic workload reconfiguration when future demand is not known exactly,
but predictions are available. Numerical results show that the proposed schemes
are attractive in different settings.