Future sustainable energy systems could increase the share of energy converted from fluctuating renewable
energy sources by intelligent model-based predictive control of cooling systems with thermal energy
storage. This study investigated an experimental cooling system comprising a compression chiller and an
ice storage. A runtime-efficient predictive model for partial charge and discharge of ice storage was
derived. In addition, techniques for automatic model determination and adaptation were introduced
and examined. The experimental setup involved the development and implementation of a modelpredictive
controller (MPC) to minimize operating expenses under dynamic electricity pricing based on
a forward dynamic programming algorithm. The objective function included energy charges, compressor
start-up costs, and terminal costs that depended on the state of charge and state of the chiller at the end
of the optimization horizon. Three examples of cases validated and compared the advantages of the MPC
over an open-loop (day ahead) optimal control concept. The cases examined the influence of temperature
and load forecast inaccuracy, and investigated the coping mechanism of the system to sudden updates
involving price and temperature predictions. The findings illustrated that the MPC achieved significant
savings of operating expenses when compared with the open-loop optimal control concept.
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Future sustainable energy systems could increase the share of energy converted from fluctuating renewable
energy sources by intelligent model-based predictive control of cooling systems with thermal energy
storage. This study investigated an experimental cooling system comprising a compression chiller and an
ice storage. A runtime-efficient predictive model for partial charge and discharge of ice storage was
derived. In addition, techniques for automatic model determination and adaptation we...
»