Model Predictive Control for Chilled Water Plants

Sponsored by U.S. Department of Defense (DOD) and JPMorgan Chase

Project Description

Improving the energy efficiency of chilled water plants is important since they account for about 35% the energy consumed by commercial building cooling equipment in the U.S. Model predictive control is a feasible way to enhance the operational efficiency of the chilled water plants. Our research is to develop a Python-based dynamic optimization platform that can perform continuous optimization for various control settings of chilled water plants. By using the Modelica modeling language, we can quickly model a chilled water plant with any system configurations and dynamically simulate its control behavior.

Collaborators

Journal Articles

Conference Papers