Litcius/Paper detail

Rule reduction for control of a building cooling system using explainable AI

Seongkwon Cho, Cheol Soo Park

2022Journal of Building Performance Simulation19 citationsDOI

Abstract

Although it is widely acknowledged that reinforcement learning (RL) can be beneficial for building control, many RL-based control actions remain unexplainable in the daily practice of facility managers. This paper reports a rule reduction framework using explainable RL to enhance the practicality of the control strategy. First, deep Q-learning was applied to explore the optimal control strategies of a parallel cooling system (ice-based thermal system + geothermal heat pump system) of an existing office building. A set of modularized and interconnected data-driven models was developed using ANNs for pretraining an artificial agent. After exploring the control strategies, the decision-making rules of the agent were reduced using a decision tree. The performance of the reduced-order rule-based control proved comparable to the complex and uninterpretable control strategy of deep Q-learning. The difference in energy savings between the two is marginal at 1.2%.

Topics & Concepts

Reinforcement learningControl (management)Reduction (mathematics)Computer scienceControl systemSet (abstract data type)Control engineeringOptimal controlArtificial intelligenceThermal comfortEngineeringMathematical optimizationMathematicsElectrical engineeringPhysicsGeometryProgramming languageThermodynamicsBuilding Energy and Comfort OptimizationEnergy Load and Power ForecastingNeural Networks and Applications