Rule-based scheduling of air conditioning using occupancy forecasting
Marina Dorokhova, Christophe Ballif, N. Wyrsch
Abstract
Heating, ventilation and air conditioning systems represent considerable potential for energy savings, which can be realized through intelligent occupancy-centered control strategies. In this work, both supervised and unsupervised algorithms to forecast occupancy are proposed with the highest accuracies of 98.3% and 97.6%, respectively. Building on their output, a rule-based air conditioning scheduling technique is developed. As an example, a potential of 15.4% of energy savings is calculated using a dataset collected in a mid-size (4000 m2) building in Portugal.
Topics & Concepts
OccupancyAir conditioningScheduling (production processes)Computer scienceVentilation (architecture)EngineeringArchitectural engineeringOperations managementMechanical engineeringBuilding Energy and Comfort OptimizationEnergy Efficiency and ManagementEnergy Load and Power Forecasting