A platform for research: civil engineering, architecture and urbanism
The Influence of Building Design, Sensor Placement, and Occupant Preferences on Occupant Centered Lighting Control
An ideal lighting controller should balance between occupant comfort and energy efficiency. In a prior study, we introduced LightLearn, an occupant centered lighting controller based on reinforcement learning and demonstrated its control operation under real conditions in a university building. The controller learned individual occupant preferences and indoor environmental conditions, and adapted its control parameters accordingly by determining personalized set-points. In this paper, we implement a simulation framework to comprehensively evaluate LightLearn. This framework consists of Python and EnergyPlus, and we simulated the performance of LightLearn under various indoor lighting conditions and occupant behaviors. These changes vary the interactions between LightLearn and human input, which effects the performance of the control system. Despite such variations, we show how LightLearn adapts to any indoor light condition and occupant behavior, and determines the optimal policy for balancing occupant comfort and energy efficiency.
The Influence of Building Design, Sensor Placement, and Occupant Preferences on Occupant Centered Lighting Control
An ideal lighting controller should balance between occupant comfort and energy efficiency. In a prior study, we introduced LightLearn, an occupant centered lighting controller based on reinforcement learning and demonstrated its control operation under real conditions in a university building. The controller learned individual occupant preferences and indoor environmental conditions, and adapted its control parameters accordingly by determining personalized set-points. In this paper, we implement a simulation framework to comprehensively evaluate LightLearn. This framework consists of Python and EnergyPlus, and we simulated the performance of LightLearn under various indoor lighting conditions and occupant behaviors. These changes vary the interactions between LightLearn and human input, which effects the performance of the control system. Despite such variations, we show how LightLearn adapts to any indoor light condition and occupant behavior, and determines the optimal policy for balancing occupant comfort and energy efficiency.
The Influence of Building Design, Sensor Placement, and Occupant Preferences on Occupant Centered Lighting Control
Park, June Young (author) / Nagy, Zoltan (author)
ASCE International Conference on Computing in Civil Engineering 2019 ; 2019 ; Atlanta, Georgia
Computing in Civil Engineering 2019 ; 98-104
2019-06-13
Conference paper
Electronic Resource
English
British Library Conference Proceedings | 2019
|Occupant centered lighting control for comfort and energy efficient building operation
Online Contents | 2015
|British Library Conference Proceedings | 2017
|Occupant-centered control strategies for decentralized residential ventilation
UB Braunschweig | 2021
|