Title :
SunCast: Fine-grained prediction of natural sunlight levels for improved daylight harvesting
Author :
Jiakang Lu ; Whitehouse, Kamin
Author_Institution :
Dept. of Comput. Sci., Univ. of Virginia Charlottesville, Charlottesville, VA, USA
Abstract :
Daylight harvesting is the use of natural sunlight to reduce the need for artificial lighting in buildings. The key challenge of daylight harvesting is to provide stable indoor lighting levels even though natural sunlight is not a stable light source. In this paper, we present a new technique called SunCast that improves lighting stability by predicting changes in future sunlight levels. The system has two parts: 1) it learns predictable sunlight patterns due to trees, nearby buildings, or other environmental factors, and 2) it controls the window transparency based on a quadratic optimization over predicted sunlight levels. To evaluate the system, we record daylight levels at 39 different windows for up to 12 weeks at a time, and apply our control algorithm on the data traces. Our results indicate that SunCast can reduce glare by 59% over a baseline approach with only a marginal increase in artificial lighting energy.
Keywords :
building management systems; daylighting; dynamic programming; energy harvesting; sunlight; SunCast; artificial lighting energy; buildings; control algorithm; data traces; fine-grained prediction; improved daylight harvesting; indoor lighting levels; lighting stability; natural sunlight levels; predictable sunlight patterns; quadratic optimization; sunlight levels; Clouds; Lighting; Prediction algorithms; Solar energy; Switches; Windows; Daylight Harvesting; Fine; Sunlight; Wireless Sensor Networks; grained Prediction;
Conference_Titel :
Information Processing in Sensor Networks (IPSN), 2012 ACM/IEEE 11th International Conference on
Conference_Location :
Beijing
DOI :
10.1109/IPSN.2012.6920939