Using consumer behavior data to reduce energy consumption in smart homes
Type
04 - Beitrag Sammelband oder Konferenzschrift
Primary target group
Science
Created while belonging to FHNW?
Yes
Zusammenfassung
This paper discusses how usage patterns and preferences of inhabitants can be learned efficiently to allow smart homes to autonomously achieve energy savings. We propose a frequent sequential pattern mining algorithm suitable
for real-life smart home event data. The performance of the proposed algorithm is compared to existing algorithms regarding
completeness/correctness of the results, run times as well as memory consumption and elaborates on the shortcomings of the different solutions.