DocumentCode
2453736
Title
Machine learning for resource management in smart environments
Author
Fabbricatore, Christian ; Boley, Harold ; Karduck, Achim P.
fYear
2012
fDate
18-20 June 2012
Firstpage
1
Lastpage
6
Abstract
Efficient resource and energy management is a key research and business area in todays IT markets. Cyber-physical ecosystems, like smart homes (SHs) and smart Environments (SEs) get interconnected, the efficient allocation of resources will become essential. Machine Learning and Semantic Web techniques for improving resource allocation and management are the focus of our research. They allow machines to process information on all levels, inferring expressive knowledge from raw data, in particular resource predictions from usage patterns. Our aim is to devise a novel approach for a machine learning (ML) and resource Management (RM) framework in SEs. It combines ML and Semantic Web techniques and integrates user interaction The main objective is to enable the creation of platforms that decrease the overall resource consumption by learning and predicting various usage patterns, and furthermore making decisions based on user-feedback. For this purpose, we evaluate recent research and applications, elicit framework requirements, and present a framework architecture. The approach and components are assessed and a prototype implementation is described.
Keywords
learning (artificial intelligence); resource allocation; semantic Web; ubiquitous computing; IT market; cyber-physical ecosystem; decision making; energy management; expressive knowledge; framework architecture; framework requirement elicitation; information processing; machine learning; raw data; resource allocation; resource consumption; resource management; resource prediction; semantic Web technique; smart environment; smart home; ubiquitous management; usage pattern; user feedback; user interaction; Cognition; Computer architecture; Educational institutions; Prototypes; Resource management; Semantic Web; Semantics; ambient assisted living; energy savings; machine learning; resource management; semantic web; smart environment;
fLanguage
English
Publisher
ieee
Conference_Titel
Digital Ecosystems Technologies (DEST), 2012 6th IEEE International Conference on
Conference_Location
Campione d´Italia
ISSN
2150-4938
Print_ISBN
978-1-4673-1702-3
Electronic_ISBN
2150-4938
Type
conf
DOI
10.1109/DEST.2012.6227910
Filename
6227910
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