Date Added: Mar 2010
Context-aware applications base their services on contextual information that can be queried from the sensors embedded in the environment. However, when the number of sensors and the applications using them increases, sensor query becomes on one hand a resource hungry task, e.g. for network bandwidth and energy needed to power the sensors, and on the other hand may yield loads of unnecessary information that should be processed by the context-aware application. Therefore, an informed sensor selection in such environments becomes a necessity. This paper proposes an algorithm for a relevance-based sensor query, which adaptively spends the allotted query budget on querying sensors that are most relevant to the user's concept.