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A model-based back-end for air quality data management

Published:08 September 2013Publication History

ABSTRACT

In this paper we present a hybrid model for real-time query processing over data stream collected by mobile air quality sensors. First, we introduce a novel indexing scheme for representing air quality and use it for generating and evaluating a static model over a yearly dataset. Then, this model is combined with a dynamic nearest-neighbor approach for real-time updates, and implemented into the Global Sensor Network (GSN) middleware, with added support for model queries.

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    • Published in

      cover image ACM Conferences
      UbiComp '13 Adjunct: Proceedings of the 2013 ACM conference on Pervasive and ubiquitous computing adjunct publication
      September 2013
      1608 pages
      ISBN:9781450322157
      DOI:10.1145/2494091

      Copyright © 2013 ACM

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      • Published: 8 September 2013

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      UbiComp '13 Adjunct Paper Acceptance Rate254of399submissions,64%Overall Acceptance Rate764of2,912submissions,26%

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