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      • Computing and Mathematical Sciences
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      Managing application-level QoS for IoT stream queries in hazardous outdoor environments

      Ziekow, Holger; Hinze, Annika; Bowen, Judy
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      QoS_for_RIoT paper.pdf
      Accepted version, 459.9Kb
      Link
       www.scitepress.org
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      Citation
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      Ziekow, H., Hinze, A., & Bowen, J. (2019). Managing application-level QoS for IoT stream queries in hazardous outdoor environments. In M. Ramachandran, R. J. Walters, G. Wills, V. M. Muñoz, & V. Chang (Eds.), Proceeding of 4th International Conference on Internet of Things, Big Data and Security (IoTBDS 2019) (pp. 223–231). Setúbal, Portugal: SciTePress.
      Permanent Research Commons link: https://hdl.handle.net/10289/13440
      Abstract
      While most IoT projects focus on well-controlled environments, this paper focuses on IoT applications in the wild, i.e., rugged outdoor environments. Hazard warnings in outdoor monitoring solutions require reliable pattern detection mechanisms, while data may be streamed from a variety of sensors with intermittent communication. This paper introduces the Morepork system for managing application-level Quality of Service in stream queries for rugged IoT environments. It conceptually treats errors as first class citizens and quantifies the impact on application level. We present a proof of concept implementation, which uses real-world data from New Zealand forestry workers.
      Date
      2019
      Type
      Conference Contribution
      Publisher
      SciTePress
      Rights
      This is the author's accepted version. Used with permssion.
      Collections
      • Computing and Mathematical Sciences Papers [1454]
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