• Corpus ID: 668416

Model-Based Event Detection in Wireless Sensor Networks

@article{Gupchup2009ModelBasedED,
  title={Model-Based Event Detection in Wireless Sensor Networks},
  author={Jayant Gupchup and Andreas F. Terzis and Randal C. Burns and Alexander S. Szalay},
  journal={ArXiv},
  year={2009},
  volume={abs/0901.3923}
}
In this paper we present an application of techniques from statistical signal processing to the problem of event detection in wireless sensor networks used for environmental monitoring. [...] Key Method The proposed approach uses the well-established Principal Component Analysis (PCA) technique to build a compact model of the observed phenomena that is able to capture daily and seasonal trends in the collected measurements.Expand
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