Abstract:
Wireless sensor networks are widely used to continuously
collect data from the environment. Because of energy constraints on
battery-powered nodes, it is critical to minimize communication. Suppression
has been proposed as a way to reduce communication by using predictive
models to suppress reporting of predictable data. However, in the
presence of communication failures, missing data is difficult to interpret
because it could have been either suppressed or lost in transmission. There is
no existing solution for handling failures for general, spatiotemporal
suppression that uses cascading. While cascading further reduces
communication, it makes failure handling difficult, because nodes can act on
incomplete or incorrect information and in turn affect other nodes. We propose
a cascaded suppression framework that exploits both temporal and spatial data
correlation to reduce communication, and applies coding theory and Bayesian
inference to recover missing data resulted from suppression and communication
failures. Experiment results show that cascaded suppression significantly
reduces communication cost and improves missing data recovery compared to
existing approaches.
No comments:
Post a Comment