access icon free Adaptive dual prediction scheme based on sensing context similarity for wireless sensor networks

A novel adaptive dual-prediction scheme is introduced for minimising the data communication load for wireless sensor networks as a way to maximise the lifetime of resource-limited sensor nodes. Specifically, the proposed scheme exposes the fact that when sensing context prediction is used at both the sink node and the sensor nodes, the amount of data that need to be transmitted can be minimised. Furthermore, the transmission data quantity is reduced even more by exploiting the spatial correlation among different sensor nodes. On using this adaptive dual prediction scheme, the evaluations show that the amount of data transmissions can be compressed by as much as 20% against a basic dual prediction scheme, suggesting that the lifetime of sensor nodes can increase significantly in practical systems.

Inspec keywords: correlation methods; data compression; wireless sensor networks

Other keywords: sink node; transmission data quantity reduction; data communication load minimisation; spatial correlation; resource-limited sensor node lifetime maximisation; context similarity sensing; wireless sensor networks; novel adaptive dual-prediction scheme

Subjects: Wireless sensor networks; Signal processing and detection

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http://iet.metastore.ingenta.com/content/journals/10.1049/el.2014.0165
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