Scheduling data transmissions in wireless sensor networks used for position tracking
Abstract
In wireless sensor networks developed for ambient assisted living (AAL) applications, power supply is one of the most challenging problems. In the case when measurements have low cost; a method is proposed for decreasing the time of communication by handling the measured data locally. In AAL applications the position tracking of a person is an essential task. Position tracking with motion sensors requires high number of messages and most of them are caused by local movements. Our suggestion is to eliminate these messages. The method is based on Hidden Markov Model of the motions of an observed person. The model provides information based on the estimated global state of the system, which is the position of the person in the space of interest. This state can be forwarded to the nodes so they locally perform the filtering to save valuable energy by not transmitting messages which are not relevant.