Sensor networks have become a widely used technology for applications ranging from military surveillance to industrial fault detection. So far, the evolution in micro-electronics has made it possible to build networks of inexpensive nodes characterised by modest computation and storage capability as well as limited battery life. In such a context, having an accurate knowledge about nodes position is fundamental to achieve almost any task. Several techniques to deal with the localisation problem have been proposed in literature: most of them rely on a centralised approach, whereas others work in a distributed fashion. However, a number of approaches do require a prior knowledge of particular nodes, i.e. anchors, whereas others can face the problem without relying on this information. In this paper, a new approach based on an Interlaced Extended Kalman Filter (IEKF) is proposed: the algorithm, working in a distributed fashion, provides an accurate estimation of node poses with a reduced computational complexity. Moreover, no prior knowledge for any nodes is required to produce an estimation in a relative coordinate system. Exhaustive experiments, carried on MICAz nodes, are shown to prove the effectiveness of the proposed IEKF.

Gasparri, A., Panzieri, S., Pascucci, F., Ulivi, G. (2009). An Interlaced Kalman Filter for Sensors Networks Localization. INTERNATIONAL JOURNAL OF SENSOR NETWORKS, 5(3), 164-172 [10.1504/IJSNET.2009.026364].

An Interlaced Kalman Filter for Sensors Networks Localization

GASPARRI, ANDREA;PANZIERI, Stefano;PASCUCCI, Federica;ULIVI, Giovanni
2009-01-01

Abstract

Sensor networks have become a widely used technology for applications ranging from military surveillance to industrial fault detection. So far, the evolution in micro-electronics has made it possible to build networks of inexpensive nodes characterised by modest computation and storage capability as well as limited battery life. In such a context, having an accurate knowledge about nodes position is fundamental to achieve almost any task. Several techniques to deal with the localisation problem have been proposed in literature: most of them rely on a centralised approach, whereas others work in a distributed fashion. However, a number of approaches do require a prior knowledge of particular nodes, i.e. anchors, whereas others can face the problem without relying on this information. In this paper, a new approach based on an Interlaced Extended Kalman Filter (IEKF) is proposed: the algorithm, working in a distributed fashion, provides an accurate estimation of node poses with a reduced computational complexity. Moreover, no prior knowledge for any nodes is required to produce an estimation in a relative coordinate system. Exhaustive experiments, carried on MICAz nodes, are shown to prove the effectiveness of the proposed IEKF.
2009
Gasparri, A., Panzieri, S., Pascucci, F., Ulivi, G. (2009). An Interlaced Kalman Filter for Sensors Networks Localization. INTERNATIONAL JOURNAL OF SENSOR NETWORKS, 5(3), 164-172 [10.1504/IJSNET.2009.026364].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11590/146648
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