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Original Articles

Hierarchical Numbering Based Addressing and Stateless Routing Scheme for Wireless Sensor Networks

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Pages 391-428 | Published online: 05 Oct 2009
 

Abstract

Due to energy and other relevant constraints, addressing of nodes and data routing techniques in sensor networks differ significantly from other networks. In this article, we present an energy-efficient addressing and stateless routing paradigm for wireless sensor networks. We propose a dynamic and globally unique address allocation scheme for sensors in such a way that these addresses can later be used for data routing. We build a tree like organization of sensors rooted by the sink node based on their transmission adjacency and then set labels on each sensor with a number according to the preorder traversal of the tree from the root. In this addressing process, each sensor keeps necessary information so that they can later route data packets to the destination depending on these addresses, without keeping the large routing table and running any no route discovery phase. Moreover, the scheme does not use location information as well (as done by geo-routing) and can be used in the indoor environment. We conduct simulations to measure the soundness of our approach and make a comparison with another similar technique TreeCast. Simulation results reveal that our approach performs better than its counterpart in several important performance metrics like address length and communication energy.

Notes

1In some literature, it is named as geometric routing, classified as geographic, location-based, position based, or simply geo-routing.

2For a unit disk tree in grid of size n nodes, it requires at least anchors [Citation31].

3We set a label on nodes by assigning a number on them and this label acts as the address for that node. In this paper, we use the term “address” and “label” of nodes interchangeably.

4

W. Heinzelman, “Application-specific protocots architecture for wireless networks,” PhD dissertation, MIT, June 2000.

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