ACR: an adaptive communication-aware routing through maximally zone-disjoint shortest paths inad hoc wireless networks with directional antenna

2006 ◽  
Vol 6 (2) ◽  
pp. 191-199 ◽  
Author(s):  
Tetsuro Ueda ◽  
Shinsuke Tanaka ◽  
Bokuji Komiyama ◽  
Siuli Roy ◽  
Dola Saha ◽  
...  
Author(s):  
Somprakash Bandyopadhyay ◽  
Siuli Roy ◽  
Tetsuro Ueda ◽  
Kazuo Hasuike

2018 ◽  
Vol 28 (04) ◽  
pp. 341-363
Author(s):  
Rom Aschner ◽  
Paz Carmi ◽  
Yael Stein

We study unique coverage problems with rectangle and half-strip regions, motivated by wireless networks in the context of coverage using directional antennae without interference. Given a set [Formula: see text] of points (clients) and a set [Formula: see text] of directional antennae in the plane, the goal is to assign a direction to each directional antenna in [Formula: see text], such that the number of clients in [Formula: see text] that are uniquely covered by the directional antennae is maximized. A client is covered uniquely if it is covered by exactly one antenna. We consider two types of rectangular regions representing half-strip directional antennae: unbounded half-strips and half-strips bounded by a range [Formula: see text] (i.e., [Formula: see text]-sided rectangular regions and rectangular regions). The directional antennae can be directed up or down. We present two polynomial time algorithms: an optimal solution for the problem with the [Formula: see text]-sided rectangular regions, and a constant factor approximation for the rectangular regions.


2009 ◽  
Vol 18 (1-2) ◽  
pp. 145-163 ◽  
Author(s):  
ALAN FRIEZE ◽  
JON KLEINBERG ◽  
R. RAVI ◽  
WARREN DEBANY

Random geometric graphs have been one of the fundamental models for reasoning about wireless networks: one places n points at random in a region of the plane (typically a square or circle), and then connects pairs of points by an edge if they are within a fixed distance of one another. In addition to giving rise to a range of basic theoretical questions, this class of random graphs has been a central analytical tool in the wireless networking community.For many of the primary applications of wireless networks, however, the underlying environment has a large number of obstacles, and communication can only take place among nodes when they are close in space and when they have line-of-sight access to one another – consider, for example, urban settings or large indoor environments. In such domains, the standard model of random geometric graphs is not a good approximation of the true constraints, since it is not designed to capture the line-of-sight restrictions.Here we propose a random-graph model incorporating both range limitations and line-of-sight constraints, and we prove asymptotically tight results for k-connectivity. Specifically, we consider points placed randomly on a grid (or torus), such that each node can see up to a fixed distance along the row and column it belongs to. (We think of the rows and columns as ‘streets’ and ‘avenues’ among a regularly spaced array of obstructions.) Further, we show that when the probability of node placement is a constant factor larger than the threshold for connectivity, near-shortest paths between pairs of nodes can be found, with high probability, by an algorithm using only local information. In addition to analysing connectivity and k-connectivity, we also study the emergence of a giant component, as well an approximation question, in which we seek to connect a set of given nodes in such an environment by adding a small set of additional ‘relay’ nodes.


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