Wireless sensor networks represent a new paradigm shift in ad
hoc networks. In addition to ad hoc deployment and wireless
communication capabilities, sensor nodes use on-board sensing and
processing to sense (or detect) application specified events of
interest. An ad hoc network of randomly deployed wireless sensor nodes
is formed by having nodes pursue neighbor discovery and subsequent self
organization. Since sensors typically run on batteries that have a
limited lifetime, an energy-efficient self organized sensor network
architecture becomes important. The design of a self organization
protocol for sensor networks should thus incorporate not only the
communication characteristics of the wireless medium but also several
quality metrics associated with the sensing phenomenon.
The sensing phenomenon is concerned with the characteristics
of the sensors, the events to be detected, and their topological
manifestations both in the spatial and the temporal domains. For
example, it is obvious that sensors in close proximity to each other
would have correlated readings. A temporal dual of this observation
implies that sensor readings among neighboring sensors also have some
correlation within some nearby time intervals. In addition to
supporting the properties associated with the sensing phenomenon, it is
also necessary to support hierarchical event processing as it gives an
opportunity to have an incremental comprehensive global view of an area
of deployment.
In this paper, we propose a self organization algorithm that
forms a hierarchical connecting dominating set (CDS) network
organization for wireless sensor networks. In this network
hierarchy, we also assign specific roles (or tasks) to sensors based on
their physical wireless connectivity and sensing characteristics.
The resulting self-organized sensor network establishes a network-wide
infrastructure consisting of a hierarchy of backbone nodes, and sensing
zones that include sensor coordinators and sensing collaborators (or
sensing zone members). We demonstrate the effectiveness of our design
through complexity analysis and simulation.
Keywords: Wireless sensor networks, sensing phenomenon, self
organization hierarchy, sensing
coordinators, sensing zones, backbone nodes, sensing proximity
value (SPV), cumulative sensing degree (CSD),
and connected dominating set (CDS).
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