Abstract:
In Opportunistic Networks most of Internet's basic assumptions do not hold true.
Due to sparse density of nodes and frequent changes in network topology, an endto-
end contemporaneous path may not exist. However, sporadic links emerging
from coarse-grained mobility of nodes can be construed over a period of time, as
presence of a complete path between a pair of nodes. Nodes hold a packet in permanent
storage until an appropriate communication opportunity arises, which can
help in further forwarding of the packet. In order to avoid packet loss, multiple
copies of a single message are generally sent within the network, independently
making their way to eventual destination. This design decision poses extra burden
over network resources, and unnecessary utilization may result in degrading
performance in resource-stringent environments. Hence, there is need to reduce
this extra overhead, by determining e ective next-hop utility of nodes, and to
better utilize network capacity with real time comprehension of dynamic network
characteristic. Heterogeneity of nodes, in terms of capabilities or mobility patterns
poses several challenges in de ning a utility function that ts all. Moreover,
multi-hop routing protocols generally assume altruistic behavior of nodes. However,
this assumption is not always true, as by agreeing to forward messages a
node is contributing its resources such as memory, processing power, energy etc.
Non-cooperative behavior may reduce e ective node density and can be devastating
in opportunistic environments, where intermediary hops are required to share
custody of messages. We target these issues in this thesis.
In order to address rst problem, we present a \Multi-Attribute Routing Scheme"
(MARS) based on \Simple Multi-Attribute Rating Technique" (SMART) that collects
samples of important information about a node's di erent characteristics.
This stochastic picture of a node behavior is then e ectively employed in calculatvii
ing its next-hop tness. We also devise a method based on learning rules of neural
networks to dynamically determine relative importance of each dimension. Hence,
estimations based on an optimized combination of multiple parameters help in
taking wiser decisions in relay nodes selection with inherent advantage of e cient
utilization of network capacity.
In second part of thesis, we analyze the aspect of nodes cooperation in challenged
networks. We propose a novel framework to stimulate cooperation among nodes,
which is deployed as an overlay to assist Destination-Dependent (DD) utility-based
schemes. We envision that such an assistance mechanism to stimulate cooperation
among nodes have the potential to help with practical deployments of DD utility
schemes in real scenarios a icted with sel sh nodes.