Spatio-Temporal Probabilistic Query Generation Models and Sink-Attributes Analysis in Energy Efficient Wireless Sensor Networks
Date
2017
Authors
Kumar, Pramod
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Rapid advancement in Micro-Electronic-Mechanical-Systems (MEMS) and distributed
computing infrastructure along with compactness and economic viability in IC technology has accelerated the versatile growth and deployment of wireless sensors networks
(WSNs). Owing to its sensing and subsequent parameters estimation abilities while maintaining higher spatial resolution led to a prominent position for WSNs in the networking
paradigm. The main contribution of this thesis is to provide a modeling and analysis
based on probabilistic framework for varieties of query generation scenarios in WSNs. In
broad regime of query based WSNs, the query generation dynamics owe significantly to
the associated spatial and/or temporal parameters. To encompass varying degree of uncertainties associated with spatio-temporal parameters; these parameters are treated as
Fuzzified intervals, thus address quantum of uncertainties with the finest approximation
or accuracy. Further, to ensure reliable network operation having fairly uniform coverage
over the stipulated lifetime; usage of varieties of clustering schemes, sink attributes and
spatial-fusion concept are explored.
From operational aspects; the most important issues in wireless sensor networks
(WSNs) are the coverage and the efficient usage of sensor nodes limited energy reserve. Irrespective of the applications served; owing to difficulty associated with battery replenishment, proper energy usage has been at centre-stage in WSNs operations, that ultimately
influence the lifetime of WSNs. In this thesis; during various case-studies, square shape
service-areas of varying area-dimension, different sensor node specifications and hierarchical network architecture are considered. These cases differ in terms of sink-attributes
such as single/multiple, and stationary/portable. Sink is an important interface between
the end user and the remote entities (sensor nodes), thus the proposed algorithms are
formulated on considering sink at the center-stage. Further, the performance of WSNs
also depends upon the topological structure of the network, usually it is hierarchical one.
To realize hierarchical structure; the usage of clustering schemes namely static k-means
(SKM), static fuzzy c-means (SFCM), dynamic k-means (DKM) and dynamic fuzzy cmeans (DFCM) are explored for the clusters formation and the subsequent selection of
cluster heads (CHs).
iiiSelection of CHs is done using residual energy status (RES) of participating sensor
nodes. Cartesian-coordinate of these sensor nodes appropriately weighted with RES estimate decides the energy-centroid (EC) location for each cluster. The Euclidean distance
measure between a sink and the ECs is used to identify new appropriate location for sink
while complying with principal motive of energy conservation. Initially, during few query
generation scenarios; different quadrants of the service-area observe distinct pattern of
query spatial distribution. These query dissemination patterns are modelled using amplitude and angle modulated vectors. Later, the probabilistic approach is used to model
the query generation process. The parameters of probabilistic models are regulated using
the associated spatio-temporal aspects.
In this thesis; usage of uniform probability mass function (PMF) and Poisson PMF
models are investigated and analyzed to replicate query generation process. Further,
the lifetime of WSNs depends upon sensor nodes energy dissipation pattern that is nonuniform in terms of spatial distribution over any short epochs. Thus, integrating the
spatio-temporal aspects with the Poisson PMF model appears more reasonable.
In mainstream probabilistic models; the associated control parameters are treated
as crisp numbers, which fail to encompass uncertainties associated with the modelled
parameters. To incorporate these uncertainties, Fuzzified interval-bound values of spatiotemporal parameters are considered to model the control parameter in Poisson PMF
expression. Further, exploring the solutions in higher-dimensional space always entrust
its superiority over the solutions that are derived from lower-dimensional space. This
rationale is exploited using the concept of spatial (quadrants)-fusion in anticipation of
improved profile of network performance measures.
With these motivations, the thesis explores: (1) uses of energy efficient clustering
schemes, (2) incorporation of spatio-temporal parameters uncertainties into probabilistic
model of query generation using fuzzy-intervals bound, (3) importance of sink attributes,
and (4) exploiting heuristic framework based on spatial-fusion concept to enhance network lifetime or to meet desired service norms over the stipulated network lifetime. For
various network surveillance scenarios; the performance measures namely average residual
energy status (ARES) of entire sensor network, critical residual energy status (CRES) of
individual nodes as well as that of entire sensor network, fraction of sensor nodes attaining
CRES mark and the network service-time-duration (STD) are estimated and analyzed.
Description
Keywords
Department of Electrical and Electronics Engineering, Average Residual Energy Status (ARES), K- means, Fuzzy c-means (FCM), Critical Residual Energy Status (CRES), Service Time Duration (STD), Poisson distribution, Gaussian Distribution, Spatio-temporal, Fusion, Fuzzy Intervals, Wireless Sensor Networks(WSNs)