dc.contributor.author |
RAZA, SYED AKHTER |
|
dc.date.accessioned |
2017-11-29T06:33:45Z |
|
dc.date.accessioned |
2020-04-11T15:36:58Z |
|
dc.date.available |
2020-04-11T15:36:58Z |
|
dc.date.issued |
2010 |
|
dc.identifier.uri |
http://142.54.178.187:9060/xmlui/handle/123456789/5130 |
|
dc.description.abstract |
The existence of self-similar or fractal nature of network traffic has been proven by
recent studies over a wide range of time scale. These properties are very different from
the traditional Poisson processes/models. If one analyzes the network traffic by these
traditional Poisson models then this leads toward wrong or incorrect decisions. The issues
with Poisson models are overestimation of the performance of computer network and
false allocation of data processing and network resources. Hence complete understanding
of self-similar nature is required for fast and appropriate performance of the network.
This thesis describes a number of problems arising from the experimental study of
telecommunication networks. The work can be split into two main areas: full
understanding of self-similarity within a network traffic and secondly focused over the
comparison of two different networks i.e. searching similarity between two or more self-
similar network traffic by using wavelet based time warping technique.
Estimation techniques of self-similarity measure i.e. Hurst Index H is considered first the
critical analysis of these methods is studied. There is a lack of GUI based tool for the
estimation of Hurst Parameter we developed a new Statistical tool that can estimate the
Hurst Parameter H by different methods along with their statistical analysis. Next we
focused over the generation of self-similar traffic using simulation methods. A
comparison of these methods was also studied. Main focus was on the Wavelet based
estimation and generation methods for computer network traffic.
Secondly concentration is made over filtering of temporal data to get the smooth form of
the signal that may be used for further analysis. The main goal of second part is to
explore new trends for filtering and smoothing of temporal data. A recently developed
technique of wavelets for smoothing of temporal data is explored. New approach was
developed using different features of wavelet transformation for dimensionality reduction
and tested them for various decision making processes in business and computer science.
The developed smoothing techniques are applied for forecasting, query processing of
vsimilar sequences in huge databases and their clustering on the basis of membership
value. The developed forecasting technique is based on Wavelet families and Seasonal
Autoregressive integrated moving average model. In this thesis, two new approaches for
smoothing of large temporal databases using the wavelet filtering theory for
approximations of query procedures for decision support systems (DSS) are also
proposed. For these smooth signals, a novel query processing algorithms was developed
while selecting wavelet based features and time warping distance metric, called wavelet
based features time warping. For first proposed algorithm we utilized the features
extracted on the basis of minima, maxima and averages of wavelet based compressed
signals and for second proposed algorithm local features of wavelet transformation using
average of approximation coefficients at the coarsest scale and maxima of maxima and
minima of minima of detail coefficients at all scales were used. Our both models support
index based time warping distance.
It is proved by carrying out extensive experiments with synthesized databases using
different wavelet families that the proposed methods are very effective and ensure the
nonoccurrence of false dismissals and minimal false alarms with least compromise over
accuracy. The developed method gives extremely fast response times as our approximate
query executes its maximum processing over synoptic set of wavelet features. A new
measure of degree of similarity is introduced for clustering using time warping distance
method which gives better control over the number of clusters. |
en_US |
dc.description.sponsorship |
Higher Education Commission, Pakistan |
en_US |
dc.language.iso |
en |
en_US |
dc.publisher |
UNIVERSITY OF KARACHI |
en_US |
dc.subject |
Computer science, information & general works |
en_US |
dc.title |
TIME SERIES MODELS: FORECASTING AND CONTROL FOR THE MANAGEMENT OF COMPUTING INFRASTRUCTURE AND RESOURCES |
en_US |
dc.type |
Thesis |
en_US |