Abstract: Software-defined networking (SDN) provides a solution
for scalable network framework with decoupled control and data
plane. However, this architecture also induces a particular distributed
denial-of-service (DDoS) attack that can affect or even overwhelm
the SDN network. DDoS attack detection problem has to date been
mostly researched as entropy comparison problem. However, this
problem lacks the utilization of SDN, and the results are not accurate.
In this paper, we propose a DDoS attack detection method, which
interprets DDoS detection as a signature matching problem and is
formulated as Earth Mover’s Distance (EMD) model. Considering
the feasibility and accuracy, we further propose to define the cost
function of EMD to be a generalized Kullback-Leibler divergence.
Simulation results show that our proposed method can detect DDoS
attacks by comparing EMD values with the ones computed in the case
without attacks. Moreover, our method can significantly increase the
true positive rate of detection.
Abstract: The objective of this paper, is to apply support vector machine (SVM) approach for the classification of cancerous and normal regions of prostate images. Three kinds of textural features are extracted and used for the analysis: parameters of the Gauss- Markov random field (GMRF), correlation function and relative entropy. Prostate images are acquired by the system consisting of a microscope, video camera and a digitizing board. Cross-validated classification over a database of 46 images is implemented to evaluate the performance. In SVM classification, sensitivity and specificity of 96.2% and 97.0% are achieved for the 32x32 pixel block sized data, respectively, with an overall accuracy of 96.6%. Classification performance is compared with artificial neural network and k-nearest neighbor classifiers. Experimental results demonstrate that the SVM approach gives the best performance.
Abstract: Partial discharge (PD) detection is an important
method to evaluate the insulation condition of metal-clad apparatus.
Non-intrusive sensors which are easy to install and have no
interruptions on operation are preferred in onsite PD detection.
However, it often lacks of accuracy due to the interferences in PD
signals. In this paper a novel PD extraction method that uses frequency
analysis and entropy based time-frequency (TF) analysis is introduced.
The repetitive pulses from convertor are first removed via frequency
analysis. Then, the relative entropy and relative peak-frequency of
each pulse (i.e. time-indexed vector TF spectrum) are calculated and
all pulses with similar parameters are grouped. According to the
characteristics of non-intrusive sensor and the frequency distribution
of PDs, the pulses of PD and interferences are separated. Finally the
PD signal and interferences are recovered via inverse TF transform.
The de-noised result of noisy PD data demonstrates that the
combination of frequency and time-frequency techniques can
discriminate PDs from interferences with various frequency
distributions.