Enhanced SCADA IDS Security by Using MSOM Hybrid Unsupervised Algorithm

In Self-Organizing Maps (SOM) are unsupervised neural networks that cluster high dimensional data and transform complex inputs into easily understandable inputs. To find the closest distance and weight factor, it maps high dimensional input space to low dimensional input space. The Closest node to d...

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Bibliographic Details
Published inInternational journal of web-based learning and teaching technologies Vol. 17; no. 2; pp. 1 - 9
Main Authors Sangeetha K, Shitharth S, Mohammed, Gouse Baig
Format Journal Article
LanguageEnglish
Published IGI Global 01.03.2022
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ISSN1548-1093
1548-1107
1548-1107
DOI10.4018/IJWLTT.20220301.oa2

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Summary:In Self-Organizing Maps (SOM) are unsupervised neural networks that cluster high dimensional data and transform complex inputs into easily understandable inputs. To find the closest distance and weight factor, it maps high dimensional input space to low dimensional input space. The Closest node to data point is denoted as a neuron. It classifies the input data based on these neurons. The reduction of dimensionality and grid clustering using neurons makes to observe similarities between the data. In our proposed Mutated Self Organizing Maps (MSOM) approach, we have two intentions. One is to eliminate the learning rate and to decrease the neighborhood size and the next one is to find out the outliers in the network. The first one is by calculating the median distance (MD) between each node with its neighbor nodes. Then those median values are compared with one another. In case, if any of the MD values significantly varies from the rest then it is declared as anomaly nodes. In the second phase, we find out the quantization error (QE) in each instance from the cluster center.
ISSN:1548-1093
1548-1107
1548-1107
DOI:10.4018/IJWLTT.20220301.oa2