Approach to Presenting Network Infrastructure of Cyberphysical Systems to Minimize the Cyberattack Neutralization Time

2019 ◽  
Vol 53 (5) ◽  
pp. 387-392
Author(s):  
D. S. Lavrova ◽  
E. A. Zaitseva ◽  
D. P. Zegzhda
Author(s):  
Alma Delia Gonzalez-Ramos ◽  
Juan Pablo Ibañez-Bautista ◽  
Nayeli Zamacona-Prado ◽  
Edebaldo Peza-Ortiz

The purpose of this document is to develop a method for assigning IP v4 addressing subnets within a simulated network scenario, using the binary-decimal numbering systems according to the ICN 1 CNACO CCNA curriculum, which will make it possible to streamline times in the allocation of IPs as well as the correct administration of them, The above will allow students of the Higher University Technical Degree in Information Technology in the area of Digital Network Infrastructure at the Fidel Velázquez Technological University to understand the theoretical concepts that They should be used in this area and they are used correctly for their professional performance, this will help them to fulfill the professional competences that are the skills and attitudes that allow the student to develop activities in their professional area, specific competencies such as developing media technology solutions nte the application of network fundamentals, which meet the needs of organizations and the generic competences that their professional profile requires.


2018 ◽  
Vol 935 (5) ◽  
pp. 54-63
Author(s):  
A.A. Maiorov ◽  
A.V. Materuhin ◽  
I.N. Kondaurov

Geoinformation technologies are now becoming “end-to-end” technologies of the new digital economy. There is a need for solutions for efficient processing of spatial and spatio-temporal data that could be applied in various sectors of this new economy. Such solutions are necessary, for example, for cyberphysical systems. Essential components of cyberphysical systems are high-performance and easy-scalable data acquisition systems based on smart geosensor networks. This article discusses the problem of choosing a software environment for this kind of systems, provides a review and a comparative analysis of various open source software environments designed for large spatial data and spatial-temporal data streams processing in computer clusters. It is shown that the software framework STARK can be used to process spatial-temporal data streams in spatial-temporal data streams. An extension of the STARK class system based on the type system for spatial-temporal data streams developed by one of the authors of this article is proposed. The models and data representations obtained as a result of the proposed expansion can be used not only for processing spatial-temporal data streams in data acquisition systems based on smart geosensor networks, but also for processing spatial-temporal data streams in various purposes geoinformation systems that use processing data in computer clusters.


Modelling ◽  
2021 ◽  
Vol 2 (1) ◽  
pp. 43-62
Author(s):  
Kshirasagar Naik ◽  
Mahesh D. Pandey ◽  
Anannya Panda ◽  
Abdurhman Albasir ◽  
Kunal Taneja

Accurate modelling and simulation of a nuclear power plant are important factors in the strategic planning and maintenance of the plant. Several nonlinearities and multivariable couplings are associated with real-world plants. Therefore, it is quite challenging to model such cyberphysical systems using conventional mathematical equations. A visual analytics approach which addresses these limitations and models both short term as well as long term behaviour of the system is introduced. Principal Component Analysis (PCA) followed by Linear Discriminant Analysis (LDA) is used to extract features from the data, k-means clustering is applied to label the data instances. Finite state machine representation formulated from the clustered data is then used to model the behaviour of cyberphysical systems using system states and state transitions. In this paper, the indicated methodology is deployed over time-series data collected from a nuclear power plant for nine years. It is observed that this approach of combining the machine learning principles with the finite state machine capabilities facilitates feature exploration, visual analysis, pattern discovery, and effective modelling of nuclear power plant data. In addition, finite state machine representation supports identification of normal and abnormal operation of the plant, thereby suggesting that the given approach captures the anomalous behaviour of the plant.


Computer ◽  
2021 ◽  
Vol 54 (9) ◽  
pp. 15-24
Author(s):  
James Bret Michael ◽  
Doron Drusinsky ◽  
Duminda Wijesekera

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