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Anomaly detection system based on classifier fusion in ICS environment

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dc.title Anomaly detection system based on classifier fusion in ICS environment en
dc.contributor.author Vávra, Jan
dc.contributor.author Hromada, Martin
dc.relation.ispartof Proceedings - 2017 International Conference on Soft Computing, Intelligent System and Information Technology: Building Intelligence Through IOT and Big Data, ICSIIT 2017
dc.identifier.isbn 978-1-4673-9899-2
dc.date.issued 2017
utb.relation.volume 2018-January
dc.citation.spage 32
dc.citation.epage 38
dc.event.title 5th International Conference on Soft Computing, Intelligent System and Information Technology, ICSIIT 2017
dc.event.location Petra Christian Univ
utb.event.state-en Informat dept
dc.event.sdate 2017-09-26
dc.event.edate 2017-09-29
dc.type conferenceObject
dc.language.iso en
dc.publisher Institute of Electrical and Electronics Engineers (IEEE)
dc.identifier.doi 10.1109/ICSIIT.2017.35
dc.relation.uri https://ieeexplore.ieee.org/abstract/document/8262539/
dc.subject Classifier en
dc.subject industrial control system en
dc.subject cyber security en
dc.subject anomaly detection en
dc.description.abstract The detection of cyber-attacks has become a crucial task for highly sophisticated systems like industrial control systems (ICS). These systems are an essential part of critical information infrastructure. Therefore, we can highlight their vital role in contemporary society. The effective and reliable ICS cyber defense is a significant challenge for the cyber security community. Thus, intrusion detection is one of the demanding tasks for the cyber security researchers. In this article, we examine classification problem. The proposed detection system is based on supervised anomaly detection techniques. Moreover, we utilized classifiers algorithms in order to increase intrusion detection capabilities. The fusion of the classifiers is the way how to achieve the predefined goal. en
utb.faculty Faculty of Applied Informatics
dc.identifier.uri http://hdl.handle.net/10563/1007870
utb.identifier.obdid 43876936
utb.identifier.scopus 2-s2.0-85049330863
utb.identifier.wok 000428025400007
utb.source d-wok
dc.date.accessioned 2018-04-23T15:01:49Z
dc.date.available 2018-04-23T15:01:49Z
dc.description.sponsorship Internal Grant Agency [IGA/FAI/2017/003]; Ministry of the Interior of the Czech Republic; Ministry of Education, Youth and Sports of the Czech Republic [LO1303 (MSMT-7778/2014)]; European Regional Development Fund under the project CEBIA-Tech [CZ.1.05/2.1.00/03.0089]; [VI20152019049]; [VI20172019054]
utb.contributor.internalauthor Vávra, Jan
utb.contributor.internalauthor Hromada, Martin
utb.fulltext.affiliation Jan Vávra, Martin Hromada Department of Security Engineering Tomas Bata University in Zlín Zlín, Czech Republic [email protected], [email protected]
utb.fulltext.dates -
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utb.fulltext.sponsorship This work was funded by the Internal Grant Agency (IGA/FAI/2017/003) and supported by the project ev. no. VI20152019049 "RESILIENCE 2015: Dynamic Resilience Evaluation of Interrelated Critical Infrastructure Subsystems", supported by the Ministry of the Interior of the Czech Republic in the years 2015-2019 and also supported by the research project VI20172019054 "An analytical software module for the real-time resilience evaluation from point of the converged security", supported by the Ministry of the Interior of the Czech Republic in the years 2017-2019. Moreover, this work was supported by the Ministry of Education, Youth and Sports of the Czech Republic within the National Sustainability Programme project No. LO1303 (MSMT-7778/2014) and also by the European Regional Development Fund under the project CEBIA-Tech No. CZ.1.05/2.1.00/03.0089. Finally, we thank our colleagues from Mississippi State University and Oak Ridge National Laboratory which provides SCADA datasets.
utb.wos.affiliation [Vavra, Jan; Hromada, Martin] Tomas Bata Univ Zlin, Dept Secur Engn, Zlin, Czech Republic
utb.fulltext.projects IGA/FAI/2017/003
utb.fulltext.projects VI20152019049
utb.fulltext.projects VI20172019054
utb.fulltext.projects LO1303 (MSMT-7778/2014)
utb.fulltext.projects CZ.1.05/2.1.00/03.0089
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