Anomaly Detection in Industrial Networks using a Resource-Constrained Edge Device
The detection of false data-injection attacks in industrial networks is a growing challenge in the industry because it requires knowledge of application and protocol specific behaviors. Profinet is a common communication standard currently used in the industry, which has the potential to encounter t...
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Luleå tekniska universitet, Institutionen för system- och rymdteknik
2019
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ndltd-UPSALLA1-oai-DiVA.org-ltu-745302019-06-21T05:39:00ZAnomaly Detection in Industrial Networks using a Resource-Constrained Edge DeviceengEliasson, AntonLuleå tekniska universitet, Institutionen för system- och rymdteknik2019Machine learningAnomaly detectionIndustrial networksProfinetEdge computingEdgeComputer EngineeringDatorteknikEngineering and TechnologyTeknik och teknologierThe detection of false data-injection attacks in industrial networks is a growing challenge in the industry because it requires knowledge of application and protocol specific behaviors. Profinet is a common communication standard currently used in the industry, which has the potential to encounter this type of attack. This motivates an examination on whether a solution based on machine learning with a focus on anomaly detection can be implemented and used to detect abnormal data in Profinet packets. Previous work has investigated this topic; however, a solution is not available in the market yet. Any solution that aims to be adopted by the industry requires the detection of abnormal data at the application level and to run the analytics on a resource-constrained device. This thesis presents an implementation, which aims to detect abnormal data in Profinet packets represented as online data streams generated in real-time. The implemented unsupervised learning approach is validated on data from a simulated industrial use-case scenario. The results indicate that the method manages to detect all abnormal behaviors in an industrial network. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:ltu:diva-74530application/pdfinfo:eu-repo/semantics/openAccess |
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English |
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Machine learning Anomaly detection Industrial networks Profinet Edge computing Edge Computer Engineering Datorteknik Engineering and Technology Teknik och teknologier |
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Machine learning Anomaly detection Industrial networks Profinet Edge computing Edge Computer Engineering Datorteknik Engineering and Technology Teknik och teknologier Eliasson, Anton Anomaly Detection in Industrial Networks using a Resource-Constrained Edge Device |
description |
The detection of false data-injection attacks in industrial networks is a growing challenge in the industry because it requires knowledge of application and protocol specific behaviors. Profinet is a common communication standard currently used in the industry, which has the potential to encounter this type of attack. This motivates an examination on whether a solution based on machine learning with a focus on anomaly detection can be implemented and used to detect abnormal data in Profinet packets. Previous work has investigated this topic; however, a solution is not available in the market yet. Any solution that aims to be adopted by the industry requires the detection of abnormal data at the application level and to run the analytics on a resource-constrained device. This thesis presents an implementation, which aims to detect abnormal data in Profinet packets represented as online data streams generated in real-time. The implemented unsupervised learning approach is validated on data from a simulated industrial use-case scenario. The results indicate that the method manages to detect all abnormal behaviors in an industrial network. |
author |
Eliasson, Anton |
author_facet |
Eliasson, Anton |
author_sort |
Eliasson, Anton |
title |
Anomaly Detection in Industrial Networks using a Resource-Constrained Edge Device |
title_short |
Anomaly Detection in Industrial Networks using a Resource-Constrained Edge Device |
title_full |
Anomaly Detection in Industrial Networks using a Resource-Constrained Edge Device |
title_fullStr |
Anomaly Detection in Industrial Networks using a Resource-Constrained Edge Device |
title_full_unstemmed |
Anomaly Detection in Industrial Networks using a Resource-Constrained Edge Device |
title_sort |
anomaly detection in industrial networks using a resource-constrained edge device |
publisher |
Luleå tekniska universitet, Institutionen för system- och rymdteknik |
publishDate |
2019 |
url |
http://urn.kb.se/resolve?urn=urn:nbn:se:ltu:diva-74530 |
work_keys_str_mv |
AT eliassonanton anomalydetectioninindustrialnetworksusingaresourceconstrainededgedevice |
_version_ |
1719207697652383744 |