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An open virtual testbed for industrial control system security researchReaves, Bradley Galloway 06 August 2011 (has links)
ICS security has been a topic of scrutiny and research for several years, and many security issues are well known. However, research efforts are impeded by a lack of an open virtual industrial control system testbed for security research. This thesis describes a virtual testbed framework using Python to create discrete testbed components (including virtual devices and process simulators). This testbed is designed such that the testbeds are interoperable with real ICS devices and that the virtual testbeds can provide comparable ICS network behavior to a laboratory testbed. Two testbeds based on laboratory testbeds have been developed and have been shown to be interoperable with real industrial control systemequipment and vulnerable to attacks in the samemanner as a real system. Additionally, these testbeds have been quantitatively shown to produce traffic close to laboratory systems (within 90% similarity on most metrics).
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Návrh zabezpečení průmyslového řídícího systému / Industrial control system security designStrnad, Matěj January 2019 (has links)
The subject of the master's thesis is a design of security measures for securing of an industrial control system. It includes an analysis of characteristics of communication environment and specifics of industrial communication systems, a comparison of available technological means and a design of a solution according to investor's requirements.
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Leveraging PLC Ladder Logic for Signature Based IDS Rule GenerationRichey, Drew Jackson 12 August 2016 (has links)
Industrial Control Systems (ICS) play a critical part in our world’s economy, supply chain and critical infrastructure. Securing the various types of ICS is of the utmost importance and has been a focus of much research for the last several years. At the heart of many defense in depth strategies is the signature based intrusion detection system (IDS). The signatures that define an IDS determine the effectiveness of the system. Existing methods for IDS signature creation do not leverage the information contained within the PLC ladder logic file. The ladder logic file is a rich source of information about the PLC control system. This thesis describes a method for parsing PLC ladder logic to extract address register information, data types and usage that can be used to better define the normal operation of the control system which will allow for rules to be created to detect abnormal activity.
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Network security monitoring and anomaly detection in industrial control system networksMantere, M. (Matti) 19 May 2015 (has links)
Abstract
Industrial control system (ICS) networks used to be isolated environments, typically separated by physical air gaps from the wider area networks. This situation has been changing and the change has brought with it new cybersecurity issues. The process has also exacerbated existing problems that were previously less exposed due to the systems’ relative isolation. This process of increasing connectivity between devices, systems and persons can be seen as part of a paradigm shift called the Internet of Things (IoT). This change is progressing and the industry actors need to take it into account when working to improve the cybersecurity of ICS environments and thus their reliability. Ensuring that proper security processes and mechanisms are being implemented and enforced on the ICS network level is an important part of the general security posture of any given industrial actor.
Network security and the detection of intrusions and anomalies in the context of ICS networks are the main high-level research foci of this thesis. These issues are investigated through work on machine learning (ML) based anomaly detection (AD). Potentially suitable features, approaches and algorithms for implementing a network anomaly detection system for use in ICS environments are investigated.
After investigating the challenges, different approaches and methods, a proof-ofconcept (PoC) was implemented. The PoC implementation is built on top of the Bro network security monitoring framework (Bro) for testing the selected approach and tools. In the PoC, a Self-Organizing Map (SOM) algorithm is implemented using Bro scripting language to demonstrate the feasibility of using Bro as a base system. The implemented approach also represents a minimal case of event-driven machine learning anomaly detection (EMLAD) concept conceived during the research.
The contributions of this thesis are as follows: a set of potential features for use in machine learning anomaly detection, proof of the feasibility of the machine learning approach in ICS network setting, a concept for event-driven machine learning anomaly detection, a design and initial implementation of user configurable and extendable machine learning anomaly detection framework for ICS networks. / Tiivistelmä
Kehittyneet yhteiskunnat käyttävät teollisuuslaitoksissaan ja infrastruktuuriensa operoinnissa monimuotoisia automaatiojärjestelmiä. Näiden automaatiojärjestelmien tieto- ja kyberturvallisuuden tila on hyvin vaihtelevaa. Laitokset ja niiden hyödyntämät järjestelmät voivat edustaa usean eri aikakauden tekniikkaa ja sisältää useiden eri aikakauden heikkouksia ja haavoittuvaisuuksia.
Järjestelmät olivat aiemmin suhteellisen eristyksissä muista tietoverkoista kuin omista kommunikaatioväylistään. Tämä automaatiojärjestelmien eristyneisyyden heikkeneminen on luonut uuden joukon uhkia paljastamalla niiden kommunikaatiorajapintoja ympäröivälle maailmalle. Nämä verkkoympäristöt ovat kuitenkin edelleen verrattaen eristyneitä ja tätä ominaisuutta voidaan hyödyntää niiden valvonnassa. Tässä työssä esitetään tutkimustuloksia näiden verkkojen turvallisuuden valvomisesta erityisesti poikkeamien havainnoinnilla käyttäen hyväksi koneoppimismenetelmiä. Alkuvaiheen haasteiden ja erityispiirteiden tutkimuksen jälkeen työssä käytetään itsejärjestyvien karttojen (Self-Organizing Map, SOM) algoritmia esimerkkiratkaisun toteutuksessa uuden konseptin havainnollistamiseksi. Tämä uusi konsepti on tapahtumapohjainen koneoppiva poikkeamien havainnointi (Event-Driven Machine Learning
Anomaly Detection, EMLAD).
Työn kontribuutiot ovat seuraavat, kaikki teollisuusautomaatioverkkojen kontekstissa: ehdotus yhdeksi anomalioiden havainnoinnissa käytettävien ominaisuuksien ryhmäksi, koneoppivan poikkeamien havainnoinnin käyttökelpoisuuden toteaminen, laajennettava ja joustava esimerkkitoteutus uudesta EMLAD-konseptista toteutettuna Bro NSM työkalun ohjelmointikielellä.
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