A Survey on Industrial Control System Testbeds and Datasets for Security Research
Mauro Conti, Denis Donadel, Federico Turrin

TL;DR
This survey comprehensively reviews ICS testbeds and datasets used for security research, highlighting challenges, design guidelines, and baseline IDS performance to aid future development in securing critical infrastructures.
Contribution
It provides a detailed overview of ICS architectures, compares existing testbeds and datasets, and reports baseline IDS performances, offering practical guidelines for future security research.
Findings
Identified key challenges in ICS testbed and dataset design
Compared and categorized existing ICS datasets and testbeds
Reported baseline IDS performances on various datasets
Abstract
The increasing digitization and interconnection of legacy Industrial Control Systems (ICSs) open new vulnerability surfaces, exposing such systems to malicious attackers. Furthermore, since ICSs are often employed in critical infrastructures (e.g., nuclear plants) and manufacturing companies (e.g., chemical industries), attacks can lead to devastating physical damages. In dealing with this security requirement, the research community focuses on developing new security mechanisms such as Intrusion Detection Systems (IDSs), facilitated by leveraging modern machine learning techniques. However, these algorithms require a testing platform and a considerable amount of data to be trained and tested accurately. To satisfy this prerequisite, Academia, Industry, and Government are increasingly proposing testbed (i.e., scaled-down versions of ICSs or simulations) to test the performances of the…
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