PLCverif: Status of a Formal Verification Tool for Programmable Logic Controller
March 30, 2022 Β· Declared Dead Β· π arXiv.org
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Authors
Ignacio D. Lopez-Miguel, Jean-Charles Tournier, Borja Fernandez Adiego
arXiv ID
2203.17253
Category
cs.SE: Software Engineering
Citations
14
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Programmable Logic Controllers (PLC) are widely used for industrial automation including safety systems at CERN. The incorrect behaviour of the PLC control system logic can cause significant financial losses by damage of property or the environment or even injuries in some cases, therefore ensuring their correct behaviour is essential. While testing has been for many years the traditional way of validating the PLC control system logic, CERN developed a model checking platform to go one step further and formally verify PLC logic. This platform, called PLCverif, first released internally for CERN usage in 2019, is now available to anyone since September 2020 via an open source licence. In this paper, we will first give an overview of the PLCverif platform capabilities before focusing on the improvements done since 2019 such as the larger support coverage of the Siemens PLC programming languages, the better support of the C Bounded Model Checker backend (CBMC) and the process of releasing PLCverif as an open-source software.
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