Tool Support for Validation of Formal System Models: Interactive Visualization and Requirements Traceability
December 23, 2019 Β· Declared Dead Β· π F-IDE@FM
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Authors
Eduard Kamburjan, Jonas Stromberg
arXiv ID
1912.10635
Category
cs.HC: Human-Computer Interaction
Citations
5
Venue
F-IDE@FM
Last Checked
4 months ago
Abstract
Development processes in various engineering disciplines are incorporating formal models to ensure safety properties of critical systems. The use of these formal models requires to reason about their adequacy, i.e., to validate that a model mirrors the structure of the system sufficiently that properties established for the model indeed carry over to the real system. Model validation itself is non-formal, as adequacy is not a formal (i.e., mathematical) property. Instead it must be carried out by the modeler to justify the modeling to the certification agency or other stakeholders. In this paper we argue that model validation can be seen as a special form of requirements engineering, and that interactive visualization and concepts from requirements traceability can help to advance tool support for formal modeling by lowering the cognitive burden needed for validation. We present the VisualisierbaR tool, which supports the formal modeling of railway operations and describe how it uses interactive visualization and requirements traceability concepts to validate a formal model.
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