Treffer: Quantitative and qualitative safety analysis of a hemodialysis machine with S#.

Title:
Quantitative and qualitative safety analysis of a hemodialysis machine with S#.
Source:
Journal of Software: Evolution & Process; May2018, Vol. 30 Issue 5, p1-N.PAG, 14p
Database:
Complementary Index

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This paper reports on our experiences of applying S# ("safety sharp") to model and analyze the case study "hemodialysis machine." The S# safety analysis approach focuses on the question, what happens if we place a controller with correct software into an unreliable environment. To answer that question, the S# toolchain natively supports the Deductive Cause Consequence Analysis, a fully automatic model checking-based safety analysis technique that determines all sets of component faults with the potential of causing a system hazard. Furthermore, S# can give an approximate estimate of the hazard's probability. To demonstrate our approach, we created a model with a simplified controller of the hemodialysis machine and relevant parts of its environment and performed a safety analysis using Deductive Cause Consequence Analysis. [ABSTRACT FROM AUTHOR]

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