Assessing a Safety Case: Bottom-up Guidance for Claims and Evidence Evaluation
Scott Schnelle, Francesca Favaro, Laura Fraade-Blanar, David Wichner, Holland Broce, Justin Miranda

TL;DR
This paper proposes a structured approach for assessing the credibility of safety cases in Automated Driving Systems by evaluating claims and evidence support, aiding safety assurance and public trust.
Contribution
It introduces a detailed methodology for evaluating safety case support through procedural and implementation assessments, including scoring and guidelines for credibility evaluation.
Findings
Provides scoring tables for claim and evidence assessment
Outlines governance and continual improvement considerations
Builds on auditing practices to judge safety case credibility
Abstract
As Automated Driving Systems (ADS) technology advances, ensuring safety and public trust requires robust assurance frameworks, with safety cases emerging as a critical tool toward such a goal. This paper explores an approach to assess how a safety case is supported by its claims and evidence, toward establishing credibility for the overall case. Starting from a description of the building blocks of a safety case (claims, evidence, and optional format-dependent entries), this paper delves into the assessment of support of each claim through the provided evidence. Two domains of assessment are outlined for each claim: procedural support (formalizing process specification) and implementation support (demonstrating process application). Additionally, an assessment of evidence status is also undertaken, independently from the claims support. Scoring strategies and evaluation guidelines are…
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Taxonomy
TopicsSafety Systems Engineering in Autonomy · Human-Automation Interaction and Safety · Autonomous Vehicle Technology and Safety
