Aya Zaki-Ismail, Mohamed Osama, Mohamed Abdelrazek, J. Grundy, Amani S. Ibrahim
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引用次数: 3
Abstract
Formal verification techniques enable the detection of complex quality issues within system specifications. However, the majority of system requirements are usually specified in natural language (NL). Manual formalisation of NL requirements is an error-prone and labour-intensive process requiring strong mathematical expertise, and can be infeasible for large numbers of requirements. Existing automatic formalisation techniques usually support heavily constrained natural language relying on requirement boilerplates or templates. In this paper, we introduce ARF: Automatic Requirements Formalisation Tool. ARF can automatically transform free-format natural language requirements into temporal logic based formal notations. This is achieved through two steps: 1) extraction of key requirement attributes into an intermediate representation (RCM: Requirement Capturing Model), and 2) transformation rules that convert requirements from the RCM format to formal notations.