A Natural Language Processing (NLP) Framework for Embedded Systems to Automatically Extract Verification Aspects from Textual Design Requirements

Muhammad Waseem Anwar, Imran Ahsan, F. Azam, Wasi Haider Butt, M. Rashid
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引用次数: 10

Abstract

Embedded systems requirements are significantly different with respect to general purpose systems due to the safety-critical nature and the presence of temporal aspects. Particularly, the design requirements of embedded systems, comprise several temporal conditions, are first identified. Subsequently, a test engineer / system engineer analyzes the design requirements manually to identify the verification characteristics and develops the verification assertions / constraints accordingly. However, the manual analysis of design requirements for verification is time consuming task. Furthermore, high level of domain expertise is required to develop the correct and complete verification assertions from the design requirements. This article presents a novel Natural Language Processing (NLP) framework for embedded systems to analyze and automatically extract verification aspects from the textual design requirements. This leads to considerably simplify and accelerate the development of verification assertions. As a part of research, a complete AR2AA (Automated Requirements 2 Assertions Analyzer) tool is developed in C# by utilizing the SharpNLP and regular expression libraries. The usefulness of proposed framework is demonstrated through Car Collision and Avoidance System (CCAS) case study. The initial results prove that the proposed framework is highly effective for the analysis and development of verification assertions from the textual design requirements.
嵌入式系统从文本设计需求中自动提取验证方面的自然语言处理框架
由于安全关键的性质和时间方面的存在,嵌入式系统的需求与通用系统有很大的不同。特别是,嵌入式系统的设计需求,包括几个时间条件,首先被确定。随后,测试工程师/系统工程师手动分析设计需求,以识别验证特征,并相应地开发验证断言/约束。然而,手工分析验证的设计需求是一项耗时的任务。此外,需要高水平的领域专业知识来根据设计需求开发正确和完整的验证断言。本文提出了一种新的嵌入式系统自然语言处理(NLP)框架,用于分析和自动提取文本设计需求中的验证方面。这大大简化并加速了验证断言的开发。作为研究的一部分,我们利用SharpNLP和正则表达式库,在c#中开发了一个完整的AR2AA(自动化需求2断言分析器)工具。通过汽车碰撞与避碰系统(CCAS)的案例研究,验证了该框架的有效性。初步结果表明,所提出的框架对于从文本设计需求出发的验证断言的分析和开发是非常有效的。
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