使用早期非功能属性评估实现迭代软件架构派生

K. S. Barber, T. Graser, J. Holt
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引用次数: 25

摘要

软件体系结构的结构强烈地影响体系结构规定系统满足功能需求、非功能需求和总体质量(如可维护性、可重用性和性能)的能力。实现可接受的体系结构需要一个迭代的推导和评估过程,该过程允许基于一系列权衡进行细化。德克萨斯大学奥斯汀分校的研究人员正在开发一套过程和支持工具,以指导从需求获取到系统设计的体系结构派生。并发派生和评估所需的各种类型的决策需要综合评估技术,因为没有一种技术适合所有感兴趣的问题。这个套件中的两个工具,RARE和ARCADE,合作来实现迭代的体系结构派生和体系结构属性评估。RARE通过使用启发式知识库来指导推导,并通过基于结构度量的静态属性评估来评估结果体系结构。ARCADE提供利用仿真和模型检查的动态属性评估。本文提出了一项研究,在工业项目的早期阶段使用RARE和ARCADE来派生领域参考体系结构(DRA),这是一种捕获领域功能、数据和时间的高级体系结构。讨论强调了性能质量的早期评估,并说明了ARCADE和RARE如何合作以实现迭代推导和评估。这些评估影响DRA的细化,以及涉及应用程序实现和计算平台选择的后续设计决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enabling iterative software architecture derivation using early non-functional property evaluation
The structure of a software architecture strongly influences the architecture's ability to prescribe systems satisfying functional requirements, non functional requirements, and overall qualities such as maintainability, reusability, and performance. Achieving an acceptable architecture requires an iterative derivation and evaluation process that allows refinement based on a series of tradeoffs. Researchers at the University of Texas at Austin are developing a suite of processes and supporting tools to guide architecture derivation from requirements acquisition through system design. The various types of decisions needed for concurrent derivation and evaluation demand a synthesis of evaluation techniques, because no single technique is suitable for all concerns of interest. Two tools in this suite, RARE and ARCADE, cooperate to enable iterative architecture derivation and architecture property evaluation. RARE guides derivation by employing a heuristics knowledge base, and evaluates the resulting architecture by applying static property evaluation based on structural metrics. ARCADE provides dynamic property evaluation leveraging simulation and model-checking. This paper presents a study whereby RARE and ARCADE were employed in the early stages of an industrial project to derive a Domain Reference Architecture (DRA), a high-level architecture capturing domain functionality, data, and timing. The discussion emphasizes early evaluation of performance qualities, and illustrates how ARCADE and RARE cooperate to enable iterative derivation and evaluation. These evaluations influenced DRA refinement as well as subsequent design decisions involving application implementation and computing platform selection.
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