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Comparative analysis of a model-based systems engineering approach to a traditional systems engineering approach for architecting a robotic space system through knowledge categorization

机译:基于模型的系统工程方法通过知识分类构建机器人空间系统的传统系统工程方法的比较分析

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This study compares the types and quantities of knowledge that are captured by a model-based systems engineering (MBSE) approach and a traditional architecting approach to measure the benefits of the MBSE approach in managing the complexity of a robotic space system. The MBSE approach was implemented with Cameo Systems Modeler using Systems Modeling Language (SysML) and applied to architecting an orbiting sample Capture and Orient Module (COM) system concept for a Capture, Containment, and Return System payload concept for potential Mars Sample Return. An architecture framework was established, covering system, subsystem, and assembly levels, along with structure, behavior, data, and requirements perspectives. The COM system architecture was captured in parallel using both the MBSE and non-MBSE approaches in order to provide a side-by-side comparison of the approaches. The approaches were evaluated based on how well each represented the information content of the COM system architecture. A total of 4389 knowledge elements were classified using the Revised Bloom's Taxonomy knowledge dimension and used to quantitatively compare the two approaches. The MBSE approach more completely captured architectural knowledge than the non-MBSE approach. Limitations to the SysML-based MBSE approach were also identified, including its ability to fully represent certain high-level conceptual, procedural, and metacognitive knowledge such as design principles, design approaches and rationales, risks, development strategies and rationales, organizational core competencies, and requirement verification methods. The overall results demonstrate the benefits of MBSE in managing the complexity of robotic space systems and strengthen the case for adopting MBSE within the systems engineering community.
机译:本研究比较了由基于模型的系统工程(MBSE)方法和传统架构方法捕获的知识的类型和数量,以测量MBSE方法管理机器人空间系统的复杂性的益处。使用Systems建模语言(SYSML)使用来自Careo Systems Modeler来实现MBSE方法,并应用于架构用于捕获,容纳和返回系统有效载荷概念的轨道样本捕获和东方模块(COM)系统概念,以获得潜在的MARS样本返回。建立了建筑框架,涵盖系统,子系统和装配级别以及结构,行为,数据和需求视角。使用MBSE和非MBSE方法并行捕获COM系统架构,以便提供方法的并排比较。根据每个代表COM系统架构的信息内容的方式评估该方法。使用经修订的盛开的分类知识维度分类了4389个知识元素,并用于定量比较两种方法。 MBSE方法更完全捕获的建筑知识,而不是非MBSE方法。还确定了基于SYSML的MBSE方法的限制,包括其充分代表某些高级概念,程序和元认知知识,例如设计原则,设计方法,理由,风险,发展战略和理由,组织核心竞争力,并要求验证方法。整体结果表明MBSE在管理机器人空间系统的复杂性方面的好处,并加强在系统工程界内采用MBSE的情况。

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