Towards a solver-aware systems architecting framework: leveraging experts, specialists and the crowd to design innovative complex systems

IF 1.8 Q3 ENGINEERING, MANUFACTURING
Design Science Pub Date : 2022-03-11 DOI:10.1017/dsj.2022.7
Z. Szajnfarber, Taylan G. Topcu, Hila Lifshitz-Assaf
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引用次数: 0

Abstract

Abstract This article proposes the solver-aware system architecting framework for leveraging the combined strengths of experts, crowds and specialists to design innovative complex systems. Although system architecting theory has extensively explored the relationship between alternative architecture forms and performance under operational uncertainty, limited attention has been paid to differences due to who generates the solutions. The recent rise in alternative solving methods, from gig workers to crowdsourcing to novel contracting structures emphasises the need for deeper consideration of the link between architecting and solver-capability in the context of complex system innovation. We investigate these interactions through an abstract problem-solving simulation, representing alternative decompositions and solver archetypes of varying expertise, engaged through contractual structures that match their solving type. We find that the preferred architecture changes depending on which combinations of solvers are assigned. In addition, the best hybrid decomposition-solver combinations simultaneously improve performance and cost, while reducing expert reliance. To operationalise this new solver-aware framework, we induce two heuristics for decomposition-assignment pairs and demonstrate the scale of their value in the simulation. We also apply these two heuristics to reason about an example of a robotic manipulator design problem to demonstrate their relevance in realistic complex system settings.
面向求解器感知的系统架构框架:利用专家、专家和人群来设计创新的复杂系统
摘要本文提出了一种求解器感知系统架构框架,用于利用专家、群体和专家的综合优势来设计创新的复杂系统。尽管系统体系结构理论已经广泛探索了在操作不确定性下替代体系结构形式和性能之间的关系,但由于谁生成解决方案,人们对差异的关注有限。最近,从零工到众包再到新型合同结构,替代解决方法的兴起,强调了在复杂系统创新的背景下,需要更深入地考虑架构和解决能力之间的联系。我们通过抽象的问题解决模拟来研究这些互动,代表不同专业知识的替代分解和解决者原型,通过与其解决类型相匹配的契约结构参与。我们发现,首选架构会根据指定的解算器组合而变化。此外,最佳的混合分解-求解器组合同时提高了性能和成本,同时减少了对专家的依赖。为了实现这个新的求解器感知框架,我们引入了分解分配对的两种启发式方法,并在模拟中展示了它们的值的规模。我们还将这两种启发式方法应用于机器人机械手设计问题的一个例子,以证明它们在现实复杂系统设置中的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Design Science
Design Science ENGINEERING, MANUFACTURING-
CiteScore
4.80
自引率
12.50%
发文量
19
审稿时长
22 weeks
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