一个以团队为中心的度量框架,用于测试和评估人机团队

IF 1.6 3区 工程技术 Q4 ENGINEERING, INDUSTRIAL Systems Engineering Pub Date : 2023-11-08 DOI:10.1002/sys.21730
Jay Wilkins, David A. Sparrow, Caitlan A. Fealing, Brian D. Vickers, Kristina A. Ferguson, Heather Wojton
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引用次数: 0

摘要

我们提出并提出了一个并行度量框架,用于评估人机团队,该框架借鉴了当前人类系统接口和集成的知识,但植根于以团队为中心的概念。人类和机器作为一个团队一起工作,涉及到的互动只会随着机器成为更智能、更有能力的团队成员而增加复杂性。评估这样的团队不仅需要明确关注人机接口,还需要关注代理之间和之间的全部交互。与关注单个团队成员的孤立的质量、能力和性能贡献相反,建议的框架强调集体团队是分析的基本单元,团队的交互是关键的评估目标,个人的人和机器度量仍然是重要的,但是次要的。将团队互动作为组织诊断概念,最终的框架将对人类和机器进行并行评估,分析他们的个人能力,而不是纯粹的人类或机器质量,而是通过对整个团队的贡献来分析。这种处理方法反映了机器能力的增强,并且随着机器发展到行使更多的权力和责任,将允许继续相关。该框架允许识别影响团队绩效和效率的人机团队的特定特征,并为在特定场景中进行操作提供基础。这项研究的潜在应用包括测试和评估依赖于人类系统交互的复杂系统,包括(但不限于)自动驾驶汽车、指挥和控制系统以及飞行员控制系统。
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A team‐centric metric framework for testing and evaluation of human‐machine teams
Abstract We propose and present a parallelized metric framework for evaluating human‐machine teams that draws upon current knowledge of human‐systems interfacing and integration but is rooted in team‐centric concepts. Humans and machines working together as a team involves interactions that will only increase in complexity as machines become more intelligent, capable teammates. Assessing such teams will require explicit focus on not just the human‐machine interfacing but the full spectrum of interactions between and among agents. As opposed to focusing on isolated qualities, capabilities, and performance contributions of individual team members, the proposed framework emphasizes the collective team as the fundamental unit of analysis and the interactions of the team as the key evaluation targets, with individual human and machine metrics still vital but secondary. With teammate interaction as the organizing diagnostic concept, the resulting framework arrives at a parallel assessment of the humans and machines, analyzing their individual capabilities less with respect to purely human or machine qualities and more through the prism of contributions to the team as a whole. This treatment reflects the increased machine capabilities and will allow for continued relevance as machines develop to exercise more authority and responsibility. This framework allows for identification of features specific to human‐machine teaming that influence team performance and efficiency, and it provides a basis for operationalizing in specific scenarios. Potential applications of this research include test and evaluation of complex systems that rely on human‐system interaction, including—though not limited to—autonomous vehicles, command and control systems, and pilot control systems.
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来源期刊
Systems Engineering
Systems Engineering 工程技术-工程:工业
CiteScore
5.10
自引率
20.00%
发文量
0
审稿时长
6 months
期刊介绍: Systems Engineering is a discipline whose responsibility it is to create and operate technologically enabled systems that satisfy stakeholder needs throughout their life cycle. Systems engineers reduce ambiguity by clearly defining stakeholder needs and customer requirements, they focus creativity by developing a system’s architecture and design and they manage the system’s complexity over time. Considerations taken into account by systems engineers include, among others, quality, cost and schedule, risk and opportunity under uncertainty, manufacturing and realization, performance and safety during operations, training and support, as well as disposal and recycling at the end of life. The journal welcomes original submissions in the field of Systems Engineering as defined above, but also encourages contributions that take an even broader perspective including the design and operation of systems-of-systems, the application of Systems Engineering to enterprises and complex socio-technical systems, the identification, selection and development of systems engineers as well as the evolution of systems and systems-of-systems over their entire lifecycle. Systems Engineering integrates all the disciplines and specialty groups into a coordinated team effort forming a structured development process that proceeds from concept to realization to operation. Increasingly important topics in Systems Engineering include the role of executable languages and models of systems, the concurrent use of physical and virtual prototyping, as well as the deployment of agile processes. Systems Engineering considers both the business and the technical needs of all stakeholders with the goal of providing a quality product that meets the user needs. Systems Engineering may be applied not only to products and services in the private sector but also to public infrastructures and socio-technical systems whose precise boundaries are often challenging to define.
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