Quality Characteristics of a Software Platform for Human-AI Teaming in Smart Manufacturing

Philipp Haindl, T. Hoch, Javier Dominguez, Julen Aperribai, N. K. Ure, Mehmet Tunçel
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引用次数: 1

Abstract

. As AI-enabled software systems become more prevalent in smart manufacturing, their role shifts from a reactive to a proactive one that provides context-specific support to machine operators. In the context of an international research project, we develop an AI-based software platform that shall facilitate the collaboration between human operators and manufacturing machines. We conducted 14 structured interviews with stakeholders of the prospective software platform in order to determine the individual relevance of selected quality characteristics for human-AI teaming in smart manufacturing. These characteristics include the ISO 25010:2011 standard for software quality and AI-specific quality characteristics such as trustworthiness, explicability, and auditability. The interviewees rated trustworthiness, functional suitability, reliability, and security as the most important quality characteristics for this context, and portability, compatibility, and maintainability as the least important. Also, we observed agreement regarding the relevance of the quality characteristics among interviewees having the same role. On the other hand, the relevance of each quality characteristics varied depending on the concrete use case of the prospective software platform. The interviewees also were asked about the key success factors related to human-AI teaming in smart manufacturing. They identified improving the production cycle, increasing operator efficiency, reducing scrap, and reducing ergonomic risks as key success criteria. In this paper, we also discuss metrics for measuring the fulfillment of these quality characteristics, which we intend to operationalize and monitor during operation of the prospective software platform. Trustworthiness Explicability · Auditability. of an AI-based software platform for human-AI teaming in smart manufacturing.
智能制造中人机协作软件平台的质量特征
. 随着支持人工智能的软件系统在智能制造中变得越来越普遍,它们的角色从被动转变为主动,为机器操作员提供特定情境的支持。在一个国际研究项目的背景下,我们开发了一个基于人工智能的软件平台,该平台将促进人类操作员和制造机器之间的协作。我们对未来软件平台的利益相关者进行了14次结构化访谈,以确定智能制造中人类-人工智能团队所选择的质量特征的个体相关性。这些特征包括ISO 25010:2011软件质量标准和人工智能特定的质量特征,如可信度、可解释性和可审核性。受访者将可信度、功能适用性、可靠性和安全性评为该环境中最重要的质量特征,而将可移植性、兼容性和可维护性评为最不重要的。此外,我们观察到关于具有相同角色的受访者之间质量特征的相关性的协议。另一方面,每个质量特征的相关性取决于未来软件平台的具体用例。受访者还被问及与智能制造中人类-人工智能团队相关的关键成功因素。他们认为改善生产周期、提高操作效率、减少废料和降低人体工程学风险是成功的关键标准。在本文中,我们还讨论了度量这些质量特征的实现的度量,我们打算在未来软件平台的运行过程中对其进行操作和监控。可信赖性、可解释性·可审计性。一个基于人工智能的软件平台,用于智能制造中的人机协作。
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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