互联的数字双胞胎与数字制造的未来:德尔福研究的启示

IF 10.1 1区 管理学 Q1 BUSINESS Journal of Product Innovation Management Pub Date : 2023-06-04 DOI:10.1111/jpim.12685
Marc van Dyck, Dirk Lüttgens, Frank T. Piller, Sebastian Brenk
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引用次数: 3

摘要

数字双胞胎(DT)是生产资产、流程或产品等现实世界实体的虚拟表示。它们在整个生命周期中以定义的保真度和频率进行更新,从开发和工程到产品或工艺的生产或实施,直到其使用阶段。互联数字双胞胎(IDT)是跨组织共享和连接的DT,目的是创建整个物理系统的整体模拟和决策模型。在本文中,我们研究了IDT如何塑造未来的数字制造场景并影响创新管理。我们展示了实时德尔菲研究的结果,分析了24个预测的定量和定性估计,预测了数字制造业的未来,预测范围为2030年。利用这些数据和制造公司IDT的22个额外用例,我们提出了一个基线场景,在该场景中,我们的Delphi小组达成了共识,代表了2030年数字制造的可能未来。通过分析我们的专家小组评估差异很大的预测,我们确定了可能影响数字化制造中变化、选择和控制维度创新管理的关键设计决策。我们解释了IDT将如何影响外部知识流入、工业数据空间的出现和治理,以及数据驱动和人工智能应用于预测和监管的潜力,以推动更好的决策和持续创新。
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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Interconnected digital twins and the future of digital manufacturing: Insights from a Delphi study

Digital twins (DTs) are virtual representations of real-world entities like production assets, processes, or products. They are updated at a defined fidelity and frequency along the entire life cycle from development and engineering over the production or implementation of a product or process until its usage stage. Interconnected digital twins (IDTs) are DTs shared and connected across organizations with the objective to create holistic simulation and decision models of an entire physical system. In this paper, we investigate how IDTs shape future digital manufacturing scenarios and impact innovation management. We present the results of a real-time Delphi study, analyzing quantitative and qualitative estimates on a set of 24 projections, forecasting the future of digital manufacturing with a projection horizon towards 2030. Using this data and 22 additional use cases of IDTs in manufacturing companies, we present a baseline scenario where our Delphi panel reached a consensus, representing a likely future of digital manufacturing in 2030. By analyzing projections where our expert panels' evaluations vary widely, we identify key design decisions that may impact innovation management along the dimensions of variation, choice, and control in digital manufacturing. We explain how IDTs will impact external knowledge inflows, the emergence and governance of industrial data spaces, and the potential of data-driven and AI-enabled applications for prediction and regulation to drive better decision-making and continuous innovation.

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来源期刊
Journal of Product Innovation Management
Journal of Product Innovation Management 管理科学-工程:工业
CiteScore
17.00
自引率
5.70%
发文量
42
审稿时长
6-12 weeks
期刊介绍: The Journal of Product Innovation Management is a leading academic journal focused on research, theory, and practice in innovation and new product development. It covers a broad scope of issues crucial to successful innovation in both external and internal organizational environments. The journal aims to inform, provoke thought, and contribute to the knowledge and practice of new product development and innovation management. It welcomes original articles from organizations of all sizes and domains, including start-ups, small to medium-sized enterprises, and large corporations, as well as from consumer, business-to-business, and policy domains. The journal accepts various quantitative and qualitative methodologies, and authors from diverse disciplines and functional perspectives are encouraged to submit their work.
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