数字孪生模拟生成助手

Procedia CIRP Pub Date : 2025-01-01 Epub Date: 2025-02-28 DOI:10.1016/j.procir.2025.01.022
Pedro Antonio Boareto , Eduardo de Freitas Rocha Loures , Eduardo Alves Portela Santos , Fernando Deschamps
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引用次数: 0

摘要

工业4.0的关键新兴技术之一是数字孪生(DT)。尽管它承诺提高效率、生产力和创新,但它的采用面临着诸如高投资成本和劳动力再认证需求等挑战。生成式人工智能(GAI)作为一种很有前途的解决方案出现了,它提供了加速开发过程和降低成本的能力。本研究旨在通过提出数字孪生仿真生成助手(GADTS),利用GAI来增强数字孪生仿真的发展,并支持工业环境中的决策。该建议快速生成操作模型,提供更大的定制,并促进用自然语言创建高效的场景模拟。这个建议经过了人工数据的检验。因此,具有关键性能指标(kpi)的高度个性化DT仿真的开发完全抽象为自然语言请求。
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Generative assistant for digital twin simulations
One of the key emerging technologies in Industry 4.0 is the Digital Twin (DT). Although it promises increased efficiency, productivity, and innovation, its adoption faces challenges such as high investment costs and the need for workforce requalification. Generative Artificial Intelligence (GAI) emerges as a promising solution, offering capabilities to accelerate development processes and reduce costs. This study aims to leverage GAI to enhance the development of DT and support decision-making in industrial environments by proposing a Generative Assistant for Digital Twin Simulations (GADTS). This proposal generates operational models quickly, offers greater customization, and facilitates the creation of efficient scenario simulations in natural language. The proposal was tested with artificial data. As a result, the development of highly personalized DT simulations with Key Performance Indicators (KPIs) was entirely abstracted into natural language requests.
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