Generative manufacturing systems using diffusion models and ChatGPT
- URL: http://arxiv.org/abs/2405.00958v2
- Date: Wed, 08 Jan 2025 23:16:20 GMT
- Title: Generative manufacturing systems using diffusion models and ChatGPT
- Authors: Xingyu Li, Fei Tao, Wei Ye, Aydin Nassehi, John W. Sutherland,
- Abstract summary: Generative Manufacturing Systems (GMS) is a novel approach to effectively manage and coordinate autonomous manufacturing assets.
GMS employs generative AI, including diffusion models and ChatGPT, for implicit learning from envisioned futures.
The study underscores the inherent creativity and diversity in the generated solutions, facilitating human-centric decision-making.
- Score: 13.877460292768946
- License:
- Abstract: In this study, we introduce Generative Manufacturing Systems (GMS) as a novel approach to effectively manage and coordinate autonomous manufacturing assets, thereby enhancing their responsiveness and flexibility to address a wide array of production objectives and human preferences. Deviating from traditional explicit modeling, GMS employs generative AI, including diffusion models and ChatGPT, for implicit learning from envisioned futures, marking a shift from a model-optimum to a training-sampling decision-making. Through the integration of generative AI, GMS enables complex decision-making through interactive dialogue with humans, allowing manufacturing assets to generate multiple high-quality global decisions that can be iteratively refined based on human feedback. Empirical findings showcase GMS's substantial improvement in system resilience and responsiveness to uncertainties, with decision times reduced from seconds to milliseconds. The study underscores the inherent creativity and diversity in the generated solutions, facilitating human-centric decision-making through seamless and continuous human-machine interactions.
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