Joynt Veda, Cooper Jacob, Bhargava Naman, Vu Katie, Kwon O Hwang, Allen Todd R, Verma Aditi, Radaideh Majdi I
Department of Nuclear Engineering and Radiological Sciences, University of Michigan, Ann Arbor, MI, 48109, USA.
Department of Statistics, University of Michigan, Ann Arbor, MI, 48109, USA.
Sci Rep. 2024 Dec 5;14(1):30377. doi: 10.1038/s41598-024-79705-4.
In this work, we propose and assess the potential of generative artificial intelligence (AI) as a tool for facilitating public engagement around potential clean energy sources. Such an application could increase energy literacy-an awareness of low-carbon energy sources among the public therefore leading to increased participation in decision-making about the future of energy systems. We explore the use of generative AI to communicate technical information about low-carbon energy sources to the general public, specifically in the realm of nuclear energy. We explored 20 AI-powered text-to-image generators and compared their individual performances on general and scientific nuclear-related prompts. Of these models, DALL-E, DreamStudio, and Craiyon demonstrated promising performance in generating relevant images from general-level text related to nuclear topics. However, these models fall short in three crucial ways: (1) they fail to accurately represent technical details of energy systems; (2) they reproduce existing biases surrounding gender and work in the energy sector; and (3) they fail to accurately represent indigenous landscapes-which have historically been sites of resource extraction and waste deposition for energy industries. This work is performed to motivate the development of specialized generative tools to improve energy literacy and effectively engage the public with low-carbon energy sources.
在这项工作中,我们提出并评估生成式人工智能(AI)作为一种促进公众参与围绕潜在清洁能源的工具的潜力。这样的应用可以提高能源素养——公众对低碳能源的认识,从而导致公众更多地参与能源系统未来的决策。我们探索使用生成式人工智能向公众传达有关低碳能源的技术信息,特别是在核能领域。我们研究了20个由人工智能驱动的文本到图像生成器,并比较了它们在一般和科学核相关提示下的各自表现。在这些模型中,DALL-E、DreamStudio和Craiyon在从与核主题相关的一般水平文本生成相关图像方面表现出了有前景的性能。然而,这些模型在三个关键方面存在不足:(1)它们未能准确呈现能源系统的技术细节;(2)它们重现了围绕能源领域性别和工作的现有偏见;(3)它们未能准确呈现本土景观——这些景观在历史上一直是能源行业资源开采和废物处置的场所。开展这项工作是为了推动开发专门的生成工具,以提高能源素养并有效地让公众参与到低碳能源中来。