Accelerated Design and Deployment of Low-Carbon Concrete for Data Centers

Xiou Ge, Richard Goodwin, Haizi Yu, Pablo Romero, Omar Abdelrahman, Amruta Sudhalkar, J. Kusuma, Ryan Cialdella, Nakul Garg, L. Varshney
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引用次数: 4

Abstract

Concrete is the most widely used engineered material in the world with more than 10 billion tons produced annually. Unfortunately, with that scale comes a significant burden in terms of energy, water, and release of greenhouse gases and other pollutants; indeed 8% of worldwide carbon emissions are attributed to the production of cement, a key ingredient in concrete. As such, there is interest in creating concrete formulas that minimize this environmental burden, while satisfying engineering performance requirements including compressive strength. Specifically for computing, concrete is a major ingredient in the construction of data centers. In this work, we use conditional variational autoencoders (CVAEs), a type of semi-supervised generative artificial intelligence (AI) model, to discover concrete formulas with desired properties. Our model is trained just using a small open dataset from the UCI Machine Learning Repository joined with environmental impact data from standard lifecycle analysis. Computational predictions demonstrate CVAEs can design concrete formulas with much lower carbon requirements than existing formulations while meeting design requirements. Next we report laboratory-based compressive strength experiments for five AI-generated formulations, which demonstrate that the formulations exceed design requirements. The resulting formulations were then used by Ozinga Ready Mix—a concrete supplier—to generate field-ready concrete formulations, based on local conditions and their expertise in concrete design. Finally, we report on how these formulations were used in the construction of buildings and structures in a Meta data center in DeKalb, IL, USA. Results from field experiments as part of this real-world deployment corroborate the efficacy of AI-generated low-carbon concrete mixes.
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数据中心低碳混凝土的加速设计和部署
混凝土是世界上使用最广泛的工程材料,年产量超过100亿吨。不幸的是,这种规模带来了能源、水、温室气体和其他污染物排放方面的沉重负担;事实上,全球8%的碳排放来自水泥的生产,水泥是混凝土的关键成分。因此,在满足包括抗压强度在内的工程性能要求的同时,人们有兴趣创建混凝土公式,以最大限度地减少这种环境负担。特别是对于计算,混凝土是构建数据中心的主要成分。在这项工作中,我们使用条件变分自编码器(CVAEs),一种半监督生成式人工智能(AI)模型,来发现具有所需属性的具体公式。我们的模型仅使用来自UCI机器学习存储库的小型开放数据集以及来自标准生命周期分析的环境影响数据进行训练。计算预测表明,CVAEs可以设计出比现有配方碳要求低得多的混凝土配方,同时满足设计要求。接下来,我们报告了五种人工智能生成配方的实验室抗压强度实验,结果表明配方超出了设计要求。随后,混凝土供应商Ozinga Ready mix根据当地条件和他们在混凝土设计方面的专业知识,使用所得配方生成现场可用的混凝土配方。最后,我们报告了这些公式是如何在美国伊利诺伊州DeKalb的元数据中心的建筑物和结构的建设中使用的。作为实际部署的一部分,现场实验的结果证实了人工智能生成的低碳混凝土混合物的有效性。
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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