燃烧室
生成语法
人工神经网络
计算机科学
可逆矩阵
燃气轮机
人工智能
机械工程
工程类
数学
燃烧
化学
有机化学
纯数学
作者
Patrick Felix Krüger,Hanno Gottschalk,Bastian Werdelmann,Werner Krebs
标识
DOI:10.1115/gt2024-123963
摘要
Abstract The need to burn 100% H2 in high efficient gas turbines featuring low NOx combustion in premix mode require the complete redesign of the combustion system to ensure stable operation without any flashback. Since all engine frames featuring a power range from 4 MW up to 600 MW are affected, a huge design effort is expected. To reduce this effort, especially to transfer knowledge between the different engine classes, generative design methods using latest AI technology will provide promising potential. In this work, this challenge is approached utilizing the current advances in generative artificial intelligence. We train an In-vertible Neural Network (INN) on an expandable database of geometrically parameterized combustor designs with simulated performance labels. Utilizing the INN in its inverse direction, multiple design proposals are generated which fulfill specified performance labels.
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