Data-Driven Design for Targeted Regulation of Heat Transfer in Carbon/Carbon Composite Structure
JOURNAL OF THERMAL SCIENCE(2024)
摘要
Targeted regulation of heat transfer in carbon/carbon composite structure is built for cooling electronic device. A three-dimensional data-driven design model coupling genetic algorithm (GA) with self-adaption deep learning for targeted regulation of heat transfer in built structure is proposed. The self-adaption deep learning model predicts the temperature of built structure closer to optimal value in GA model. The distributions of pore and carbon fiber bundles in built structure are optimized by the proposed model. The surface temperature of electronic device in the optimized structures is 19.1
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关键词
targeted regulation of heat transfer,self-adaption deep learning,genetic algorithm,carbon/carbon composite structure
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