Bulletin of the Chinese Ceramic Society, Volume. 43, Issue 10, 3645(2024)
Multi-Objective Intelligent Optimization Design Method Based on NSGA-II High Performance Concrete Mix Proportion
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HU Yichan, WENG Yiling, CHI Hao, HU Lei, PENG Hao, LIANG Jian, ZHOU Fujian, HUANG Wensheng, XIE Weiwei. Multi-Objective Intelligent Optimization Design Method Based on NSGA-II High Performance Concrete Mix Proportion[J]. Bulletin of the Chinese Ceramic Society, 2024, 43(10): 3645
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Received: Jan. 6, 2024
Accepted: Jan. 17, 2025
Published Online: Jan. 17, 2025
The Author Email: Weiwei XIE (ww.xie@foxmail.com)
CSTR:32186.14.