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Multi-Objective Optimization of Injection Molding Based on Optimal Latin Hypercube Sampling Method and NSGA-II Algorithm
更新时间:2024-01-31
    • Multi-Objective Optimization of Injection Molding Based on Optimal Latin Hypercube Sampling Method and NSGA-II Algorithm

    • Engineering Plastics Application   Issue 3, (2020)
    • DOI:10.3969/j.issn.1001-3539.2020.03.013    

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    • Published:2020

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  • Ji Ning, Zhang Weixing, Yu Yangyang, et al. Multi-Objective Optimization of Injection Molding Based on Optimal Latin Hypercube Sampling Method and NSGA-II Algorithm[J]. Engineering Plastics Application, 2020, (3). DOI: 10.3969/j.issn.1001-3539.2020.03.013.

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