基于凝固前沿演变特征的熔铸装药成型工艺参数智能优化

Huanxiong Xia, Kang Li, Feng Gao, Jianhua Liu, Xiaohui Ao*

*此作品的通讯作者

科研成果: 期刊稿件文章同行评审

摘要

Melt-cast explosive processes present a significant correlation among the profile features of solidification front during the molding process and the shrinkage cavity and porosity defects within the grain after molding. To improve the molding quality of melt-cast explosive, an indictor representing the solidification front profile is defined, and the correlations among the indictor and the defects, such as shrinkage cavity / porosity volume and maximum porosity, of the grain, are examined. A surrogate model is developed based on a B-spline neural network model that describes the relationship between the key process parameters and the two-dimensional transient temperature field of melt-cast explosive, and the neural network is trained using a simulated dataset. The key process parameters of melt-cast explosive are then optimized using a genetic algorithm with the aim of maximizing the indicator of solidification front. The results show that the quality parameters of shrinkage cavity / porosity volume and maximum porosity of the grain decrease from 19. 832 mm3 and 4. 71% to 3. 129 mm3 and 0. 66%, respectively, as the process parameters are optimized from P0 = [100, 85, 0. 25, 0. 25, 90, 5, 0. 6]T to P* = [91. 725, 94. 961, 0. 498, 0. 151, 100, 6, 0. 595]T, and a fast prediction and optimization for the molding quality of melt-cast explosive are achieved. The proposed method can provide new ideas and strategies for the process optimization of melt-casting explosives and contribute the solutions for the development of high-performance melt-casting explosives, which can be referred to improving the production efficiency, reducing the costs, and ensuring the consistency of molding quality.

投稿的翻译标题Intelligent Optimization for Forming Quality of Melt-cast Explosives Based on the Evolution Characteristics of Solidification Front
源语言繁体中文
页(从-至)2936-2950
页数15
期刊Binggong Xuebao/Acta Armamentarii
45
9
DOI
出版状态已出版 - 30 9月 2024

关键词

  • B-spline neural network
  • genetic algorithm
  • melt-cast explosive
  • process parameter optimization
  • solidification front

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