Quality Prediction of Plasticizing and Molding Process of Single-Based Gun Propellant Based on GG-KECA-RVM Multi-Stage Model Fusion

Mingyi Yang, Zhigang Xu, Junyi Wang, Tingjiang Yu, Shubo Chen
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Abstract

Aiming at the non-linear, multi-stage and high dimension characteristics of the plasticizing and molding process of single-based gun propellant, a quality prediction method based on GG-KECA-RVM multi-stage model fusion is proposed. The method is based on Gath-Geva dynamic fuzzy clustering to identify the stages of the plasticizing and molding process. KECA is introduced for deep feature extraction in each stage, and the local latent variable regression models based on KECA-RVM are established for each sub-stage. Finally, the fuzzy membership degree of Gath-Geva clustering is used to fuse the prediction results of multiple local models, which reflects the difference and cumulative characteristics of each stage on the quality, and realizes the accurate prediction of stage quality and process endpoint quality. The experimental results of the plasticizing and molding process show the effectiveness of the proposed method.
基于GG-KECA-RVM多级模型融合的单基火炮推进剂塑化成型质量预测
针对单基火炮推进剂塑化成型过程非线性、多阶段、高维的特点,提出了一种基于GG-KECA-RVM多阶段模型融合的质量预测方法。该方法基于Gath-Geva动态模糊聚类来识别塑化和成型过程的各个阶段。在每个阶段引入KECA进行深度特征提取,并针对每个子阶段建立基于KECA- rvm的局部潜变量回归模型。最后,利用Gath-Geva聚类的模糊隶属度对多个局部模型的预测结果进行融合,反映各阶段质量的差异和累积特征,实现对阶段质量和过程端点质量的准确预测。塑化和成型过程的实验结果表明了该方法的有效性。
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