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Nonparametric Modeling and Parameter Optimization of Multistage Synchronous Induction Coilgun

机译:多级同步感应线圈枪的非参数建模与参数优化

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摘要

The launching process of multistage synchronous induction coilgun (MSSICG) is a complex process involving multifield coupling, so it is time-consuming to iteratively optimize its structural parameters by stochastic optimization algorithm. A nonlinear regression modeling method of MSSICG based on mainstream machine learning methods is proposed in this paper. Rooted in the current filament model (CFM) verified by prototype experiment, the sample set for training and testing could be obtained by a hybrid experimental design method. The least-squares support vector machine (LSSVM), the kernel extreme learning machine (KELM), and the eco state network (ESN) were employed to learn the training samples. In order to improve the accuracy of the prediction model, the chicken swarm optimization (CSO) was introduced to pretrain the hyperparameters of the LSSVM and the KELM as well as the parameters of the dynamic reservoir of the ESN. The results show that the predictive modeling of MSSICG based on CSO-KELM has better accuracy and generalization performance. Based on the obtained regression model, the CSO algorithm was used to optimize the structural parameters of a five-stage coilgun. It turns out that the optimization based on nonparametric model has higher computational efficiency than the optimization method which requires large-scale iterative calculation. This provides a novel idea for the engineering design of the MSSICG.
机译:多级同步感应线圈枪(MSSICG)的发射过程是一个涉及多场耦合的复杂过程,因此通过随机优化算法迭代优化其结构参数是很费时的。提出了一种基于主流机器学习方法的MSSICG非线性回归建模方法。根植于通过原型实验验证的当前细丝模型(CFM),可以通过混合实验设计方法获得用于训练和测试的样本集。使用最小二乘支持向量机(LSSVM),内核极限学习机(KELM)和生态状态网络(ESN)来学习训练样本。为了提高预测模型的准确性,引入了鸡群优化算法(CSO)对LSSVM和KELM的超参数以及ESN动态储层的参数进行预训练。结果表明,基于CSO-KELM的MSSICG预测模型具有较好的准确性和泛化性能。基于获得的回归模型,使用CSO算法优化了五级螺旋炮的结构参数。结果表明,与需要大规模迭代计算的优化方法相比,基于非参数模型的优化具有更高的计算效率。这为MSSICG的工程设计提供了一个新颖的想法。

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