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基于有限元模拟和神经网络的压电喷射系统设计智能优化方法

Intelligent Optimization Method of Piezoelectric Ejection System Design Based on Finite Element Simulation and Neural Network.

作者信息

Li Xin, Zhao Yongsheng

机构信息

Department of Materials and Manufacturing, Beijing University of Technology, Beijing, China.

出版信息

3D Print Addit Manuf. 2024 Jun 18;11(3):e1073-e1086. doi: 10.1089/3dp.2022.0286. eCollection 2024 Jun.

Abstract

This study describes an intelligent method for modeling and optimization of piezoelectric ejection system design for additive manufacturing. It is a combination of neural network (NN) techniques and finite element simulation (FES) that allows designing each parameter of a piezoelectric ejection system faster and more reliably than conventional methods. Using experimental and literature data, a FE model of the droplet ejection process was developed and validated to predict two indexes of droplet ejection behavior (DEB): jetting velocity and droplet diameter. Two artificial neural network (ANN) models based on feed-forward back propagation were developed and optimized by genetic algorithm (GA). A database was established by FE calculations, and the models were trained to establish the relationship between the piezoelectric ejection system design input parameters and each DEB indicator. The results show that both NN models can independently predict the droplet jetting velocity and droplet diameter values from the training and testing data with high accuracy to determine the optimal piezoelectric ejection system design. Finally, the accuracy of the prediction results of the FES and ANN-GA models was verified experimentally. It was found that the errors between the predicted and experimental results were 4.48% and 3.18% for the jetting velocity and droplet diameter, respectively, verifying that the optimization method is reliable and robust for piezoelectric ejection system design optimization.

摘要

本研究描述了一种用于增材制造的压电喷射系统设计建模与优化的智能方法。它是神经网络(NN)技术和有限元模拟(FES)的结合,与传统方法相比,能够更快、更可靠地设计压电喷射系统的每个参数。利用实验和文献数据,建立并验证了液滴喷射过程的有限元模型,以预测液滴喷射行为(DEB)的两个指标:喷射速度和液滴直径。开发了基于前馈反向传播的两个人工神经网络(ANN)模型,并通过遗传算法(GA)进行了优化。通过有限元计算建立了一个数据库,并对模型进行训练,以建立压电喷射系统设计输入参数与每个DEB指标之间的关系。结果表明,两个神经网络模型都能从训练和测试数据中高精度地独立预测液滴喷射速度和液滴直径值,从而确定最优的压电喷射系统设计。最后,通过实验验证了有限元模拟和人工神经网络-遗传算法模型预测结果的准确性。结果发现,喷射速度和液滴直径的预测结果与实验结果之间的误差分别为4.48%和3.18%,验证了该优化方法在压电喷射系统设计优化中是可靠且稳健的。

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本文引用的文献

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Anomaly Detection in Fused Filament Fabrication Using Machine Learning.基于机器学习的熔丝制造中的异常检测
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