Key Laboratory for Advanced Materials Processing Technology, Ministry of Education, Beijing, P.R. China.
Department of Mechanical Engineering, Tsinghua University, Beijing, P. R. China.
Sci Prog. 2021 Jan-Mar;104(1):36850421992609. doi: 10.1177/0036850421992609.
Accurate prediction of breakthrough extruding force is very important for extrusion production, especially for the large-scale extrusion process, which directly affects the production costs and safety. In this paper, based on the production data of the 360-million-newton-tonnage extruding machine, an artificial neural network (ANN) algorithm is used to establish the breakthrough extruding force prediction model for the large-scale extrusion process, and the calculation results are validated. Results show that the proposed model has high accuracy, and the average relative error between the predicted and experimental values is only 1.79%. Further, problems that are difficult to quantitative analyze such as die wear and glass powder residue in actual production, which can be regarded as "noises," are studied. Finally, the model presented is compared with the traditional finite element (FE) model. The accuracy of the ANN model is 10.2 times that of the FE model. Thus, the model established in the study fully considers the difference between actual production and theoretical analysis and provides an effective method for accurately predicting the breakthrough extruding force.
准确预测突破挤压力对于挤压生产非常重要,特别是对于大规模挤压过程,这直接影响生产成本和安全性。本文基于 3.6 亿牛顿挤压机的生产数据,使用人工神经网络(ANN)算法建立了大规模挤压过程的突破挤压力预测模型,并对计算结果进行了验证。结果表明,所提出的模型具有很高的准确性,预测值与实验值之间的平均相对误差仅为 1.79%。此外,研究了实际生产中难以定量分析的问题,如模具磨损和玻璃粉残留,可以将其视为“噪声”。最后,将提出的模型与传统有限元(FE)模型进行了比较。ANN 模型的准确性是 FE 模型的 10.2 倍。因此,本研究中建立的模型充分考虑了实际生产与理论分析之间的差异,为准确预测突破挤压力提供了一种有效方法。