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利用神经网络预测注塑成型过程熔融温度
引用本文:王保国,高福荣,余宝乐.利用神经网络预测注塑成型过程熔融温度[J].中国化学工程学报,2000,8(4):326-331.
作者姓名:王保国  高福荣  余宝乐
作者单位:DepartmentofChemicalEngineering,HongKongUniversityofScienceandTechnology,ClearWaterBay,Kowloon,HongKong,China
摘    要:Among the processing conditions of injection molding, temperature of the melt entering the mold plays a significant role in determining the quality of molded parts. In our previous research, a neural network was developed to predict the melt temperature in the barrel during the plastication phase. In this paper, a neural network is proposed to predict the melt temperature at the nozzle exit during the injection phase. A typical two-layer neural network with back propagation learning rules is used to model the relationship between input and output in the injection phase. The preliminary results show that the network works well and may be used for on-line optimization and control of injection molding processes.

关 键 词:神经网络  测定  注塑成型  成型过程  熔融温度  塑料加工
修稿时间: 

Neural Network Approach to Predict Melt Temperature in Injection Molding Processes
WANG Baoguo,GAO Furong,YUE Polock.Neural Network Approach to Predict Melt Temperature in Injection Molding Processes[J].Chinese Journal of Chemical Engineering,2000,8(4):326-331.
Authors:WANG Baoguo  GAO Furong  YUE Polock
Affiliation:Department of Chemical Engineering, Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong, China
Abstract:Among the processing conditions of injection molding, temperature of the melt entering the mold plays a significant role in determining the quality of molded parts. In our previous research, a neural network was developed to predict the melt temperature in the barrel during the plastication phase. In this paper, a neural network is proposed to predict the melt temperature at the nozzle exit during the injection phase. A typical two-layer neural network with back propagation learning rules is used to model the relationship between input and output in the injection phase. The preliminary results show that the network works well and may be used for on-line optimization and control of injection molding processes.
Keywords:injection molding  neural network  melt temperature
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