基于粒子群算法优化BP神经网络的产品质量预测分析
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引用本文:王超英 1 ,钟 辉 2.基于粒子群算法优化BP神经网络的产品质量预测分析[J].计算技术与自动化,2017,(3):92-95
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王超英 1 ,钟 辉 2 (1.东莞职业技术学院 计算机工程系广东 东莞 523808 2.广东汇兴精工智造股份有限公司广东 东莞 523000) 
中文摘要:产品制造的过程中存在较大的不确定性,从事前预测的角度出发,提出了一种结合现有产品合格率、合格率变化规律等相关数据,借助BP神经网络等数学建模思想,并加入粒子群算法加以改进的产品质量预测模型,此种预测模型与传统BP神经网络相比,通过与粒子群算法的优化结合,进一步提高了预测精度。
中文关键词:BP神经网络  改进  粒子群算法  产品质量预测
 
Forecast Analysis of Product Quality Based on BP Neural Network with Particle Swarm Optimization
Abstract:Owing to exist larger uncertainty in the process of product manufacturing,this paper proposed an improved prediction model of product quality joined particle swarm optimization using mathematical modeling thought,such as BP neural network,which is combined with existing product percent of pass,the qualified rate of change law and other relevant data.Compared with traditional BP neural network,new prediction model further improves the prediction accuracy through the combination with particle swarm optimization algorithm.
keywords:BP neural network  improvement  particle swarm optimization  prediction of product quality
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