多工序递阶的差别化纤维成纱质量智能控制
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为实现差别化纤维纺纱质量的智能控制,分析差别化纤维成纱断裂机理和影响断裂强度波动的关键因素;通过以断裂强度为关键质量控制指标设计质量控制点与质量损失函数,提出了多工序递阶
邵景峰,马创涛,王蕊超,王希尧,牛一凡
(西安工程大学 管理学院,西安    710048)
 
摘要:为实现差别化纤维纺纱质量的智能控制,分析差别化纤维成纱断裂机理和影响断裂强度波动的关键因素;通过以断裂强度为关键质量控制指标设计质量控制点与质量损失函数,提出了多工序递阶的知识关联方法;以质量损失函数为目标函数构建基于多工序递阶的质量控制模型,并利用多目标烟花算法求解;纺R/T 80/20 19.5 tex纱的结果表明,该质量控制模型能实现差别化纤维纱断裂强度的多工序控制,利于解决质量特征值之间“输入—输出”关系的非线性化问题,该模型的控制结果与未考虑知识关联以及控制前的2个结果比较,其纱线断裂强度提高1.27%和3.40%,因纱线断裂强度不达标导致的纱线不合格率降低了23.48%和50.00%;指出下一步研究的重点是差别化纤维纺纱质量自主控制技术及其系统。
关键词:差别化纤维;断裂强度;多工序递阶;智能控制;质量损失
中图分类号:TS103.2   文献标志码:A    文章编号:1001-9634(2019)S1-0001-09
 
收稿日期:2018-08-20
基金项目:中国纺织之光科技教育基金会应用基础研究项目(J201508);中国纺织工业联合会指导性计划项目(2016076);陕西省教育厅服务地方科学研究项目(16JF009);陕西省重点研发计划项目(2017GY-039);西安市科技计划项目[2017074CG/RC037(XAGC005)];西安工程大学研究生创新基金项目(CX201731)
作者简介:邵景峰(1980—),男,甘肃定西人,博士,副教授,主要从事智能信息处理方面的研究。
网络出版时间:2018-08-27 09:34
http://www.cnki.net/kcms/detail/61.1131.TS.20180827.0934.026.html
 
Intelligent Control of Yarn Quality of Differential Fiber with Multiple Step Progression
SHAO Jingfeng,MA Chuangtao,WANG Ruichao,WANG Xiyao,NIU Yifan
(School of Management of Xi’an Polytechnic University,Xi’an 710048,China)
 
Abstract:In order to control the spinning quality of differential fiber intelligently,the fracture mechanism and the key factors affecting the fluctuation of breaking strength are analyzed.By taking the breaking strength as the key quality control index,the quality control point and the quality loss function are designed,and the knowledge correlation method with multiple step progression is put forward.Taking the quality loss function as the objective function,the quality control model based on multiple step progression hierarchical is constructed and solved by multi-objective fireworks algorithm.The results of spinning yarn R/T 80/20 19.5 tex show that the quality control model can implement differential fibre yarn breaking strength of process control,more conducive to solve the quality characteristic value of the “input-output” relationship between nonlinear problem,and compared with 2 results of no cnosideration of knowledge and before control,the model control yarn breaking strength increased by 1.27% and 3.40%,as a result of yarn breaking strength is not up to standard of yarn not qualified rate was reduced by 23.48% and 50.00%.It is pointed out that the key point of next step research is the independent quality control technology and system of differential fiber spinning .
Key Words:differential fiber;breaking strength;multiple step progression;intelligent control;quality loss
 
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