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工程设计学报  2017, Vol. 24 Issue (4): 449-458    DOI: 10.3785/j.issn.1006-754X.2017.04.012
建模、分析、优化和决策     
基于BP神经网络和FPA的高速干切滚齿工艺参数低碳优化决策
钟健, 阎春平, 曹卫东, 陈诚
重庆大学 机械传动国家重点实验室, 重庆 400030
Low carbon optimization decision for high-speed dry hobbing process parameters based on BP neural networks and FPA
ZHONG Jian, YAN Chun-ping, CAO Wei-dong, CHEN Cheng
State Key Laboratory of Mechanical Transmission, Chongqing University, Chongqing 400030, China
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摘要:

为解决高速干切滚齿工艺参数决策中存在的主观依赖性强和用时较长的问题,并实现滚齿加工低碳化,提出一种基于实例推理和优化算法的高速干切滚齿工艺参数低碳优化决策方法。利用反向传播(back propagation,BP)神经网络构建加工效果评价值的预测模型,通过改进K-means聚类算法获取待决策工艺问题的相似实例抽取集,以此构建待优化工艺参数约束,再运用花朵授粉算法(flower pollination algorithm,FPA),以碳耗最小为优化目标,获取待决策工艺问题的最优工艺参数。以某企业高速干切滚齿机为例,验证了该方法的可行性和有效性。使用该方法生成的工艺参数,加工效果更好,碳耗更低,可避免对工艺手册或个人经验的依赖,提高决策效率。研究结果有利于高速干切滚齿机的低碳运行,对机械制造企业实现低碳制造具有一定的参考意义。

关键词: 高速干切滚齿工艺参数低碳BP神经网络花朵授粉算法    
Abstract:

Aiming at some problems of high subjective dependence and long time consuming in the process of high speed dry hobbing process parameters decision, a low carbon optimization decision method for high speed dry hobbing process parameters based on case-based reasoning (CBR) and optimization algorithms was proposed.At the same time,it was a method to achieve the low carbon of the hobbing processing.At the beginning,a back propagation (BP) neural net-works model was established based on the cases of high speed hobbing process,which could pre-dict the machining effect evaluation of hobbing processing.In addition,an improved K-means al-gorithm was used to obtain the similarity example extraction set for target process problem,and several process solutions were obtained to construct process parameter constraints.Moreover,the flower pollination algorithm (FPA) was applied to search the optimal process parameters for tar -get process problems,which took the minimum carbon consumption of the hobbing processing as the optimization objective.A high speed dry hobbing machine in an enterprise was used as an in -stance to verify the feasibility and effectiveness of proposed method.The experimental results in-dicate that the proposed optimization method is a very useful tool for achieving lower energy consumption and better processing effect.The method can also effectively avoid relying on process manuals,personal experience or cutting experiments so as to improve decision efficiency.Moreo-ver,the results also show that it is conducive to achieve high performance and low carbon operation of high speed dry cutting hobbing machine,which can provide important reference value for ma-chinery manufacturing enterprises to achieve low carbon manufacturing.

Key words: high speed dry hobbing    process parameters    low carbon    BP neural networks    flower pollination algorithm
收稿日期: 2017-01-09 出版日期: 2017-08-28
CLC:  TH162  
基金资助:

国家自然科学基金资助项目(51575071)

通讯作者: 阎春平(1973-),男,江西南昌人,教授,博士,从事智能制造系统与装备、绿色制造、制造系统工程等研究,E-mail:ycp@cqu.edu.cn     E-mail: ycp@cqu.edu.cn
作者简介: 钟健(1991-),男,江西赣州人,硕士生,从事智能制造系统与装备、绿色制造等研究,E-mail:jzgf103@cqu.edu.cn,http://orcid.org/0000-0003-3528-7294
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引用本文:

钟健, 阎春平, 曹卫东, 陈诚. 基于BP神经网络和FPA的高速干切滚齿工艺参数低碳优化决策[J]. 工程设计学报, 2017, 24(4): 449-458.

ZHONG Jian, YAN Chun-ping, CAO Wei-dong, CHEN Cheng. Low carbon optimization decision for high-speed dry hobbing process parameters based on BP neural networks and FPA[J]. Chinese Journal of Engineering Design, 2017, 24(4): 449-458.

链接本文:

https://www.zjujournals.com/gcsjxb/CN/10.3785/j.issn.1006-754X.2017.04.012        https://www.zjujournals.com/gcsjxb/CN/Y2017/V24/I4/449

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