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工程设计学报  2016, Vol. 23 Issue (2): 181-187    DOI: 10.3785/j.issn.1006-754X.2016.02.012
建模、分析、优化和决策     
基于AFSA-SimpleMKL对振动筛建模及筛机优化
李占福, 童昕
华侨大学 机电及自动化学院, 福建 厦门 361021
Modeling and parameter optimization for vibrating screens based on AFSA-SimpleMKL
LI Zhan-fu, TONG Xin
College of Mechanical Engineering and Automation, Huaqiao University, Xiamen 361021, China
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摘要: 针对目前振动筛筛分性能差及筛分理论不完善,亟待建立筛机参数与筛分效率间综合数学模型来指导振动筛的设计.基于离散单元法(Discrete Element Method,DEM)的筛分仿真实验解决筛分过程的复杂性和筛分数据难获得等问题,用可调参数的振动筛对仿真实验进行验证.筛分效率与筛分参数之间的数学关系是一个复杂的非线性问题,由于传统的回归算法对筛分数学模型预测精度低,利用能有效解决小样本问题和基于统计学理论的简单多核支持向量机(Simple Multiple Kernel Learning,SimpleMKL)对仿真实验获得的数据建立回归模型.但其模型是多极值且不可微分的多参数大规模计算问题,借用鲁棒性强和全局收敛性好的人工鱼群优化算法(Artificial Fish Swarm Algorithm,AFSA)对由SimpleMKL建立的筛分回归模型进行参数寻优,得出筛机振动和结构参数:振幅为2.5 mm,振动频率为22 Hz,振动方向角为50°,筛孔大小为0.9 mm,筛丝直径为0.4 mm,筛面倾角为21.6°.提高了振动筛的筛分效率,为振动筛的设计和制造提供了新思路.
关键词: 离散单元法简单多核支持向量机人工鱼群算法参数优化建模筛分效率    
Abstract: In view of the poor screening efficiency of vibrating screens and the incomplete screening theory, a comprehensive mathematical model is need to be established to guide the design of vibrating screens. Screening simulation experiment based on the Discrete Element Method was applied to solve problems like the complexity of screening process and the difficulty to obtain the screening data, and its validity was verified by an experimental prototype with adjustable parameters. In principle, the mathematical relationship between screening efficiency and parameters was a complex non-linear problem, instead of being limited to low precision as the traditional regression algorithm was, the nonlinear regression model of vibration screen with designing the sample space of operation parameters and screen configurations based on Simple Multiple Kernel Learning was introduced. Considering multi-extremum, large-scale, and non-differentiable of this computational model, the artificial fish-swarm algorithm with strong robustness and global convergence was applied to parameters optimization. Finally, the optimal vibration parameters were as follows: vibration amplitude was 2.5 mm, frequency was 22 Hz, vibration direction angle was 50°, screen panel square hole dimensions was 0.9 mm, wire diameter was 0.45 mm, inclination was 21.6°. In summary, this methodology could be applied to the research of vibrating screen. Additionally, authors of the scheme are confident that the results will be useful to improve the design and manufacture of vibrating screen.
Key words: Discrete Element Method    SimpleMKL    artificial fish-swarm algorithm    parameter optimization    modeling    screening efficiency
收稿日期: 2015-10-27 出版日期: 2016-04-28
CLC:  TH12  
基金资助:

国家自然科学基金资助项目(51175190);福建省科技平台建设项目(2013H2003).

通讯作者: 童昕(1964—),男,教授,博士生导师,博士,从事机械设计等研究,E-mail:ccq@hqu.edu.cn.     E-mail: ccq@hqu.edu.cn
作者简介: 李占福(1987—),男,河北衡水人,博士生,从事计算机辅助设计等研究,E-mail:1300103008@hqu.edu.cn.http://orcid.org//0000-0002-8525-1583
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引用本文:

李占福, 童昕. 基于AFSA-SimpleMKL对振动筛建模及筛机优化[J]. 工程设计学报, 2016, 23(2): 181-187.

LI Zhan-fu, TONG Xin. Modeling and parameter optimization for vibrating screens based on AFSA-SimpleMKL. Chinese Journal of Engineering Design, 2016, 23(2): 181-187.

链接本文:

https://www.zjujournals.com/gcsjxb/CN/10.3785/j.issn.1006-754X.2016.02.012        https://www.zjujournals.com/gcsjxb/CN/Y2016/V23/I2/181

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