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Regression modeling and prediction of road sweeping brush load characteristics from finite element analysis and experimental results

机译:基于有限元分析和实验结果的道路清扫刷载荷特性回归建模与预测

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摘要

Rotary cup brushes mounted on each side of a road sweeper undertake heavy debris removal tasks but the characteristics have not been well known until recently. A Finite Element (FE) model that can analyze brush deformation and predict brush characteristics have been developed to investigate the sweeping efficiency and to assist the controller design. However, the FE model requires large amount of CPU time to simulate each brush design and operating scenario, which may affect its applications in a real-time system. This study develops a mathematical regression model to summarize the FE modeled results. The complex brush load characteristic curves were statistically analyzed to quantify the effects of cross-section, length, mounting angle, displacement and rotational speed etc. The data were then fitted by a multiple variable regression model using the maximum likelihood method. The fitted results showed good agreement with the FE analysts results and experimental results, suggesting that the mathematical regression model may be directly used in a real-time system to predict characteristics of different brushes under varying operating conditions. The methodology may also be used in the design and optimization of rotary brush tools.
机译:安装在道路清扫车两侧的旋转杯刷承担着清除杂物的重任,但直到最近才知道其特性。已经开发出可以分析电刷变形并预测电刷特性的有限元(FE)模型,以研究扫地效率并协助控制器设计。但是,FE模型需要大量的CPU时间来模拟每个画笔的设计和操作方案,这可能会影响其在实时系统中的应用。这项研究开发了数学回归模型来总结有限元建模结果。对复杂的刷子载荷特性曲线进行统计分析,以量化横截面,长度,安装角度,位移和旋转速度等的影响。然后使用最大似然法通过多变量回归模型拟合数据。拟合结果显示出与有限元分析人员的结果和实验结果吻合良好,表明数学回归模型可以直接用于实时系统中,以预测不同工况下不同电刷的特性。该方法还可以用于旋转刷工具的设计和优化。

著录项

  • 来源
    《Waste Management》 |2015年第9期|19-27|共9页
  • 作者单位

    School of Mechanical and Automotive Engineering, Liaocheng University, China;

    School of Mechanical and Automotive Engineering, Liaocheng University, China;

    Department of Mechanical Construction and Production, Ghent University, Belgium;

    School of Mechanical & Electrical Engineering Beijing Information & Science Technology University, China;

    School of International Education, Liaocheng University, China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Brush; Road sweeping; Brush characteristics; Multi-variable regression;

    机译:刷;扫路;刷子特性;多变量回归;

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