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引用次数: 3

摘要

为了保证制造产品的恒定质量,当观察到工件质量出现故障时,有必要立即优化工艺参数。由于这种测量和过程参数的关系在大多数情况下是复杂和非线性的,因此通常由经验丰富的操作员手动关闭该反馈回路。本文引入了基于模糊模型的质量控制概念,实现了自动反馈。基于过程模型,控制器能够解释测量结果并调整过程参数。为了克服必须先建立复杂过程模型的问题,提出了一种学习方法。采用径向基函数作为隶属函数逼近控制律,通过卡尔曼滤波递归确定模型参数。将该方法应用于车削加工中工件几何形状和表面粗糙度的控制。
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A learning fuzzy control approach to improve manufacturing quality
To guarantee a constant quality of manufactured products, it is necessary to optimize the process parameters immediately when a failure of the workpiece quality has been observed. Since this relationship of measurement and process parameters is complex and nonlinear in most cases, this feedback loop is closed manually by an experienced operator in general. In the paper the concept of a fuzzy model based quality control is introduced, which allows automated feedback. Based on a process model, the controller is able to interpret the measurement and to adjust the process parameters. To overcome the problem, that a complex process model has to be developed first, a learning approach is presented. As membership functions radial basis functions are used to approximate the control law, and the model parameters are recursively determined by Kalman filtering. The method is applied to control workpiece geometry and surface roughness in a turning process.
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