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Fuzzy Petri nets with neural networks to model products quality from a CNC-milling machining centre

机译:具有神经网络的模糊Petri网可从CNC铣削加工中心对产品质量进行建模

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摘要

This paper presents a Petri net approach for the modeling of a CNC-milling machining centre. Next, by utilizing fuzzy logic with Petri nets (fuzzy Petri nets), a technique based on 9 fuzzy rules is developed. This paper demonstrates how fuzzy input variables, fuzzy marking, fuzzy firing sequences, and a global output variable should be defined for use with fuzzy Petri nets. The technique employs two fuzzy input variables (spindle speed and feed rate), throughout the milling operation in order to determine surface roughness. Additionally, a fuzzy Petri net is used with an artificial neural network for the modeling and control of surface roughness. Experimental results illustrate that the technique developed can be of benefit when the cutting tool has suffered damage throughout the milling operation. It also shows how the technique can react when the quality is high, medium, or low. The surface roughness represents the quality specification of products from the CNC-milling machining centre.
机译:本文介绍了一种用于数控铣削加工中心建模的Petri网方法。接下来,通过利用带有Petri网(模糊Petri网)的模糊逻辑,开发了一种基于9条模糊规则的技术。本文演示了如何定义模糊输入变量,模糊标记,模糊触发序列和全局输出变量,以与模糊Petri网一起使用。该技术在整个铣削过程中采用两个模糊输入变量(主轴速度和进给速度)以确定表面粗糙度。此外,模糊Petri网与人工神经网络一起用于表面粗糙度的建模和控制。实验结果表明,当切削工具在整个铣削操作中遭受损坏时,开发的技术可能会受益。它还显示了该技术在高,中或低质量时如何反应。表面粗糙度代表了CNC铣削加工中心产品的质量规格。

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