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Tool Wear Condition Monitoring Using A Sensor Fusion Model Based On Fuzzy Inference System

机译:基于模糊推理系统的传感器融合模型刀具磨损状态监测

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One of the biggest problems in manufacturing is the failure of machine tools due to loss of surface material in cutting operations like drilling and milling. Carrying on the process with a dull tool may damage the workpiece material fabricated. On the other hand, it is unnecessary to change the cutting tool if it is still able to continue cutting operation. Therefore, an effective diagnosis mechanism is necessary for the automation of machining processes so that production loss and downtime can be avoided. This study concerns with the development of a tool wear condition-monitoring technique based on a two-stage fuzzy logic scheme. For this, signals acquired from various sensors were processed to make a decision about the status of the tool. In the first stage of the proposed scheme, statistical parameters derived from thrust force, machine sound (acquired via a very sensitive microphone) and vibration signals were used as inputs to fuzzy process; and the crisp output values of this process were then taken as the input parameters of the second stage. Conclusively, outputs of this stage were taken into a threshold function, the output of which is used to assess the condition of the tool.
机译:制造中最大的问题之一是由于诸如钻孔和铣削之类的切削操作中表面材料的损失而导致的机床故障。用钝的工具进行加工可能会损坏所加工的工件材料。另一方面,如果仍然能够继续进行切割操作,则不必更换切割工具。因此,有效的诊断机制对于加工过程的自动化是必要的,从而可以避免生产损失和停机时间。本研究涉及基于两阶段模糊逻辑方案的刀具磨损状态监测技术的发展。为此,对从各种传感器获取的信号进行处理,以决定工具的状态。在该方案的第一阶段,从推力,机器声音(通过非常灵敏的麦克风获取)和振动信号得出的统计参数被用作模糊过程的输入。然后将此过程的清晰输出值作为第二阶段的输入参数。最终,将这一阶段的输出纳入阈值函数,该函数的输出用于评估工具的状况。

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