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On-line monitoring of boring tools for control of boring operations

机译:在线监控镗孔工具以控制镗孔操作

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摘要

In order to carry out precision and quality control of boring operations, on-line monitoring of boring tools is essential. Fourteen features were extracted by processing cutting force signals using virtual instrumentation. A Sequential Forward Search (SFS) algorithm was employed to select the best combination of features. Backpropagation neural networks (BPNs) and adaptive neuro-fuzzy inference systems (ANFIS) were used for on-line classification and measurement of tool wear. The input vectors consist of selected features. For the on-line classification, the outputs are boring tool conditions, which are either usable or worn out. For the on-line measurement, the outputs are estimated value of the tool wear. Using BPN, five features were needed for the on-line classification of boring tools. They are the average longitudinal force, average value of the ratio between the tangential and radial forces, skewness of the longitudinal force, skewness of the tangential force, and kurtosis of the longitudinal force. Three features, the average longitudinal force, average of the ratio between the tangential and radial forces, and kurtosis of the longitudinal force, were needed for on-line measurement of tool wear. Using ANFIS, three features were needed for the on-line classification of boring tools. They are the average longitudinal force, average of the ratio between the tangential and radial forces, and kurtosis of the longitudinal force. Only one feature, kurtosis of the longitudinal force, was needed for the on-line measurement of tool wear using ANFIS. Both 5 × 20 × 1 BPN and 3×5 ANFIS can achieve a 100% success rate for the on-line classification of boring tool conditions. Using a 3× 20 × 1 BPN for neural computing, the minimum flank wear estimation error is 0.29% while the minimum flank wear estimation error is 2.04% using a 1 × 5 ANFIS.
机译:为了对镗孔作业进行精确和质量控制,对镗孔工具进行在线监控至关重要。通过使用虚拟仪器处理切削力信号来提取14个特征。顺序前向搜索(SFS)算法用于选择功能的最佳组合。反向传播神经网络(BPN)和自适应神经模糊推理系统(ANFIS)用于工具磨损的在线分类和测量。输入向量由所选要素组成。对于在线分类,输出是无聊的工具条件,可以使用也可以用完。对于在线测量,输出是刀具磨损的估计值。使用BPN,钻孔工具的在线分类需要五个功能。它们是平均纵向力,切向力和径向力之比的平均值,纵向力的偏度,切向力的偏度和纵向力的峰度。在线测量刀具磨损需要三个特征,即平均纵向力,切向力和径向力之比的平均值以及纵向力的峰度。使用ANFIS,钻孔工具的在线分类需要三个功能。它们是平均纵向力,切向力和径向力之比的平均值以及纵向力的峰度。使用ANFIS在线测量刀具磨损仅需要一个特征,即纵向力的峰度。 5×20×1 BPN和3×5 ANFIS都可以实现镗孔条件在线分类的100%成功率。使用3×20×1 BPN进行神经计算时,使用1×5 ANFIS的最小侧面磨损估计误差为0.29%,而最小侧面磨损估计误差为2.04%。

著录项

  • 来源
    《Robotics and Computer-Integrated Manufacturing》 |2010年第3期|p.230-239|共10页
  • 作者单位

    Department of Mechanical Engineering, California State University, Sacramento, Sacramento, CA 95819, USA;

    Department of Mechanical Engineering, California State University, Sacramento, Sacramento, CA 95819, USA;

    Department of Mechanical Engineering, California State University, Sacramento, Sacramento, CA 95819, USA;

    Department of Mechanical Engineering, California State University, Sacramento, Sacramento, CA 95819, USA;

    Department of Mechanical Engineering, California State University, Sacramento, Sacramento, CA 95819, USA;

    Department of Mechanical Engineering, University of Cincinnati, Cincinnati, OH, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    neuro-fuzzy systems; feature selection;

    机译:神经模糊系统;功能选择;

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