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The development of in-process surface roughness prediction systems in turning operation using accelerometer.

机译:使用加速度计开发车削加工过程中的表面粗糙度预测系统。

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摘要

Three in-process surface roughness prediction (ISRP) systems using linear multiple regression, fuzzy logic, and fuzzy nets algorisms, respectively, were developed to allow the prediction of real time surface roughness of a work piece on a turning operation. The surface roughness is predicted from feed rate, spindle speed, depth of cut, and machining vibration that is detected and collected by an accelerometer.; Two groups of data were collected for two cutters with nose radii of 0.016 and 0.031 inches, respective. A total of 162 training data sets and 54 testing data sets for each cutter were applied to train and test the system. While the multiple-regression-based system applied the linear relationships of the dependent variables and the dependent variable for the prediction, the fuzzy-logic-based and the fuzzy-nets-based systems relied on fuzzy theory for the prediction. The fuzzy rule banks employed in the fuzzy-logic-based system was generated with expert's experiences as well as observation results from the experiments. Whereas, the rule banks employed in the fuzz-nets-system were rule banks self-extracted from the training data by the fuzzy-nets self-learning algorithm.; The predicted surface roughness values were compared with corresponding measured values. The average prediction accuracy with the three algorithms, linear multiple regression, fuzzy logic, and fuzzy nets algorisms, was 92.78%, 89.06%, and 95.70%, respectively. The use of the accelerometer was found valuable in increasing the prediction The Fuzzy-nets-based In-process Surface Roughness Prediction System was considered the best among the three tested systems. This conclusion relies on not only the best average prediction accuracy achieved, but also the self-learning ability of the fuzzy nets algorism.
机译:开发了三种分别使用线性多元回归,模​​糊逻辑和模糊网算法的过程中表面粗糙度预测(ISRP)系统,以预测车削操作中工件的实时表面粗糙度。表面粗糙度由进给速度,主轴转速,切削深度和由加速度计检测并收集的加工振动预测。对于分别具有0.016和0.031英寸的鼻子半径的两个刀具,收集了两组数据。每个刀具总共使用了162个训练数据集和54个测试数据集来训练和测试系统。基于多元回归的系统将因变量和因变量的线性关系用于预测,而基于模糊逻辑和基于模糊网络的系统则依赖于模糊理论进行预测。基于专家经验和实验观察结果,生成了基于模糊逻辑系统的模糊规则库。模糊网络系统中采用的规则库是通过模糊网络自学习算法从训练数据中自动提取的规则库。将预测的表面粗糙度值与相应的测量值进行比较。线性多元回归,模​​糊逻辑和模糊网络算法这三种算法的平均预测准确度分别为92.78%,89.06%和95.70%。发现加速计的使用对增加预测很有用。基于模糊网的过程中表面粗糙度预测系统被认为是三个测试系统中最好的。该结论不仅依赖于所获得的最佳平均预测精度,而且还依赖于模糊网络算法的自学习能力。

著录项

  • 作者

    Huang, Hanming.;

  • 作者单位

    Iowa State University.;

  • 授予单位 Iowa State University.;
  • 学科 Engineering Industrial.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 182 p.
  • 总页数 182
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 一般工业技术;
  • 关键词

  • 入库时间 2022-08-17 11:47:11

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