首页> 外文学位 >Development of four in-process surface recognition systems to predict surface roughness in end milling.
【24h】

Development of four in-process surface recognition systems to predict surface roughness in end milling.

机译:开发了四个过程中表面识别系统,以预测端铣削中的表面粗糙度。

获取原文
获取原文并翻译 | 示例

摘要

Surface roughness is one of the important factors in tribology and in evaluating the quality of machining operations. To realize full automation and achieve zero defect production, an effective technique is needed for on-line, real-time monitoring of surface roughness during machining. An in-process surface recognition system (ISRS), was developed for predicting real-time surface roughness, Ra, in end-milling operations. The parameters are spindle speed, feed rate, depth of cut, and the cutting, vibration between tool and workpiece. The cutting vibration is measured by an accelerometer and a proximity sensor.; The analyses of the data and the ISRS building model are carried out using multiple regression analysis and the neural fuzzy system. In the statistical model, surface roughness is predicted by a multiple regression equation. For the fuzzy models, the fuzzy rules base is built by a one pass operation making use of successful training data. Surface roughness is predicted by a fuzzifier, a fuzzy inference engine, a fuzzy rules base, and a defuzzifier.; Experimental results show that in the statistical model, feed rate is the most significant independent variable to predict the surface roughness, Ra. Vibration data contributes to increase R Square and improve prediction ability with a 91% accuracy rate. In the neural fuzzy model, the fuzzy rules base can be generated automatically within 4 seconds by the training data, and Ra can be predicted with a 96% accuracy rate. Based on the multiple regression equation or fuzzy rules base, the ISRS can predict surface roughness within 0.5 second during end-milling. Therefore, ISRS has potential for use in real-time operations.
机译:表面粗糙度是摩擦学和评估加工质量的重要因素之一。为了实现完全自动化并实现零缺陷生产,需要一种有效的技术,以便在加工过程中实时实时监控表面粗糙度。开发了一种过程中表面识别系统(ISRS),用于预测端铣削操作中的实时表面粗糙度Ra。这些参数是主轴速度,进给速度,切削深度以及切削,刀具和工件之间的振动。切削振动由加速度计和接近传感器测量。使用多元回归分析和神经模糊系统进行数据分析和ISRS建立模型。在统计模型中,表面粗糙度是通过多元回归方程预测的。对于模糊模型,通过成功训练数据的一次通过操作来构建模糊规则库。表面粗糙度由模糊器,模糊推理机,模糊规则库和去模糊器预测。实验结果表明,在统计模型中,进给速度是预测表面粗糙度Ra的最重要的独立变量。振动数据有助于提高R Square并提高预测能力,准确率达到91%。在神经模糊模型中,可以通过训练数据在4秒钟内自动生成模糊规则库,并且可以以96%的准确率预测Ra。基于多元回归方程或模糊规则库,ISRS可以在端铣期间在0.5秒内预测表面粗糙度。因此,ISRS具有在实时操作中使用的潜力。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号