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Real-time intelligent monitoring and diagnostic system for a CNC turret lathe in a production environment using multi-sensing and neural network.

机译:使用多传感和神经网络的生产环境中的数控转塔车床实时智能监控和诊断系统。

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摘要

This dissertation presents the results of the research investigation on the real-time intelligent monitoring and diagnostic system for a CNC turret lathe in a production environment using multi-sensing and neural network. A comprehensive review highlighting past and recent developments in sensors for untended machining is first presented. The review presents state-of-the-art machining monitoring sensors from the standpoint of the measurand, specification, characteristics, reliability, precision, signal processing, speed, and limitation. The goal being to offer applied researchers in industry and academia a source of reference. The problem of measuring cutting forces on a CNC turret lathe is addressed and a technique is developed to measure cutting tool forces (feed, radial, and tangential) with the turret allowed to index in a production-type environment. A novel system is developed to calibrate the force measurement system yielding sets of equations that establish the relationship between cutting tool forces and the transducer force output for different turret positions. A comprehensive dynamic characterization of the CNC turret lathe is carried out using modal analysis technique. Several direct and cross transfer functions are measured for the extraction of modal parameters of resonance frequencies and damping ratios and subsequently deriving the bandwidths of the turret structure, toolholder, and the lathe's spindle structure. The frequency bandwidth of the turret structure is particularly valuable for proper setting of the filtering and sampling frequencies during cutting force signal acquisition. The ANOVA analysis technique is used to study the effects of changing cutting conditions during rough and finish turning operations in a production environment on the measured cutting forces and other sensory feedback signals. ANOVA indicated a strong influence of cutting conditions on the feedback sensory signals. A backpropagation neural network is used to fuse multi-sensory feedback signals during turning of AISI 1045 (cold rolled) steel under varying cutting conditions in a production environment to predict tool wear and surface roughness. Features that correlated with tool wear and surface degradation along with cutting parameter index that accounted for machining condition variation were selected for training neural network. Effects of interactions between the varying conditions on tool wear and surface roughness are pronounced. Testing of the trained network gave good estimates under varying cutting conditions.
机译:本文提出了基于多传感和神经网络的数控转塔车床生产环境实时智能监测与诊断系统的研究成果。首先进行全面回顾,重点介绍用于无限制加工的传感器的过去和最近的发展。这篇综述从被测件,规格,特性,可靠性,精度,信号处理,速度和局限性的角度提出了最先进的加工监控传感器。目的是为工业和学术界的应用研究人员提供参考。解决了在CNC转塔车床上测量切削力的问题,并开发了一种技术,该技术可在允许转塔在生产型环境中转位的情况下测量切削力(进给,径向和切向)。开发了一种新颖的系统来校准力测量系统,从而产生方程组,这些方程组建立了针对不同转塔位置的切削工具力与换能器力输出之间的关系。使用模态分析技术对CNC转塔车床进行了全面的动态表征。测量了几个直接传递函数和交叉传递函数,以提取共振频率和阻尼比的模态参数,然后推导出转塔结构,刀架和车床主轴结构的带宽。刀架结构的频率带宽对于在切削力信号采集期间正确设置滤波和采样频率特别有价值。 ANOVA分析技术用于研究在生产环境中进行粗加工和精加工时改变切削条件对测量的切削力和其他感觉反馈信号的影响。方差分析表明切割条件对反馈感觉信号有很大影响。反向传播神经网络用于在生产环境中不同切削条件下的AISI 1045(冷轧)钢车削过程中融合多传感器反馈信号,以预测工具磨损和表面粗糙度。选择与刀具磨损和表面退化以及切削参数指数相关的特征,这些参数考虑了加工条件的变化,用于训练神经网络。变化条件之间的相互作用对工具磨损和表面粗糙度的影响是明显的。对经过训练的网络的测试在不同的切割条件下给出了很好的估计。

著录项

  • 作者

    Ukpong, Anietie Udo.;

  • 作者单位

    University of Missouri - Rolla.;

  • 授予单位 University of Missouri - Rolla.;
  • 学科 Engineering Mechanical.; Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 1998
  • 页码 204 p.
  • 总页数 204
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 机械、仪表工业;人工智能理论;
  • 关键词

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