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Research on on-line monitoring technology for steel ball's forming process based on load signal analysis method

机译:基于负荷信号分析方法的钢球成形过程在线监测技术研究

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This paper presents a novel on-line monitoring technology to obtain forming quality in steel ball's forming process based on load signal analysis method, in order to reveal the bottom die's load characteristic in initial cold heading forging process of steel balls. A mechanical model of the cold header producing process is established and analyzed by using finite element method. The maximum cold heading force is calculated. The results prove that the monitoring on the cold heading process with upsetting force is reasonable and feasible. The forming defects are inflected on the three feature points of the bottom die signals, which are the initial point, infection point, and peak point. A novel PVDF piezoelectric force sensor which is simple on construction and convenient on installation is designed. The sensitivity of the PVDF force sensor is calculated. The characteristics of PVDF force sensor are analyzed by FEM. The PVDF piezoelectric force sensor is fabricated to acquire the actual load signals in the cold heading process, and calibrated by a special device. The measuring system of on-line monitoring is built. The characteristics of the actual signals recognized by learning and identification algorithm are in consistence with simulation results. Identification of actual signals shows that the timing difference values of all feature points for qualified products are not exceed + 6 ms, and amplitude difference values are less than + 3%. The calibration and application experiments show that PVDF force sensor has good static and dynamic performances, and is competent at dynamic measuring on upsetting force. It greatly improves automatic level and machining precision. Equipment capacity factor with damages identification method depends on grade of steel has been improved to 90%.
机译:为了揭示钢球初始冷head锻过程中下模的载荷特性,提出了一种基于载荷信号分析方法的在线监测技术,以求获得钢球成形过程中的成形质量。建立了冷method管生产过程的力学模型,并采用有限元方法进行了分析。计算出最大冷head向力。结果证明,以up粗力进行冷head过程的监测是合理可行的。成型缺陷会在下模信号的三个特征点上发生变化,这三个特征点是初始点,感染点和峰值点。设计了一种结构简单,安装方便的新型PVDF压电力传感器。计算出PVDF力传感器的灵敏度。有限元分析了PVDF力传感器的特性。 PVDF压电力传感器经制造可在冷head过程中获取实际负载信号,并通过专用设备进行校准。建立了在线监测测量系统。通过学习和识别算法识别出的实际信号的特性与仿真结果一致。实际信号的识别表明,合格产品的所有特征点的时间差值均不超过+ 6 ms,幅度差值则低于+ 3%。校准和应用实验表明,PVDF力传感器具有良好的静态和动态性能,能够胜任dynamic压力的动态测量。它大大提高了自动水平和加工精度。设备容量因数与损伤的鉴别方法取决于钢种,已提高到90%。

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