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Parameter Estimation of the Thermal Network Model of a Machine Tool Spindle by Self-made Bluetooth Temperature Sensor Module

机译:自制蓝牙温度传感器模块估算机床主轴热网络模型的参数

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Thermal characteristic analysis is essential for machine tool spindles because sudden failures may occur due to unexpected thermal issue. This article presents a lumped-parameter Thermal Network Model (TNM) and its parameter estimation scheme, including hardware and software, in order to characterize both the steady-state and transient thermal behavior of machine tool spindles. For the hardware, the authors develop a Bluetooth Temperature Sensor Module (BTSM) which accompanying with three types of temperature-sensing probes (magnetic, screw, and probe). Its specification, through experimental test, achieves to the precision ±(0.1 + 0.0029|t|) °C, resolution 0.00489 °C, power consumption 7 mW, and size ?40 mm × 27 mm. For the software, the heat transfer characteristics of the machine tool spindle correlative to rotating speed are derived based on the theory of heat transfer and empirical formula. The predictive TNM of spindles was developed by grey-box estimation and experimental results. Even under such complicated operating conditions as various speeds and different initial conditions, the experiments validate that the present modeling methodology provides a robust and reliable tool for the temperature prediction with normalized mean square error of 99.5% agreement, and the present approach is transferable to the other spindles with a similar structure. For realizing the edge computing in smart manufacturing, a reduced-order TNM is constructed by Model Order Reduction (MOR) technique and implemented into the real-time embedded system.
机译:热特性分析对于机床主轴是必不可少的,因为意外的热问题可能会导致突然的故障。本文介绍了一种集总参数热网络模型(TNM)及其参数估计方案,包括硬件和软件,以表征机床主轴的稳态和瞬态热行为。对于硬件,作者开发了一个蓝牙温度传感器模块(BTSM),该模块与三种类型的温度感应探针(磁性,螺钉和探针)一起提供。其规格经过实验测试,达到了精度±(0.1 + 0.0029 | t |)°C,分辨率为0.00489°C,功耗为7 mW,尺寸为40 mm×27 mm。对于该软件,根据传热理论和经验公式推导了与转速相关的机床主轴传热特性。主轴的预测TNM是通过灰盒估计和实验结果开发的。即使在各种速度和不同初始条件这样复杂的操作条件下,实验也验证了本建模方法为温度预测提供了可靠且可靠的工具,归一化均方误差为99.5%一致性,并且本方法可转移至其他具有类似结构的主轴。为了在智能制造中实现边缘计算,通过模型降阶(MOR)技术构造降阶TNM,并将其实现到实时嵌入式系统中。

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