测量环境热效应对机床影响的新方法

F. Egaña, U. Mutilba, J. Yagüe-Fabra, E. Gomez-Acedo
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摘要

大型机床受到环境温度波动的严重影响,从而影响其性能和加工产品的质量。为了应对精确测量机床结构热效应的挑战,本研究引入了机床集成反向多方位测量方法。该方法提供了一种精确的方法,用于评估整个机床工作范围内的几何误差参数,具有不确定性低、速度快的特点,适用于有效的温度变化监测。该方法的一项重大创新是能够以 40-60 分钟的时间间隔自动实现大中型机床的体积误差特性分析,测量不确定性为 10 µm。这样就可以详细研究由于长时间环境温度变化而产生的热误差。为了验证该方法,在自然车间条件下,使用带有四个广角反向反射镜的 LEICA AT960™ 激光跟踪仪对 ZAYER Arion G™ 大型机床进行了广泛的实验。这项研究确定了准静态和变化环境这两种关键的热情景,为了解温度变化如何影响机床性能提供了宝贵的见解。这种新方法有助于优化机床操作和提高工业环境中的产品质量,标志着制造计量学的重大进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Methodology for Measuring Ambient Thermal Effects on Machine Tools
Large machine tools are critically affected by ambient temperature fluctuations, impacting their performance and the quality of machined products. Addressing the challenge of accurately measuring thermal effects on machine structures, this study introduces the Machine Tool Integrated Inverse Multilateration method. This method offers a precise approach for assessing geometric error parameters throughout a machine’s working volume, featuring a low level of uncertainty and high speed suitable for effective temperature change monitoring. A significant innovation is found in the capability to automatically realise the volumetric error characterisation of medium- to large-sized machine tools at intervals of 40–60 min with a measurement uncertainty of 10 µm. This enables the detailed study of thermal errors which are generated due to variations in ambient temperature over extended periods. To validate the method, an extensive experimental campaign was conducted on a ZAYER Arion G™ large machine tool using a LEICA AT960™ laser tracker with four wide-angle retro-reflectors under natural workshop conditions. This research identified two key thermal scenarios, quasi-stationary and changing environments, providing valuable insights into how temperature variations influence machine behaviour. This novel method facilitates the optimization of machine tool operations and the improvement of product quality in industrial environments, marking a significant advancement in manufacturing metrology.
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