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首页> 外文期刊>International Journal of Machine Tools & Manufacture: Design, research and application >Calibration and compensation of machine tool volumetric error using a laser tracker
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Calibration and compensation of machine tool volumetric error using a laser tracker

机译:使用激光跟踪器校准和补偿机床容量误差

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摘要

Machine tools are widely used in industrial manufacturing. Volume positioning error calibration and compensation are important for ensuring manufacturing accuracy. However, there are two challenges associated with traditional methods. First, the machine tool coordinate system and measurement system must be registered before measuring, but the existing registration methods cannot manage the anisotropic situation, leading to low registration accuracy. To solve this problem, a closed-form iteration combined weighting method is developed. Second, the verification of volumetric error in the entire workspace usually requires hundreds of measurements, which makes the measurement process very complex and time-consuming and possibly affects the calibration accuracy. To this end, a Gaussian process regression (GPR)-based volumetric error prediction and compensation method is improved to simplify the measurement process and ensure accurate calibration and compensation. Simulations and experiments show that the proposed closed-form iteration combined weighting method can improve the registration accuracy, and the proposed GPR-based volumetric error prediction and compensation method can achieve high accuracy with a simple measurement process. Therefore, the proposed methods provide an effective path for machine tool volume positioning error calibration and compensation.
机译:机床广泛用于工业制造。体积定位误差校准和补偿对于确保制造精度非常重要。然而,与传统方法有两个挑战。首先,必须在测量之前注册机床坐标系和测量系统,但现有的注册方法无法管理各向异性情况,导致登记准确性低。为了解决这个问题,开发了一种闭合迭代组合的加权方法。其次,整个工作空间中的容量误差验证通常需要数百个测量,这使得测量过程非常复杂和耗时,并且可能影响校准精度。为此,改进了高斯过程回归(GPR)的体积误差预测和补偿方法,以简化测量过程并确保准确校准和补偿。仿真和实验表明,所提出的闭合迭代组合加权方法可以提高登记精度,并且所提出的基于GPR的体积误差预测和补偿方法可以通过简单的测量过程实现高精度。因此,所提出的方法为机床卷定位误差和补偿提供了有效路径。

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