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SURFACE VARIATION MODELING BY FUSING SURFACE MEASUREMENT DATA WITH MULTIPLE MANUFACTURING PROCESS VARIABLES

机译:通过融合具有多个制造过程变量的表面测量数据来进行表面变化建模

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Controlling surface shape variations plays a key role in high-precision manufacturing. Most manufacturing plants rely on a number of multi-resolution measurements on manufactured surfaces to evaluate surface shapes and resultant quality. Conventional research on surface shape modeling focused on interpolation and extrapolation of spatial data using sampled measurements based on presumed spatial relationship over entire surface locations. However, the prediction accuracy is heavily restricted by the density of sampled measurements, preventing cost-effective evaluation of surface shape in high precision. New opportunities emerge for cost-effective high-precision surface manufacturing when the industry begins to extensively collect in-plant process information. This paper explores the opportunity by investigating strategies for fusing surface measurement data with multiple process variables. The fusion is achieved by characterizing the relationships between surface height and process variables using (1) linear regression based co-Kriging and (2) fuzzy if-then rules as well as considering spatial correlations. Under (3) Bayesian sequential updating frameworks, a generic surface variation model is updated sequentially using different process information. Case studies are conducted for comparisons and demonstrate the advantages of the fuzzy inference based spatial model.
机译:控制表面形状的变化在高精度制造中起着关键作用。大多数制造工厂都依赖于对人造表面的许多多分辨率测量来评估表面形状和最终质量。关于表面形状建模的常规研究集中于使用基于整个表面位置上的假定空间关系的采样测量值对空间数据进行内插和外推。但是,预测精度受到采样测量值密度的严重限制,从而无法以经济高效的方式对表面形状进行评估。当行业开始广泛地收集厂内过程信息时,经济高效的高精度表面制造就会出现新的机会。本文通过研究将表面测量数据与多个过程变量融合的策略来探索机会。通过使用(1)基于线性回归的协同克里格法和(2)模糊if-then规则以及考虑空间相关性来表征表面高度与过程变量之间的关系,从而实现融合。在(3)贝叶斯顺序更新框架下,通用的表面变化模型使用不同的过程信息进行顺序更新。进行案例研究以进行比较,并证明了基于模糊推理的空间模型的优势。

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