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RESEARCHING FOR THE SAMPLING METHOD ON CMM
Author(s) -
Ha Thi Thu Thai,
Thang Duc Dinh
Publication year - 2009
Publication title -
science and technology development journal
Language(s) - English
Resource type - Journals
ISSN - 1859-0128
DOI - 10.32508/stdj.v12i16.2356
Subject(s) - computer science , cad , monte carlo method , component (thermodynamics) , confidence interval , point (geometry) , algorithm , sampling (signal processing) , tolerance analysis , transformation (genetics) , mathematics , engineering drawing , statistics , engineering , computer vision , geometry , filter (signal processing) , biochemistry , physics , chemistry , gene , thermodynamics
Accurate dimensional inspection and error analysis of free-form surfaces requires accurate registration of the component in hand. Registration of surfaces defined as non-uniform rational B-splines (NURBS) has been realized through an implementation of the iterative closest point method (ICP). The paper presents performance analysis of the ICP registration method using Monte Carlo simulation. A large number of simulations were performed on an example of a precision engineering component, an aero-engine turbine blade, which was judged to possess a useful combination of geometric characteristics such that the results of the analysis had generic significance. Data sets were obtained through CAD (computer aided design)-based inspection. Confidence intervals for estimated transformation parameters, maximum error between a measured point and the nominal surface (which is extremely important for inspection) mean error and several other performance criteria are presented. The influence of shape, number of measured points, measurement noise and some less obvious, but not less important, factors affecting confidence intervals are identified through statistical analysis.

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