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基于概率密度最小二乘拟合的叶片后缘轮廓
引用本文:鲍鸿,曾海涛,白玉磊,胡忠,向志聪,周延周,申作春.基于概率密度最小二乘拟合的叶片后缘轮廓[J].激光技术,2016,40(4):555-559.
作者姓名:鲍鸿  曾海涛  白玉磊  胡忠  向志聪  周延周  申作春
作者单位:1.广东工业大学 自动化学院, 广州 510006;
基金项目:广东省自然科学基金资助项目(2014A030313519),广州市科技计划资助项目(2014J4100203)
摘    要:为了解决燃气轮机叶片后缘轮廓的测量和模型化的难题,采用了基于概率密度的最小二乘圆拟合方法,通过对数据重复拟合过程若干次,求得每组的拟合圆心坐标和半径,以概率密度分布的最大值作为最优拟合值。通过数据仿真,对拟合数据误差进行了理论分析和实验验证,验证了该方法的可行性和鲁棒性。结果表明,实现了对叶片后缘轮廓的拟合和数据的参量估计,精度达到0.01mm,求得圆拟合的最优圆心坐标和半径;对于直线段和短圆弧组合的叶片后缘,在不知切点和圆弧方程的情况下,能够对叶片后缘轮廓拟合。此方法对叶片后缘轮廓的高精度测量、加工精度以及参量的设计有着重要的指导意义。

关 键 词:测量与计量    概率密度    最小二乘法    叶片后缘    圆拟合    参量估计
收稿时间:2015-05-08

Blade trailing edge contour based on probability density least-square fitting
Abstract:In order to solve the problems for measurement and modeling of gas turbine blade trailing edge contour, a least-square circle fitting method based on probability density was proposed. After several times of fitting data repeatedly, each fitting center coordinate and radius was obtained. The maximum value of probability density distribution was looked as the optimal value. The errors of fitting data were analyzed by data simulation after theoretical analysis and experimental verification. The feasibility and robustness of the method were verified. The results show that the fitting of blade trailing edge contour and the estimation of parameter data are realized. The fitting error is ± 0. 01mm. The optimal center coordinates and radius of circle fitting is obtained. For the blade trailing edge composed of straight line segments and short arcs, the fitting result is effective and accurate in the case of unknowing the point of tangent and arc equation. The method has an important guiding significance to precision measurement, machining accuracy and parameter design of blade trailing edge contour.
Keywords:measurement and metrology  probability density  least-square method  blade trailing edge  circle fitting  parameter estimation
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