4.6 Article

An accurate surface error optimization for five-axis machining of freeform surfaces

Journal

Publisher

SPRINGER LONDON LTD
DOI: 10.1007/s00170-013-5549-x

Keywords

Five-axis machining; Linear interpolation; Accurate chord error evaluation; Uniform surface error

Funding

  1. Science Fund for Creative Research Groups of National Natural Science Foundation of China [51221004]
  2. Program for Zhejiang Leading Team of ST Innovation [2009R50008]
  3. National Nature Science Foundation of China [51105335]

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This paper presents an accurate surface error interpolation algorithm for five-axis machining of freeform surfaces. One of the most important steps in the interpolation process is to calculate the next cutter contact (CC) point according to the present one. In this paper, the next CC point is calculated by an accurate chord evaluation method. This method is developed based on the cutting simulation process, which can be vividly described as firstly planting dense grasses on the tool path curve and then cutting them when the tool moves by. The left lengths of the grasses either positive or negative are considered to be the machining error. The method is accurate also because the tool geometry and the tool orientation changes during five-axis machining are taken into consideration. With this method, the chord errors between CC points are controlled uniform along the tool path. The proposed interpolation algorithm is compared with the commercial CAM systems like PowerMILL and UG. The results show that the proposed algorithm can significantly reduce the number of cutter locations meanwhile confine the chord error. A real cutting experiment is implemented, and the result indicates its promising value in industrial applications.

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