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An Improved Teaching-Learning-Based Optimization Algorithm for Sphericity Error Evaluation

机译:一种改进的基于教学 - 基于教学的基于教学 - 基于学习的球形误差评估优化算法

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In order to improve the accuracy and the convergence speed of the sphericity error, an improved teaching and learning algorithm is proposed to evaluate the sphericity error. Based on the basic teaching-learning-based optimization, the initial solution quality is improved by logistic chaotic initialization; At the end of each iteration, the interpolation algorithm is applied to the global optimal solution to further improve the search accuracy of the algorithm. Finally, one group of sphericity error algorithm though the measurement data in the related literature is verified the effectiveness of the ITLBO, the test result show that the ITLBO algorithm has advantages in the calculating accuracy and iteration convergence speed, and it is very suitable for the application in the sphericity error evaluation.
机译:为了提高球形误差的准确性和收敛速度,提出了一种改进的教学和学习算法来评估球形误差。基于基于基于基于教学的优化,通过物流混沌初始化提高了初始解决方案质量;在每次迭代结束时,将插值算法应用于全局最优解决方案,以进一步提高算法的搜索精度。最后,一组球形误差算法虽然相关文献中的测量数据验证了ITLBO的有效性,但测试结果表明,ITLBO算法在计算精度和迭代收敛速度方面具有优势,并且非常适合在球间误差评估中的应用。

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