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Error Evaluation of Planar Curve Profile Based on an Improved Genetic Algorithm

机译:基于改进遗传算法的平面曲线轮廓误差评估

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To improve the measuring accuracy of planar curve profile error, an improved genetic algorithm is put forward to realize self-adaptive matching of measured curve, eliminating the position deviation during error evaluation of planar curve profile. It not only improves the efficiency and precision of the algorithm but also prevents premature convergence to local optimal solutions by introducing a relative fitness function, setting the dynamic mutation probability, and re-inserting. An instance of planar curve profile error evaluation is used to compare the improved genetic algorithm with the traditional genetic algorithm. The example of single running result shows that the improved genetic algorithm runs faster than the traditional one and its precision increases by 29.8%. The repeated running results also show a faster convergent speed of improved genetic algorithm and its precision increases by 39.1%, compared with the traditional one. After the self-adaptive matching of the measured curve by improved genetic algorithm, the planar curve profile error decreases by 52.4%, compared with the value without the curve matching.
机译:为了提高平面曲线轮廓误差的测量精度,提出了一种改进的遗传算法,实现了对测量曲线的自适应匹配,消除了平面曲线轮廓误差评估中的位置偏差。通过引入相对适应度函数,设置动态突变概率并重新插入,它不仅提高了算法的效率和精度,而且还防止了过早收敛到局部最优解。以平面曲线轮廓误差评估为例,将改进的遗传算法与传统遗传算法进行了比较。单次运行结果示例表明,改进的遗传算法比传统算法运行速度更快,精度提高了29.8%。重复运行结果还表明,改进后的遗传算法收敛速度较传统算法快,精度提高了39.1%。通过改进的遗传算法对测量曲线进行自适应匹配后,与不进行曲线匹配的值相比,平面曲线轮廓误差降低了52.4%。

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