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Application of artificial neural network and optimization algorithms for optimizing surface roughness, tool life and cutting forces in turning operation

机译:人工神经网络和优化算法在车削加工中优化表面粗糙度,刀具寿命和切削力的应用

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摘要

Our goal is to propose a useful and effective method to determine optimal machining parameters in order to minimize surface roughness, resultant cutting forces and maximize tool life in the turning process. At first, three separate neural networks were used to estimate outputs of the process by varying input machining parameters. Then, these networks were used as optimization objective functions. Moreover, the proposed algorithm, namely, GA and PSO were utilized to optimize each of the outputs, while the other outputs would also be kept in the suitable range. The obtained results showed that by using trained neural networks with genetic algorithms as optimization objective functions, a powerful model would be obtained with high accuracy to analyze the effect of each parameter on the output(s) and optimally estimate machining conditions to reach minimum machining outputs.
机译:我们的目标是提出一种有用且有效的方法,以确定最佳的加工参数,以使车削过程中的表面粗糙度,合力切削力最小化,并使刀具寿命最大化。首先,使用三个独立的神经网络通过改变输入的加工参数来估计过程的输出。然后,这些网络被用作优化目标函数。此外,所提出的算法,即GA和PSO被用于优化每个输出,而其他输出也将保持在合适的范围内。获得的结果表明,通过将训练有素的神经网络与遗传算法用作优化目标函数,可以以高精度获得强大的模型,以分析每个参数对输出的影响并优化估计加工条件,以达到最小加工输出。

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