Optimization of Cutting Parameters of Slender Bar Based on Improved Artificial Bee Colony Algorithm

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Abstract:

Improved artificial bee colony algorithm is proposed to solve the problem that how to select proper cutting parameters in multi-processing of slender bar in this passage. Under these constraints of cutting stability, surface roughness, cutting quantity and etc , the algorithm combined with four type decreasing inertia weight is used to search maximize production rate which is regarded as the objective function .The result indicates that the improved algorithm is of high effectiveness, high global convergence reliability and high velocity. The two convex functions strategy can greatly enhance convergence speed of the algorithm under the good accuracy of convergence conditions. The experience has proved the improved algorithm for solving the slender shaft turning parameter optimization has a theoretical significance.

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156-162

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December 2014

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© 2015 Trans Tech Publications Ltd. All Rights Reserved

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