Optimization study of cutting parameters of micron wood fiber based on improved PSO neural network
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Optimization study of cutting parameters of micron wood fiber based on improved PSO neural network
Acta Scientiarum Naturalium Universitatis SunYatseniVol. 57, Issue 2, Pages: 116-122(2018)
作者机构:
1. 东北林业大学信息与计算机工程学院,哈尔滨,中国,150040
2.
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Published:2018,
Published Online:25 March 2018,
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QI Hong, REN Honge, JIA Heming, et al. Optimization study of cutting parameters of micron wood fiber based on improved PSO neural network. [J]. Acta Scientiarum Naturalium Universitatis SunYatseni 57(2):116-122(2018)
DOI:
QI Hong, REN Honge, JIA Heming, et al. Optimization study of cutting parameters of micron wood fiber based on improved PSO neural network. [J]. Acta Scientiarum Naturalium Universitatis SunYatseni 57(2):116-122(2018)DOI:
Optimization study of cutting parameters of micron wood fiber based on improved PSO neural network
In order to improve the process of micron wood fiber cutting
an improved particle swarm algorithm and BP neural network based on the combination of optimization algorithm is proposed to achieve the precision machining of micron wood fiber. The error back propagation algorithm is used to achieve the best structure selection of the complex relationship between cutting parameters. The improved particle swarm optimization algorithm (PSO) solves the defect of local minimum convergence of BP network
and gives a scientific and reasonable output of cutting parameters. The precision and effectiveness of the precision training of the algorithm are verified by the simulation and optimization experiments of the cutting parameters of different tree species. The research shows that the improved optimization algorithm proposed in this paper can predict the cutting parameters of the wood to be processed and has a high training precision.