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2024 | OriginalPaper | Buchkapitel

A Novel Method of Material Requirement Forecasting for Discrete Manufacturing System Based on Improved Genetic Algorithm

verfasst von : Yongyang Zhang, Jingxia Fang, Nannan Lin, Jie Chen, Yingyan Huang, Haoxian Luo, Mushen Zheng, Jidong Guo, Dawei Zhou

Erschienen in: Proceedings of Industrial Engineering and Management

Verlag: Springer Nature Singapore

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Abstract

To solve the problem of low accuracy of material requirement forecasting in discrete manufacturing enterprises, a novel method is being presented by using BP neural network and genetic algorithm. With the proposed method, the collected data of customer orders are cleaned to remove the invalid data. And the processed data are trained using BP neural network to generate the objective function of genetic algorithm. Then, the operators of selection, crossover and mutation are optimized to eliminate inferior populations, increase superior populations and accelerate the iteration rate of superior population genes with adaptive genetic algorithm. In addition, the improved operators and objective functions can be involved in the MATLAB simulation model to achieve a better material requirement forecasting result for the discrete manufacturing system. Finally, empirical research shows that the accuracy of material requirement forecasting has been improved by using the improved genetic algorithm.

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Metadaten
Titel
A Novel Method of Material Requirement Forecasting for Discrete Manufacturing System Based on Improved Genetic Algorithm
verfasst von
Yongyang Zhang
Jingxia Fang
Nannan Lin
Jie Chen
Yingyan Huang
Haoxian Luo
Mushen Zheng
Jidong Guo
Dawei Zhou
Copyright-Jahr
2024
Verlag
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-97-0194-0_33

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