Zhiliang Zhang This email address is being protected from spambots. You need JavaScript enabled to view it.1 and Bing Liu1

1Department of Urban Construction Engineering, Zhejiang College of Construction, Hangzhou Zhejiang, 311231, China


 

Received: July 11, 2019
Accepted: May 13, 2020
Publication Date: September 1, 2020

Download Citation: ||https://doi.org/10.6180/jase.202009_23(3).0016  

ABSTRACT


In order to solve the problem of variable neighborhood in the process of automatic production line, an intelligent decoupling control algorithm based on the fusion of variable neighborhood model of automatic production line in the process of processing is proposed. The algorithm combines the variable neighborhood algorithm with the PM (Permanent magnet, PM) intelligent decoupling control algorithm, which not only overcomes the shortcomings of the traditional intelligent decoupling control algorithm, but also solves the problem of neighborhood species selection. The part of decoupling algorithm. At the same time, the algorithm is compared with the vnm algorithm by simulation. Finally, the intelligent decoupling control algorithm is applied to the variable neighborhood in the process of automatic production line, and the validity of the algorithm is verified.


Keywords: Machining, Automatic Production Line, Intelligent Decoupling Control Algorithm, Variable Neighbourhoods.


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