ABSTRACT

The precast concrete (PC) preform automatic production line basically has no supporting enterprise resource planning (ERP) system and can only communicate information in the traditional way, which reduces work efficiency. ERP is an application that automates the business process and provides insights on marketing strategy. Therefore, the information research of the intelligent PC preform automatic production line based on a genetic algorithm is proposed. First, the core architecture of intelligent PC preform automatic production is proposed, then the core business process of PC factory is described, and the preform ERP core module is designed from multiple perspectives. According to the characteristics of genetic algorithm, the quantitative factor and proportional factor of the intelligent PC preform automatic production line transportation speed are calculated, the time-division control model of intelligent PC preform automatic production line transportation speed is established, and the calculation process of the quantitative factor and proportional factor is substituted to control the transportation speed of production line by time division. The experimental results show that after testing the control effect of the conveying speed of the production line, the convergence speed of the motor speed waveform, and the stability of the model, the information conveying speed of the intelligent PC preform automatic production line can be controlled by time, according to the instructions, and it has faster corresponding speed, higher stability, and smaller error in the process of controlling the production line.

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