Abstract

Under the background of intelligent manufacturing, the modeling and scheduling of an intelligent manufacturing system driven by big data have attracted increasing attention from all walks of life. Deep learning can find more hidden knowledge in the process of feature extraction of the hierarchical structure and has good data adaptability in domain adaptation. From the perspective of the manufacturing system, intelligent scheduling is irreplaceable in intelligent production when the manufacturing quantity of workpieces is small or products are constantly changing. This paper expounds the outstanding advantages of deep learning in intelligent manufacturing system modeling, which provides an effective way and powerful tool for intelligent manufacturing system design, performance analysis, and running status monitoring and provides a clear direction for selecting, designing, or implementing the deep learning architecture in the field of intelligent manufacturing system modeling and scheduling. The scheduling of the intelligent manufacturing system should integrate intelligent scheduling of part processing and intelligent planning of product assembly, which is suitable for intelligent scheduling of any kind and quantity of products and resources.

Highlights

  • Over the years, people have conducted extensive research on the application technology of artificial intelligence in a manufacturing system

  • In the process of intelligent production, due to the frequent changes of production objectives, such as the acceleration of product upgrading, the intelligent manufacturing system can be adjusted according to the new production tasks to ensure that the machine can complete the production tasks with high utilization [5]

  • This paper expounds the outstanding advantages of deep learning [11,12,13,14] in intelligent manufacturing system modeling [15], provides an effective way and powerful tool for intelligent manufacturing system design, performance analysis, and operation state monitoring, and provides a clear direction for intelligent manufacturing system modeling and scheduling field selection, design, or implementation of deep learning architecture

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Summary

Introduction

People have conducted extensive research on the application technology of artificial intelligence in a manufacturing system. The purpose of the intelligent manufacturing system is to simulate the skills and expert knowledge of the manufacturing technology by integrating knowledge engineering and manufacturing software system, robot vision, and robot control, so that intelligent machines can produce without manual intervention [4]. The purpose of intelligent scheduling is to complete the production tasks of production processing and machine assembly on the premise of meeting various constraints of the manufacturing system. In the process of intelligent production, due to the frequent changes of production objectives, such as the acceleration of product upgrading, the intelligent manufacturing system can be adjusted according to the new production tasks to ensure that the machine can complete the production tasks with high utilization [5]

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