ABSTRACT
Automated guided vehicle handling car has initially realized intelligent and automated handling to replace manual handling, reducing the demand for manpower of enterprises, reducing the work intensity of front-line workers, and effectively alleviating the difficulties of difficult and expensive labor in related enterprises. When the technical defects are gradually improved, it will play an irreplaceable role in industrial production. support the comprehensive transformation and upgrading of the manufacturing industry, and further enhance the level of social development. Through the in-depth study of AGV car, the development status and development characteristics of AGV car are clarified, and the future application development trend of AGV car is summarized, which lays a good foundation for further promotion of AGV car. This paper analyzes the relevant technical characteristics of AGV car, the development status and application field of AGV car, and finally discusses the future development trend of AGV car.
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