Practical applications and functions of collaborative robots
Collaborative robots are capable of performing a variety of tasks thanks to a variety of tools, friendly programming software, and flexibility. The combination of different functions means that an unlimited number of actions can be combined into a complete automation application. Practical applications of collaborative robots include, but are not limited to, the following areas: assembly, packaging and handling on industrial production lines; surgical assistance and patient care in the medical field; cargo handling and management in the warehousing and logistics industry; planting and harvesting in the agricultural field; and interactive experiences in education and entertainment. In short, collaborative robots have a wide range of practical applications and can bring
Grinding and Polishing
Polishing, deburring or sanding requires precise operations in people's lives and work. With built-in sensors, cobots are able to follow the contours of any surface while applying constant force, ensuring consistent quality. They are particularly suitable for treating wood, stainless steel or metal surfaces.
Screw-driving tasks
Collaborative robots excel at performing simple, repetitive screw-driving tasks. With the right tools and software, robots can be easily programmed to achieve precise alignment of objects with holes, accurately place parts, and use the same force continuously. This is a difficult task for humans, but a breeze for collaborative robots.
Pick and Place
Picking and placing objects is simple, for example, picking and sorting parts on an assembly line. These applications are based on simple operations.
picking
Box picking is similar to pick and place, but the way items are delivered is non-standardized. Collaborative robots use intelligent software and vision technology to recognize and pick up objects.
Machine Maintenance
Machine maintenance is placing parts in, for example, a lathe or a press brake. While the robot is working, the operator is free. This improves employee safety and frees them up to complete more difficult tasks.
Palletizing
Palletizing can be set up more efficiently using collaborative robots. Use electric vacuum grippers to pick up items and place them in designated locations.
Quality Testing and Inspection
Collaborative robots can come in handy in quality testing and inspection in various industries. For example, a robot could place objects in a test device and then classify them. Think of a circuit board or sample in a lab. With vision technology, collaborative robots also have the opportunity to perform visual inspections.
bonding and sealing
For collaborative robots, it absolutely does a great job handling bonding and sealing tasks. A sealant or glue syringe is mounted on the end of the cobot. The collaborative robot moves along the desired path and distributes the adhesive or sealant evenly.
Welding
Welding is a task that must be performed with the highest precision. Collaborative robots are more precise than humans and deliver consistent quality. Collaborative robots can perform various types of welding. Such as spot welding, arc welding, ultrasonic welding and plasma welding, etc.
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