Incorporating novel robotic systems into the manufacturing process can garner safety and efficiency during plastic bag production.
Data indicates that implementing Industry 4.0 technology can make supply chains more efficient and sustainable. Additionally, innovative technology can increase productivity, prevent occupational accidents, and reduce factory waste. Researchers in Edinburgh are investigating how innovative Industry 4.0 technology can support plastic bag manufacturing.
Collaborative robots, or “cobots,” work alongside humans without extensive restrictive measures, such as safety barriers and cages. A recent study hopes to overcome some of the obstacles of manipulating and autonomously cutting transparent plastic bags with cobots.
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Because these bags are transparent, their light reflection and refraction make computer vision challenging. Furthermore, plastic bags are deformable, making them difficult to manipulate. This study integrates advanced object detection tools, such as YOLOv5, with convolutional neural network (CNN) algorithms into cobots for this purpose.
Researchers created a prototype industrial automation system that comprises three main systems.
This novel system automates the unpacking and cutting of transparent plastic bags. Figure courtesy of Vision-based manipulation of transparent plastic bags in industrial setups.
This system uses QR codes as points of reference and to provide depth readings. This also allows grouping of the bags into different zones. The cobot uses this information to return to the next sequential stack after loading it into the feeding system.
Computer vision, powered by YOLOv5, allows the system to categorize stacks of plastic bags using QR codes. Figure courtesy of Vision-based manipulation of transparent plastic bags in industrial setups.
Robot Operating System (ROS), with libraries such as motion-planner and move-it, controls the cobot. As the master controller, a Raspberry-Pi commands an Arduino module to handle actuation and feedback based on the controller’s commands.
The system showed promising results during testing. Average success rates for picking and placing were 86.25% and 82.5%, respectively. On average, each iteration of this task took 8.3 minutes. During cutting, the system showed no errors across 10 iterations, with an average completion time of 15.7 seconds. In the fourth phase of the process, the robot unfolded each of eight bags. This took an average of 38.9 seconds. The delivery was also successful for all eight bags, taking an average of 18.4 seconds.
This novel technology shows promise for use in industry. Further paths for development include altering the cutting mechanism to accommodate other types of packaging. Exploring the system’s scalability will provide more insight into its performance in real-world scenarios.
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