LYL INGENIERIA

Autonomous robotic multi-crate handling system “Bin-to-Person”

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Description

This “Bucket-to-Person” multi-box ACR robot can perform intelligent mixed selection of cartons and containers of different sizes, storage and simultaneous handling of several boxes (up to 300 kg in a single trip).
The Autonomous robotic multi-crate handling system “Bin-to-Person” is a multi-box “Bucket-to-Person” ACR robot for box handling with 3D visual recognition technology, which can perform intelligent movements in the warehouse without the help of any clues. It has the functions of autonomous navigation, active obstacle avoidance and autonomous charging.
Compared with automatic case conveyors, AS/RS or other technologies, the autonomous robotic multi-crate handling system “Bin-to-Person”N has a smaller body, which makes it more convenient, speeds up and improves the overall implementation of the project.
Compared to traditional AGVs, this autonomous robotic multi-crate handling system “Bin-to-Person” has a higher efficiency and storage density. According to the order demand of the system, really realises the transformation from the traditional “Person-Commodity” picking method to the intelligent and efficient “Commodity-Person” picking method.
In addition, supports attachment to various logistics equipment, including racks, latent AGVs, robotic arms, multi-function workstations and other equipment.
The autonomous robotic multi-crate handling system “Bin-to-Person” therefore plays a key role in the transformation of the warehouse automation operation process and comprehensively optimises storage efficiency, storage density and flexibility.
Aplications: 3PL, apparel, e-commerce, retail, manufacturing, electronics, pharmaceuticals, energy and other industries.
* Various sizes are supported and can be customised.

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