RFC authorized distributor of Gausium floor cleaner robots , Scrubbers & vacuum - Carolina United States

AI-Powered Robotic Cleaning Technology

Step into the future of facility maintenance with our advanced AI cleaning robot technology. As your authorized Gausium distributor, we bring you smart cleaning robots built on a platform of continuous innovation.

These intelligent systems combine sophisticated navigation and cloud-based management to deliver consistent, reliable cleaning. Best of all, our partnership ensures you get cutting-edge robotic floor cleaner technology backed by comprehensive local support and expertise.

Mapping & Localization

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Intelligent 3D Perception: Your Facility, Understood

What if your robotic floor cleaner could truly comprehend its surroundings? Well, ours do. Using deep-learning algorithms, our advanced AI processes environmental data to make intelligent decisions. In practice, this means your autonomous floor cleaner can distinguish between different obstacles with remarkable accuracy.

For instance, it will navigate around a stray cord but roll right over a speed bump. When it detects a spill, it automatically switches to spot-cleaning mode. The result is a cleaning partner that continuously learns and adapts to your facility's unique layout.

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Path Planning

Adaptive Navigation: Precision Cleaning for Every Space

Path planning for cleaning robots presents a unique challenge: ensuring complete coverage of the operational area while continuously adapting to environmental changes and dynamic obstacles. Gausium addresses this with industry-leading planning algorithms that support five versatile modes—Teach & Follow, Sketch, Auto Cover, Real-time Auto Cover, and Auto Spot Cleaning.
These modes empower users to fully customize their cleaning strategies. Environments can be divided into smaller zones, with the most suitable path planning mode applied to each zone based on its specific conditions, enabling precise, efficient, and adaptable cleaning.
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Smooth Motion Control

With high-precision sensors, well-tuned algorithms and elaborate mechanical design, every Gausium robot features smooth starts and stops, flexible turning, strong passability and gradeability.

Teach & Follow

The operator programs the path by driving the robot manually, and the robot records the generated path in real-time. The robot replicates the recorded path in subsequent cleaning tasks while automatically avoiding new obstacles. This ensures consistent cleaning performance with minimal human intervention.

Made with care

Backtracking spiral filling: Like Auto Cover, but the operator does not have to drive the robot for deployment. Instead, they draw a box on the map to specify the cleaning region and the robot will automatically clean all the passable areas inside the region in each operation.

Auto Spot Cleaning

Auto point to point: The robot constantly scans the cleanliness of the nearby floor and automatically performs spot cleaning whenever detecting wastes or stains. By cleaning only where it is needed, it brings up to 4X efficiency improvement and significantly reduces water and power consumption.

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Unlimited Mapping & Dynamic Localization

Upon initial deployment, Gausium robots will start navigate the landscape and create a semantic map of the site. No location tag, laptop connection or professional engineer is needed for mapping the site.

Supported by high-precision LiDARs and cameras, Gausium robots offer industry-leading capability of mapping and localization, in terms of accuracy and robustness, and efficiency. In a dynamic environment, Gausium robots will locate themselves and update the map in real time.

Precise localization (±2cm) using LiDAR

Super-fast mapping : 30 minutes to map a 2,000m² site

Unlimited mapping area up to 1,000,000m²

Real-time map updates in dynamic environments