Waste wood sorting systems
Wood is a high performance and versatile raw material used in building, construction, furniture, paper, automotive interiors and renewable energy. Today, only 15 percent of the 16 million metric tons of waste wood created annually worldwide is recycled. With conventional methods, premium wood grades are downcycled or used as biomass fuel for energy.
Our deep learning-based sorting technology is a gamechanger in separating untreated wood from impurities. By sorting solid wood from wood-based materials (chipboard, plywood, MDF) into individual fractions, waste wood can be optimally recycled into new products. As the first in the market to offer deep learning to enable the material recycling of waste wood, our sorting technology helps you create new high-value revenue streams.
Wood chips
As the world's first sorting system to use deep learning technology to detect and separate wood types, we help you produce high purity Wood A (non-processed wood) and Wood B (processed wood composites) fractions. With our sorting technology, you can efficiently sort clean wood from engineered wood composites regardless of the infeed stream.
Wood A vs Wood B & MDF Separation
Medium-density fiberboards (MDF) can also be effectively separated with our waste wood sorting systems, ensuring the cascading use of this material in applications such as packaging. Our robust and flexible sorting systems are designed to meet your requirements, whether creating a clean, non-processed wood or high purity wood composite fractions.
Wood sorting machines
AUTOSORT™
-
Multifunctional sensor configuration
-
Optimized costs & performance
-
Highly efficient FLYING BEAM™
-
Future-proof system design
-
Minimal maintenance
X-TRACT™ for Wood
-
Up to 30 metric ton capacity
-
16.000 hour warranty
-
New DUOLINE™ XRT sensor
-
Improved stability and reliability
-
High operational efficiency
GAINnext™
-
AI waste sorting
-
Identifies hard-to-classify objects
-
Enables new material streams
-
Automates manual sorting
-
Wide application ecosystem