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ExpoFiber - exposure of detailed quality information from fiber distribution data

Reference number
Coordinator Mittuniversitetet - Fakulteten för naturvetenskap teknik & medier
Funding from Vinnova SEK 5 000 000
Project duration March 2023 - February 2026
Status Ongoing
Venture Strategic innovation programme for process industrial IT and automation – PiiA
Call PiiA: The Process Industry of the Future-Data-Driven and Sustainable - Autumn 2022

Purpose and goal

A crucial step in the transition to a bio-based circular economy is to broaden the use of wood fiber-based materials, to replace, e.g., fossil-based packaging. We want to make more wood fiber material with more even quality available at lower energy use by utilizing measurements of individual fiber properties in pulp production. This is made possible through modern analysis, visualization, and machine learning methods for large amounts of data on site in the pulp mill.

Expected effects and result

An upgraded full-scale system for controlling pulp production based on individual fiber properties will be demonstrated in the factory. There, the pulping process is directed toward improved utilization, energy efficiency and higher and more even product quality. The fiber raw material, which is a renewable but limited resource, will thus be better utilized, and become available for more product types with a lower carbon footprint.

Planned approach and implementation

At the pulp mills Skoghall and Braviken, the pulp fibers are measured on an individual level using optical methods online. Unprocessed fibers from the wood raw material are also measured in a laboratory. In the big data sets, which include distributions of particle properties, there is information about how the fibers are processed and what the effects on product quality. We develop modern visualization and analysis methods for process control toward even quality and lower energy consumption.

The project description has been provided by the project members themselves and the text has not been looked at by our editors.

Last updated 22 March 2023

Reference number 2022-03597