Neural networks for X-ray scattering analysis of wood materials (NNxWOOD)

Bidragets beskrivning

The aim of the project is to develop new machine learning based methods for analysing X-ray scattering data from wood materials. Wood and other plant-based renewable resources play an important role in sustainable development. More detailed information on the structure of wood and its cell walls would support its use in the new applications. Methods based on X-ray scattering and imaging can create a more accurate image of wood structure than seen before, but analysing the enormous amounts of data produced by them is not possible without automization. In this project, we develop data analysis methods to efficiently analyse large quantities of X-ray scattering data from wood samples using machine learning and especially neural networks. Our target is to find new interpretations of X-ray scattering data measured from wood materials, and to understand structural differences between different types of wood tissue and cells as well as how they connect with the moisture behaviour of wood.
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Startår

2021

Slutår

2026

Beviljade finansiering

Paavo Penttilä Orcid -palvelun logo
447 650 €

Andra beslut

359908
Akademiforskarens forskningskostnader(2024)
159 825 €
346577
Akademiforskarens forskningskostnader(2021)
240 000 €

Finansiär

Finlands Akademi

Typ av finansiering

Akademiforskare

Övriga uppgifter

Finansieringsbeslutets nummer

338804

Vetenskapsområden

Materialteknik

Forskningsområden

Puu- ja paperimateriaalit

Identifierade teman

forestry, wood, timber