Abstract

Wood chips are extensively utilised as raw material for the pulp and bio-fuel industry, and advanced material analyses may improve the processes in utilizing these products. Electrical impedance spectroscopy (EIS) combined with machine learning was used in order to analyse heartwood content of pine chips and bark content of birch chips. A novel electrode system integrated in a sampling container was developed for the testing using frequency range 42 Hz–5 MHz. Three electrode pairs were used to measure the samples in x-, y- and z-direction. Three machine learning methods were used: K-nearest neighbor (KNN), decision tree (DT) and support vector machines (SVM). The heartwood content of pine chips and bark content of birch chips were classified with an accuracy of 91% using EIS from pure materials combined with a k-nearest neighbour classifier. When using mixed materials and multiple classes, 73% correct classification for pine heartwood content (four groups) and 64% for birch bark content (five groups) were achieved.

Highlights

  • The variety of solid bio-based raw materials has rapidly extended during the last decade

  • This study showed that it is possible to classify materials according to their electrical impedance spectrum, and it will be possible to determine more accurate models for moisture content (MC), as one of the main issues affecting the accuracy of MC determination is the inhomogeneity of the studied material

  • It was not possible to distinguish small levels of bark or heartwood content if MC range was from 0–60% but pure materials were distinguished from each other

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Summary

Introduction

The variety of solid bio-based raw materials has rapidly extended during the last decade. This means a large variation of quality and specific properties. Wood chips are extensively utilised as a raw material for many bio-refining industrial processes, including bio-energy production, pulp and liquid bio-fuel industry. High quality wood chips used for pulp production are commonly known as pulp chips. If the properties of chip materials are known beforehand, the processes may be improved, for example by adjusting the amount of chemicals. Large amount of resins or bark may cause problems in bio-refining processes

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