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The Use of Multivariate Data Analysis (HCA and PCA) to Characterize Ashes from Biomass Combustion

Małgorzata Szczepanik, Joanna Szyszlak-Bargłowicz, Grzegorz Zając, Adam Koniuszy, Małgorzata Hawrot-Paw, Artur Wolak

2021Energies17 citationsDOIOpen Access PDF

Abstract

The content of heavy metals Cd, Cr, Cu, Fe, Ni, Pb and Zn in ash samples from miscanthus, oak, pine, sunflower husk, wheat straw, and willow ashes burned at 500, 600, 700, 800, 900, and 1000 °C, respectively, was determined. The statistical analysis of the results was based on multivariate methods: hierarchical cluster analysis (HCA), and principal component analysis (PCA), which made it possible to classify the raw materials ashed at different temperatures into the most similar groups, and to study the structure of data variability. Using PCA, three principal components were extracted, which explain more than 88% of the variability of the studied elements. Therefore, it can be concluded that the application of multivariate statistical techniques to the analysis of the results of the study of heavy metal content allowed us to draw conclusions about the influence of biomass properties on its chemical characteristics during combustion.

Topics & Concepts

Principal component analysisMultivariate statisticsHuskCombustionStrawMultivariate analysisBiomass (ecology)ChemometricsEnvironmental scienceStatistical analysisChemistryEnvironmental chemistryMathematicsAgronomyStatisticsBotanyChromatographyBiologyOrganic chemistryInorganic chemistryThermochemical Biomass Conversion ProcessesCoal and Its By-productsAnalysis of environmental and stochastic processes
The Use of Multivariate Data Analysis (HCA and PCA) to Characterize Ashes from Biomass Combustion | Litcius