1. Multivariate comparison of reverse osmosis and nanofiltration membranes through tree cluster analysis
- Author
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Raffaella Firpo, Gustavo Capannelli, Claudia Cattaneo, Alessio Voena, Marco Tagliabue, Aldo Bottino, Anna Jezowska, and Roberto Bagatin
- Subjects
Engineering ,Multivariate statistics ,ComputingMethodologies_SIMULATIONANDMODELING ,business.industry ,Feature vector ,Analytical chemistry ,Ocean Engineering ,Pattern recognition ,02 engineering and technology ,021001 nanoscience & nanotechnology ,Pollution ,Chemometrics ,Euclidean distance ,ComputingMethodologies_PATTERNRECOGNITION ,Membrane ,020401 chemical engineering ,Cluster (physics) ,Nanofiltration ,Artificial intelligence ,0204 chemical engineering ,0210 nano-technology ,business ,Reverse osmosis ,Water Science and Technology - Abstract
Experimental trials are usually needed to integrate information reported on data sheets in order to properly drive membrane choice. It results in data-sets where each membrane is characterised by several performance descriptors. Multivariate data-mining (i.e. chemometrics) effectiveness in analysing such data-sets has been demonstrated through the comparison of seven commercial membranes. Each membrane was represented as an object described by 15 features got from trials with different single-component test solutions. Tree cluster analysis based on Ward amalgamation method was employed for multivariate data mining. The algorithm progressively grouped the membranes in clusters, adopting the Euclidean distance in the 15-dimensional feature space as a measure of similarity. Thus, a graphical output consisting into a similarity tree representing the membrane taxonomy was obtained. A restricted number of membranes, selected as representatives of each identified cluster, underwent to further experiments...
- Published
- 2015
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