Normalised Similarity Assessment to Inform Grouping of Advanced Multi-Component Nanomaterials by Means of an Asymmetric Sigmoid Function

14 Pages Posted: 29 Mar 2024

See all articles by Alex Zabeo

Alex Zabeo

affiliation not provided to SSRN

Georgia Tsiliki

Purposeful IKE

Andrea Brunelli

Ca Foscari University of Venice

Elena Badetti

Ca Foscari University of Venice

José Balbuena

affiliation not provided to SSRN

Danail Hristozov

affiliation not provided to SSRN

Abstract

This manuscript presents a procedure for similarity assessment as a basis for grouping of multi component nanomaterials (MCNMs). This methodology is an adaptation of the approach by Zabeo et al. (2022), which includes an impactful change: the calculated similarities are normalised in the [0,1] domain by means of asymmetric Logistic scaling to simplify comparisons among properties’ distances. This novel approach allows for grouping of nanomaterials that is not affected by the dataset, so that group membership will not change when new candidates are included in the set of assessed materials. It can be applied to assess groups of MCNMs as well as mixed groups of multi and single component nanomaterials as well as chemicals. To facilitate the application of the proposed methodology, a software script was developed by using the Python programming language, which is currently undergoing migration to a user-friendly web-based tool. The presented approach was tested against a real industrial case study provided by the Andalusian Innovation Centre for Sustainable Solution (CIAC): SiO2-ZnO hybrid nanocomposite used in building coatings, which is designed to facilitate photocatalytic removal of NOx gases from the atmosphere. The results of applying the methodology in the case study demonstrated that ZnO is dissimilar from the other candidates mainly due to its different dissolution profiles.

Keywords: Multi-component Nanomaterials, Similarity assessment, Grouping, Weight Of Evidence

Suggested Citation

Zabeo, Alex and Tsiliki, Georgia and Brunelli, Andrea and Badetti, Elena and Balbuena, José and Hristozov, Danail, Normalised Similarity Assessment to Inform Grouping of Advanced Multi-Component Nanomaterials by Means of an Asymmetric Sigmoid Function. Available at SSRN: https://ssrn.com/abstract=4777405 or http://dx.doi.org/10.2139/ssrn.4777405

Alex Zabeo (Contact Author)

affiliation not provided to SSRN ( email )

No Address Available

Georgia Tsiliki

Purposeful IKE ( email )

Andrea Brunelli

Ca Foscari University of Venice ( email )

Elena Badetti

Ca Foscari University of Venice ( email )

José Balbuena

affiliation not provided to SSRN ( email )

No Address Available

Danail Hristozov

affiliation not provided to SSRN ( email )

No Address Available

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