Articles producció científicaEnginyeria Química

Assessing Viscosity in Sustainable Deep Eutectic Solvents and Cosolvent Mixtures: An Artificial Neural Network-Based Molecular Approach

  • Identification data

    Identifier:  imarina:9405936
    Authors:  de Alencar, LVTD; Rodríguez-Reartes, SB; Tavares, FW; Llovell, F
    Abstract:
    Deep eutectic solvents (DESs) are gaining recognition as environmentally friendly solvent alternatives for diverse chemical processes. Yet, designing DESs tailored to specific applications is a resource-intensive task, which requires an accurate estimation of their physicochemical properties. Among them, viscosity is crucial, as it often dictates a DES's suitability as a solvent. In this study, an artificial neural network (ANN) is introduced to accurately describe the viscosity of DESs and their mixtures with cosolvents. The ANN utilizes molecular parameters derived from sigma-profiles, computed using the conductor-like screening model for the real solvent segment activity coefficient (COSMO-SAC). The data set comprises 1891 experimental viscosity measurements for 48 DESs based on choline chloride, encompassing 279 different compositions, along with 1618 data points of DES mixtures with cosolvents as water, methanol, isopropanol, and dimethyl sulfoxide, covering a wide range of viscosity measurements from 0.3862 to 4722 mPa s. The optimal ANN structure for describing the logarithmic viscosity of DESs is configured as 9-19-16-1, achieving an overall average absolute relative deviation of 1.6031%. More importantly, the ANN shows a remarkable extrapolation capacity, as it is capable of predicting the viscosity of systems including solvents (ethanol) and hydrogen bond donors (2,3-butanediol) not considered in the training. The ANN model also demonstrates an extensive applicability domain, covering 94.17% of the entire database. These achievements represent a significant step forward in developing robust, open source, and highly accurate models for DESs using molecular descriptors.
  • Others:

    Link to the original source: https://pubs.acs.org/doi/10.1021/acssuschemeng.3c07219
    APA: de Alencar, LVTD; Rodríguez-Reartes, SB; Tavares, FW; Llovell, F (2024). Assessing Viscosity in Sustainable Deep Eutectic Solvents and Cosolvent Mixtures: An Artificial Neural Network-Based Molecular Approach. ACS Sustainable Chemistry & Engineering, 12(21), 7987-8000. DOI: 10.1021/acssuschemeng.3c07219
    Paper original source: ACS Sustainable Chemistry & Engineering. 12 (21): 7987-8000
    Article's DOI: 10.1021/acssuschemeng.3c07219
    Journal publication year: 2024-05-13
    Entity: Universitat Rovira i Virgili
    Paper version: info:eu-repo/semantics/publishedVersion
    Record's date: 2026-05-09
    URV's Author/s: Llovell Ferret, Fèlix Lluís
    Department: Enginyeria Química
    Licence document URL: https://repositori.urv.cat/ca/proteccio-de-dades/
    Publication Type: Journal Publications
    Author, as appears in the article.: de Alencar, LVTD; Rodríguez-Reartes, SB; Tavares, FW; Llovell, F
    licence for use: https://creativecommons.org/licenses/by/3.0/es/
    Thematic Areas: Renewable energy, sustainability and the environment, Green & sustainable science & technology, General chemistry, General chemical engineering, Environmental chemistry, Engineering, chemical, Chemistry, multidisciplinary, Chemistry (miscellaneous), Chemistry (all), Chemical engineering (miscellaneous), Chemical engineering (all), Astronomia / física, Administração pública e de empresas, ciências contábeis e turismo
    Author's mail: felix.llovell@urv.cat, felix.llovell@urv.cat
  • Keywords:

    Viscosity
    Validatio
    Thermophysical properties
    Prediction
    Physicochemical properties
    Machinelearning
    Machine learning
    Ionic liquids
    Intelligence
    Densities
    Deep eutectic solvents
    Cosmo-sac
    Cosmo-sa
    Conductivity
    Choline chloride
    Artificial neural network
    Aqueous mixtures
    Chemical Engineering (Miscellaneous)
    Chemistry (Miscellaneous)
    Chemistry
    Multidisciplinary
    Engineering
    Chemical
    Environmental Chemistry
    Green & Sustainable Science & Technology
    Renewable Energy
    Sustainability and the Environment
    General chemistry
    General chemical engineering
    Chemistry (all)
    Chemical engineering (all)
    Astronomia / física
    Administração pública e de empresas
    ciências contábeis e turismo
  • Documents:

  • Cerca a google

    Search to google scholar