A computational investigation of DMSO/water separation through functionalized GO multilayer nanosheet membrane using molecular dynamics simulation and deep neural network model for membrane performance prediction

Chemosphere. 2024 Feb:349:140802. doi: 10.1016/j.chemosphere.2023.140802. Epub 2023 Dec 2.

Abstract

In this molecular dynamics (MD) simulation study, the separation of dimethyl sulfoxide (DMSO) from water was investigated using multilayer functionalized graphene oxide (GO) membranes. The GO nanosheets were modified with chemical groups (-F, -H) to alter their properties. The study analyzed the influence of pressure and functional groups on the separation rate. Additionally, a deep neural network (DNN) model was developed to predict membrane behavior under different conditions in water treatment processes. Results revealed that the fluorine-functionalized membrane exhibited higher permeation compared to the hydrogen-functionalized one, with potential of mean force (PMF) analysis indicating higher energy barriers for water molecules passing through the hydrogen-functionalized membrane. The study used density profile, water density map analysis, and radial distribution function (RDF) analysis to understand water and DMSO molecule interactions. The diffusion coefficient of water molecules was also calculated, showing higher diffusion in the fluorine-functionalized system. Overall, the findings suggest that functionalized GO membranes are effective for DMSO-water separation, with the fluorine-functionalized membrane showing superior performance. The DNN model accurately predicts membrane behavior, contributing to the optimization of membrane separation systems.

Keywords: Deep neural network; Molecular dynamic simulation; Multilayer GO membrane; Water treatment.

MeSH terms

  • Dimethyl Sulfoxide* / chemistry
  • Fluorine
  • Hydrogen
  • Molecular Dynamics Simulation*
  • Neural Networks, Computer

Substances

  • Dimethyl Sulfoxide
  • graphene oxide
  • Fluorine
  • Hydrogen