PiNNwall: Heterogeneous Electrode Models from Integrating Machine Learning and Atomistic Simulation.
Thomas DufilsLisanne KnijffYunqi ShaoChao ZhangPublished in: Journal of chemical theory and computation (2023)
Electrochemical energy storage always involves the capacitive process. The prevailing electrode model used in the molecular simulation of polarizable electrode-electrolyte systems is the Siepmann-Sprik model developed for perfect metal electrodes. This model has been recently extended to study the metallicity in the electrode by including the Thomas-Fermi screening length. Nevertheless, a further extension to heterogeneous electrode models requires introducing chemical specificity, which does not have any analytical recipes. Here, we address this challenge by integrating the atomistic machine learning code (PiNN) for generating the base charge and response kernel and the classical molecular dynamics code (MetalWalls) dedicated to the modeling of electrochemical systems, and this leads to the development of the PiNNwall interface. Apart from the cases of chemically doped graphene and graphene oxide electrodes as shown in this study, the PiNNwall interface also allows us to probe polarized oxide surfaces in which both the proton charge and the electronic charge can coexist. Therefore, this work opens the door for modeling heterogeneous and complex electrode materials often found in energy storage systems.
Keyphrases
- carbon nanotubes
- machine learning
- solid state
- molecular dynamics
- molecular dynamics simulations
- gold nanoparticles
- ionic liquid
- quantum dots
- artificial intelligence
- escherichia coli
- molecularly imprinted
- staphylococcus aureus
- solar cells
- deep learning
- pseudomonas aeruginosa
- biofilm formation
- highly efficient
- simultaneous determination