Robust Topological Descriptors for Machine Learning Prediction of Guest Adsorption in Nanoporous Materials

01/16/2020
by   Aditi S. Krishnapriyan, et al.
1

In recent years, machine learning (ML) for predicting material properties has emerged as a quicker alternative to experimental and simulation-based investigations. Standard ML approaches tend to utilize specific domain knowledge when designing feature inputs. Each ML property predictor then requires a set of tailored structural features - this can commonly lead to drawbacks, due to the small number of implemented features and their lack of prediction transferability across different predictors. The latter has been empirically observed in the case of guest uptake predictors for nanoporous materials, where local and global porosity features become dominant descriptors at low and high pressures, respectively. Here, we provide a more holistic feature representation for materials structures using tools from topological data analysis and persistent homology to describe the geometry and topology of nanoporous materials at various scales. We demonstrate an application of these topology-based feature representations to predict methane uptakes for zeolite structures in the range of 1-200 bar. These predictions show a root-mean-square deviation decrease of up to 50 pressures in comparison to a model based on commonly used local and global features. Similarly, the topology-based model shows an increase of 0.2-0.3 in R2 score in comparison to the commonly used porosity descriptors. Notably, unlike the standard porosity features, the topology-based features show accuracy across multiple different pressures. Furthermore, we show feature importance in terms of different topological features, thus elucidating information about the channel and pore sizes that correlate best to adsorption properties. Finally, we demonstrate that ML models relying on a combination of topological and commonly employed descriptors provide even better guest uptake regressors.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/01/2020

Persistent homology advances interpretable machine learning for nanoporous materials

Machine learning for nanoporous materials design and discovery has emerg...
research
02/08/2019

Classifying and analysis of random composites using structural sums feature vector

The main goal of this paper is to present the application of structural ...
research
11/09/2021

A Topological Data Analysis Based Classifier

Topological Data Analysis (TDA) is an emergent field that aims to discov...
research
01/14/2022

Formula graph self-attention network for representation-domain independent materials discovery

The success of machine learning (ML) in materials property prediction de...
research
02/07/2021

Classification based on Topological Data Analysis

Topological Data Analysis (TDA) is an emergent field that aims to discov...
research
12/21/2020

Nonstationarity Analysis of Materials Microstructures via Fisher Score Vectors

Microstructures are critical to the physical properties of materials. St...
research
05/17/2022

Predicting failure characteristics of structural materials via deep learning based on nondestructive void topology

Accurate predictions of the failure progression of structural materials ...

Please sign up or login with your details

Forgot password? Click here to reset