English
 
Help Privacy Policy Disclaimer
  Advanced SearchBrowse

Item

ITEM ACTIONSEXPORT
  Tailoring complexity for catalyst discovery using physically motivated machine learning

Xu, W. (2022). Tailoring complexity for catalyst discovery using physically motivated machine learning. PhD Thesis, Technische Universität, München.

Item is

Files

show Files
hide Files
:
XU_document.pdf (Any fulltext), 13MB
Name:
XU_document.pdf
Description:
-
OA-Status:
Miscellaneous
Visibility:
Public
MIME-Type / Checksum:
application/pdf / [MD5]
Technical Metadata:
Copyright Date:
-
Copyright Info:
-
License:
-

Locators

show

Creators

show
hide
 Creators:
Xu, Wenbin1, Author           
Reuter, Karsten1, Referee           
Heiz, Ulrich K., Referee
Hofmann, Oliver T., Referee
Affiliations:
1Theory, Fritz Haber Institute, Max Planck Society, ou_634547              

Content

show
hide
Free keywords: -
 Abstract: High-performing heterogeneous catalysts are key to a greener chemical industry and future sustainability. In-silico catalyst screening and discovery provide efficient and cost-effective solutions for finding suitable catalysts. Their implementations are commonly driven by the use of quantum mechanical calculations (density functional theory, DFT) to predict catalytic properties. Unfortunately, these calculations are prohibitively computationally demanding, thus incapable of searching the huge chemical space. As an alternative, earlier developed data-driven approaches, e.g., linear scaling relations (LSRs) that bypass fully explicit DFT calculations, have made notable advancements to expedite catalyst discovery on simple catalyst systems, e.g., transition metals (TMs) and monodentate adsorbates. However, given the intrinsic complexity of heterogeneous catalysis, such oversimplified approaches are not applicable for complex catalyst materials and reaction networks in terms of predictive accuracy. The emergence of machine learning (ML) has opened the road to tackling more realistic models of heterogeneous catalysts.
In this publication-based thesis, we seek to develop physics-motivated machine learning models to address the complexity of materials and adsorbates for screening heterogeneous catalysts with a particular focus on transition metal oxides (TMOs) and larger adsorbates that may exhibit mono-, bi- or higher-dentate adsorption motifs at TMs. The ML methods employed range from the Compressed Sensing SISSO method, which seeks descriptors in the form of analytical functions, to Gaussian Process Regression (GPR) with a physics-inspired graph representation. The resulting predictive accuracy that is on par with quantum mechanical calculations, along with great adaptability of these models, make them promising for finding high-performing catalysts across a broad class of materials and complex reaction networks.

Details

show
hide
Language(s): eng - English
 Dates: 2022-11-07
 Publication Status: Accepted / In Press
 Pages: viii, 450
 Publishing info: München : Technische Universität
 Table of Contents: -
 Rev. Type: -
 Identifiers: URN: urn:nbn:de:bvb:91-diss-20221125-1689045-1-4
URI: https://mediatum.ub.tum.de/?id=1689045
 Degree: PhD

Event

show

Legal Case

show

Project information

show

Source

show