Matches in SemOpenAlex for { <https://semopenalex.org/work/W3168269570> ?p ?o ?g. }
- W3168269570 abstract "Geometry optimization is an important part of both computational materials and surface science because it is the path to finding ground state atomic structures and reaction pathways. These properties are used in the estimation of thermodynamic and kinetic properties of molecular and crystal structures. This process is slow at the quantum level of theory because it involves an iterative calculation of forces using quantum chemical codes such as density functional theory (DFT), which are computationally expensive and which limit the speed of the optimization algorithms. It would be highly advantageous to accelerate this process because then one could do either the same amount of work in less time or more work in the same time. In this work, we provide a neural network (NN) ensemble based active learning method to accelerate the local geometry optimization for multiple configurations simultaneously. We illustrate the acceleration on several case studies including bare metal surfaces, surfaces with adsorbates, and nudged elastic band for two reactions. In all cases, the accelerated method requires fewer DFT calculations than the standard method. In addition, we provide an Atomic Simulation Environment (ASE)-optimizer Python package to make the usage of the NN ensemble active learning for geometry optimization easier." @default.
- W3168269570 created "2021-06-22" @default.
- W3168269570 creator A5003442464 @default.
- W3168269570 creator A5008314876 @default.
- W3168269570 creator A5083861014 @default.
- W3168269570 date "2021-06-17" @default.
- W3168269570 modified "2023-10-17" @default.
- W3168269570 title "Machine-learning accelerated geometry optimization in molecular simulation" @default.
- W3168269570 cites W1975997599 @default.
- W3168269570 cites W1981368803 @default.
- W3168269570 cites W2007395042 @default.
- W3168269570 cites W2013183108 @default.
- W3168269570 cites W2025444507 @default.
- W3168269570 cites W2051434435 @default.
- W3168269570 cites W2054704030 @default.
- W3168269570 cites W2079105963 @default.
- W3168269570 cites W2083415705 @default.
- W3168269570 cites W2084066092 @default.
- W3168269570 cites W2098126561 @default.
- W3168269570 cites W2122427541 @default.
- W3168269570 cites W2164328312 @default.
- W3168269570 cites W2316524229 @default.
- W3168269570 cites W2515090858 @default.
- W3168269570 cites W2582607092 @default.
- W3168269570 cites W2601081289 @default.
- W3168269570 cites W2741906484 @default.
- W3168269570 cites W2746371905 @default.
- W3168269570 cites W2760744264 @default.
- W3168269570 cites W2783428669 @default.
- W3168269570 cites W2888202911 @default.
- W3168269570 cites W2901155091 @default.
- W3168269570 cites W2904144306 @default.
- W3168269570 cites W2924477604 @default.
- W3168269570 cites W2944649260 @default.
- W3168269570 cites W2945964866 @default.
- W3168269570 cites W3012230641 @default.
- W3168269570 cites W3017527572 @default.
- W3168269570 cites W3041419076 @default.
- W3168269570 cites W3046503435 @default.
- W3168269570 cites W3103364005 @default.
- W3168269570 cites W3105137560 @default.
- W3168269570 cites W3108847668 @default.
- W3168269570 cites W3115644547 @default.
- W3168269570 cites W3127877147 @default.
- W3168269570 cites W3193713069 @default.
- W3168269570 doi "https://doi.org/10.1063/5.0049665" @default.
- W3168269570 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/34241251" @default.
- W3168269570 hasPublicationYear "2021" @default.
- W3168269570 type Work @default.
- W3168269570 sameAs 3168269570 @default.
- W3168269570 citedByCount "24" @default.
- W3168269570 countsByYear W31682695702021 @default.
- W3168269570 countsByYear W31682695702022 @default.
- W3168269570 countsByYear W31682695702023 @default.
- W3168269570 crossrefType "journal-article" @default.
- W3168269570 hasAuthorship W3168269570A5003442464 @default.
- W3168269570 hasAuthorship W3168269570A5008314876 @default.
- W3168269570 hasAuthorship W3168269570A5083861014 @default.
- W3168269570 hasBestOaLocation W31682695701 @default.
- W3168269570 hasConcept C111919701 @default.
- W3168269570 hasConcept C121332964 @default.
- W3168269570 hasConcept C121864883 @default.
- W3168269570 hasConcept C147597530 @default.
- W3168269570 hasConcept C14961307 @default.
- W3168269570 hasConcept C152365726 @default.
- W3168269570 hasConcept C154945302 @default.
- W3168269570 hasConcept C185592680 @default.
- W3168269570 hasConcept C18762648 @default.
- W3168269570 hasConcept C2524010 @default.
- W3168269570 hasConcept C33923547 @default.
- W3168269570 hasConcept C41008148 @default.
- W3168269570 hasConcept C459310 @default.
- W3168269570 hasConcept C50644808 @default.
- W3168269570 hasConcept C519991488 @default.
- W3168269570 hasConcept C59593255 @default.
- W3168269570 hasConcept C62520636 @default.
- W3168269570 hasConcept C84114770 @default.
- W3168269570 hasConceptScore W3168269570C111919701 @default.
- W3168269570 hasConceptScore W3168269570C121332964 @default.
- W3168269570 hasConceptScore W3168269570C121864883 @default.
- W3168269570 hasConceptScore W3168269570C147597530 @default.
- W3168269570 hasConceptScore W3168269570C14961307 @default.
- W3168269570 hasConceptScore W3168269570C152365726 @default.
- W3168269570 hasConceptScore W3168269570C154945302 @default.
- W3168269570 hasConceptScore W3168269570C185592680 @default.
- W3168269570 hasConceptScore W3168269570C18762648 @default.
- W3168269570 hasConceptScore W3168269570C2524010 @default.
- W3168269570 hasConceptScore W3168269570C33923547 @default.
- W3168269570 hasConceptScore W3168269570C41008148 @default.
- W3168269570 hasConceptScore W3168269570C459310 @default.
- W3168269570 hasConceptScore W3168269570C50644808 @default.
- W3168269570 hasConceptScore W3168269570C519991488 @default.
- W3168269570 hasConceptScore W3168269570C59593255 @default.
- W3168269570 hasConceptScore W3168269570C62520636 @default.
- W3168269570 hasConceptScore W3168269570C84114770 @default.
- W3168269570 hasFunder F4320306076 @default.
- W3168269570 hasFunder F4320306084 @default.
- W3168269570 hasIssue "23" @default.
- W3168269570 hasLocation W31682695701 @default.
- W3168269570 hasLocation W31682695702 @default.