High accuracy uncertainty-aware interatomic force modeling with equivariant Bayesian neural networks

被引:0
|
作者
Rensmeyer, Tim [1 ]
Craig, Ben [2 ]
Kramer, Denis [1 ]
Niggemann, Oliver [1 ]
机构
[1] Helmut Schmidt Univ, Hamburg, Germany
[2] Univ Southampton, Southampton, England
来源
DIGITAL DISCOVERY | 2024年 / 3卷 / 11期
关键词
D O I
10.1039/d4dd00183d
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Ab initio molecular dynamics simulations of material properties have become a cornerstone in the development of novel materials for a wide range of applications such as battery technology and catalysis. Unfortunately, their high computational demand can make them unsuitable in many applications. Consequently, surrogate modeling via neural networks has become an active field of research. Two of the major obstacles to their practical application in many cases are assessing the reliability of the neural network predictions and the difficulty of generating suitable datasets to train the neural network in the first place. Bayesian neural networks offer a promising framework for modeling uncertainty, active learning and improving data efficiency and robustness by incorporating prior physical knowledge. However, due to the high computational demand and slow convergence of the gold standard approach of Monte Carlo Markov Chain (MCMC) sampling methods, variational inference via Monte Carlo dropout is currently the only sampling method successfully applied in this domain. Since MCMC methods have often displayed a superior quality in their uncertainty quantification, developing a suitable MCMC method in this domain would be a significant advance in making neural network-based molecular dynamics simulations more practically viable. In this paper, we demonstrate that convergence for state-of-the-art models with high-quality MCMC methods can still be achieved in a practical amount of time by introducing a novel parameter-specific adaptive step size scheme. In addition, we introduce a new stochastic neural network model based on the NequIP architecture and demonstrate that, when combined with our novel sampling algorithm, we obtain predictions with state-of-the-art accuracy as well as a significantly improved measure of uncertainty over Monte Carlo dropout. Lastly, we show that the proposed algorithm can even outperform deep ensembles while sampling from a single Markov chain. We demonstrate, that by using a novel adaptive step size method, high-quality Bayesian neural network inference via Markov chain sampling becomes practically viable for equivariant neural network architectures without a cold posterior effect.
引用
收藏
页码:2356 / 2366
页数:11
相关论文
共 50 条
  • [21] Federated learning meets Bayesian neural network: Robust and uncertainty-aware distributed variational inference
    Li, Pengfei
    Hu, Qinghua
    Wang, Xiaofei
    NEURAL NETWORKS, 2025, 185
  • [22] Uncertainty-Aware Robust Adaptive Video Streaming with Bayesian Neural Network and Model Predictive Control
    Kan, Nuowen
    Li, Chenglin
    Yang, Caiyi
    Dai, Wenrui
    Zou, Junni
    Xiong, Hongkai
    PROCEEDINGS OF THE 31ST ACM WORKSHOP ON NETWORK AND OPERATING SYSTEMS SUPPORT FOR DIGITAL AUDIO AND VIDEO (NOSSDAV '21), 2021, : 18 - 24
  • [23] An Uncertainty-Aware Health Monitoring Model for Wind Turbine Drivetrains Based On Bayesian Neural Network
    Amin, Abdelrahman
    Bibo, Amin
    Panyam, Meghashyam
    Tallapragada, Phanindra
    IFAC PAPERSONLINE, 2023, 56 (03): : 235 - 240
  • [24] NPCL: Neural Processes for Uncertainty-Aware Continual Learning
    Jha, Saurav
    Gong, Dong
    Zhao, He
    Yao, Lina
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 36 (NEURIPS 2023), 2023,
  • [25] Bayesian Approaches for Efficient and Uncertainty-Aware Prediction of Pressure Distributions
    Anhichem, Mehdi
    Timme, Sebastian
    Castagna, Jony
    Peace, Andrew J.
    Maina, Moira
    AIAA SCITECH 2024 FORUM, 2024,
  • [26] An uncertainty-aware, shareable, and transparent neural network architecture for brain-age modeling
    Hahn, Tim
    Ernsting, Jan
    Winter, Nils R.
    Holstein, Vincent
    Leenings, Ramona
    Beisemann, Marie
    Fisch, Lukas
    Sarink, Kelvin
    Emden, Daniel
    Opel, Nils
    Redlich, Ronny
    Repple, Jonathan
    Grotegerd, Dominik
    Meinert, Susanne
    Hirsch, Jochen G.
    Niendorf, Thoralf
    Endemann, Beate
    Bamberg, Fabian
    Kroencke, Thomas
    Buelow, Robin
    Voelzke, Henry
    von Stackelberg, Oyunbileg
    Sowade, Ramona Felizitas
    Umutlu, Lale
    Schmidt, Boerge
    Caspers, Svenja
    Kugel, Harald
    Kircher, Tilo
    Risse, Benjamin
    Gaser, Christian
    Cole, James H.
    Dannlowski, Udo
    Berger, Klaus
    SCIENCE ADVANCES, 2022, 8 (01)
  • [27] Uncertainty-Aware Semantic Augmentation for Neural Machine Translation
    Wei, Xiangpeng
    Yu, Heng
    Hu, Yue
    Weng, Rongxiang
    Xing, Luxi
    Luo, Weihua
    PROCEEDINGS OF THE 2020 CONFERENCE ON EMPIRICAL METHODS IN NATURAL LANGUAGE PROCESSING (EMNLP), 2020, : 2724 - 2735
  • [28] A Probabilistic Framework for Uncertainty-Aware High-Accuracy Precision Grasping of Unknown Objects
    Dong Chen
    Vincent Dietrich
    Ziyuan Liu
    Georg von Wichert
    Journal of Intelligent & Robotic Systems, 2018, 90 : 19 - 43
  • [29] Quantifying the structure of strong gravitational lens potentials with uncertainty-aware deep neural networks
    Vernardos, Georgios
    Tsagkatakis, Grigorios
    Pantazis, Yannis
    MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY, 2020, 499 (04) : 5641 - 5652
  • [30] A Probabilistic Framework for Uncertainty-Aware High-Accuracy Precision Grasping of Unknown Objects
    Chen, Dong
    Dietrich, Vincent
    Liu, Ziyuan
    von wichert, Georg
    JOURNAL OF INTELLIGENT & ROBOTIC SYSTEMS, 2018, 90 (1-2) : 19 - 43