Physics Enhanced Data-Driven Models With Variational Gaussian Processes

被引:2
作者
Marino, Daniel L. [1 ]
Manic, Milos [1 ]
机构
[1] Virginia Commonwealth Univ, Dept Comp Sci, Richmond, VA 23284 USA
来源
IEEE OPEN JOURNAL OF THE INDUSTRIAL ELECTRONICS SOCIETY | 2021年 / 2卷
关键词
Data models; Predictive models; Mathematical model; Gaussian processes; Uncertainty; Industrial electronics; Estimation; Bayesian neural networks; domain knowledge; Gaussian process; uncertainty; variational inference; SYSTEM-IDENTIFICATION; BOX;
D O I
10.1109/OJIES.2021.3064820
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Centuries of development in natural sciences and mathematical modeling provide valuable domain expert knowledge that has yet to be explored for the development of machine learning models. When modeling complex physical systems, both domain knowledge and data provide necessary information about the system. In this paper, we present a data-driven model that takes advantage of partial domain knowledge in order to improve generalization and interpretability. The presented approach, which we call EVGP (Explicit Variational Gaussian Process), has the following advantages: 1) using available domain knowledge to improve the assumptions (inductive bias) of the model, 2) scalability to large datasets, 3) improved interpretability. We show how the EVGP model can be used to learn system dynamics using basic Newtonian mechanics as prior knowledge. We demonstrate how the addition of prior domain-knowledge to data-driven models outperforms purely data-driven models.
引用
收藏
页码:252 / 265
页数:14
相关论文
共 37 条
  • [1] Peeking Inside the Black-Box: A Survey on Explainable Artificial Intelligence (XAI)
    Adadi, Amina
    Berrada, Mohammed
    [J]. IEEE ACCESS, 2018, 6 : 52138 - 52160
  • [2] Bijl H, 2017, IFAC J SYST CONTROL, V2, P1, DOI 10.1016/j.ifacsc.2017.09.001
  • [3] Combining machine learning and process engineering physics towards enhanced accuracy and explainability of data-driven models
    Bikmukhametov, Timur
    Jaschke, Johannes
    [J]. COMPUTERS & CHEMICAL ENGINEERING, 2020, 138
  • [4] Calandra R, 2016, IEEE IJCNN, P3338, DOI 10.1109/IJCNN.2016.7727626
  • [5] Damianou AC, 2016, J MACH LEARN RES, V17, P1
  • [6] Deep learning for physical processes: incorporating prior scientific knowledge
    de Bezenac, Emmanuel
    Pajot, Arthur
    Gallinari, Patrick
    [J]. JOURNAL OF STATISTICAL MECHANICS-THEORY AND EXPERIMENT, 2019, 2019 (12):
  • [7] Deisenroth M., 2011, P INT C MACH LEARN I, P465
  • [8] LEAP nets for system identification and application to power systems
    Donon, B.
    Donnot, B.
    Guyon, I.
    Liu, Z.
    Marot, A.
    Panciatici, P.
    Schoenauer, M.
    [J]. NEUROCOMPUTING, 2020, 416 : 316 - 327
  • [9] Frigola R, 2014, ADV NEUR IN, V27
  • [10] Gal Y., 2016, DATA EFFICIENT MACHI