Gaussian process for estimating parameters of partial differential equations and its application to the Richards equation

被引:0
|
作者
Pankaj Kumar Rai
Shivam Tripathi
机构
[1] Indian Institute of Technology Kanpur,Department of Civil Engineering
关键词
Gaussian process; Partial differential equation; Inverse problem; Diffusion equation; Richards equation; Parameter estimation;
D O I
暂无
中图分类号
学科分类号
摘要
This paper proposes a new collocation method for estimating parameters of a partial differential equation (PDE), which uses Gaussian process (GP) as a basis function and is termed as Gaussian process for partial differential equation (GPPDE). The conventional method of estimating parameters of a differential equation is to minimize the error between observations and their estimates. The estimates are produced from the forward solution (numerical or analytical) of the differential equation. The conventional approach requires initial and boundary conditions, and discretization of differential equations if the forward solution is obtained numerically. The proposed method requires fitting a GP regression model to the observations of the state variable, then obtaining derivatives of the state variable using the property that derivative of a GP is also a GP, and finally adjusting the PDE parameters so that the GP derived partial derivatives satisfy the PDE. The method does not require initial and boundary conditions, however if these conditions are available (exactly or with measurement errors), they can be easily incorporated. The GPPDE method is evaluated by applying it on the diffusion and the Richards equations. The results suggest that GPPDE can correctly estimate parameters of the two equations. For the Richards equation, GPPDE performs well in the presence of noise. A comparison of GPPDE with HYDRUS-1D software showed that their performances are comparable, though GPPDE has significant advantages in terms of computational time. GPPDE could be an effective alternative to conventional approaches for finding parameters of high-dimensional PDEs where large datasets are available.
引用
收藏
页码:1629 / 1649
页数:20
相关论文
共 50 条
  • [1] Gaussian process for estimating parameters of partial differential equations and its application to the Richards equation
    Rai, Pankaj Kumar
    Tripathi, Shivam
    STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2019, 33 (8-9) : 1629 - 1649
  • [2] MULTIVARIATE PARTIAL DIFFERENTIAL EQUATION DESCRIBING THE EVOLUTION OF A GAUSSIAN PROCESS
    Taqqu, Murad S.
    Veillette, Mark
    STOCHASTICS AND DYNAMICS, 2009, 9 (04) : 493 - 518
  • [3] Estimating parameters in differential equations with application to laser data
    Timmer, J
    Horbelt, W
    Bünner, M
    Meucci, R
    Ciofini, M
    STOCHASTIC AND CHAOTIC DYNAMICS IN THE LAKES, 2000, 502 : 617 - 623
  • [4] An elliptic partial differential equation and its application
    Covei, Dragos-Patru
    Pirvu, Traian A.
    APPLIED MATHEMATICS LETTERS, 2020, 101 (101)
  • [6] Bilinear Equation of the Nonlinear Partial Differential Equation and Its Application
    Yang, Xiao-Feng
    Wei, Yi
    JOURNAL OF FUNCTION SPACES, 2020, 2020
  • [7] Linear Operators and Stochastic Partial Differential Equations in Gaussian Process Regression
    Sarkka, Simo
    ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING - ICANN 2011, PT II, 2011, 6792 : 151 - 158
  • [8] Application of Differential Transform Method in Richards' Equation
    Zhong Xinran
    Ying, Dai
    Xi, Chen
    PROCEEDINGS OF THE 2016 INTERNATIONAL FORUM ON ENERGY, ENVIRONMENT AND SUSTAINABLE DEVELOPMENT (IFEESD), 2016, 75 : 156 - 160
  • [9] Inferring the unknown parameters in differential equation by Gaussian process regression with constraint
    Ying Zhou
    Qingping Zhou
    Hongqiao Wang
    Computational and Applied Mathematics, 2022, 41
  • [10] Inferring the unknown parameters in differential equation by Gaussian process regression with constraint
    Zhou, Ying
    Zhou, Qingping
    Wang, Hongqiao
    COMPUTATIONAL & APPLIED MATHEMATICS, 2022, 41 (06):