Litcius/Paper detail

Stochastic Convergence of Regularized Solutions and Their Finite Element Approximations to Inverse Source Problems

Zhiming Chen, Wenlong Zhang, Jun Zou

2022SIAM Journal on Numerical Analysis21 citationsDOI

Abstract

In this work, we investigate the regularized solutions and their finite element solutions to the inverse source problems governed by partial differential equations, and we establish the stochastic convergence and optimal finite element convergence rates of these solutions under pointwise measurement data with random noise. The regularization error estimates and the finite element error estimates are derived with explicit dependence on the noise level, regularization parameter, mesh size, and time step size, which can guide practical choices among these key parameters in real applications. The error estimates also suggest an iterative algorithm for determining an optimal regularization parameter. Numerical experiments are presented to demonstrate the effectiveness of the analytical results.

Topics & Concepts

PointwiseMathematicsFinite element methodApplied mathematicsRegularization (linguistics)Inverse problemInversePointwise convergencePartial differential equationConvergence (economics)Mathematical optimizationMathematical analysisComputer scienceGeometryPhysicsThermodynamicsApproxOperating systemArtificial intelligenceEconomic growthEconomicsNumerical methods in inverse problemsProbabilistic and Robust Engineering DesignStructural Health Monitoring Techniques