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Optimal strong convergence rates of numerical methods for semilinear parabolic SPDE driven by Gaussian noise and Poisson random measure

机译:高斯噪声和泊松随机测度驱动的半线性抛物SPDE数值方法的最优强收敛速度

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This paper deals with the numerical approximation of semilinear parabolic stochastic partial differential equation (SPDE) driven simultaneously by Gaussian noise and Poisson random measure, more realistic in modeling real world phenomena. The SPDE is discretized in space with the standard finite element method and in time with the linear implicit Euler method or an exponential integrator, more efficient and stable for stiff problems. We prove the strong convergence of the fully discrete schemes toward the mild solution. The results reveal how convergence orders depend on the regularity of the noise and the initial data. In addition, we exceed the classical orders 1/2 in time and 1 in space achieved in the literature when dealing with SPDE driven by Poisson measure with less regularity assumptions on the nonlinear drift function. In particular, for trace class multiplicative Gaussian noise we achieve convergence order O(h(2) + Delta t(1/2)). For additive trace class Gaussian noise and an appropriate jump function, we achieve convergence order O(h(2) + Delta t). Numerical experiments to sustain the theoretical results are provided. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文研究了由高斯噪声和泊松随机测度同时驱动的半线性抛物线型随机偏微分方程(SPDE)的数值逼近,在模拟现实世界现象时更为现实。 SPDE在空间上使用标准有限元方法离散化,在时间上通过线性隐式Euler方法或指数积分器离散化,对于刚性问题更加有效和稳定。我们证明了完全离散方案向中等解的强收敛性。结果揭示了收敛阶如何取决于噪声和初始数据的规律性。此外,当处理由Poisson测度驱动的SPDE时,我们在非线性漂移函数的规则性假设较少的情况下,超出了时间上经典的1/2阶和空间上的1阶。特别是,对于迹线类乘性高斯噪声,我们获得收敛阶数O(h(2)+ Delta t(1/2))。对于加性迹线类高斯噪声和适当的跳跃函数,我们获得收敛阶数O(h(2)+ Delta t)。提供数值实验以维持理论结果。 (C)2019 Elsevier Ltd.保留所有权利。

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