We consider a fully discrete scheme for nonlinear stochastic partial differential equations with non-globally Lipschitz coefficients driven by multiplicative noise in a multi-dimensional setting. Our method uses a polynomial based spectral method in space, so it does not require the elliptic operator $A$ and the covariance operator $Q$ of noise in the equation commute, and thus successfully alleviates a restriction of Fourier spectral method for SPDEs pointed out by Jentzen, Kloeden and Winkel. The discretization in time is a tamed semi-implicit scheme which treats the nonlinear term explicitly while being unconditionally stable. Under regular assumptions which are usually made for SPDEs with additive noise, we establish optimal strong convergence rates in both space and time for our fully discrete scheme. We also present numerical experiments which are consistent with our theoretical results.
翻译:我们认为一个完全独立的非线性随机部分差异方程式方案,由多维环境中的多倍噪声驱动的非全球利普西茨系数驱动。我们的方法在空间使用一种基于多元光谱的方法,因此在方程通勤中不需要椭圆操作员$A$和共差操作员$Q美元噪音,从而成功地减轻了对Jentzen、Kloeden和Winkel指出的对SPDE的Fourier光谱法的限制。离散时间是一种在无条件稳定的情况下明确处理非线性术语的修饰半隐性方案。根据通常对带有添加噪声的SPDEs作出的常规假设,我们为完全离散的系统在空间和时间上都建立了最佳强的趋同率。我们还提出了符合我们理论结果的数字实验。