Understanding the properties of the stochastic phase field models is crucial to model processes in several practical applications, such as soft matters and phase separation in random environments. To describe such random evolution, this work proposes and studies two mathematical models and their numerical approximations for parabolic stochastic partial differential equation (SPDE) with a logarithmic Flory--Huggins energy potential. These multiscale models are built based on a regularized energy technique and thus avoid possible singularities of coefficients. According to the large deviation principle, we show that the limit of the proposed models with small noise naturally recovers the classical dynamics in deterministic case. Moreover, when the driving noise is multiplicative, the Stampacchia maximum principle holds which indicates the robustness of the proposed model. One of the main advantages of the proposed models is that they can admit the energy evolution law and asymptotically preserve the Stampacchia maximum bound of the original problem. To numerically capture these asymptotic behaviors, we investigate the semi-implicit discretizations for regularized logrithmic SPDEs. Several numerical results are presented to verify our theoretical findings.
翻译:理解随机进化的软物质和随机环境中的相分离等软物质和相位化模型对于模拟若干实际应用过程至关重要。 为了描述这种随机进化, 这项工作提出并研究两种数学模型及其数字近似值, 以对数的浮质- 硬质- 硬质能量潜能值来表示对数的分差方程式(SPDE) 。 这些多尺度模型建立在常规化能源技术的基础上, 从而避免可能的系数奇数。 根据大偏差原则, 我们显示, 以小噪音为提议模型的极限自然恢复了确定性案例的古典动态。 此外, 当驱动性噪音是多倍增的时, Stampacchia 最大原理将显示拟议模型的稳健性。 拟议模型的主要优点之一是, 它们能够接受能源进化法, 并尽可能地保存原始问题的最大边框。 根据大量偏差原则, 我们用数字来捕捉这些微粒行为, 我们调查了常规化的对正态SPDE的半不透明分解特性。 几个数字结果将用来核查我们的理论结果 。</s>