This work contributes to the limited literature on estimating the diffusivity or drift coefficient of nonlinear SPDEs driven by additive noise. Assuming that the solution is measured locally in space and over a finite time interval, we show that the augmented maximum likelihood estimator introduced in Altmeyer, Reiss (2020) retains its asymptotic properties when used for semilinear SPDEs that satisfy some abstract, and verifiable, conditions. The proofs of asymptotic results are based on splitting the solution in linear and nonlinear parts and fine regularity properties in $L^p$-spaces. The obtained general results are applied to particular classes of equations, including stochastic reaction-diffusion equations. The stochastic Burgers equation, as an example with first order nonlinearity, is an interesting borderline case of the general results, and is treated by a Wiener chaos expansion. We conclude with numerical examples that validate the theoretical results.
翻译:这项工作有助于关于估计非线性SPDE由添加性噪声驱动的非线性或漂移系数的有限文献。假设溶液在空间和有限时间间隔内进行局部测量,我们表明,在Altmeyer, Reiss (202020年) 中引入的增强最大概率估测器,在用于满足某些抽象和可核查条件的半线性SPDE时,保留其无线性属性。无线性结果的证明基于线性和非线性部分的溶液分解以及$L ⁇ p$-空间的细等离子特性。所获得的一般结果适用于特定的方程式类别,包括随机反应-扩散方程式。作为一阶非线性的例子,随机汉堡方程式是一般结果的一个引人注意的边际案例,并被维纳混杂现象所处理。我们最后用数字实例来证实理论结果。