A machine learning technique is proposed for quantifying uncertainty in power system dynamics with spatiotemporally correlated stochastic forcing. We learn one-dimensional linear partial differential equations for the probability density functions of real-valued quantities of interest. The method is suitable for high-dimensional systems and helps to alleviate the curse of dimensionality.
翻译:提议了一种机器学习技术,以量化动力系统动态的不确定性,同时采用间或关联的随机力。我们学习了实际利益价值量的概率密度函数的单维线性局部差分方程式。这种方法适合高维系统,有助于减轻维度的诅咒。