The unscented transform uses a weighted set of samples called sigma points to propagate the means and covariances of nonlinear transformations of random variables. However, unscented transforms developed using either the Gaussian assumption or a minimum set of sigma points typically fall short when the random variable is not Gaussian distributed and the nonlinearities are substantial. In this paper, we develop the generalized unscented transform (GenUT), which uses 2n+1 sigma points to accurately capture up to the diagonal components of the skewness and kurtosis tensors of most probability distributions. Constraints can be analytically enforced on the sigma points while guaranteeing at least second-order accuracy. The GenUT uses the same number of sigma points as the original unscented transform while also being applicable to non-Gaussian distributions, including the assimilation of observations in the modeling of infectious diseases such as coronavirus (SARS-CoV-2) causing COVID-19.
翻译:未浓缩变异使用称为西格玛点的一组加权样本来传播随机变异的非线性变异的手段和共变。 但是,使用高斯假设或最低限度的西格玛点来开发的未浓缩变异通常在随机变异不是高斯分布的,非线性变变异也相当大时会不及格。 在本文中,我们开发了通用的非点变异(GenUT),它使用2n+1西格玛点来准确捕捉到最有可能分布的变异和库特氏变异体的二角化成构件。 限制可以在分析上对西格玛点进行强制,同时至少保证二阶准确性。 GENUT使用与原非色变的相同数量的西格玛点,同时也适用于非加西分布,包括将观测结果同化到导致COVID-19的科伦病毒(SARS-COV-2)等传染病的模型。